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Estimation of Crop Water Use for Different Cropping Systems in the Texas High Plains Using Remote Sensing by Nithya Rajan, B. Sc., M. Sc. A Dissertation In Agronomy Submitted to the Graduate Faculty of Texas Tech University in Partial Fulfillment of the Requirements for the Degree of DOCTOR OF PHILOSOPHY Approved Stephan Maas Chair Vivien Allen Seiichi Nagihara Steve Mauget Fred Hartmeister Dean of the Graduate School December, 2007 Copyright 2007, Nithya Rajan, Texas Tech University ACKNOWLEDGEMENTS The author would like to express her sincere thanks and deep gratitude to her major advisor, Dr. Stephen Maas, for his encouragement, direction, assistance, and patience during the course of her studies. The author would also like to thank her doctoral committee members, Dr. Vivien Allen, Dr. Seiichi Nagihara, and Dr. Steve Mauget for their encouragement and support. The author would like to acknowledge the timely help provided by the Texas Alliance for Water Conservation Demonstration Project (TAWC) Director, Mr. Rick Kellison, through out the period of research. The author would also like to thank all the members of TAWC for their assistance. The author acknowledges the funding provided by TAWC for carrying out her dissertation research. The author would like to thank Dr. Wenxuan Guo and Mr. Jerry Brightbill (South Plains Precision Ag., Inc, Plainview, TX) for their assistance in collecting aerial imagery. The author thanks her colleagues, especially Mr. Shyam. S. Nair and Ms. Jessica Torrion, for their support and assistance. ii TABLE OF CONTENTS ACKNOWLEDGEMENTS................................................................................................ii ABSTRACT.......................................................................................................................iv LIST OF TABLES.............................................................................................................v LIST OF FIGURES ..........................................................................................................vi LIST OF ABBREVIATION............................................................................................xiii INTRODUCTION.............................................................................................................1 LITERATUTE TEVIEW...................................................................................................6 MATERIALS AND METHODS.....................................................................................17 RESULTS AND DISCUSSION......................................................................................42 CONCLUSION..............................................................................................................147 LITERATURE CITED...................................................................................................150 iii ABSTRACT The spectral crop coefficient (Ksc) is a novel approach for estimating the water use of field crops. In this study, Ksc is evaluated from remote sensing observations (satellite or aircraft imagery) of the field in question and, thus, is specific to the crop growth characteristics in the field. This approach assumes that the crop is acclimated to its environment and determines crop water use (CWU) based on the product of potential evapotranspiration and remotely sensed crop ground cover (GC). Because the remotely sensed measurements of GC are infrequent over the growing season, these measurements are used in a crop model to simulate values of GC for each day of the growing season, resulting in a crop coefficient curve (known as the spectral crop coefficient – Ksc) that is specific to the field, crop, and growing conditions. The method used for estimating the GC from remote sensing data involves the Perpendicular Vegetation Index (PVI). GC is calculated by dividing the average PVI for a field by the value of PVI for full canopy point. Statistical analysis of estimated and field-measured GC from a large number of fields indicates that the procedure for estimating crop GC from remote sensing imagery is accurate so that, on average, estimates of GC determined using this procedure should be within 6 percent of their true values. The seasonal CWU estimated by this method showed differences in water utilization by individual fields. Comparison of these seasonal CWU values among the fields in the study was effective in showing differences related to year, crop, and irrigation type. Comparing daily values of CWU estimated using the Ksc method and the regular crop coefficient method recommended for crops in the Texas High Plains with actual measurements of evapotranspiration made using the eddy covariance method showed that the Ksc method was consistently more accurate than the regular crop coefficient method. iv LIST OF TABLES Number 3.1.1 3.5.1 3.5.2 4.1.1 4.1.2 4.2.1 4.2.2 4.3.1 4.3.2 Title Page No Field number, section number, crop and irrigation type for fields in the study in 2006 and 2007. 19 Acquisition dates of images containing the study area from Landsat-5 Thematic Mapper (TM) and Landsat-7 Enhanced Thematic Mapper (ETM+) satellite sensors in 2006 and 2007. 27 Image acquisition dates for fields in the study using the Texas Tech Airborne Multispectral Remote Sensing System (TTAMRSS). 30 Slope (a1) and intercept (a0) of the bare soil line, DC values in the red (DCFC,RED) and NIR (DCFC,NIR) spectral bands for full canopy, and the PVI value (PVIFC) associated with full canopy for the four Landsat-5 image acquisitions. 45 Slope (a1) and intercept (a0) of the bare soil line, DC values in the red (DCFC,RED) and NIR (DCFC,NIR) spectral bands for full canopy, and the PVI value (PVIFC) associated with full canopy for all the Landsat-5 and Landsat-7 image acquisitions. 47 Percent Ground Cover (GC) estimated for the fields in the study by the Perpendicular Vegetation Index (PVI) method using TTAMRSS, Landsat-5 and Landsat-7 images in 2007. 56 Percent Ground Cover (GC) estimated for the fields in the study by the Perpendicular Vegetation Index (PVI) method using Landsat-5 and Landsat-7 images for all the fields in the study in 2006. 57 Seasonal PET and ET0 values for all the fields in the study in 2006.................................................................................................... 80 Seasonal PET and ET0 values for all the fields in the study in 2007..................................................................................................... 81 v LIST OF FIGURES Number Title Page No 3.1.1 Locations of study fields in Hale and Floyd counties of Texas. 18 3.4.1 Mobile eddy covariance system located in Field No. 2. 25 3.4.2 LI-7500 calibration unit built on a hand dolly for user calibration of LI-7500 Infrared Gas Analyzer. 25 3.5.1 Various parts of Texas Tech Air-borne Multispectral Remote Sensing System (TTAMRSS) and the Cessna Model 172 plane used to acquire aerial images of fields in the study. 30 Shooting over-head pictures in a corn field for making groundbased observations of ground cover. 32 Pixel digital count (DC) values in the near-infrared (NIR) spectral band plotted vs. corresponding DC values in the red spectral band for a portion of a Landsat-5................................................................ 37 Example of mosaic of aerial images that is used to determine the soil line and 100% ground cover (GC) point for evaluating the GC from aerial images acquired on 8 June 2007...................................... 39 Results of plotting the pixel digital count (DC) values in the nearinfrared (NIR) spectral band vs. the corresponding DC values in the red spectral band ................................................................................ 44 Values of ground cover (GC) estimated for the 31 locations in the study using the satellite image data plotted vs. the corresponding ground-based field observations of GC........................................... 46 Results of plotting the pixel digital count (DC) values in the nearinfrared (NIR) spectral band vs. the corresponding DC values in the red spectral band for the (A) 30 June.......................................... 50 Results of plotting the pixel digital count (DC) values in the nearinfrared (NIR) spectral band vs. the corresponding DC values in the red spectral band for a mosaic of six aerial images..................... 52 3.6.1 3.7.1 3.7.2 4.1.1 4.1.2 4.1.3 4.1.4 4.1.5 Ground cover (GC) maps produced by the Perpendicular Vegetation Index (PVI) method using the aerial images acquired on 8 June 2007 using......................................................................... 53 vi 4.2.1 Spectral crop coefficient curves (Ksc) for (A) corn for silage (Field Nos. 20-1 and 27) and (B) corn for grain (Field No. 24 and 26-2) fields for the 2007 growing season..................................................... 58 4.2.2 Spectral crop coefficient curves (Ksc) for (A) corn for silage (Field No. 20-2) and (B) corn for grain (Field No. 24-1 and 26-1) fields for the 2006 growing season............................................................... 59 4.2.3 Spectral crop coefficient curves (Ksc) for drip irrigated cotton (Field Nos. 1-1, 1-2, and 2) fields for the (A) 2007 and (B) 2006 growing seasons................................................................................................. 60 Spectral crop coefficient curves (Ksc) for center-pivot irrigated cotton (Field Nos. 3-1 and 6) fields for the (A) 2007 and (B) 2006 growing seasons.................................................................................. 61 Spectral crop coefficient curves (Ksc) for furrow irrigated cotton fields for the (A) 2007 (Field Nos. 15-1 and 15-4) and (B) 2006 (Field Nos. 15-1 and 15-3) growing seasons...................................... 62 Spectral crop coefficient curves (Ksc) for dryland cotton fields for the (A) 2007 (Field No. 12-1) and (B) 2006 (Field No. 13-1) growing seasons.................................................................................. 63 Spectral crop coefficient curves (Ksc) for forage sorghum (Field No. 20-2) for the 2007 growing season...................................................... 64 4.2.4 4.2.5 4.2.6 4.2.7 4.2.8 Spectral crop coefficient curves (Ksc) for grain sorghum fields for (A) 2007 (Field Nos. 15-3 and 18-2) and (B) 2006 (Field No 154).......................................................................................................... 65 4.2.9 Spectral crop coefficient curves (Ksc) for forage sorghum fields (A) Field No. 20-1 and (B) Field No 4-2 for the 2006 growing season................................................................................................... 66 4.2.10 Spectral crop coefficient curves (Ksc) for pearl millet for the (A) 2007 (Field No. 26-1) and (B) 2006 (Field No. 19-3) growing seasons................................................................................................. 67 4.2.11 Regular crop coefficient (Kc) curve for corn developed for the Texas High Plains from lysimeter studies at Bushland, TX. 69 4.2.12 Regular crop coefficient (Kc) curve for cotton developed for the Texas High Plains from lysimeter studies at Bushland, TX. vii 69 4.2.13 Regular crop coefficient (Kc) curve for grain sorghum developed for the Texas High Plains from lysimeter studies at Bushland, TX. 70 4.2.14 Comparison of the spectral crop coefficient curve (Ksc) generated using remotely sensed ground cover (GC) and the regular crop coefficient curve (Kc)........................................................................... 71 4.2.15 Comparison of the spectral crop coefficient curve (Ksc) generated using remotely sensed ground cover (GC) and the regular crop coefficient curve (Kc)........................................................................... 72 4.2.16 Comparison of the spectral crop coefficient curve (Ksc) generated using remotely sensed ground cover (GC) and the regular crop coefficient curve (Kc)........................................................................... 73 4.3.1 Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines for a center-pivot irrigated corn field (Field No. 24) in 2007.............. 75 4.3.2 Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines for a drip irrigated cotton field (Field No. 2) in 2007.......................... 76 4.3.3 Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines for a furrow irrigated grain sorghum field........................................... 77 4.3.4 Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines for a center-pivot irrigated forage sorghum field (Field No. 20-2) in 2007..................................................................................................... 78 Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines of a center-pivot irrigated pearl millet field............................................. 79 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 20-1.................................................................. 83 4.3.5 4.4.1 4.4.2 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 24...................................................................... 84 viii 4.4.3 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 26-2.................................................................. 85 4.4.4 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 27...................................................................... 86 4.4.5 Seasonal Crop Water Use (CWU) in mm estimated by the spectral crop coefficient (Ksc ) and regular crop coefficient (Kc ) methods for corn fields in 2007............................................................................... 87 4.4.6 Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 20-1 in 2007............................................ 90 4.4.7 Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 24 in 2007............................................... 91 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 1-1.................................................................... 93 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 1-2.................................................................... 94 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 2....................................................................... 95 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 6....................................................................... 96 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 11-1.................................................................. 97 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 12-1.................................................................. 98 4.4.8 4.4.9 4.4.10 4.4.11 4.4.12 4.4.13 ix 4.4.14 4.4.15 4.4.16 4.4.17 4.4.18 4.4.19 4.4.20 4.4.21 4.4.22 4.4.23 4.4.24 Seasonal Crop Water Use (CWU) in mm estimated by the spectral crop coefficient (Ksc ) and regular crop coefficient (Kc ) methods for cotton fields in 2007............................................................................ 100 Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 12-1 (dryland cotton) in 2007................ 102 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 20-2.................................................................. 104 Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc) and eddy covariance (EC) methods for Field No. 20-2 (center-pivot irrigated forage sorghum) in 2007....................... 105 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method are plotted versus the day of the year for Field No. 26-1............................................................. 107 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 12-1.................................................................. 108 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 15-3.................................................................. 109 Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 18-2.................................................................. 110 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 20-2................................................................. 112 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 22-2................................................................. 113 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 24-1.................................................................. 114 x 4.4.25 4.4.26 4.4.27 4.4.28 4.4.29 4.4.30 4.4.31 4.4.32 4.4.33 4.4.34 4.4.35 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 26-2.................................................................. 115 Seasonal Crop Water Use (CWU) in mm estimated by the spectral crop coefficient (Ksc ) and regular crop coefficient (Kc ) methods for corn fields............................................................................................ 117 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 1-1.................................................................... 119 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 1-2.................................................................... 120 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 2....................................................................... 121 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 3-1.................................................................... 122 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 15-1.................................................................. 123 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 13-1................................................................. 124 Seasonal Crop Water Use (CWU) in mm estimated by the spectral crop coefficient (Ksc ) and regular crop coefficient (Kc ) methods for cotton fields in 2006............................................................................ 126 Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 13-1 (dryland cotton) in 2006................ 129 Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 2 (drip irrigated cotton) in 2006............. 130 xi 4.4.36 4.4.37 4.4.38 4.4.39 4.5.1 4.5.2 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 19-3.................................................................. 132 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 20-1.................................................................. 133 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 4-2.................................................................... 134 Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 15-4.................................................................. 135 Comparison of Crop Water Use (CWU) determined by the spectral crop coefficient (Ksc) method for fields that were planted to cotton in both 2006 and 2007......................................................................... 137 Monthly average rainfall data for 2006 and 2007 recorded at the mesonet weather station in Plainview, TX......................................... 138 4.5.3 4.5.4 4.5.5 4.6.1 4.6.2 Comparison of seasonal Crop Water Use (CWU) determined by the spectral crop coefficient (Ksc) and regular crop coefficient (Kc) methods averaged for all cotton fields in the study............................. 140 Comparison of seasonal Crop Water Use (CWU) determined by the spectral crop coefficient (Ksc) and regular crop coefficient (Kc) methods averaged............................................................................... 141 Comparison of seasonal Crop Water Use (CWU) determined by the spectral crop coefficient (Ksc) method averaged for all fields in the study by crop in 2006 and 2007.......................................................... 143 Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc) method plotted versus corresponding values of daily CWU measured using eddy covariance.................................... 145 Calculated values of the stress factor Fs plotted versus corresponding values of measured daily CWU using eddy covariance. Horizontal solid line represents Fs = 1............................ 146 xii LIST OF ABBREVIATIONS 2D AAE CWU DC DCFC,NIR DCFC,RED EC ENVI ETM+ ET0 FC Fs GC GC100 GPS Kc Ksc LAI NDVI NIR PET RED PVI SAVI TM TAWC TTAMRSS USDA WUE Two Dimensional Average Absolute Error Crop Water Use Digital Counts Digital Counts of full canopy in the RED wavelength Digital Counts of full canopy in the NIR wavelength Eddy Covariance Environment for Visualizing Images Enhanced Thematic Mapper Plus Reference Evapotranspiration Full Canopy Stress Factor Ground cover 100 percent Ground Cover Global Positioning System Regular crop coefficient Spectral crop coefficient Leaf Area Index Normalized Difference Vegetation Index Near Infrared Potential Evapotranspiration Red spectral band Perpendicular Vegetation Index Soil Adjusted Vegetation Index Thematic Mapper Texas Alliance for Water Conservation Texas Tech Airborne Multispectral Remote Sensing System United States Department of Agriculture Water Use Efficiency xiii Chapter I Introduction Depleting water resources and diminishing crop production are the central topics of many ongoing research projects in the Southern High Plains. Due to a lack of sufficient rainfall in 2006, dryland crop production in the Southern High Plains faced a major setback, and those growing irrigated crops had to pump considerably more water than usual from the Ogallala Aquifer. In most of the Southern High Plains, the Ogallala Aquifer is being continually depleted. Although it is debatable the number of years this aquifer can continue to support agriculture in the High Plains, most of the reports suggest that it will be unable to support extensive irrigated agriculture within a few decades. Hence, to sustain agriculture in the Southern High Plains, it is important to use the water from this aquifer judiciously. Another factor contributing to the difficulty of sustaining crop production in the Southern High Plains is the semi-arid climate. The efficiency with which a crop can utilize irrigation depends on the climate. Plants growing in dry weather are in a high evaporative demand condition. This situation can reduce the irrigation efficiency, as there can be increased evaporative loss of water from the soil surface (Kreig, 2000). To truly assess irrigation efficiency, one must have an estimate of the amount of water actually used in growing the crop. This is called the crop water use (CWU), and is essentially equal to the transpiration of the crop. Knowing CWU, one can determine the water use efficiency (WUE) of the crop (in terms of the biomass produced per unit of water transpired), along with the efficiency of applied irrigation (in terms of CWU per unit of irrigation applied to 1 the crop). By providing accurate information on CWU, particularly at the field and regional scales, one can hope to influence farming practices that potentially improve irrigation water management and conservation. Many procedures have been proposed for estimating CWU. The most common approach for estimating daily CWU involves multiplying a crop coefficient Kc by the daily value of reference evapotranspiration (ET0) for a well-watered reference vegetation (Allen, 2003), CWU = Kc x ET0 [Eq.1.1] Here, ET0 is calculated from ambient weather conditions, and Kc is determined empirically for a specific crop. The value of the crop coefficient normally varies over the duration of the growing season, increasing from a value near zero early in the season to a value near 1 in mid-season. As the crop matures, the value of the crop coefficient starts declining. Crop coefficients are used to adjust the potential evapotranspiration (PET) of the reference crop to match the PET of agricultural crops. These crop coefficients are empirically determined by comparing the actual water use of crops grown in precision weighing lysimeters with the water use of reference crops such as short grass or alfalfa. Researchers have developed crop coefficients for different crops that are applicable to different climatic regions. These are published by organizations such as the United Nations Food and Agriculture Organization (FAO). The FAO guidelines for computing crop evapotranspiration are used world-wide to estimate crop water use and schedule irrigation. However, the crop coefficients determined by the above-described method may not reflect conditions in a given field. So, this study was undertaken in an attempt to develop crop coefficients that are real-time and are specific to the crop and the particular set of growing conditions. 2 The variation in the crop coefficient over the growing season tends to follow the variation in crop canopy density. Thus, it has been suggested that remotely sensed measures of crop canopy density, such as vegetation indices, can be used to approximate the crop coefficient in estimating CWU (Jackson et al., 1980). In the past two decades, numerous researchers came up with different methodologies to quantify the crop coefficient from remote sensing data. Most of these researchers have come up with empirical relationships between the regular crop coefficients and some type of vegetation index, such as the Normalized Difference Vegetation Index or NDVI (Hunsaker et al., 2005). These reflectance-based crop coefficients are sensitive to the actual field conditions (Neale et al., 1989), but still rely on the regular crop coefficients and reference evapotranspiration measurements. In this study, we make use of the concept of Potential Evapotranspiration (PET) to estimate CWU. PET is the maximum evapotranspiration possible from a homogenous, horizontally uniform crop canopy. The Penman-Monteith equation can be used to calculate the PET of the crop by assuming that the plant canopy is represented as a “big leaf” that completely covers the soil surface (Raupach and Finnigan, 1988). For a crop with incomplete ground cover, it is hypothesized that the CWU can be approximated by multiplying the PET for a uniform crop by the observed crop ground cover (GC). Ground cover measures the degree to which a crop canopy covers the soil surface. Thus, GC is numerically similar to Kc in that it also varies from near zero early in the growing season to 1 at maximum canopy development. In general, CWU for a crop may be estimated, [Eq.1.2] CWU = GC x PET x Fs where Fs is a factor ranging from 0 to 1 that represents the degree to which the leaf stomata 3 are open. Thus, Fs represents a “stress factor” that reduces CWU as the stomata close in response to reduced soil moisture. For crops acclimated to their environment, however, water loss from the plants is more effectively controlled by limiting the leaf area on the plants as opposed to limiting the opening of stomata on the leaves. Because photosynthesis is also affected by stomatal opening, it is better under conditions of limited soil moisture for the plants to have a relatively small amount of leaf area while maintaining relatively open stomata than to have a relatively large amount of leaf area with closed stomata. Therefore, for a crop acclimated to its environment, it is hypothesized that Fs should be approximately 1. In this case, [Eq.1.2] reduces to CWU = GC x PET [Eq.1.3] CWU in [Eq.1.3] is different from actual evapotranspiration, ETa, in that it does not include soil evaporation. [Eq.1.3] provides a means of estimating daily CWU using remote sensing, since GC can be easily estimated from remote sensing observations. The use of GC in place of the standard empirically determined Kc allows the estimation of CWU to be specific for a given field. The use of remote sensing to estimate the crop coefficient has several advantages over the conventional crop coefficient method. Remote sensing observations reflect the actual growing conditions in a field, so that these measurements implicitly include the influences of weather and other growth-limiting factors that may uniquely be present in that field. Unlike the conventional crop coefficient, a crop coefficient that could be based on remote sensing could successfully capture the spatial variability within the field. The main objective of my research is to develop a spectral crop coefficient that can be used in estimating regional crop water use. Specific objectives are: 4 1. To derive a coefficient related to the ratio of actual to potential crop evapotranspiration through vegetation ground cover quantified from remote sensing (the spectral crop coefficient, Ksc). 2. To compare the crop water use of different crops estimated by the spectral crop coefficient and regular crop coefficient methods. 3. To compare estimates of daily crop water use determined using this methodology against actual field measurements of crop evapotranspiration. 5 Chapter II Literature Review 2.1. Evapotranspiration Evapotranspiration is the combined process of evaporation from the soil and transpiration from the plants (Thornthwaite, 1948). The concept of potential evapotranspiration was first introduced by Thorthwaite in 1948. According to him, potential evapotranspiration is the maximum evapotranspiration from a vegetation completely covering the ground surface that has unlimited water supply to its roots. Although Thorthwaite came up with a temperature-based empirical equation to estimate evapotranspiration, the values did not match the actual measurements (Fuchs, 2003). Penman in 1948 introduced another method to estimate the evapotranspiration based on the energy balance of the surface. This method, popularly known as the Penman method, is one of the most discussed methods to measure evapotranspiration. Some differences were found in the evapotranspiration estimated by the Penman method when compared with actual measurements. Monteith (1965) modified the Penman equation and incorporated an additional surface (vegetation) resistance term. The modified Penman equation is known as the combination equation because it involves principles of energy balance and resistance to water vapor movement. When applied to a plant canopy, this combination equation assumes the evaporating surface as a single big leaf (Raupach and Finnigan, 1988). Allen et al. (1989) found that the Penman- Monteith method produced more accurate estimates of evapotranspiration when compared with other forms of Penman’s equation. 6 The Penman-Monteith equation is widely used by researchers to estimate crop evapotranspiration. To estimate crop evapotranspiration, the potential evapotranspiration was modified to measure the evapotranspiration from a reference crop surface such as short grass (Example: Tall fescue – Festuca arundinacea) or alfalfa (Medicago Sativa L.) and multiplied by a factor called the crop coefficient (Doorenbos and Pruitt, 1977, Wright, 1982). The crop coefficient is the ratio of reference evapotranspiration to crop evapotranspiration. The crop coefficient incorporates the effects due to the difference between the hypothetical reference crop and various field crops in terms of crop height, surface resistance, and albedo (Allen, 2000). The value of crop coefficient varies depending on the crop growth stage, from a value near zero during the early growing season to a value near 1 during the mid-growing season. The value of the crop coefficient declines in the late growing period as the crop matures (Jensen et al., 1990, Allen et al., 1998). The United Nations Food and Agriculture Organization (FAO) played an important role in popularizing the crop coefficient approach for estimating crop evapotranspiration. FAO published the details of estimating crop evapotranspiration and crop coefficients in the publication FAO-24 (Doorenbos and Pruitt, 1977) based on the Penman equation. Researchers found that the methodology published in FAO-24 tended to overestimate the reference evapotranspiration and suggested the use of PenmanMonteith equation in place of the Penman equation (Allen et al., 1994). The FAO irrigation and drainage paper 56 (Allen et al., 1998) included the revised procedures for estimating reference evapotranspiration. In this publication, the reference crop is a hypothetical grass surface growing under ideal conditions with height 0.12 m, fixed 7 surface resistance of 70 s m-1, and an albedo of 0.23. This publication also presents two types of crop coefficients: a single crop coefficient for use when the soil surface is dry, and a dual crop coefficient (a basal crop coefficient and a soil evaporation factor) when the soil surface is wet as proposed by Wright (1982). The crop coefficient approach to estimating evapotranspiration is the most commonly used method world-wide in irrigation applications. Researchers have developed crop coefficients for different agricultural crops by growing plants in precision weighing lysimeters and collecting data for several years. Wright (1982) developed crop coefficient curves for various Pacific Northwest irrigated crops such as, alfalfa (Medicago sativa L.), potatoes (Solanum tuberosum L.), peas (Pisum sativum L.), and corn (Zea mays L.), based on the alfalfa reference evapotranspiration. Wright and Hanson (1990) developed crop coefficients for rangeland from lysimeter studies conducted in three northern states in the USA and found that these crop coefficients were the same. Allen et al. (2000) compared the crop evapotranspiration of three agricultural crops, snap beans (Pisum sativum L.), sugarbeets (Beta vulgaris L.), and sweet corn, grown in lysimeters in Kimberly, Idaho, with the crop evapotranspiration calculated by the FAO-56 method. They found that both methods produced similar results. Brown et al., (2001) developed crop coefficients for turf grass growing in a desert climate. They observed that the crop coefficients varied during cloudy condition in winter and suggested that irrigation scheduling based on weather data may be less reliable under those environmental conditions. Benli et al. (2005) developed basal crop coefficients for alfalfa along with a weighing lysimeter for estimating the reference evapotranspiration in 8 the semi-arid region around Ankara, Turkey. Howell et al. (2006) developed crop coefficients for major irrigated crops in the Texas High Plains by measuring evapotranspiration with large precision weighing lysimeters. The crops were corn, wheat (Triticum aestivum L.), sorghum (Sorghum bicolor L.), soybean (Glycine max L.), cotton (Gossypium hirsutum L.), and alfalfa. These crop coefficients, known as the Bushland crop coefficients, are used in the evapotranspiration networks in Texas and surrounding states. Hunsaker (1999) developed crop coefficients for a short season cotton variety in Arizona and found that these crop coefficients were larger than the published FAO-56 crop coefficients for cotton. Howell et al. (2004) applied the FAO-56 method to estimate the evapotranspiration for well-watered, deficit-irrigated, and dryland cotton on the Northern Texas High Plains. They found that the FAO-56 method performed better for the fully irrigated cotton than for the deficit-irrigated and dryland cotton. However, Sueleiman et al. (2007) found that in humid- areas the FAO-56 method worked accurately for estimating the cotton evapotranspiration under deficit irrigation conditions. Marek et al. (2006) compared the evapotranspiration of cotton, grain sorghum, and soybeans by the FAO-56 and Bushland crop coefficient methods. They used the ASCE/EWRI reference evapotranspiration equation (Allen et al., 2005) to calculate the reference evapotranspiration. They found major differences in crop evapotranspiration estimated by these methods in the late growing season for corn and grain sorghum. Several scientists have observed that the FAO-56 method has had problems in accurately predicting crop evapotranspiration. Allen (1999) concluded that these differences in crop evapotranspiration may be due to the fact that the crop growing 9 conditions in other studies are not representative of the conditions used to develop the crop coefficients in FAO-56. 2.2. Reflectance-based crop coefficient The rapid technological developments in the past three decades have facilitated the use of remote sensing as a tool for agricultural crop management (Pinter et al., 2003). Remotely sensed measures of spectral reflectance in the form of vegetation indices can be used to indirectly estimate the crop coefficient, because evapotranspiration is related to Leaf Area Index (LAI) and fractional vegetation cover (Glenn et al., 2007). Jackson et al. (1980) first suggested that reflectance measurements of the crop-soil scene could be used to evaluate the crop coefficient, since both the crop coefficient and canopy-soil reflectance are closely related to plant growth. They found that the crop coefficient curve and the curve describing the ratio of the Perpendicular Vegetation Index (PVI) to the maximum value of PVI for a crop were similar for small grains, indicating the possibility of evaluating the seasonal change in the crop coefficient from the reflectance data. Heilman et al. (1982) reported statistically significant linear relationships between the crop coefficient and percent ground cover, and PVI and percent ground cover, for irrigated alfalfa. This suggests that the spectral measurements could be used to evaluate the crop coefficient. Bausch and Neale (1987, 1989) and Neale et al. (1989) developed crop coefficient curves similar to the basal crop coefficient curve for corn using spectral measurements. They used a linear transformation of Normalized Difference Vegetation Index (NDVI) to derive the reflectance-based crop coefficient and found that this modified basal crop coefficient allowed proper timing of irrigation. Unlike the traditional crop coefficient method, the reflectance-based crop coefficient is sensitive to the actual 10 condition of the crop resulting from weather conditions. This ability of the reflectancebased crop coefficient to represent actual crop growth and water needs helped to improve irrigation scheduling in corn (Neale et al, 1989). Choudhury et al. (1994) found a statistically significant relationship between the transpiration coefficient and LAI, and between the transpiration coefficient and vegetation indices such as Soil Adjusted Vegetation Index or SAVI (Huete, 1988) and NDVI for an unstressed wheat crop. Their results also showed that the modeled evapotranspiration measurements using vegetation indices agreed with lysimeter data. Bausch (1993) pointed out that the NDVI-based crop coefficient curves could be affected by soil background effects, and hence recommended the use of SAVI-based crop coefficient curves for irrigation scheduling of corn. Bausch (1995) compared three basal crop coefficient curves. These were SCHED (the USDA-ARS irrigation scheduling program), the tabular crop coefficient as proposed by Wright (1982), and the reflectancebased crop coefficient (using SAVI). He found that irrigation scheduled using the reflectance-based crop coefficient was more appropriately timed. The reason was that the variation in this reflectance-based crop coefficient was synchronized with crop development; and thus irrigation was applied when it was needed. This avoided over- or under-irrigation. Neale et al. (1996) developed SAVI-based crop coefficients for irrigation scheduling of cotton. Ray and Dadhwal (2001) derived crop coefficients by constructing a linear relationship between monthly averaged SAVI and crop coefficients. The remote sensing data was obtained from the wide-field sensor onboard the IRS-IC satellite. The regression equation was used to derive pixel-specific crop coefficient values. 11 Humsaker et al. (2003) developed seasonal basal crop coefficient curves for a full-season cotton cultivar using the regression relationships between NDVI and basal crop coefficient. The crop evapotranspiration estimations made using the NDVI-based crop coefficient model closely matched the actual evapotranspiration observations made for two other cotton cultivars grown under different conditions. Hunsaker et al. (2005) developed wheat basal crop coefficients using NDVI and found that the measured and estimated ET was in agreement. They suggested that remotely sensed vegetation indices such as NDVI can be used to determine a real-time crop coefficient for irrigation scheduling. Neale et al. (2005) developed SAVI-based crop coefficients for beans and potato grown in southern Idaho using radiometer-derived reflectance measurements. They suggested that high resolution aerial images could be used to capture the in-field variability in crop growth, and these crop coefficients could be useful for irrigation scheduling. Bashir et al. (2006) derived a seasonal crop coefficient curve for irrigated sorghum using Landsat ETM+ images by dividing the actual evapotranspiration computed for each pixel using SEBAL (Surface Energy Balance Algorithm for Land) by the reference evapotranspiration estimated by the FAO-56 method. They concluded that the satellite-based energy balance models such as SEBAL can be used to update and verify the existing crop coefficients for a region. Duchemin et al. (2006) found that the relationship between the basal crop coefficient and NDVI estimated from a hand-held radiometer was linear for winter wheat grown in Central Morocco. To show the application of this in irrigation scheduling, they used two Landsat-7 ETM+ images 12 containing the study area and converted them into transpiration requirement maps. They suggested that these maps could be used to decide how water should be applied spatially. Er-Raki et al. (2007) compared three methods for estimating the crop coefficient for winter wheat grown under different irrigations in Central Morocco and compared the crop evapotranspiration with actual evapotranspiration collected using the eddy covariance method. The results showed that the FAO-56 method was unable to estimate the crop evapotranspiration accurately. Hence, the FAO-56 crop coefficients were locally calibrated and then found to give good results. They also suggested that the basal crop coefficients could be determined using NDVI since NDVI derived from ground measurements of reflectance and basal crop coefficient had similar seasonal patterns. Although numerous papers are available on directly estimating evapotranspiration using remote sensing data, most of them use remote sensing data to evaluate terms in an energy balance to estimate the latent heat flux. Few researchers have come up with a novel method for estimating the crop coefficient curve using remote sensing since Jackson et al. (1980) suggested it two decades ago. 2.3. Vegetation indices and ground cover The red and near-infrared reflectance of agricultural fields obtained using multispectral imagers aboard satellites and aircraft are widely used to estimate crop growth-related parameters such as LAI or GC (Barnes et al., 1996). This is usually achieved by deriving empirical relationships between multispectral vegetation indices such as the NDVI and LAI or GC (Carlson and Ripley, 1997; Turner et al., 1999). Although there are numerous studies done on the use of remote sensing data to estimate 13 LAI of different vegetation, few works has been done to quantify the GC of field crops from remote sensing data. Ormsby et al. (1987) reported strong linear relationships between NDVI and the Simple Ratio (SR) vegetation index, and fractional vegetation cover. The error in determining the fractional cover was less than 12.7 %. Their study showed that an NDVI value of 0.3 or less corresponded to areas with fractional vegetation cover less than 5%, while an NDVI of more than 0.7 indicated 80% or more ground cover. Carlson et al. (1990) calculated the fractional vegetation cover for an agricultural region with remotely sensed measurements of surface temperature and NDVI. Bouman et al. (1992) estimated GC of potato from the Weighted Difference Vegetation index (WDVI). These WDVIderived GC estimates was in good agreement with the GC estimated by visual inspection by trained experts. Pickup et al. (1993) described a perpendicular difference index (PD54) similar to the Perpendicular Vegetation Index (PVI) to estimate vegetation cover using Landsat data. They found that this index could produce reasonably good estimates of ground cover for rangeland. Wittich and Hansing (1995) found that the relationship between NDVI and fractional cover was linear, and suggested that an area-average NDVI approach with suitable corrections would be ideal to estimate fractional ground cover. Carlson and Ripley (1997) observed that NDVI was sensitive to fractional vegetation cover until full ground cover was reached. After the attainment of full ground cover, NDVI became insensitive to increasing vegetation amount and the regression relationship between NDVI and fractional cover was non-linear. Purevdorj et al. (1998) described the relationship between several vegetation indices and percent ground cover for grasslands. Their results showed that NDVI and TSAVI (Tranformed Soil Adjusted Vegetation 14 Index) provided the best estimates of vegetation cover. Choudhury et al. (1994) used the data from Heute et al. (1985) and showed that the relationship between SAVI and fractional vegetation cover of cotton was linear. Goel and Grier (1986) reported that a canopy reflectance model could be used to accurately determine the ground cover of row crops such as corn and soybean. Maas (1998) used a linear mixture model to estimate ground cover (GC) of cotton from ground-based measurements of red and near-infrared scene reflectance. Maas (2000) applied this approach to estimating GC of cotton fields using Landsat multispectral imagery. Using ATSR-2 imagery, North (2002) found that a linear mixture model based on a library of spectral signatures was a better method to estimate fractional vegetation cover than using regular vegetation indices. White et al. (2000) used digital cameras to estimate vegetation cover in shrub land. Zeng et al. (2000) used NDVI to estimate global fractional vegetation cover using Advanced Very High Resolution Radiometer (AVHRR) data. They used the annual maximum value of NDVI for each pixel and the NDVI value corresponding to 100% GC to get an estimate of fractional vegetation cover. Ringersam and Sikking (2001) estimated the GC of vegetation barriers by observing the shaded areas at noon in an attempt to determine transpiration coefficients. Gitelson et al. (2002) developed algorithms based on spectral values in the visible spectral range for a wheat canopy to estimate the vegetation cover fraction. They suggested that these newly proposed algorithms could predict vegetation cover fraction with less than 10% error, and could replace other popular indices such as NDVI and SAVI. 15 Wanjura et al. (2003) reported a linear relationship between NDVI and ground cover of seedlings of cotton and corn. Hirano et al. (2004) found a linear relationship between factional vegetation cover obtained from aerial photographs and NDVI. Xiao and Moddy (2005) reported a linear relationship between NDVI and fractional vegetation cover. They concluded that simple NDVI-based methods performed well for regional estimation of fractional green vegetation cover. They found that these methods overestimated fractional vegetation cover in areas with sparse vegetation with bright soils and senesced vegetation. Moredorf et al. (2006) discussed a methodology for estimating fractional vegetation cover from airborne laser scanning (LIDAR) data. The qualitative comparison of fractional cover maps with equivalent maps based on imaging spectrometry showed similar ranges of values. Qi et al. (2006) mapped the spatial and temporal fractional vegetation cover using a modified form of NDVI and found satisfactory relationship between NDVI and fractional ground cover. They suggested that this method should be improved to get accurate results with different vegetation types. NDVI has been the most popular vegetation index to estimate plant canopy characteristics such as LAI and GC. However, several scientists (described above) have observed both linear and non-linear relationships between NDVI and these plant characteristics. Small (2001) concluded that, in the absence of a consistent regression relationship between NDVI and GC, use of NDVI may not be a good method for estimating GC. 16 Chapter III Materials and Methods 3.1. Study area The study was conducted in 16 agricultural fields in Hale and Floyd counties in the Texas High Plains (Fig. 3.1.1) that are part of a large demonstration project called the Texas Alliance for Water Conservation (TAWC). These fields were planted to different crops under different management systems. Based on hectares planted, the dominant field crop was cotton (Gossypium hirsutum L.), followed by corn (Zea mays L. – for grain and silage), sorghum (Sorghum bicolor L. – for grain and silage), wheat (Triticum aestivum L. – for grain and as a winter cover crop), pearlmillet (Pennisetum glaucum L.) and alfalfa (Medicago sativa L.). Among the 16 fields in study, 9 were center pivot irrigated fields, of which 8 were full circles. Other irrigation systems used were subsurface drip (3 fields) and furrow (2 fields). Two fields were not irrigated (dryland). Some of the center pivot, furrow, and dryland fields had more than one crop planted in different sections. The details of each field, including field number, section number, crop, and irrigation type are given in Table 3.1.1. Among the different crops, corn was planted the earliest, during the third and fourth weeks of April. Cotton and other crops were planted in May. Harvest dates varied from field to field depending on the crop type. Predominant soils in the study area are noncalcareous clay loams and loams in the Pullman and Pullman-Olton associations (NRCS, 1974, 1978). The climate is semi-arid and the topography is nearly level to gently sloping. Detailed results will be presented in this dissertation for a subset of fields indicated in Table 3.1.1. 17 Fig. 3.1.1. Locations of study fields in Hale and Floyd counties of Texas. Fig. 3.1. Locations of Study Fields in Hale and Floyd Counties of Texas Legend Study Fields Primary Roads County Boundary Secondary Roads 18 Table 3.1.1 Field number, section number, irrigation type and crop for fields in the study in 2006 and 2007 Crop Field No Section Irrigation type 2006 2007 1 1 Drip Cotton* Cotton* 1 2 Drip Cotton* Cotton* 2 .. Drip Cotton* Cotton* 3 1 Center-pivot Cotton* Cotton 3 2 Center-pivot Cotton* Grain Sorghum* 4 2 Center-pivot F. Sorghum* Cotton 6 .. Center-pivot Cotton* Cotton* 11 1 Furrow Cotton* Cotton* 12 1 Dryland F. Sorghum Cotton* 12 2 Dryland Cotton* Grain Sorghum* 13 1 Dryland Cotton* Wheat 15 1 Furrow Cotton* Cotton* 15 3 Furrow Cotton* Grain Sorghum* 15 4 Furrow Grain Sorghum* Cotton* 18 2 Center-pivot Oats G. Sorghum* 19 3 Center-pivot Pearlmillet* Cotton 20 1 Center-pivot F. Sorghum* Corn* 20 2 Center-pivot Corn* F. Sorghum* Center-pivot Cotton* Cotton 22 24 1 Center-pivot Corn* Corn* 24 2 Center-pivot Cotton Corn* 26 1 Center-pivot Corn* Millet* 26 2 Center-pivot Cotton Corn* 27 Drip Cotton * indicates fields used in the present study Corn* 19 3.2. Meteorological data The weather data used in the study were obtained from the West Texas Mesonet stations at Plainview and Floydada, Texas, and from the Texas High Plains Evapotranspiration Network weather station at Lockney, Texas. 3.3. Potential Evapotranspiration The standard Penman-Monteith combination equation (Allen et al., 1998) used to calculate the Potential Evapotranspiration (PET) from homogenous areas of vegetation can be expressed as follows: ( es − ea ) ra r ∆ + γ 1 + s ra ∆( Rn − G ) + ρ a c p λET = [Eq.3.1] where λET is the latent heat flux (MJ m-2 d-1), Rn is the net radiation (MJ m-2 d-1), G is the soil heat flux (MJ m-2 d-1), ( es − ea ) is the vapor pressure deficit between the ambient air and the evaporating surface (k Pa oC-1), ρ a is the mean air density (kg m-3), c p is the specific heat of air at constant pressure (MJ kg-1 oC -1), ∆ is the slope of the saturation vapor pressure curve at the ambient air temperature (k Pa oC-1), γ is the psychrometric constant (k Pa oC-1) , ra is the aerodynamic resistance (s m-1), and rs is the surface resistance (s m-1). The above equation can be applied to different vegetation surfaces with appropriate parameterization of the equation (Allen, 2005). For well-watered vegetation surfaces, the aerodynamic resistance term can be calculated as follows (Allen et al., 1998, p.20): 20 z − d zh − d ln ln m zom zoh ra = k 2uz [Eq.3.2] where ra is the aerodynamic resistance (s m-1), zm is the height of wind measurements (m), zh is the height of humid-ity measurements (m), d is the zero-plane displacement height (m), zom is the roughness length governing momentum transfer (m), zoh is the roughness length governing transfer of heat and vapor (m), k is von Karman's constant (0.41), and uz is the wind speed at height z (m s-1). The weather data used in the study contained wind and humid-ity measurements made at a height of 2 m. The other parameters (d, zom and zoh) are dependent on crop height h (m) and can be estimated using the following equations (Allen et al., 1998, p. 21). d = 2/3 h [Eq.3.3] zom = 0.123 h [Eq.3.4] zoh = 0.1 zom [Eq.3.5] By substituting [Eq.3.3], [Eq.3.4], and [Eq.3.5] in the equation to calculate ra [Eq.3.2], the aerodynamic resistance for a well watered crop surface can be expressed as follows, 2 − 0.67h 2 − 0.67h ln ln 0.123h 0.0123h ra = 0.1681u 2 [Eq.3.6] Surface resistance rs is a function of effective leaf area index (LAI) for densely vegetated crops (Allen et al., 2006) and is computed as: rs = rl LAI eff [Eq.3.7] where rl is the bulk stomatal resistance in s m-1 and LAIeff is the effective LAI, which is the leaf area that is actively contributing to PET. Previous studies have shown that, for 21 well watered agricultural crops, rl is approximately 100 s m-1 (Monteith, 1965; Allen et al., 1989, and Allen et al., 2006). This value is widely accepted by FAO and ASCE for reference ET calculation. For agricultural crops with dense canopies, only 50 percent of the canopy in the upper part is active in heat and vapor transport (Choudhury and Idso, 1985., FAO 56 p. 22), hence LAIeff can be computed as: LAIeff = 0.5 LAI [Eq.3.8] In the standard Penman-Monteith equation, the energy terms (Rn and G) expressed as flux densities (MJ m-2 day -1) can be converted to equivalent water depths by dividing the energy terms by the latent heat of vaporization, 2.45 kJ g-1. Using the Ideal Gas Law Equation, the air density can be computed: ρa = P 1.01(T + 273) R [Eq.3.9] where P is the atmospheric pressure in kPa, T is the air temperature in oC, and R is the Universal Gas Constant (0.287 kJ kg-1 K-1). The specific heat at constant pressure is computed as: Cp = γελ [Eq.3.10] P where γ is the psychrometric constant, ε is the ratio of the molecular weight of water vapor density to that of dry air (0.622), and λ is the latent heat of vaporization. After substituting [Eq.3.6], [Eq.3.8], [Eq.3.9], and [Eq.3.10] into [Eq.3.1], the PET of a fully irrigated agricultural crop can be calculated using a modified form of [Eq.3.1] as follows: 185396γ ( es − ea ) (T + 273) ra 200 ∆ + γ 1 + ra LAI 0.408∆( Rn − G ) + PET = 22 [Eq.3.11] Equation 3.11 was used to calculate the PET of cotton, corn, sorghum (grain and forage), and millet using weather data and LAI values at 100 per cent GC, which is approximately 3 (Glenn et al., 2007). The h in [Eq.3.11] is the estimated height of the crop during the growing season. 3.4. Actual Evapotranspiration Mobile Eddy Covariance System Two mobile eddy covariance systems (called Systems 1 and 2 – Fig. 3.4.1) were built in 2005 to measure evapotranspiration from the study fields. Each system consisted of a CSAT-3 sonic anemometer (Campbell Scientific, Inc.) and a LI-7500 Infrared gas analyzer (LI-COR Biosciences) attached to a mast mounted on a trailer. Electrical power was supplied by two MSX64 solar panels (Campbell Scientific, Inc.) connected to an external 12-V lead-acid battery, which in turn supplied power to the CR23X. Calibration Unit The LI-7500 was calibrated on a regular basis to ensure accurate measurement of water vapor density. Before assembling the mobile eddy covariance systems, both LI7500 gas analyzers were sent to LI-COR Biosciences in Lincoln, Nebraska, for factory calibration. For user calibration, a calibration unit was built at the USDA Plant Stress Laboratory in Lubbock, Texas (Fig. 3.4.2). This unit was built onto a hand dolly and consisted of a LI-610 Portable Dew Point Generator (LI-COR Biosciences, Lincoln, Nebraska) for water vapor calibration and a regulated source of carbon dioxide gas (500 ppm in N) for CO2 calibration. The gas was supplied by a 34-L cylinder with a 400 series regulator (Calibration Gas, http://www.calibration-gas.com/index.htm). An LI-670 23 Flow Control Unit (LI-COR Biosciences, Lincoln, Nebraska) was used to provide CO2free air and dry air for zeroing the LI-7500. The initial calibration was done at the U. S. Department of Agriculture (USDA) laboratory at the beginning of each growing season before the mobile eddy covariance systems were taken to the field. Subsequent calibrations were done in the field. Standard procedures published in the LI-7500 User’s Manual were used to calibrate the LI-7500. Although the CO2 concentration was calibrated each time, the CO2 flux data were not used in the study reported in this document. Latent Heat Flux The eddy covariance program supplied by Campbell Scientific, Inc., was used to make measurements of latent heat flux using a Campbell Scientific CR23X datalogger. The measurements were taken every 0.1 seconds (10Hz) and averaged every half hour. To meet the fetch requirements, the sensors were placed 1.5 m above the crop canopy. 24 Fig. 3.4.1. Mobile eddy covariance system located in Field No.2. Fig. 3.4.2. LI-7500 calibration unit built on a hand dolly for user calibration of LI-7500 Infrared Gas Analyzer 25 3.5. Remote sensing data Satellite data Landsat-5 Thematic Mapper (TM) and Landsat-7 Enhanced Thematic Mapper (ETM+) imagery containing the study site was acquired on several dates during the 2006, and 2007 growing seasons (Table 3.5.1). Images containing the study area were located along Path 30 at Row 36, according to the Landsat World Reference System (WRS-2). Imagery was purchased on CD-ROM from the U.S. Geological Survey (USGS) EarthExplorer website (http://edcsns17.cr.usgs.gov/EarthExplorer/). The images received Level 1-G processing by USGS prior to delivery and had a pixel size of 30 m and a radiometric resolution of 8 bits (256 gray levels). This processing included systematic correction to rotate, align, and project the image to the World Geodetic Survey 1984 (WGS84) datum, georeferencing to the Universal Transverse Mercator (UTM) coordinate system, and radiometric correction based on characteristics of the TM sensor (Chander and Markham, 2003). 26 Table 3.5.1. Acquisition dates of images containing the study area from Landsat-5 Thematic Mapper (TM) and Landsat-7 Enhanced Thematic Mapper (ETM+) satellite sensors in 2006 and 2007. Year Landsat-5 TM Landsat-7 ETM+ 13 May 29 May 8 July 30 June 09August 16 July 25August 2006 01August 10 September 18 September 26 September 04 October 20 October 22 April 2007 29 March 24 May 19 July 27 July 5 September 12 August 28 August 13 September 27 Aerial image data Aerial imagery was acquired during the 2006 and 2007 growing seasons using the Texas Tech Airborne Multispectral Remote Sensing System (TTAMRSS). This system contained two Dalsa 1M30 digital CCD cameras, a portable computer, a separate monitor for use by the pilot, and a Global Positioning System (GPS) receiver. Narrow-bandpass filters were mounted on the lenses of the cameras to obtain images in the red (660 nm) and near-infrared (850 nm) spectral bands. The filters were used to block radiation from other wavelengths so that the camera sensor is sensitive to only red (RED) or nearinfrared (NIR) radiation. Prior to mounting the system in the aircraft, the focus and exposure of the two cameras were set at the USDA Plant Stress Laboratory in Lubbock, Texas. Focus was adjusted by viewing an object several miles away. The exposure was adjusted by exposing the cameras to white and black calibration targets. TTAMRSS was mounted in a Cessna Model 172 airplane (Fig. 3.5.1). Images were acquired at an altitude of 9000 to 9500 feet above ground level. The altitude of 9000 to 9500 feet was chosen to limit bidirectional reflectance effects on the imagery, and also to include the whole field in a single image. Unlike Landsat, TTAMRSS had the capability of acquiring imagery with 12-bit radiometric resolution (4096 gray levels). The system had a fixed gain and offset which allowed comparison of images of different fields on the same date without radiometric correction. The image size was 1024 x 1024 pixels with an individual pixel size of approximately 2 m. Fig. 3.5.1 show various components of TTAMRSS. Tracker software version 2.0 (Tetracam Inc.) was used for GPS-guided camera triggering. The AgGPS 132 receiver from Trimble was upgraded to receive the Wide 28 Area Augmentation System (WAAS) differential correction for greater accuracy based on National Marine Electronic Association (NEMA) transmissions. Prior to each flight, a flight plan was made which contained the latitude and longitude coordinates of each target field. The software triggered the cameras when the aircraft flew over each field and the image files were stored in the computer memory with the geographical coordinates incorporated into their file names. Table 3.5.2 summarizes the TTAMRSS acquisition dates in 2006 and 2007. 29 Figure 3.5.1. Various parts of Texas Tech Air-borne Multispectral Remote Sensing System (TTAMRSS) and the Cessna Model 172 plane used to acquire aerial images of fields in the study. Table 3.5.2. Image acquisition dates for fields in the study using the Texas Tech Airborne Multispectral Remote Sensing System (TTAMRSS) Year Date 2006 28 Aug 8 June 21 June 10 July 9 Aug 14 Aug 2007 30 3.6. Ground-based Observations Ground-based observations of ground cover (GC) were made several times during the growing season. Some of these observations were made around the dates of a satellite image or aerial image acquisition to compare the remote sensing-based observations of GC with the actual ground-based measurements of GC. Three methods were used for making ground-based observations of GC. The method selected at any given time depended on the crop type, stage of crop growth, and the time of data collection. For row crops with open canopy structure, such as corn, sorghum, and millet, overhead photographs of the canopy were taken using a standard digital still camera mounted on a long pole (Fig. 3.6.1). The camera at the end of the pole was positioned approximately 3 m above the ground pointing directly down at the plant canopy. This method was also used in the early stages of cotton. The second method was used for mature rows of cotton plants. In this case, a meter stick was used to obtain the approximate width of the plant canopy perpendicular to the row direction. Typically, 20 to 30 measurements were made within the sampled portion of the field and the average of these measurements provided the average canopy width. GC was determined by dividing the average leaf canopy width by the row spacing of the field. The third method utilized an AccuPAR Model PAR-80 Linear PAR Ceptometer (Decagon Devices, Pullman, WA) and was used for measuring the GC of alfalfa and corn. Before taking measurements, the ceptometer was calibrated to the ambient irradiance level by holding the instrument horizontally above the plant canopy. Measurements were then taken by placing the instrument under the canopy at the soil surface. A set of individual measurements (typically 20 to 30) were made with in the sampling area in the field and averaged to estimate the GC. 31 Fig 3.6.1. Shooting over-head pictures in a corn field for making ground-based observations of ground cover 32 3.7. Image Processing Image processing was done using the Environment for Visualizing Images (ENVI) software package (ITT, Boulder, CO) and Adobe Photoshop (Adobe Systems, San Jose, CA). Overhead photographs Overhead digital images were imported into Photoshop for estimating GC. For row crops (cotton, corn, and sorghum), the image was cropped to include two or four rows of plants directly below the camera. For alfalfa, the image was cropped to include only the central portion of the image. Cropping was done to minimize the effects of optical distortions of the plant canopy present near the edges of the image. After cropping, the portions containing the leaf canopy was delineated using the “lasso” tool. The “histogram” function was then used to determine the number of pixels in the delineated portions. Dividing the number of pixels in the delineated portions by the total number of pixels in the cropped image provided an estimate of GC. This method could be used for any crop, but the delineation of the leaf canopy in the images tended to be a tedious operation for open plant canopies, like corn or sorghum. Satellite imagery The satellite image data were used to estimate GC for each field in the study. The TM data for each acquisition date were imported into ENVI and a subset containing the study area was extracted from TM Band 2 (green spectral band), TM Band 3 (red spectral band), and TM Band 4 (NIR spectral band) of each image. Another subset of smaller size was extracted from the center of the study area that contained primarily agricultural fields 33 and bare soil without any urban structures. This smaller subset was used to identify the “bare soil line” and the “100 percent GC point (GC100)”. When values of reflectance or pixel DC in the red wavelengths are plotted versus comparable values in the NIR wavelengths for bare soil targets, the values tend to lie along a straight line. This line is called the “bare soil line” (Fox and Metla, 2005; Fox et al., 2004; Richardson and Weigand, 1977), and is expressed as: NIR = a1 RED + a0 where a1 is slope and a0 is the intercept of the soil line. To construct the soil line, a subset of a Landsat image in Band 2, Band 3, and Band 4 was extracted for the study area that primarily contained agricultural fields and bare soils without urban structures. Some images were cloud-free (for example, the TM image on 1 August 2006), but some had scattered clouds (for example, the TM image on 30 June 2006). The clouds and playa lakes were masked using the build mask function in ENVI and excluded from any analysis. The DC values in the NIR spectral band (TM Band 4) were plotted versus the corresponding DC values in the red spectral band (TM Band 3) for pixel data of the subset using the 2 dimensional (2D) Scatterplot function in ENVI. The resulting scatterplot had a distribution of points similar to that in Fig. 3.7.1.a. Fig. 3.7.1.b is a diagrammatic representation of the distribution of points in Fig. 3.7.1.a. The straight edge of this distribution represents pixels containing bare soil. For a single soil type, point a might correspond to pixels containing only dry soil, while point b might correspond to pixels containing only wet soil. Points along the soil line between a and b would correspond to pixels with intermediate levels of soil wetness, or pixels with varying mixtures of wet and dry soil. To determine slope (a1) and intercept (a0) of the 34 soil line, the scatterplot was exported as a JPEG image and brought into Photoshop. A straight line was placed by visual inspection through the edge, and a1 and a0 were calculated. As vegetation starts growing in the field, the crop canopy gradually obscures the soil surface. Since green vegetation absorbs more red light than NIR, the red DC starts decreasing while the NIR DC starts increasing. In Fig. 3.7.1a, the body of the distribution represents pixels containing varying amounts of vegetation (Curran, 1983). At full canopy, the vegetation completely obscures the soil surface, so DC at full canopy (DCFC,RED and DCFC,NIR) would represent a single point (point c) in Fig. 3.7.1b. In this study, the point GC100 was identified visually at the top of each distribution at the location corresponding to full canopy (point c), and the DC values of GC100 (DCFC,RED, DCFC,NIR) were recorded. The Perpendicular Vegetation Index (PVI) was used to estimate the GC from satellite and aerial image data. PVI is the perpendicular distance from any point in the sactterplot (Fig. 3.7.1a) to the bare soil line and is calculated using the following equation, ½ PVI = [DCPIXEL,NIR – a1 (DCPIXEL,RED) – a0] / (1 + a12) [Eq.3.12] in which a1 and a0 are the slope and intercept, respectively, of the bare soil line (Richardson and Wiegand, 1977). The PVI of full canopy represents GC100, the point identified visually at the top of each scatterplot. Hence, an approximate value of GC for any point in this distribution could be obtained by dividing the PVI of the corresponding pixel by the PVI for the full canopy point, GC = PVI ANY PIXEL/ PVIFC [Eq.3.13] 35 For each TM and ETM+ image, the red and NIR DC of the point corresponding to GC100 were used in [Eq.3.12] with the corresponding bare soil line slope and intercept values to calculate a PVI value of full canopy (GC100 or PVIFC). Average DC values in the red and NIR spectral bands were determined by selecting each of the 16 agricultural fields in the study (DCPIXEL,RED, DCPIXEL,NIR) as a region of interest (ROI). These values, along with the slope and intercept of the bare soil line, were used to calculate PVI values of each pixel in the field using the Band Math function in ENVI and [Eq.3.12]. The resulting image was saved as a PVI image. This PVI image was then converted to a ground cover map using the Band Math function and [Eq.3.13]. The average GC of each field was determined by taking the GC values of all the pixels in a field. In 2006, estimates of GC determined for a set of fields from Lansat-5 imagery were compared to corresponding ground based observations of GC. The accuracy of GC estimates from satellite data was evaluated by statistical analysis of these data. 36 Fig. 3.7.1. Pixel digital count (DC) values in the near-infrared (NIR) spectral band plotted vs. corresponding DC values in the red spectral band for a portion of a Landsat-5 image of an agricultural region. (A) Actual distribution of DC values; (B) diagrammatic representation of features of the distribution of DC values A B 37 Aerial imagery For the aerial imagery, the red and NIR images for each field were registered to each other in ENVI by selecting a number of ground control points in each image. For each field, the red and NIR images were displayed as an RGB with near infrared data displayed using the red channel and red data displayed in both the green and blue channels. This resulted in an image that looked similar to a standard false-color NIR composite image. The advantage of displaying red and NIR data in this manner was that this helped to visually identifying areas with vegetation and bare soil. All the non agricultural features were masked using the build mask function in ENVI and excluded from any analysis. Since a single aerial image contained only one field, the bare soil line and full canopy point were identified in the scatterplot of a mosaic of several aerial images. Fig. 3.7.2a and 3.7.2b show the mosaic of six fields (Field Nos. 1, 2, 3, 4, 24 and 26) that was used to estimate the GC on 8 June 2007. The GC was determined for each field following the same methodology described for satellite data analysis. For better visualization, the GC map was classified into 10 different classes using the decision tree classification function in ENVI. A different color was assigned to each class to allow pseudocoloring of the GC maps. 38 Fig. 3.7.2 Example of mosaic of aerial images that is used to determine the soil line and 100% ground cover (GC100) point for evaluating the GC from aerial images acquired on 8 June 2007. Non-agricultural features were masked (appear as black in the mosaic) and excluded form any analysis. A: Mosaic of six aerial images acquired on 8 June 2007 in the Red band. B: Mosaic of six aerial images acquired on 8 June 2007 in the NIR band. 39 3.8. Ground Cover Modeling Because the satellite and aerial image data provided only infrequent measurements of GC, the TAWC version of the Yield Tracker model (Ko et al., 2006 and 2005, Maas et al., 2004, 2003 and 2002; Maas, 2001) was used to simulate daily values of GC. The model used a weather data file containing the day of the year, average daily air temperature (oC), average daily photosynthetically active radiation (PAR), and daily rainfall (mm). Another input file used to run the model was the GC file, which contained the day of the year and remotely sensed GC data on that day. 3.9. Data Analysis Ground cover values estimated for each field from the satellite image data were plotted versus the corresponding values of GC obtained from ground-based field measurements. Simple linear regression (Ostle and Mensing, 1975, p. 169) was used to fit a straight line to these pairs of GC values. Student’s t test was then used to test if this regression line was significantly different from the 1:1 line (Ostle and Mensing, 1975, p. 177). Finally, a paired Student’s t was used to test if the average GC value estimated from the satellite imagery was significantly different from the average GC value determined from ground-based field observations (Ostle and Mensing, 1975, p. 120). The average absolute error (AAE) was calculated between the values of GC estimated using the satellite image data (GCEST) and the corresponding GC values determined from the ground-based field observations (GCOBS) using the following formula, AAE = ∑ | GCEST – GCOBS | / n [Eq.3.14] 40 in which n is the number of observations (in this study, n = 51). The value of AAE indicates, on average, how close the estimated and observed GC values were, and provides an estimate of the overall accuracy of the procedure. A paired Student’s t test was also used to test if the CWU estimates by the spectral crop coefficient and regular crop coefficient methods were significantly different from the actual CWU estimates from the eddy covariance measurements. 41 Chapter IV Results and Discussion 4.1. Ground Cover (Spectral Crop Coefficient or Ksc) using Perpendicular Vegetation Index Satellite Imagery The 2 dimensional (2D) scatterplots generated by plotting the DC values in the near-infrared (NIR) spectral band versus the corresponding DC values in the red (RED) spectral band for the 30 June, 16 July, 1 August and 18 September 2006 Landsat-5 image acquisitions are presented in Fig. 4.1.1. The distribution of points in these scatterplots resembled the example presented in Fig. 3.7.1a, so the locations of bare soil line and full canopy (GC100) could be identified for each distribution by visual inspection. The locations of bare soil lines and GC100 points determined for each of the distribution are shown in Fig. 4.1.1. Table 4.1.1 presents the slope (a1) and intercept (a0) of the bare soil line, DC values in the red (DCFC,RED) and NIR (DCFC,NIR) spectral bands for full canopy, and the PVI value (PVIFC) calculated using [Eq.3.12] associated with full canopy for the four Landsat-5 image acquisitions (30 June 2006, 16 July 2006, 1 August 2006 and 18 September 2006). Results of GC estimated using the Landsat-5 image data on these days for 31 locations in the study area are plotted in Fig. 4.1.2 versus the corresponding ground based observations of GC. Regression analysis of the data shows that the points tend to lie along the 1:1 line. The slope and intercept of the least-square linear regression fitted line is 0.929 and 3.22 respectively. Results of the Studtent’s t-test of the slope and intercept of this regression indicated that the slope and intercept were not significantly different 42 from 1 (t = -1.546, 49 df, α = 0.05) and 0 (t = 0.107, 49 df, α = 0.05) respectively. Thus, the regression line through these points is not significantly different from the 1:1 line. The average value of satellite based estimates of GC was 43.95 percent, while the average value of ground based observations of GC was 43.82 percent. The Student’s ttest of the pairs of estimated and observed GC values indicates that the average value of satellite based estimates of GC is not significantly different from the average value of ground based observations of GC (t = -0.110, 50 df, α = 0.05). The calculated value of AAE for this data set was 5.76 percent. This suggests that, on average, estimates of GC determined using this procedure should be within 6 percent of their true values. The 2D scatterplots generated for all the image acquisitions dates in the study for 2006 and 2007 showed similar pattern in distribution of points as in Fig. 3.7.1a or Fig. 4.1.1. The slope (a1) and intercept (a0) of the bare soil line, DC values in the red (DCFC,RED) and NIR (DCFC,NIR) spectral bands for full canopy and the associated PVI values (PVIFC) for full canopy calculated using [Eq.3.12] are summarized in Table 4.1.2. 43 Fig. 4.1.1. Results of plotting the pixel digital count (DC) values in the near-infrared (NIR) spectral band vs. the corresponding DC values in the red spectral band for the 30 June 2006, 16 July 2006, 1 August 2006, and 18 September 2006 Landsat-5 image acquisitions. The location of the bare soil line is indicated for each distribution of points, along with the location of the point representing full vegetation canopy (“FC”). 44 Table 4.1.1. Slope (a1) and intercept (a0) of the bare soil line, DC values in the red (DCFC,RED) and NIR (DCFC,NIR) spectral bands for full canopy, and the PVI value (PVIFC) associated with full canopy for the four Landsat-5 image acquisitions in Fig. 4.1.1. Date Slope (a1) Intercept (a0) DCFC,RED DCFC,NIR PVIFC 30 Jun 2006 1.17 -5.91 25 168 94.0 16 Jul 2006 1.04 5.00 20 166 97.2 1 Aug 2006 1.04 5.00 25 180 103.3 18 Sep 2006 0.98 10.00 21 156 89.8 45 Fig. 4.1.2. Values of ground cover (GC) estimated for the 31 locations in the study using the satellite image data plotted vs. the corresponding ground-based field observations of GC. The solid diagonal line represents the 1:1 line, while the dashed line represents the least-squares linear regression line fit to these points. The slope of the regression line is 0.929 and the intercept is 3.22, and the regression line is not significantly different from the 1:1 line. 46 Table 4.1.2. Slope (a1) and intercept (a0) of the bare soil line, DC values in the red (DCFC,RED) and NIR (DCFC,NIR) spectral bands for full canopy, and the PVI value (PVIFC) associated with full canopy for all the Landsat-5 and Landsat7 image acquisitions used in this study. Year Satellite Landsat7 2007 Landsat5 Landsat7 2006 Landsat5 Slope Intercept (a1) (a0) 22-Apr 0.56 5 22 163 127.1 24-May 0.53 10 43 148 101.8 27-Jul 0.5 20 48 165 108.2 12-Aug 0.53 12 42 162 112.9 28-Aug 0.53 12 44 152 103.1 13-Sep 0.53 10 43 148 101.8 19-Jul 1 8 26 169 90.8 5-Sep 1 8 24 154 86.0 21-Sep 1 8 21 149 84.9 8-July 0.53 8 56 165 112.5 9-Aug 0.56 4 44 152 107.6 25-Aug 0.53 9 46 159 111.0 10-Sep 0.48 11 41 147 104.9 26-Sep 0.54 6 36 143 103.4 30-Jun 1.1 6 30 175 91.5 16-July 0.9 2 27 173 109.0 1-Aug 0.95 4 28 181 109.0 18-Sep 1.1 4 20 157 88.1 4-Oct 1 3 21 141 82.6 20-Oct 1.1 4 16 128 72.0 DCFC,RED DCFC,NIR Date 47 PVIFC As explained above, the procedure to estimate the ground cover of various agricultural crops using the satellite data appears to be accurate. The accuracy of this procedure depends upon the identification of the soil line and point corresponding to 100% GC in the distribution of red and NIR pixel DC values. The 2D scatterplots of all the satellite image data used in this study resembled the theoretical distribution shown in Fig. 3.7.1a. This was achieved because the area selected to make the 2D scatterplots were primarily agricultural regions dominated by vegetation and bare soils. The nonagricultural targets (water bodies, clouds, cloud shadows, paved roads and buildings) were masked out from any analysis. The inclusion of non-agricultural targets can confound the identification of the bare soil line and point corresponding to 100% GC. This can be explained by Fig. 4.1.3a, which shows the distribution of points in the RED and NIR band for the 30 June Lansat-5 image. The same portion of the Landsat-5 image used to construct this distribution was used to construct the distribution in Fig. 4.1.1, except that in this case the areas containing clouds and cloud shadows were not masked. In Fig. 4.1.3a, it is difficult to identify the bare soil line visually since the edge of the distribution is now dominated by pixels containing clouds and cloud shadows. Similarly, Fig. 4.1.3b shows the distribution of points corresponding to the 18 September Landsat-5 image shown in Fig. 4.1.1, except that in this case the pixels containing lakes were not masked out before constructing the distribution. Again, the idealized form of the distribution expected from Fig. 4.1.3b is confounded by the points corresponding to pixels affected by the lakes. Therefore, proper screening of the medium-resolution multispectral satellite imagery is important to remove non-agricultural targets and facilitate identification of the features necessary for applying this procedure. 48 The masking out of non-agricultural features does not affect the identification of the bare soil line as there is always some bare soil surfaces in most agricultural regions. This procedure also needs a 100% GC point. In the region where this study was conducted, it was possible to identify points of vegetation with full GC in the satellite image at practically any time during the growing season. Even in the early spring, winter wheat canopies are sufficiently dense to allow this determination. However, it is conceivable that in some agricultural regions there might be periods at the start or end of the growing season for which there is no vegetation with a density approaching full canopy, thereby making identification of the full canopy point difficult. In such cases, one could use an average value of PVIFC determined at other times during the growing season in calculating GC. For example, the average of the values of PVIFC presented in Table 4.1.1 is 96.1. Using this average value in the calculations of GC for each of the four acquisition dates in this study results in an average GC of 48.06 percent, which is less than 5 percent different from the corresponding value (GCEST = 43.95 percent) obtained using the values of PVIFC from Table 4.1.1 that are specific to each acquisition date. Therefore, in the absence of adequate data to identify the point corresponding to full canopy, it may be feasible to use a previously determined average value of PVIFC in the calculations of GC. 49 Fig. 4.1.3. Results of plotting the pixel digital count (DC) values in the near-infrared (NIR) spectral band vs. the corresponding DC values in the red spectral band for the (A) 30 June and (B) 18 September Landsat-5 image acquisitions without masking the image data to remove non-agricultural targets such as clouds, cloud shadows, and lakes. 50 Aerial Imagery Fig. 4.1.4 shows the distribution of points obtained by plotting the DC values in the NIR spectral band versus the corresponding DC values in the red spectral band for an image mosaic of six fields in the study (Nos. 1, 2, 3, 4, 24 and 26) acquired using TTAMRSS on 8 June 2007. The characteristic shape of this distribution also resembled the example presented in Fig. 3.7.1a. The locations of bare soil line and full canopy (GC100) identified for this distribution by visual inspection are shown in Fig. 4.1.4. The equation of the bare soil line obtained for this distribution has the following equation. NIR = 66 + 0.8 RED [4.1] The DC values in the red (DCFC,RED) and NIR (DCFC,NIR) spectral bands for full canopy location determined in Fig. 4.1.4 are 1476 and 3069 respectively, and the associated PVI value calculated using [Eq.3.12] is 1423. Fig. 4.1.5 show examples of GC maps generated after classification for two fields in the study using TTAMRSS image (Field Nos. 24 and 26). Although the PVI method can be used to produce a spatial GC map as in Fig. 4.1.4, an average value of GC for the entire field was used in this study. 51 Fig. 4.1.4. Results of plotting the pixel digital count (DC) values in the near-infrared (NIR) spectral band vs. the corresponding DC values in the red spectral band for a mosaic of six aerial images acquired on 8 June 2007 using the Texas Tech Airborne Multispectral Remote Sensing System (TTAMRSS). The location of the bare soil line is indicated by the straight line, along with the location of the point representing full vegetation canopy. 8 June 2007 TTAMRSS NIR DC Full Canopy Bare Soil Line TTAMRSS Red DC 52 Fig. 4.1.5. Ground cover (GC) maps produced by the Perpendicular Vegetation Index (PVI) method using the aerial images acquired on 8 June 2007 using the Texas Tech Airborne Multispectral Remote Sensing System (TTAMRSS) for Field No. 24 and 26. Field No. 24 is a center-pivot corn field. Field No. 26 has half the area planted to corn and the other half is bare soil. Each color indicates a range of percent GC as indicated in the legend. 53 The estimation of GC using aerial image data follows the same procedure as in the case of satellite data, but has several aspects to be addressed in more detail. Since the accuracy of this method depends on the identification of soil line and 100% GC point in the distribution of red and NIR pixel DC values, one aerial image may not be sufficient to extract all the information needed to estimate crop GC. As described in the Materials and Methods section, this difficulty is overcome by mosaicing several aerial images. This produces an “image” that contains many different surfaces, usually including some bare soil and full crop canopy. Thus, the mosaiced aerial images are similar to a portion of a Landsat image. Again, masking out of non-agricultural features is very important for the identification of soil line and 100% GC point. Unlike satellite data, which have medium spatial resolution (30 x 30 m), aerial images taken in this study have high surface resolution (2 x 2 m). Hence, the aerial images contain a lot more detail than the satellite data. The areas needed to be masked in aerial image data are buildings, equipment in the field, paved roads, playa lakes, other water bodies, clouds, and cloud shadows. Masking out of these non-agricultural features and making a composite of several aerial images offers a way to build a distribution of points that are closer to the theoretical distribution (Fig. 3.7.1a). 54 4.2. Spectral Crop Coefficient (Ksc) Table 4.2.1 and Table 4.2.2 summarize the GC estimated for the fields in the study using TTAMRSS, Landsat-5 and Landsat-7 images acquired in 2007 and 2006 respectively. Because values of GC were needed for each day of the growing season, and the remote sensing values were only for certain days within the growing season, daily values of GC were simulated using the TAWC version of Yield Tracker model (Ko et al., 2006 and 2005, Maas et al., 2004, 2003 and 2002, and Maas, 2001). The results of the simulation for few fields are presented in Fig. 4.2.1 through 4.2.10. The simulation resulted in a continuous curve of GC for the entire growing season and is called the spectral crop coefficient curve (Ksc curve). The values of Ksc can range from 0 to 1 depending on how much GC the crop is attaining during the growing season. The Ksc curves illustrate the change in GC values, starting at a low value in the beginning of the growing and increases to a maximum value in the mid- growing season when the crop attains the maximum GC. The value of Ksc decrease during the later part of the growing season as the canopy starts senescence. The Ksc curves of those crops used as silage (corn and forage sorghum) ended abruptly during the mid- growing season at the time of harvest (Fig. 4.2.1A and 4.2.2A, Fig. 4.2.8 and 4.2.9). For grain crops (Fig. 4.2.1B and 4.2.2B), the ksc curve followed the general crop growth pattern. For indeterminate cotton crop (Fig.4.2.3 through 4.2.6), the ksc curves look similar to the growth pattern of determinate crops as the cotton was sprayed with defoliants two to three weeks prior to harvest. 55 Table 4.2.1. Percent Ground Cover (GC) estimated for the fields in the study by the Perpendicular Vegetation Index (PVI) method using TTAMRSS, Landsat-5 and Landsat-7 images in 2007. Field No 1-1 1-2 2 3-1 6 11-1 12-1 12-2 15-1 15-3 15-4 18-2 20-1 20-2 24 (1 & 2) 26-1 26-2 27 Date of image acquisitions 22 Apr .. .. .. .. .. .. .. .. .. .. .. .. .. .. 1 .. .. 3 08 Jun 7 6 9 9 4.4 5 4 8 5 13 7 .. 29 .. 67 11 60 64 19 July 28 18 39 47 * * * * 32 68 32 74 72 25 74 85 74 76 27 July * * 75 59 * * * * 43 68 43 * 70 64 71 98 72 75 12 Aug 69 72 100 62 72 37 59 46 60 48 46 69 67 83 64 100 64 28 Aug 85 84 105 82 93 51 62 36 69 40 55 60 05 Sep 84 83 99 83 91 52 63 29 72 39 54 55 13 Sep 79 71 91 79 84 48 61 21 70 33 53 46 21 Sep 77 63 85 78 82 51 62 18 70 33 54 43 77 0 64 14 72 0 55 8 ** 97 29 88 44 85 18 76 31 ** .. Indicates the fields were not planted, * indicates the field was cloudy in the image, and ** indicates the field was harvested. 56 Table 4.2.2. Percent Ground Cover (GC) estimated for the fields in the study by the Perpendicular Vegetation Index (PVI) method using Landsat-5 and Landsat-7 images for all the fields in the study in 2006. Field No Date of image acquisitions 30 Jun 08 Jul 16 Jul 01 Aug 09 Aug 25 Aug 10 Sep 1-1 28 46 60 * 73 70 69 1-2 28 45 59 * 85 75 73 2 35 47 55 75 89 75 69 3-1 29 37 40 * 49 48 49 4-2 89 96 107 .. 54 87 97 6 11 32 52 60 67 63 56 12-2 9 19 27 18 16 14 21 13-1 13 25 34 * 21 16 19 15-1 * 25 50 * 55 57 61 15-3 * 38 50 * 64 54 58 15-4 * 40 45 * 43 24 18 19-3 * 34 60 66 67 51 44 20-1 * 80 79 64 20-2 * 63 83 91 99 78 76 22-2 82 83 83 * 51 19 7 24-1 85 84 83 * 26-1 * 72 74 64 55 30 15 * indicates the field was cloudy in the image, and ** indicates the field was harvested. 57 18 Sep 26 Sep 4 Oct 20 Oct 63 62 65 44 91 53 18 17 58 54 19 40 ** 65 4 ** 8 54 50 52 36 .. 40 25 18 54 46 20 40 45 44 34 22 39 31 15 49 41 25 33 ** ** 3 ** ** 12 23 9 28 ** 23 13 64 9 58 4 ** ** 10 9 ** Fig 4.2.1. Spectral crop coefficient curves (Ksc) for (A) corn for silage (Field Nos. 20-1 and 27) and (B) corn for grain (Field No. 24 and 26-2) fields for the 2007 growing season. The crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A. Corn for silage 1 0.9 Ground Cover (Ksc ) 0.8 Series1 Field No. 27 (Drip) Field No. 20-1 Series2 (Drip) 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 240 260 280 220 240 260 280 Day of the Year B. Corn for grain 1 0.9 Ground Cover (Ksc ) 0.8 Series1 Field No. 24 (Drip) Field No. 26-2 Series2 (Drip) 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 Day of the Year 58 Fig. 4.2.2. Spectral crop coefficient curves (Ksc) for (A) corn for silage (Field No. 20-2) and (B) corn for grain (Field No. 24-1 and 26-1) fields for the 2006 growing season. The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A. Corn for silage 1 Field No. 20-2 Series1 (Drip) 0.9 Ground Cover (Ksc ) 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 80 100 120 140 160 180 200 220 240 260 280 300 Day of the Year B. Corn for grain 1 Series1 Field No. 24-1 (Drip) Field No. 26-1 Series2 (Drip) 0.9 Ground Cover (Ksc ) 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 80 100 120 140 160 180 200 Day of the Year 59 220 240 260 280 Fig. 4.2.3. Spectral crop coefficient curves (Ksc) for drip irrigated cotton (Field Nos. 1-1, 1-2, and 2) fields for the (A) 2007 and (B) 2006 growing seasons. The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A. 2007 1.1 1 Ground Cover (Ksc ) 0.9 0.8 Series1 Field No. 1-1 Field No. 1-2 Series2 (Drip) Series3 Field No. 2 (Drip) 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 240 260 280 280 300 Day of the Year B. 2006 0.9 0.8 Ground Cover (Ksc ) 0.7 0.6 Series1 Field No. 1-1 Field No. 1-2 Series2 (Drip) Series3 Field No. 2 (Drip) 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 Day of the Year 60 240 260 Fig. 4.2.4. Spectral crop coefficient curves (Ksc) for center-pivot irrigated cotton (Field Nos. 3-1 and 6) fields for the (A) 2007 and (B) 2006 growing seasons. The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A. 2007 Ground Cover (Ksc ) 1 0.9 Field No. 3-1 Series1 0.8 Series2 Field No. 6 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 240 260 280 300 240 260 280 300 Day of the Year B. 2006 0.7 Series1 Field No. 3-1 0.6 Ground Cover (Ksc ) Field No. 6 Series2 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 Day of the Year 61 Fig. 4.2.5. Spectral crop coefficient curves (Ksc) for furrow irrigated cotton fields for the (A) 2007 (Field Nos. 15-1 and 15-4) and (B) 2006 (Field Nos. 15-1 and 15-3) growing seasons. The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A. 2007 Ground Cover (Ksc ) 0.9 0.8 Series1 Field No. 15-1 0.7 Field No. 15-4 Series2 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 240 260 280 300 240 260 280 300 Day of the Year B. 2006 Ground Cover (Ksc ) 0.9 0.8 Series1 Field No. 15-1 0.7 Field No. 15-3 Series2 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 Day of the Year 62 Fig. 4.2.6. Spectral crop coefficient curves (Ksc) for dryland cotton fields for the (A) 2007 (Field No. 12-1) and (B) 2006 (Field No. 13-1) growing seasons. The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A. 2007 0.7 Ground Cover (Ksc ) 0.6 Field No. 12-1 Series1 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 240 260 280 300 240 260 280 300 Day of the Year B. 2006 0.4 Ground Cover (Ksc ) Field No. 13-1 Series1 0.3 0.2 0.1 0 100 120 140 160 180 200 220 Day of the Year 63 Fig. 4.2.7. Spectral crop coefficient curves (Ksc) for forage sorghum (Field No. 20-2) for the 2007 growing season. The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. 1 0.9 Field No. 20-2 Series1 Ground Cover (Ksc ) 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 Day of the Year 64 240 260 280 300 Fig. 4.2.8. Spectral crop coefficient curves (Ksc) for grain sorghum fields for (A) 2007 (Field Nos. 15-3 and 18-2) and (B) 2006 (Field No. 15-4). The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A. 2007 0.8 Field No. 15-3 Series1 Series2 Field No. 18-2 Ground Cover (Ksc ) 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 80 100 120 140 160 180 200 220 240 260 280 300 Day of the Year B. 2006 0.5 Field No. 15-4 Series1 Ground Cover (Ksc ) 0.4 0.3 0.2 0.1 0 120 140 160 180 200 Day of the Year 65 220 240 260 Fig. 4.2.9. Spectral crop coefficient curves (Ksc) for forage sorghum fields (A) Field No. 20-1 and (B) Field No. 4-2 for the 2006 growing season. Field No. 4-2 was harvested twice. The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A. Field No. 20-1 1.1 1 Field No. 20-1 Series1 Ground Cover (Ksc ) 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 140 160 180 200 220 240 Day of the Year B. Field No. 4-2 Ground Cover (Ksc ) 1.2 1.1 Field No. 4-2 (1) Series2 1 Field No. 4-2 (2) Series3 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 Day of the Year 66 240 260 280 300 Fig. 4.2.10. Spectral crop coefficient curves (Ksc) for pearl millet for the (A) 2007 (Field No. 26-1) and (B) 2006 (Field No. 19-3) growing seasons. The spectral crop coefficient curve was produced by simulating the daily vales of ground cover (GC) for the entire growing season using the remotely sensed GC and weather data. The crop model used for simulation was the TAWC version of Yield Tracker model. A: 2007 1 0.9 Field SeriesNo. 26-1 1 Ground Cover (Ksc ) 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 240 260 280 300 240 260 280 300 Day of the Year B. 2006 0.8 Ground Cover (Ksc ) 0.7 Field SeriesNo. 19-3 1 0.6 0.5 0.4 0.3 0.2 0.1 0 100 120 140 160 180 200 220 Day of the Year 67 Fig. 4.2.11 through 4.2.13 illustrates the regular crop coefficient curves (Kc) for corn, cotton and sorghum developed for the Texas High Plains. These crop coefficients were developed from lysimeter studies at Bushland and included field observations over several years (Mareck et al., 2006). Comparison of the spectral crop coefficient and regular crop coefficient values for the same crop and field show that they are different. Fig. 4.2.14 presents an example comparing the spectral crop coefficient and regular crop coefficient curves for two corn fields, Field Nos. 24 and 27, in 2007. Field No. 24 was center-pivot irrigated and Field No. 27 was drip irrigated. The Ksc curve follows the realtime growth pattern of corn observed in these fields from the remote sensing data. The Kc values represent average crop growth for this region. The Kc curve follow the same pattern for both fields and the shift in Kc values is only due to the difference in planting dates. The Kc and Ksc curves for Field No. 27 end earlier than Field No. 24 because the crop was harvested for silage. Fig. 4.2.15 compares the Ksc and Kc values for two cotton fields that had the same planting date. The Ksc values are different for both fields as noted previously in the case of corn fields. The Kc values are the same for both fields. Fig 4.2.16 compares the Ksc and Kc values for two grain sorghum fields (Field Nos. 12-2 and 15-3) in 2007. The Ksc values are smaller than the Kc values for both fields. The Ksc values for Field No. 12.2 is smaller than the Ksc values for Field No. 15-3 as this field is dryland and had a poor crop stand compared to the furrow irrigated grain sorghum field (Field No. 15-3). 68 Fig. 4.2.11. Regular crop coefficient (Kc) curve for corn developed for the Texas High Plains from lysimeter studies at Bushland, TX. 1.4 1.2 1.3 1.25 1.2 1.2 1.25 Crop coefficient (Kc ) 1.15 1 1 1 0.9 0.85 0.8 0.7 0.7 0.6 0.45 0.4 0.35 0.25 0.2 0 0 20 40 60 80 100 120 140 Days after planting Fig. 4.2.12. Regular crop coefficient (Kc) curve for cotton developed for the Texas High Plains from lysimeter studies at Bushland, TX. 1.4 Crop coefficient (Kc ) 1.2 1.1 1.1 1 0.83 0.8 0.6 0.2 0.44 0.44 0.4 0.22 0.07 0.1 0 0 20 40 60 80 100 Days after planting 69 120 140 160 Fig. 4.2.13. Regular crop coefficient (Kc) curve for grain sorghum developed for the Texas High Plains from lysimeter studies at Bushland, TX. 1.4 1.2 1.1 Crop coefficient (Kc ) 1 0.95 1 0.95 0.8 0.9 0.8 0.85 0.7 0.6 0.55 0.4 0.6 0.4 0.4 0.2 0 0 20 40 60 80 100 Days after planting 70 120 140 160 Fig. 4.2.14. Comparison of the spectral crop coefficient curve (Ksc) generated using remotely sensed ground cover (GC) and the regular crop coefficient curve (Kc) recommended for the Texas High Plains. Examples are presented for two corn fields in 2007: (A) center-pivot irrigated corn (Field No. 24) and (B) drip irrigated corn (Field No. 27). A. Field No. 24 (Center-pivot) 1.4 Kc Series1 K sc Series2 Crop Coefficient 1.2 1 0.8 0.6 0.4 0.2 0 80 100 120 140 160 180 200 220 240 260 280 Day of the Year B. Field No. 27 (Drip) 1.4 Kc Series1 K sc Series2 Crop Coefficient 1.2 1 0.8 0.6 0.4 0.2 0 80 100 120 140 160 180 Day of the Year 71 200 220 240 Fig. 4.2.15. Comparison of the spectral crop coefficient curve (Ksc) generated using remotely sensed ground cover (GC) and the regular crop coefficient curve (Kc) recommended for the Texas High Plains. Examples are presented for two cotton fields in 2007. The Kc curve is the same for both fields. 1.2 Crop Coefficient 1 0.8 Series1 Kc K sc (Field No. 15-1) Series2 K sc (Field No. 15-4) Series3 0.6 0.4 0.2 0 120 140 160 180 200 220 Day of the Year 72 240 260 280 Fig. 4.2.16. Comparison of the spectral crop coefficient curve (Ksc) generated using remotely sensed ground cover (GC) and the regular crop coefficient curve (Kc) recommended for the Texas High Plains. Examples are presented for two grain sorghum fields: (A) dryland (Field No. 12-2) and (B) furrow irrigated (Field No. 15-3) A. Field No. 12-2 (Dryland) 1.2 Series1 Kc Crop Coefficient 1 K sc Series2 0.8 0.6 0.4 0.2 0 120 140 160 180 200 220 240 260 280 Day of the Year B. Field No. 15-3 (Furrow) 1.2 Series1 Kc Crop Coefficient 1.0 K sc Series2 0.8 0.6 0.4 0.2 0.0 100 120 140 160 180 200 Day of the Year 73 220 240 260 280 4.3. Potential Evapotranspiration PET calculated for each day of the growing season using [Eq.3.11] are presented in Fig. 4.3.1 through 4.3.5 for selected fields in the study. Also presented in these figures are the daily values of reference crop evapotranspiration (ET0) calculated using the FAO56 guidelines (Allen, 2005). Germination is assumed to be one week after planting and from planting to germination PET is assumed equal to be zero. The daily fluctuations in PET and ET0 curves are due to the difference in daily weather parameters. For wellwatered crops, daily values of PET are greater than ET0 as a function of crop height since height of the crop used to determine the aerodynamic resistance term is greater than the height of the reference crop (0.12 m). The increase in daily values of PET for corn (Fig. 4.3.1) during the growing season is higher than the increasing trend seen for cotton (Fig. 4.3.2). Daily values of PET and ET0 were summed to get seasonal values for all the crops. The seasonal PET and ET0 for all the fields in the study for the 2006 and 2007 growing seasons are presented in Table 4.3.1 and Table 4.3.2 respectively. 74 Fig. 4.3.1. Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines for a center-pivot irrigated corn field (Field No. 24) in 2007. 15 ET (mm/day) PET ETo 10 5 0 80 100 120 140 160 180 Day of the Year 75 200 220 240 260 280 Fig. 4.3.2. Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines for a drip irrigated cotton field (Field No. 2) in 2007. 15 ET (mm/day) PET ETo 10 5 0 120 140 160 180 200 Day of the Year 76 220 240 260 280 Fig. 4.3.3. Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines for a furrow irrigated grain sorghum field (Field No. 15-3) in 2007. 15 ET (mm/day) PET ETo 10 5 0 100 120 140 160 180 200 Day of the Year 77 220 240 260 280 Fig. 4.3.4. Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines for a center-pivot irrigated forage sorghum field (Field No. 20-2) in 2007. 15 ET (mm/day) PET ETo 10 5 0 160 180 200 220 Day of the Year 78 240 260 280 Fig. 4.3.5. Comparison of potential evapotranspiration (PET) and reference evapotranspiration (ET0) calculated using the FAO-56 guidelines of a center-pivot irrigated pearl millet field (Field No. 26-1) in 2007. 15 ET (mm/day) PET ETo 10 5 0 160 180 200 220 Day of the Year 79 240 260 280 Table 4.3.1. Seasonal PET and ET0 values for all the fields in the study in 2006. The seasonal PET and ET0 values for each field are computed by summing the daily values of PET and ET0 for all the days in the growing season. Crop Field No PET (mm) PET (in) ET0 (mm) ET0 (in) 20-2 1209 48 845 33 22-2 1545 61 1040 41 24-1 1294 51 894 35 26-1 1607 63 1059 42 1-1 1098 43 1011 40 1-2 1098 43 1011 40 2 1028 40 962 38 3-1 1078 42 968 38 3-2 1078 42 968 38 6 986 39 917 36 12-2 935 37 909 36 13-1 1008 40 955 38 15-1 861 34 962 38 15-3 861 34 962 38 15-4 895 35 805 32 4-2(1) 766 30 622 24 4-2(2) 404 16 332 13 20-1 252 10 405 16 19-3 1248 49 1050 41 Corn Cotton Grain Sorghum Forage Sorghum Pearl Millet 80 Table 4.3.2. Seasonal PET and ET0 values for all the fields in the study in 2007. The seasonal PET and ET0 values for each field are computed by summing the daily values of PET and ET0 for all the days in the growing season. Crop Field No PET (mm) PET (in) ET0 (mm) ET0 (in) 20-1 849 33 785 31 24 1175 46 881 35 26-2 1086 43 799 31 27 829 33 659 26 1-1 914 36 846 33 1-2 914 36 846 33 2 910 36 838 33 3-2 888 35 789 31 6 845 33 778 31 11-1 865 34 778 31 12-1 839 33 778 31 15-1 860 34 793 31 15-4 861 34 793 31 12-2 736 29 717 28 15-3 902 36 821 32 18-2 851 33 785 31 Forage Sorghum 20-2 754 29 615 24 Pearl Millet 26-1 724 29 654 26 Corn Cotton Grain Sorghum 81 4.4. Crop Water Use 2007 growing season Corn In 2007 CWU was estimated for four corn fields in the study area. Three of the fields were center-pivot irrigated and one was drip irrigated. Values of the daily CWU estimated by the spectral crop coefficient method using [Eq.1.3] are presented in Fig. 4.4.1 through 4.4.4. Also presented in these figures are the CWU estimated by the regular crop coefficient method using [Eq.1.1]. During the early part of the growing season, CWU estimated by the Kc method was higher than the CWU estimated by the Ksc method. The difference in CWU estimated by these two methods decreased during the mid- and late growing seasons. For Field No. 20-1 (Fig. 4.4.1), the Ksc-based CWU was lower than the Kc-based CWU for the entire growing season. For Field Nos. 26-2 (Fig. 4.4.3) and 27 (Fig. 4.4.4), CWU estimates by both methods were approximately equal during the mid- and late growing seasons. For Field No. 24 (Fig. 4.4.2), the Ksc-based CWU was higher than the Kc-based CWU during the late growing season. The seasonal CWU estimated by Ksc and Kc methods for the corn fields in 2007 are presented in Fig. 4.4.5. As expected, the seasonal CWU for corn harvested for silage (Field Nos. 20-1 and 27) is smaller than the seasonal CWU of corn harvested for grain (Field Nos. 24 and 26-2). The average seasonal CWU for corn harvested for grain is 555 mm by the Ksc method and 723 mm by the Kc method. For corn harvested for silage, the average seasonal CWU by Ksc method is 473 mm and by Kc method is 669 mm. 82 Fig. 4.4.1. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 20-1 (center-pivot irrigated corn). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 80 100 120 140 160 180 Day of the Year 83 200 220 240 260 Fig. 4.4.2. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 24 (center-pivot irrigated corn). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 80 100 120 140 160 180 Day of the Year 84 200 220 240 260 280 Fig. 4.4.3. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 26-2 (center-pivot irrigated corn). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 80 100 120 140 160 180 Day of the Year 85 200 220 240 260 280 Fig. 4.4.4. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 27 (drip irrigated corn). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 80 100 120 140 160 Day of the Year 86 180 200 220 240 Fig. 4.4.5. Seasonal Crop Water Use (CWU) in mm estimated by the spectral crop coefficient (Ksc ) and regular crop coefficient (Kc ) methods for corn fields in 2007. Seasonal CWU is calculated by summing the daily values of CWU. Field Nos. 20-1 and 27 are harvested for silage. Field Nos. 24 and 26-2 are harvested for grain. 1000 Seasonal CWU (mm) K sc Ksc 800 648 560 549 600 Kc Kc 724 722 689 477 468 400 200 0 20-1 24 26-2 Field Number 87 27 In 2007, eddy covariance measurements were made for two corn fields in the study (Field No. 24 and Field No. 20-1). The eddy covariance measurements (corrected for soil evaporation) are considered as the actual values of CWU. Although eddy covariance measurements were collected for 2- to 3-week time periods from each field, the measurements were not used for those days when the wind direction was not from the south. Fig. 4.4.6 and Fig. 4.4.7 presents the CWU estimated by the Ksc, Kc, and eddy covariance methods for Field No. 20-1 and Field No. 24 respectively. Results of the Student’s t-test comparing the CWU by the Ksc method and eddy covariance measurements for Field No. 20-1 indicate that the Ksc-based estimates are not significantly different from the actual measurements of CWU (t = -0.137, 5 df, α = 0.05, p = 0.896). Since eddy covariance measurements include both transpiration and soil evaporation, a value of 1 mm/day was added to the Ksc-based CWU estimates to account for soil evaporation. This value was based on prior observations of soil evaporation in a center-pivot corn field. The results indicate that the CWU estimates by the spectral crop coefficient method are the same as the actual measurements of CWU. The CWU estimates by the regular crop coefficient method were compared against the actual field measurements of CWU from the eddy covariance method. The Student’s t test of the pairs of observations of CWU by these two methods indicates that the CWU estimates by these methods were significantly different (t = -3.478, 5 df, α = 0.05, p = 0.018). This suggests that the estimates of CWU by the Kc method are different from the actual field measurements of CWU for this field. Results of the Student’s t test comparing the CWU by the Ksc method and eddy covariance measurements for Field No. 24 indicate that the Ksc-based estimates are not 88 significantly different from the actual measurements of CWU (t = 2.169, 4 df, α = 0.05, p = 0.096). For Field No. 24, the measurements were made on days when the field had not been irrigated. Hence, the soil evaporation was considered negligible. The CWU estimates by the regular crop coefficient method were compared against the actual field measurements of CWU from the eddy covariance method. The Student’s t test of the pairs of observations of CWU by these two methods indicates that the CWU estimates by these methods were significantly different (t = -6.700, 4 df, α = 0.05, p = 0.003). The results indicate that the CWU estimates by the spectral crop coefficient method are the same as the actual measurements of CWU and the Kc- based CWU are different from the actual field measurements of CWU for this field. 89 Fig. 4.4.6. Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 20-1 in 2007. 12 Daily CWU (mm) K sc Ksc 10 Kc Kc 8 EC EC 6 4 2 0 200 201 202 203 Day of the Year 90 204 205 Fig. 4.4.7. Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 24 in 2007. 12 Daily CWU (mm) K sc Ksc 10 Kc Kc 8 EC EC 6 4 2 0 172 173 176 Day of the Year 91 177 189 Cotton Nine cotton fields under different irrigation management systems were selected for estimating CWU in 2007. Among these nine fields, three fields were drip irrigated (Field Nos. 1-1, 1-2 and 2) and three were furrow irrigated (Field Nos. 11-1, 15-1 and 154). Two fields were center-pivot irrigated (Field Nos.3-2 and 6), and one was dryland (Field No. 12-1). Examples of values of the daily CWU estimated by the spectral crop coefficient method using [Eq.1.3] and the regular crop coefficient method using [Eq.1.1] are presented in Fig. 4.4.8 through 4.4.13. As noticed in the case for corn, during the early part of the growing season, CWU estimated by the Kc method was higher than the CWU estimated by the Ksc method. During the late growing season, the CWU estimated by the Ksc method was higher than the CWU estimates by the Kc method. During the mid- season, for center-pivot and drip irrigated fields the difference in estimates of CWU by these methods was small. For the furrow and dryland fields, the Kc-based CWU was higher than the Ksc-based estimates of CWU. For fields that had the same planting dates (Field Nos. 1-1 and 1-2), the estimates of the CWU by the Kc method are the same irrespective of the particular growing conditions. Fields such as 1-1 and 1-2 are different sections of the same field. The daily estimates of CWU by the Kc method are the same for these fields, but Ksc method provided CWU values that were specific to each section of the field. The Ksc-based CWU estimates are different for these fields for the same day because the Ksc is site-specific. 92 Fig. 4.4.8. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 1-1 (drip irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 93 240 260 280 300 Fig. 4.4.9. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 1-2 (drip irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 94 240 260 280 300 Fig. 4.4.10. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 2 (drip irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 95 240 260 280 300 Fig. 4.4.11. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 6 (center-pivot irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 96 240 260 280 300 Fig. 4.4.12. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 11-1 (furrow irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 97 240 260 280 300 Fig. 4.4.13. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 12-1 (dryland cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 98 240 260 280 300 Fig. 4.4.14 presents the seasonal CWU for all the cotton fields in the study in 2007. In 2007, the seasonal of CWU for the drip irrigated fields (Field Nos. 1-1, 1-2, and 2) was approximately the same for all the fields by Kc method (479 mm average). The seasonal CWU of the three drip fields were different by the Ksc method. The highest CWU was calculated for Field No. 2 (490 mm). The average seasonal CWU for the drip irrigated fields was 414 mm by the Ksc method. For the furrow and center-pivot irrigated fields, the seasonal CWU by the Kc method was approximately the same (average 455 mm) for both. The Ksc-based CWU was approximately the same for both center-pivot irrigated fields (average 400 mm). Furrow irrigated fields showed large variations in seasonal CWU by the Ksc method. The average seasonal CWU for furrow irrigated fields was 266 mm. The seasonal CWU of the dryland field (272 mm) was higher than two furrow irrigated fields (11-1 and 15-4). 99 Fig.4.4.14. Seasonal Crop Water Use (CWU) in mm estimated by the spectral crop coefficient (Ksc ) and regular crop coefficient (Kc ) methods for cotton fields in 2007. Seasonal CWU is calculated by summing the daily values of CWU. Field Nos. 1-1, 1-2, and 2 are drip irrigated. Field Nos. 3-1 and 6 are center-pivot irrigated. Field Nos. 11-1, 15-1, and 15-4 are furrow irrigated. Field No. 12-1 is dryland. 600 Seasonal CWU (mm) Ks Ksc Kc Kc 400 200 0 1-1 1-2 2 3-1 6 Field Number 100 11-1 15-1 15-4 12-1 In 2007, eddy covariance measurements were made for the dryland cotton field, Field No. 12-1. Fig. 4.4.15 summarizes the CWU estimated by the Ksc, Kc, and eddy covariance methods for this field. The eddy covariance measurements were not used for those days when the wind direction was not from the south. Results of the Student’s t test comparing the CWU by the Ksc method and eddy covariance measurements for Field No. 12-1 indicate that the Ksc-based estimates are not significantly different from the actual measurements of CWU (t = -2.181, 9 df, α = 0.05, p = 0.06). The results indicate that the CWU estimates by the spectral crop coefficient method are the same as the actual measurements of CWU. The CWU estimates by the regular crop coefficient method were compared against the actual field measurements of CWU from the eddy covariance method. The Student’s t test of the pairs of observations of CWU by these two methods indicates that the CWU estimates by these methods are not significantly different (t = 0.750, 9 df, α = 0.05, p = 0.472). This suggests that the estimates of CWU by the Kc method are also same as the actual field measurements of CWU. 101 Fig. 4.4.15. Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 12-1 (dryland cotton) in 2007. 6 K sc Ksc Daily CWU (mm) Kc Kc EC EC 4 2 0 259 260 261 262 263 264 Day of the Year 102 265 266 271 272 Forage Sorghum The only forage sorghum field in the 2007 growing season was Field No. 20-2, which was center-pivot irrigated. Values of the CWU estimated by the Ksc method for this field are presented in Fig. 4.4.16. Since there were no published regular crop coefficients specific to forage sorghum, CWU was not estimated by the Kc method. Actual measurements of CWU were collected from this field by the eddy covariance method (Fig. 4.4.17). Result of the Student’s t test comparing the CWU by the Ksc method and eddy covariance measurements for this field indicates that the Ksc-based estimates are not significantly different from the actual measurements of CWU (t = 0.178, 9 df, α = 0.05, p = 0.863). This suggests that the Ksc method was accurate in estimating the CWU. The seasonal CWU estimated for this field by the Ksc method was 447 mm. 103 Fig. 4.4.16. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 20-2 (center-pivot irrigated forage sorghum). Crop Water Use (mm/day) 12 Ksc 10 8 6 4 2 0 160 180 200 220 Day of the Year 104 240 260 280 Fig.4.4.17. Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc) and eddy covariance (EC) methods for Field No. 20-2 (center-pivot irrigated forage sorghum) in 2007. 6 Ksc K sc Daily CWU (mm) EC EC 4 2 0 199 202 203 207 209 211 Day of the Year 105 212 213 215 216 Pearl Millet Field No. 26-1 was a center-pivot irrigated pearl millet field. Values of the daily CWU estimates by the Ksc method are presented in Fig. 4.4.18. This field was planted on 8 June 2007 and attained more than 90% GC in the month of August. This resulted in high Ksc values during the mid-growing season and CWU estimates close to PET. The seasonal CWU estimated for this field by the Ksc method was 464 mm. Grain Sorghum In 2007, CWU estimates were made for three grain sorghum fields, Field Nos. 122, 15-3 and 18-2. Field No. 18-2 was center-pivot irrigated, Field No. 15-3 was furrow irrigated, and Field No. 12 -2 was dryland. Fig. 4.4.19 through 4.4.21 shows the CWU estimates for these fields by the Ksc and Kc methods. For all the fields, daily CWU estimates by the Kc method were higher than corresponding CWU estimates by the Ksc method for most part of the growing season. The difference in CWU estimates by these two methods was large for the dryland field. Since the Ksc was specific to a field, the CWU estimates by the Ksc method for the dryland field were significantly lower as compared to other fields due to the sparse GC. The average difference in seasonal CWU estimated by the Kc method for these fields was only about 25 mm. The average difference in seasonal CWU estimated by the Ksc method was approximately 125 mm. The lowest seasonal CWU estimated by the Ksc method was for the dryland field (261 mm). 106 Fig. 4.4.18. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method are plotted versus the day of the year for Field No. 26-1 (center-pivot irrigated pearl millet). Crop Water Use (mm/day) 12 Ksc 10 8 6 4 2 0 160 180 200 220 Day of the Year 107 240 260 280 Fig. 4.4.19. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 12-1 (grain sorghum-dryland). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 10 Ksc Kc 8 6 4 2 0 120 140 160 180 200 Day of the Year 108 220 240 260 280 Fig. 4.4.20. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 15-3 (grain sorghum-furrow irrigated). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 10 Ksc Kc 8 6 4 2 0 100 120 140 160 180 200 Day of the Year 109 220 240 260 280 Fig. 4.4.21. Daily estimates of Crop Water Use (CWU) in 2007 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 18-2 (center-pivot irrigated grain sorghum). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 10 Ksc Kc 8 6 4 2 0 100 120 140 160 180 200 Day of the Year 110 220 240 260 280 2006 growing season Corn In 2006, CWU was estimated for four center-pivot irrigated corn fields (Field Nos. 20-2, 22-2, 24-1, and 26-2). Results of the daily CWU estimated by the spectral crop coefficient and regular crop coefficient methods are presented in Fig. 4.4.22. As noted for the 2007 season, during the early and late parts of the growing season, CWU estimated by the Kc method was higher than the CWU estimated by the Ksc method. The difference in CWU estimated by these two methods decreased during the mid- and late growing seasons. For all the fields, the CWU values estimated by both methods were approximately equal during the mid-growing season. For Field No. 26-2, the Ksc-based CWU produced positive values of CWU for the last portion of the growing season as compared to the Kc- based CWU estimates, which were zero. For Field No. 22-2, both Ksc and Kc-based CWU estimates were zero during the last portion of the growing season. 111 Crop Water Use (mm/day) Fig. 4.4.22. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 20-2 (center-pivot irrigated corn). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. 20 18 16 14 12 10 8 6 4 2 0 100 Ksc Kc 120 140 160 180 Day of the Year 112 200 220 240 Crop Water Use (mm/day) Fig. 4.4.23. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 22-2 (center-pivot irrigated corn). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. 20 18 16 14 12 10 8 6 4 2 0 100 Ksc Kc 120 140 160 180 200 Day of the Year 113 220 240 260 280 Crop Water Use (mm/day) Fig. 4.4.24. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 24-1 (center-pivot irrigated corn). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. 20 18 16 14 12 10 8 6 4 2 0 100 Ksc Kc 120 140 160 180 Day of the Year 114 200 220 240 260 Crop Water Use (mm/day) Fig. 4.4.25. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 26-2 (center-pivot irrigated corn). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. 20 18 16 14 12 10 8 6 4 2 0 100 Ksc Kc 120 140 160 180 200 Day of the Year 115 220 240 260 280 Fig. 4.4.26 presents the seasonal CWU estimated by Ksc and Kc methods for the 2006 growing season. Among these 4 fields, two (Field Nos. 20-2 and 24-1) were harvested early for silage. Hence, the seasonal CWU for those fields were smaller than the CWU of other fields. The average seasonal CWU for the fields harvested for silage was 691 mm by the Ksc method and 852 mm inches by the Kc method. The seasonal CWU calculated for the two corn fields harvested for grain (Field Nos. 22-2 and 26-2) were approximately the same (average 922 mm) same by the Kc method. The Ksc-based estimate of seasonal CWU of Field No. 26-2 was 98 mm more than Field No. 22-2, which shows the ability of this method to distinguish between seemingly similar fields. The average seasonal CWU for corn harvested for grain was 753 mm and 896 mm by the Ksc and Kc methods, respectively. 116 Fig.4.4.26. Seasonal Crop Water Use (CWU) in mm estimated by the spectral crop coefficient (Ksc ) and regular crop coefficient (Kc ) methods for corn fields in 2006. Seasonal CWU is calculated by summing the daily values of CWU. Field Nos. 20-2 and 24-1 were harvested for silage. Field Nos. 22-2 and 262 are harvested for grain. 1200 Seasonal CWU (mm) K sc Ksc 1000 918 830 800 873 786 874 926 719 663 600 400 200 0 20-2 22-2 24-1 Field Number 117 26-2 Kc Kc Cotton Ten cotton fields under different irrigation management systems were selected for estimating CWU in 2006. Among these ten fields, three fields were drip irrigated (Field Nos. 1-1, 1-2 and 2) and three were center-pivot irrigated (Field Nos. 3-1, 3-2 and 6). Two fields were furrow irrigated (Field Nos.15-1 and 15-3), and the remaining two fields were dryland (Field No. 12-1 and 13-1). Values of the daily CWU estimated by the spectral crop coefficient method using [Eq.1.3] and the regular crop coefficient method using [Eq.1.1] are presented in Fig. 4.4.27 through 4.4.32. Except for the drip irrigated fields, Kc-based estimates of CWU for the cotton fields were larger than the Ksc-based estimates. The difference between the Ksc-based CWU estimates and Kc based CWU estimates were largest during the mid-growing season. The CWU estimates for the drip irrigated fields followed the same trend as noted in the case of corn. During the early part of the growing season, CWU estimated by the Kc method was higher than the CWU estimated by the Ksc method. During the late growing season, the CWU estimated by the Ksc method was higher than the CWU estimates by the Kc method. During the mid- season, the difference in estimates of CWU by these methods was small. For fields that had the same planting dates (Field Nos. 1-1 and 1-2), the estimates of CWU by the Kc method were the same for the entire growing season. As observed in the case of corn, the Ksc-based CWU estimates were different for these fields for the same day, again showing the ability of this method to distinguish between seemingly similar fields. 118 Fig. 4.4.27. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 1-1 (drip irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 119 240 260 280 300 Fig. 4.4.28. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 1-2 (drip irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 120 240 260 280 300 Fig. 4.4.29. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 2 (drip irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 121 240 260 280 300 Fig. 4.4.30. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 3-1 (center-pivot irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 122 240 260 280 300 Fig. 4.4.31. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 15-1 (furrow irrigated cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 123 240 260 280 300 Fig. 4.4.32. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 13-1 (dryland cotton). Also presented in this figure are the daily estimates of CWU by the regular crop coefficient (Kc ) method versus the day of the year. Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 124 240 260 280 300 Fig. 4.4.33 presents the seasonal CWU for the cotton fields in 2006. The seasonal CWU estimated by the Kc method ranged from 501 to 544 mm, while the Ksc based estimates showed a wider range in CWU from 156 to 495 mm. The average seasonal of CWU values for the drip irrigated fields by Kc method was 510 mm. The seasonal CWU of the three drip fields estimated by the Ksc method was approximately the same (average 483 mm), indicating that these fields indeed had comparable crop growth. For the centerpivot irrigated fields, the seasonal CWU by the Kc method was approximately the same (average 508 mm) for all the fields. The Ksc-based CWU for the center-pivot irrigated fields ranged from 296 mm (Field No. 3-2) to 385 mm (Field No. 6), and the average seasonal CWU for center-pivot irrigated fields was 342 mm. Furrow irrigated fields had the same Kc-based seasonal CWU (506 mm). The average seasonal CWU calculated by the Ksc method for furrow irrigated fields was 262 mm. The seasonal CWU calculated by the Ksc method was small for the dryland fields (156 and 183 mm), but the Kc based estimates showed seasonal CWU comparable to other irrigated fields (average 483 mm). Again the Ksc-based CWU estimates were site-specific and better able to handle nonoptimum growing conditions. 125 Fig. 4.4.33. Seasonal Crop Water Use (CWU) in mm estimated by the spectral crop coefficient (Ksc ) and regular crop coefficient (Kc ) methods for cotton fields in 2006. Seasonal CWU is calculated by summing the daily values of CWU. Field Nos. 11, 1-2, and 2 are drip irrigated. Field Nos. 3-1, 3-2, and 6 are center-pivot irrigated. Field Nos. 15-1 and 15-3 are furrow irrigated. Field Nos. 12-2 and 13-1 are dryland. The CWU by Kc method is approximately the same for all the fields, while the Ksc-based CWU are different for each field. 600 Seasonal CWU (mm) K sc Ksc Kc Kc 400 200 0 1-1 1-2 2 3-1 3-2 6 Field Number 126 15-1 15-3 12-2 13-1 In 2006, eddy covariance measurements were made for two cotton fields (Field Nos. 2 and 13-1). Fig. 4.4.34 presents the CWU estimated by the Ksc, Kc, and eddy covariance methods for Field No. 13-1. The eddy covariance measurements were not used for those days when the wind direction was not from the south. Results of the Student’s t test comparing the CWU by the Ksc method and eddy covariance measurements for Field No. 13-1 indicate that the Ksc-based estimates are not significantly different from the actual measurements of CWU (t = -.289, 10 df, α = 0.05, p = 0 .18). The CWU estimates by the regular crop coefficient method were also compared against the actual field measurements of CWU. Student’s t test of the pairs of observations of CWU by these two methods indicates that the CWU estimates are significantly different (t = -3.85, 10 df, α = 0.05, p = 0.003). These results suggest that the estimates of CWU by the Ksc method were the same as field measurements of CWU using the eddy covariance method. As in previous analyses, the Kc method failed to provide CWU estimates comparable to the actual field measurements. Fig. 4.4.35 presents the CWU estimated by the Ksc, Kc, and eddy covariance methods for Field No. 2. In this case, the CWU estimates by the Ksc method and actual measurements were found to be significantly different for this field (t = 3.85, 16 df, α = 0.05, p = 0.001). Student’s t test of the pairs of observations of CWU estimates of Kc and eddy covariance methods indicates that the CWU estimates by these methods are significantly different (t = 3.65, 16 df, α = 0.05, p = 0.002). The results show that the Ksc method tended to over-predict the daily estimates of CWU for this field. Although one might expect this field to be non-stressed, the results suggest that this field might not 127 have been well-acclimated to the growing conditions, so that the stress factor Fs in [Eq.1.2] was not 1. 128 Fig. 4.4.34. Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 13-1 (dryland cotton) in 2006. 10 K sc Ksc Kc Kc Daily CWU (mm) 8 EC EC 6 4 2 0 188 189 190 191 192 193 228 Day of the Year 129 229 230 235 236 Fig. 4.4.35. Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc), regular crop coefficient (Kc), and eddy covariance (EC) methods for Field No. 2 (drip irrigated cotton) in 2006. 10 Ksc K sc Kc Kc Daily CWU (mm) 8 EC EC 6 4 2 0 180 181 182 183 184 207 209 210 211 212 249 Day of the Year 130 250 252 256 257 258 Pearl Millet As in 2007, there was only one pearl millet field (Field No. 19-3) in 2006, which was center-pivot irrigated. Values of the daily CWU estimates by the Ksc method are presented in Fig. 4. 4.36. This field was planted on 1 May 2006 and attained a maximum of 65% GC. This resulted in mid-season Ksc values that were low compared to the pearl millet field in 2007. The seasonal CWU estimated for this field by the Ksc method was 443 mm. Forage Sorghum In 2006, CWU was estimated for two fields, Field No. 20-1 and Field No. 4-2, which were center-pivot irrigated. Values of the CWU estimated by the Ksc method for Field No. 20-1 are presented in Fig. 4.4.37. CWU was not estimated by the Kc method since there were no published regular crop coefficients specific to forage sorghum in this region. The seasonal CWU estimated for this field by the Ksc method was 252 mm. Values of daily CWU estimates for Field No. 4-2 by the Ksc method are presented in Fig. 4.4.38. This field was harvested twice. The seasonal CWU estimated up to the first harvest was 385 mm. The seasonal CWU estimated for the second harvest was 242 mm. Grain Sorghum In 2006, CWU estimates were made for only one grain sorghum field (Field No. 15-4). This field was furrow irrigated. Fig. 4.4.39 shows the CWU estimates for this field by the Ksc and Kc methods. Except for few days in the growing season, the Kc-based estimates of CWU were larger than the Ksc-based CWU estimates. The seasonal CWU calculated by the Kc method was 456 mm, and by the Ksc method was 220 mm. 131 Fig. 4.4.36. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 19-3 (center-pivot irrigated pearl millet). Crop Water Use (mm/day) 12 10 Ksc 8 6 4 2 0 120 140 160 180 200 220 Day of the Year 132 240 260 280 300 Fig. 4.4.37. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 20-1 (center-pivot irrigated forage sorghum). Crop Water Use (mm/day) 14 12 Ksc 10 8 6 4 2 0 160 170 180 190 200 Day of the Year 133 210 220 230 240 Fig. 4.4.38. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 4-2 (center-pivot irrigated forage sorghum). Field No. 4-2 was harvested twice in 2006. Crop Water Use (mm/day) 16 Ksc First crop Ksc Second crop 14 12 10 8 6 Harvest 4 2 0 120 140 160 180 200 220 Day of the Year 134 240 260 280 300 Fig. 4.4.39. Daily estimates of Crop Water Use (CWU) in 2006 determined by the spectral crop coefficient (Ksc ) method plotted versus the day of the year for Field No. 15-4 (furrow irrigated grain sorghum). Crop Water Use (mm/day) 12 Ksc Kc 10 8 6 4 2 0 120 140 160 180 200 Day of the Year 135 220 240 260 280 4.5. Comparison of CWU Comparison of the CWU for cotton fields that were planted to cotton in both 2006 and 2007 shows year to year differences (Fig. 4.5.1). The rainfall in 2006 was much lower during most of the growing season compared to the rainfall in 2007 (Fig. 4.5.2). Reduced rainfall is associated with drier air and dry air enhances evapotranspiration under well-watered conditions (Allen, 1999). This was observed in the current study also. Since 2006 was a warm, dry year, the CWU values estimated for drip irrigated cotton fields (Field Nos. 1-1 and 1-2) were larger compared to the seasonal CWU estimates in 2007. For Field No. 2 (drip cotton), the seasonal CWU in 2006 and 2007 were approximately the same. For the center-pivot (Field Nos. 3-1 and 6) and furrow (Field No. 15-1) cotton fields, the CWU estimated in 2007 was higher than in 2006. Similar kinds of results were obtained for Field No. 24-1 that was planted to corn in 2006 and 2007. The seasonal CWU of corn was 719 mm in 2006. In 2007, the seasonal CWU of corn in this field was less than in 2006 (549 mm). This indicates that the irrigation on these fields was significantly supplemented by rainfall in 2007, and alone was not sufficient to support the evapotranspiration demand in 2006. In 2007, these fields received ample amounts of rainfall in each month of the growing season. This increased availability of water caused an increase in CWU for these fields in 2007. In general, the drier conditions in 2006 associated with reduced rainfall resulted in greater CWU by fields in the study. Greater humid-ity, which has a strong effect on evaporation through vapor pressure deficit, generally reduced CWU in 2007. 136 Fig. 4.5.1. Comparison of Crop Water Use (CWU) determined by the spectral crop coefficient (Ksc) method for fields that were planted to cotton in both 2006 and 2007. Field Nos. 1-1, 1-2 and 3 were drip irrigated, Field Nos. 3-1 and 6 were centerpivot irrigated, and Field No. 15-1 was furrow irrigated. Seasonal CWU (inches) 600 495 468 400 2006 2007 485 490 401 393 358 385 397 344 327 224 200 0 1-1 1-2 2 3-1 Field No 137 6 15-1 Fig. 4.5.2. Monthly average rainfall data for 2006 and 2007 recorded at the mesonet weather station in Plainview, TX. 120 2006 2007 Rainfall (mm) 100 80 60 40 20 0 Jan Feb mar Apr May Jun Jul Month 138 Aug Sep Oct Nov Dec The average seasonal CWU values estimated by the Ksc and Kc methods for cotton fields under different irrigation management systems for 2006 are presented in Fig. 4.5.3. The average seasonal CWU estimated by the Kc method is approximately the same for all the fields irrespective of the irrigation conditions, since the value of the regular crop coefficients is fixed for a given crop (Allen et al., 2004). As hypothesized, the spectral crop coefficient was able to capture the variability in crop growth and its effect on water use for individual fields. The Ksc-based estimates of seasonal CWU followed the trend: drip > center-pivot > furrow > dryland. For the irrigated fields, this trend reflects the relative efficiencies of the irrigation systems. The average seasonal CWU values estimated by the Ksc and Kc methods for cotton fields for 2007 are presented in Fig. 4.5.4. As observed in 2006, the average seasonal CWU estimated by the Kc method is approximately the same for all the fields irrespective of the irrigation conditions. The Ksc method showed comparable seasonal estimates for the drip and center-pivot irrigated fields. The additional rainfall received in 2007 compared to 2006 caused the center-pivot irrigated cotton to grow as well as the drip irrigated fields. An interesting observation in 2006 that the Ksc method was able to show was that the dryland field was growing as well as the furrow irrigated fields. This is also observed in the field during frequent field visits. This is strong evidence that the spectral crop coefficients are superior to the regular crop coefficients in capturing the variability in growing conditions in the filed, thus providing more accurate estimates of CWU. It also shows the relative inefficiency of furrow irrigation. 139 Fig. 4.5.3 Comparison of seasonal Crop Water Use (CWU) determined by the spectral crop coefficient (Ksc) and regular crop coefficient (Kc) methods averaged for all cotton fields in the study by irrigation type in 2006. Average values represent results from 3 drip irrigated, 3 center-pivot irrigated, 2 furrow irrigated and 2 dryland cotton fields. 600 Seasonal CWU (mm) K sc Ksc Kc Kc 400 200 0 Drip Center-pivot Furrow Irrigation type 140 Dryland Fig. 4.5.4 Comparison of seasonal Crop Water Use (CWU) determined by the spectral crop coefficient (Ksc) and regular crop coefficient (Kc) methods averaged for all cotton fields in the study by irrigation type in 2007. Average values represent results from 3 drip irrigated, 2 center-pivot irrigated, 3 furrow irrigated and 1 dryland cotton fields. 600 Seasonal CWU (mm) K sc Ksc Kc Kc 400 200 0 Drip Center-pivot Furrow Irrigation type 141 Dryland Fig. 4.5.5 presents the average seasonal CWU calculated for all the fields in the study by the Ksc method for 2006 and 2007. In 2007, the seasonal CWU of corn was the highest. In 2006, the seasonal CWU followed the trend: corn > pearl millet > forage sorghum > grain sorghum > cotton. In 2007, the seasonal CWU followed the trend: corn > pearl millet ≈ forage sorghum > grain sorghum ≈ cotton. Averaged over the two years, the lowest CWU in the study was for dryland grain sorghum. This confirms the general observation that grain sorghum is a well-adapted crop for this region. 142 Fig. 4.5.5 Comparison of seasonal Crop Water Use (CWU) determined by the spectral crop coefficient (Ksc) method averaged for all fields in the study by crop in 2006 and 2007. In 2006, average values represent ten cotton fields, four corn fields, one grain sorghum field, three forage sorghum fields, and one pearl millet field. In 2007, average values represent nine cotton fields, four corn fields, three grain sorghum fields, one forage sorghum field, and one pearl millet field. 800 Seasonal CWU (mm) 2007 2006 600 400 200 0 Cotton Corn Grain Forage Sorghum Sorghum 143 Pearl Millet 4.6. Evaluation of the stress factor In chapter 1, it was hypothesized that for a crop acclimatized to its environment, the stress factor Fs in [Eq.1.2] should be approximately 1. This hypothesis can be evaluated from results of this study. Values of CWU estimated by the spectral crop coefficient versus the corresponding field-based actual observations of CWU by the eddy covariance method are plotted in Fig. 4.6.1. If Fs = 1, the points should cluster along the 1:1 line. The linear regression line through these points shows a small deviation from the 1:1 line (slope = 0.8, intercept = 0.1, with an R2 of 0.8). This deviation was primarily due to the data from the drip irrigated Field No. 2 (cotton) mentioned earlier in this discussion. The data from the other fields cluster along the 1:1 line. [Eq.1.2] states that CWU = GC x PET x Fs. By re-arranging this equation, Fs can be evaluated as: Fs = CWU / (PET x GC) Fig. 4.6.2 shows the distribution of the stress factor calculated from the data in Fig. 4.6.1, where the actual CWU comes from the eddy covariance measurements and PET x GC represents the spectral crop coefficient estimates of CWU. In this figure, it is observed that the data from Field No. 2 lies within the general scatter of points from the various fields. All the points tend to cluster along the Fs = 1 line, with a mean value of Fs of approximately 1. While more data is needed to make a conclusive determination, this analysis suggests that the hypothesis that the stress factor is close to 1 is supported. 144 Fig. 4.6.1. Daily Crop Water Use (CWU) estimated by the spectral crop coefficient (Ksc) method plotted versus corresponding values of daily CWU measured using eddy covariance. Diagonal line represents the 1:1 line. Dotted line represents the regression between estimated and measured CWU values. Results are presented for 2006 and 2007. 145 Fig. 4.6.2. Calculated values of the stress factor Fs plotted versus corresponding values of measured daily CWU using eddy covariance. Horizontal solid line represents Fs = 1. 146 Chapter V Conclusions The spectral crop coefficient (Ksc) is a novel method for estimating the water use of field crops. The most common method for estimating crop water use involves the use of reference evapotranspiration and an empirical crop coefficient developed for the regions of interest. The spectral crop coefficient is evaluated from actual remote sensing observations (satellite or aircraft imagery) of the field and thus is specific to the crop growth characteristics in the field. This method assumes that the crop is acclimated to its environment and determines CWU based on the product of potential evapotranspiration and remotely sensed crop ground cover. Specific conclusions drawn from this study are as follows: (1.) The use of the Perpendicular Vegetation Index (PVI) was effective as a means of evaluating crop ground cover (GC) from medium-resolution multispectral satellite imagery and high resolution aerial imagery. By plotting the scatterplot of the red and NIR digital counts for pixels from a satellite or aircraft image, it was routinely possible to determine the equation of the bare soil line used in calculating PVI. From that same scatterplot, it also was possible to identify the 100% GC point used to convert PVI to GC. Removing pixels corresponding to non-agricultural targets (such as buildings, paved surfaces, water bodies, clouds, and cloud shadows) from the remote sensing image data simplified the application of this procedure. Statistical analysis of estimated and field-measured GC from a large number of fields indicated that the procedure for estimating crop GC from remote sensing imagery was accurate so that, on average, 147 estimates of GC determined using this procedure should be within 6 percent of their true values. (2.) The use of the spectral crop coefficient method was effective in estimating daily values of CWU for fields in the study. The values of GC determined for days with remote sensing data could be used in a crop model to produce a simulation of GC for each day of the growing season. These daily values of GC represented values of the spectral crop coefficient Ksc used to estimate daily CWU from daily PET values calculated using the Penman-Monteith Equation and observed weather data. Comparison of the CWU calculated by the Ksc method with field-based measurements of CWU measured using the eddy covariance method showed that, with the exception of a single field, the estimated and measured CWU values were statistically the same. (3.) Summing the daily values of CWU calculated using the Ksc method resulted in a seasonal CWU estimate for each field in the study. The seasonal CWU estimated by this method showed the differences in water utilization by individual fields. Comparison of these seasonal CWU values among the fields in the study was effective in showing differences related to year, crop, and irrigation type. (4.) Comparing daily values of CWU estimated using the spectral crop coefficient method and the regular crop coefficient method recommended for crops in the Texas High Plains with actual measurements made using the eddy covariance method showed that the spectral crop coefficient method was consistently more accurate than the regular crop coefficient method. The regular crop coefficient method produced approximately the same results for each field of a given crop type. However, the spectral crop coefficient values developed from remotely sensed GC reflected the actual growth 148 of the crop in each field, so CWU estimates were unique to each field in the study. The regular crop coefficient method was not able to show the difference in CWU among neighboring fields with the same crop but different irrigation types. The Ksc method could show these differences, and could show the spatial variation in CWU within individual fields. (5.) It was hypothesized that for crops that were acclimated to their environment, the value of the stress factor Fs in the equation for calculating CWU using the Ksc method should be approximately 1. In this study, the stress factor could be evaluated from the ratio of actual CWU measured using eddy covariance to Ksc-based CWU estimates. Analysis of these data suggests that this hypothesis is correct. The spectral crop coefficient method developed in this study is an accurate, effective way to estimate the daily and seasonal CWU of agricultural crops. It is superior to the regular crop coefficient method recommended for crops in the Texas High Plains. It can easily be evaluated from medium-resolution multispectral satellite imagery and high resolution aerial imagery, and does not rely on empirical relationships. Additional research should be conducted to further explore the capabilities of this method. 149 REFERENCE CITED Allen, R. G., M. E. Jensen, J. L.Wright, and R. D. Burman. 1989. Operational estimates of evapotranspiration. Agron. J. 81, 650–662. Allen, R. G., M. Smith, and L. S. Pereira. 1994. An update for the definition of Reference Evapotranspiration. ICID Bulletin, 43 (2): p. 29. Allen, R.G., L.S. Pereira, D. Raes, and M. Smith. 1998. Crop evapotranspiration – Guidelines for computing crop water requirements. FAO Irrigation and Drainage Paper 56, p. 330. Allen, R.G. 1999. Concept paper - accuracy of predictions of project-wide evapotranspiration using crop coefficients and reference evapotranspiration in a large irrigation project. In Proc. United States Committee on Irrigation and Drainage Conference on “Benchmarking Irrigation System Performance Using Water Measurement and Water Balances”, San Luis Obispo, CA, 10–13 March 1999. Allen, R. G. 2000. Using the FAO-56 dual crop coefficient method over an irrigated region as part of an evapotranspiration intercomparison study. J. Hydro. 229, 27– 41. Allen, R G., M. Smith, L. S. Pereira, D. Raes, and J. L.Wright. 2000. Revised FAO Procedures for Calculating Evapotranspiration: Irrigation and Drainage Paper No. 56 for testing in Idaho. In Proc. Watershed Management and Operations Management. June 20-24, Fort Collins, CO. 150 Allen, R. G. 2003. Crop Coefficients. In Stewart, B. A and T. A Howell (eds.), Encyclopedia of Water Science. Marcel Dekker Publishers, New York. p. 87-90. Allen, R.G., I. A. Walter, R. Elliot, T. Howell, D. Itenfisu, and M. Jensen (eds). 2005. The ASCE Standardized Reference Evapotranspiration Equation. American Society of Civil Engineers Environmental and Water Resource Institute (ASCE-EWRI). P. 59. Barnes E. M., M. S. Moran, P. J. Pinter Jr, and T. R. Clarke. 1996. Multispectral Remote Sensing and Site-Specific Agriculture: Examples of Current Technology and Future Possibilities. In Proc. of the 3rd International Conference on Precision Agriculture. June 23-26, Minneapolis, Minnesota. ASA, 677 S. Segoe Rd., Madison, WI 53771, USA. p. 843-854. Bashir, M. A., T. Hata, A. W. Abdelhadi, H. Tanakamaru and A. Tada. 2006. Satellitebased evapotranspiration and crop coefficient for irrigated sorghum in the Gezira scheme, Sudan. Hydrology and Earth System Sciences Discussions, 3 (2), 793817. Bausch, W. C., and C. M. U. Neale, 1987. Crop coefficients derived from reflected canopy radiation: A concept. Trans. ASAE., 30(3):703–709. Bausch, W. C., and C. M. U. Neale, 1989. Spectral inputs improve corn crop coefficients and irrigation scheduling. Trans. ASAE. 32(6):1901–1908. Bausch, W.C. 1993. Soil background effects on reflectance-based crop coefficients for corn. Remote Sen. Environ. 46(2):213–222. Bausch, W.C. 1995. Remote-sensing of crop coefficients for improving the irrigation scheduling of corn. Agric. Water Manage. 27(1):55–68. 151 Benli. B., S. Kodal, A. Iibeyi, and H. Ustun. 2006. Determination of evapotranspiration and basal crop coefficient of alfalfa with a weighing lysimeter. Agric. Water Manage. 81 (3), 358-370. Bouman, B. A. M., D. Unek, and A. J. Haverkort. 2006. The estimation of ground cover of potato by reflectance measurements. Potato Research, 35 (2), 111-125. Brown, P.W., C.F. Mancino, M.H. Young, T.L. Thompson, P.J. Wierenga and D.M. Kopec. 2001. Penman Monteith crop coefficients for use with desert turf systems. Crop Science, 41:1197-1206. Carlson, T. N., E. M. Perry and T. J. Schmugge. 1990. Remote estimation of soil moisture availability and fractional vegetation cover for agricultural fields. Agric. For. Meteorol. 52, p. 45–69. Carlson, T. N., and D. A. Ripley. 1997. On the relation between NDVI, fractional vegetation cover, and leaf area index. Remote Sen. Environ. 62(3):241-252. Chander, G., and B. Markham. 2003. Revised Landsat-5 TM radiometric calibration procedures and postcalibration dynamic ranges. IEEE Tans. Geoscience and Remote Sens. 41(11):2674-2677. Choudhury, B. L., and S.B. Idso. 1985. An empirical model for stomatal resistance of field-grown wheat. Agric. For. Meteorol. 36, 65–82. Choudhury, B. J., N. U. Ahmed, S. B. Idso, R. J. Reginato, and C. S. T. Daughtry. 1994. Relations between evaporation coefficients and vegetation indices studied by model simulations. Remote Sen. Environ. Vol. 50, no. 1, 1-17. 152 Curran P. J., 1983. Multispectral remote sensing for the estimation of green leaf area index. Philosophical Transactions of the Royal Society of London, Series A: Mathematical, Physical, and Engineering Sciences, 309: 257–270. Doorenbos, J., and W. O. Pruitt. 1977. Crop water requirements. Irrigation and Drainage Paper No. 24, (rev.) FAO, Rome, Italy, p. 144. Duchemin . R., R. Hadria, S. Erraki, G. Boulet , P. Maisongrande, A.Chehbouni, R. Escadafal, J. Ezzahar, J. C. B. Hoedjes, M. H. Kharrou, S. Khabba, B. Mougenot, A. Olioso, J.-C odriguez, and V. Simonneaux. 2005. Monitoring wheat phenology and irrigation in Central Morocco: On the use of relationships between evapotranspiration, crops coefficients, leaf area index and remotelysensed vegetation indices. Agric. Water Manage. Vol. 79-1 p. 1-27. Er-Raki, S., A. Chehbouni, N. Guemouria, B. Duchemin, J. Ezzahar, and R. Hadria. 2007. Combining FaO-56 and ground-based remote sensing to estimate water consumptions of wheat crops in a semi-arid region. Agric. Water Manage. 87: 41–54. Foody, G.M., R. M. Lucas, P. J. Curran, and M. Honzak. 1997. Mapping tropical forest fractional cover from coarse spatial resolution remote sensing imagery. Plant Ecol. 131, pp. 143–154. Fox G. A., G. J. Sabbagh, S. W. Searcy and C. Yang. 2004. An Automated Soil Line Identification Routine for Remotely Sensed Image. Soil Sci. Soc. Am. J. 68:13261331. Fox G. A., and R. Metla. 2005. Soil property analysis using principal components analysis, soil line and regression models. Soil Sci. Soc. Am. J. 69:1782-1788. 153 Fox, G.A., G. J. Sabbagh, S.W. Searcy, and C. Yang. 2004. Evaluation of an automated soil line identification routine. Soil Sci. Soc. Am. J. 68:1326–1331 Fuchs, M. 2003. Evapotranspiration, Reference and potential. In Stewart, B. A., and T. A Howell (eds.), Encyclopedia of Water Science. Marcel Dekker Publishers, New York. p. 264-266. Goel. N. S., and T. Grier. 1986. Estimation of canopy parameters for inhomogeneous vegetation canopies from reflectance data. II. Estimation of leaf area index and percentage of ground cover for row canopies. Int. J. Remote Sens. Vol 7, No. 10, p.1263 – 1286. Gitelson, A. A., Y. J. Kaufman, J. R. Stark, and D. Rundquist. Novel algorithms for remote estimation of vegetation fraction. Remote Sens. Environ. 80(1):76-87. Glenn, E. P., Huete, A. R., Nagler, P. L., K. K. Hirschboeck, and P. Brown. 2007. Integrating remote sensing and ground methods to estimate evapotranspiration. Critical Reviews in Plant Sciences, 26:3, 139 – 168. Gutman, G., and A. Ignatov, 1998. The derivation of the green vegetation fraction from NOAA/AVHRR data for use in numerical weather prediction models. Int. J. Remote Sens. 19, 1533–1543. Heilman, J.L., W. E. Heilman, and D. G. Moore. 1982. Evaluating the crop coefficient using spectral reflectance. Agron. J. 74:967-971. Hirano, Y, Y. Yasuoka , and T. Ichinose. 2004. Urban climate simulation by incorporating satellite-derived vegetation cover distribution into a mesoscale meteorological model. Theoretical and Applied Climatology. Vol. 79, Nos. 3-4, pp. 175-184. 154 Howell, T. A., S. R. Evett, J. A. Tolk, and A. D. Schneider. 2004. Evapotranspiration of Full-, Deficit-Irrigated, and Dryland Cotton on the Northern Texas High Plains. J. Irrig. and Drain. Engg. 130 (4), 277-285. Howell, T. A., S. R. Evett, J. A. Tolk, K. S. Copeland, D. A. Dusek, D, and P. D. Colaizzi. 2006. Crop coefficients developed at Bushland, Texas for corn, wheat, sorghum, soybean, cotton, and alfalfa. In Proc. World Water and Environmental Resources Congress. Examining the Confluence of Environmental and Water Concerns, May 21-25, 2006, Omaha, Nebraska. 2006 CDROM. Huete, A.R., R. D. Jackson and D.F. Post. 1985. Spectral response of a plant canopy with different soil backgrounds. Remote Sens. Environ.17, 37–53. Huete, A. R. 1988. A soil-adjusted vegetation index (SAVI). Remote Sens. Environ. 25:295-309. Hunsaker, D.J. 1999. Basal crop coefficients and water use for early maturity cotton. Trans. ASAE. 42(4):927-936. Hunsaker, D.J., P.J. Pinter Jr., E.M. Barnes, and B.A. Kimball. 2003. Estimating cotton evapotranspiration crop coefficients with a multispectral vegetation index. Irrigation Sci. 22(2):95-104. Hunsaker, D. J., P. J. Pinter Jr., and B.A. Kimball. 2005. Wheat basal crop coefficients determined by normalized difference vegetation index. Irrigation Sci. 24(1):114. Jackson, R. D., S. B. Idso, R. J. Reginato, and P. J. Pinter. 1980. Remotely sensed crop temperatures and reflectances as inputs to irrigation scheduling. Irrigation and 155 Drainage Special Conference Proc., 23-25 July, Boise, Idaho, ASCE Newyork, p. 390-397. Jensen, M. E., R. D. Burman, and R. G. Allen. 1990. Evapotranspiration and irrigation water requirements, ASCE Manual vol. 70, American Society of Civil Engineers, New York. p. 332. Kauth, R. J., and G. S. Thomas. 1976. The tasseled cap -- a graphic description of the spectral-temporal development of agricultural crops as seen in Landsat. In Proc. Symposium on Machine Processing of Remotely Sensed Data, West Lafayette, Indiana, June 29 -- July 1, p. 41-51. Ko, J., S. J. Maas, R. J. Lascano, and D. Wanjura. 2005. Modification of the GRAMI model for cotton. Agron. J. 97:1374-1379. Ko, J., S. J. Maas, S. Mauget, G. Piccinni and D. Wanjura. 2006. Modeling waterstressed cotton using within-season remote sensing data. Agron. J. 98:1600-1609. Krieg D. R. Cotton water relations. Special Report 198: In Proc. 2000 Cotton Research Meeting and Summaries of Cotton Research in Progress. p. 7-15. Maas, S. J. 1993a. Parameterized model of gramineous crop growth: I. Leaf area and dry mass simulation. Agron. J. 85:348-353. Maas, S. J. 1993b. Parameterized model of gramineous crop growth: II. Within-season simulation calibration. Agron. J. 85:354-358. Maas, S. J. 1998. Estimating cotton canopy ground cover from remotely sensed scene reflectance. Agron. J. 90, pp. 384–388. Maas, S. J. 2000. Linear mixture modeling method for estimating cotton canopy ground cover using satellite multispectral imagery. Remote Sens. Environ. 72, 304–308. 156 Maas, S. J. 2001. Use of yield prediction models in the Yield Tracker project. Abstracts, Annual Meetings, Amer. Soc. Agronomy. Charlotte, NC. (CD-ROM) Maas, S. J., R. J. Lascano, and D. E. Cooke. 2002. YieldTracker: A Yield Mapping and Prediction Information Delivery System. In Proc., IFAFS Workshop. (CD-ROM) Maas, S. J., R. J. Lascano, and D. E. Cooke. 2003. Web-based Yield Prediction Information Delivery System. In Proc., Integrated Biological Systems Conf., San Antonio, TX. (http://beaumont.tamu.edu/conference/presentation.asp) Maas, S. J., R. J. Lascano, D. E. Cooke, C. Richardson, D. R. Upchurch, D. Wanjura, D. R. Krieg, S. Mengel, J. Ko, W. A. Payne, C. M. Rush, J. Brightbill, K. F. Bronson, W. Guo, and S. Rajapakse 2004. Within-season estimation of evapotrasnspiration and soil moisture in the High Plains using YieldTracker. In Proc., 2004 High Plains Groundwater Resources Conference. Lubbock, TX. pp. 219-226. Maas, S. J., N. Rajan, J. Duesterhaus, R. J. Lascano, and J. Ko. 2005. Remote sensing method for estimating daily crop water use. In Proc., 20th Biennial Workshop on Aerial Photography, Videography, and High Resolution Digital Imagery for Resource Assessment. ASPRS, Weslaco, TX. (CD-ROM) Marek, G. W., B. W. Auvermann, T. H. Marek, and K. Heflin. 2006. Evaluating the use of reference evapotranspiration data as an estimator of feedyard evaporation. ASAE Paper No. 064025. In Proc. 2006 International ASABE Annual Conference, Portland, Oregon: ASABE. 157 Monteith, J.L. 1965. Evaporation and environment. p. 205–234. In G.E. Fogg (ed.) The state and movement of water in living organisms. In Proc. Symp. Soc. Exp. Biol. Vol. 19. Academic Press, New York. Morsdorf, F., B. Kötz, E. Meier, K. I. Itten, and B. Allgower, Estimation of LAI and fractional cover from small footprint airborne laser scanning data based on gap fraction. Remote Sens. Environ. 104 (2006), p. 50. Neale C. M. U., H. Jayanthi, and J. L. Wright. 2005. Irrigation water management using high resolution airborne remote sensing. Irrig. and Drain. Systems, 19 (3-4), 321-336. Neale C. M. U., W. C Bausch and D. F. Heerman. 1989. Development of reflectance based crop coefficients for corn. Trans. ASAE, 28: 773-780. Neale, C. M. U., R. H. Ahmed, M. S. Moran, P. J. Pinter Jr, J. Qi, and T. R. Clarke. 1996. Estimating cotton seasonal evapotranspiration using canopy reflectance. In Proc. International Conference on Evapotranspiration and Irrigation Scheduling, 3–6 November, San Antonio, Texas North, P. R. J. (2002) Estimation of f(APAR), LAI, and vegetation fractional cover from ATSR-2 imagery. Remote Sens. Environ. 80: 114-121 Ormsby, J. P., B. J. Choudhury, and M. Owe. 1987, Vegetation spatial variability and its effect on vegetation indices. Int. J. Remote Sens. 8, 1301-1306. Ostle, B., and R. W. Mensing. 1975. Statistics in research. Iowa State Univ. Press, Ames, IA. Penman, H. L. 1948. Natural evaporation from open water, bare soil, and grass. Proc. Roy. Soc. London A193:120-146. 158 Pinter, P. J., J. L. Hatfield, J. S. Schepers, E. M. Barnes, M. S. Moran, C. S. T. Daughtry, and D. R. Upchurch. 2003. Remote Sensing for Crop Management. Photogramm. Eng. Remote Sens. 69 (6):647-664 Pickup, G., V. H. Chewings, and D. J. Nelson. 1993. Estimating changes in vegetation cover over time in arid rangelands using Landsat MSS data. Remote Sen. Environ. 43, 243-263 Purevdorj, T. S., R. Tateishi, T. Ishiyama and Y. Honda. 1998. Relationships between percent vegetation cover and vegetation indices. Int. J. Remote Sensing. 19(18): 3519-3535. Qi, J., R. C. Marsett, M. S. Moran, D. C. Goodrich, P. Heilman, Y. H. Kerr, G. Dedieu, and A. Chehbouni. 2000. Spatial and temporal dynamics of vegetation in the San Pedro river basin area. Agric. For. Meteorol. 105, 55–68. Richardson, A. J., and C. L Wiegand. 1977. Distinguishing vegetation from soil background information. Photogramm. Eng. Remote Sens. 43:1541-1552. Rajan. N., and S. J. Maas. 2006.Estimating Daily and Seasonal Crop Water Use of High Plains Cropping Systems Using Remote Sensing and Crop Modeling. In Proc. Southern Conservation Systems Conference, Amarillo TX, June 26-28 p.25-29. Ray, S. S., and V. K. Dadhwal. 2001. Estimation of crop evapotranspiration of irrigation command area using remote sensing and GIS. Agric. Water Manage. 49, pp. 239– 249. Raupach, M., and J. Finnigan. 1988. Single-layer models of evaporation from plant canopies are incorrect but useful, whereas multi-layer models are correct but useless. Aust. J. Plant Physiol. 15:705–716. 159 Ringersma, J., and A. F. S. Sikking. 2001. Determining transpiration coefficients of Sahelian vegetation barriers. Agroforestry Systems. 51(1): 1-9. Sakuratani, T. 1981. A heat balance method for measuring water flux in the stem of intact plants. J. Agric. Meteorol. 37:9–17. Small, C. 2001. Estimation of urban vegetation abundance by spectral mixture analysis. Int. J. Remote sensing. 22: 1305-1334. Suleiman, A. A., C. M. Tojo Soler, and, G. Hoogenboom. 2007. Evaluation of FAO-56 crop coefficient procedures for deficit irrigation management of cotton in a humid- climate. Agric. Water Manage. 91 (1-3), 33-42. Thornthwaite. C. W. 1948. An Method towards a Rational Classification of Climate. Geogr. Rev. Vol. 38, No. 1. pp. 55-94. Turner, D. P., W. B. Cohen, R. E. Kennedy, K. S. Fassnacht and J. M. Briggs. 1999. Relationships between Leaf Area Index and Landsat TM Spectral Vegetation Indices across Three Temperate Zone Sites. Remote Sen. Environ. 70:52–68 Wanjura, D. F., D. R. Upchurch, S. J. Maas, and J.C. Winslow. 2003. Spectral detection of emergence in corn and cotton. Precision Agriculture. 4(4):385-399. White, M. A., G. P. Asner, R. R. Nemani, J. L. Privette, and S. W. Running. 2000. Measuring fractional cover and leaf area index in arid ecosystems. Digital camera, radiation transmittance, and laser altimetry methods. Remote Sen. Environ. 74, 45–57 Wittich, K. P., and O. Hansing. 1995. Area-averaged vegetative cover fraction estimated from satellite data. Int. J. Biomet. Vol 38, No 4, pp. 209 -215. 160 Wright J. L. 1982. New evapotranspiration crop coefficients. J. Irrig. Drain. Div. ASCE, 108: 57 – 74. Wright J. R., and C. L. Hanson. 1990. Crop coefficients for rangeland. J. Range Manage. 43, pp. 482–485. Xiao, J., and A. Moody. 2005. A comparison of methods for estimating fractional green vegetation cover within a desert-to-upland transition zone in central New Mexico, USA. Remote Sen. Environ. 98(2-3): 237-250. Zeng. X., R. E. Dickinson, A. Walker, M. Shaikh, R. S. DeFries, and J. Qi, 2000. Derivation and evaluation of global 1-km fractional vegetation cover data for land modeling. J. Appl. Meteor. 39, 826–839. 161