Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
DEMONSTRATION: Development of the Hydrological Model in Volta River Basin, West Africa Yohei Sawada The University of Tokyo River and Environmental Engineering Laboratory 1 1, Introduction 2 1-1. Volta River Basin [ Barry et. al. (2005) ] 3 1-2. What kinds of information do we need for water resource management in Volta ? STAKEHOLDERS MODEL OUTPUT Industry Agriculture Dam Storage River Discharge households Wa nt to kn ow … Well Storage Ground Water Disaster (Flood , Drought) Soil Moisture Yielding Weather Prediction (rainfall) Land Productivity ⇒ When we develop the hydrological model that can reproduce 4 above valuables in regional scale, we would face some difficulties. 1-3-1. Spatial & Temporal Variety of Climatology Distribution of Rainfall in Volta River Basin [ Barry et. al. (2005) ] Seasonal Change of Rainfall by GPCP [ Hagos and Cook (2007) ] ⇒ The wet southern region and the dry northern contrast sharply. ⇒ West African monsoon dynamics is strongly related to water resource management in this region. 5 1-3-2. Land – Atmosphere Feedback [ Sawada (2011) ] ⇒ Land surface heat budget suddenly changes after monsoon onset. ⇒ Distribution of surface albedo and heat flux is supposed to drive not only local circulation but also larger general circulation. ( Charney 1975 , Taylor 2008 , Hagos and Zhang 20106) 1-3-3. Vegetation Dynamics 004 NDVI , Feb 2 004 NDVI , Sep 2 ⇒ Distribution of vegetation in West Africa has seasonal cycle. ⇒ This vegetation dynamics has the feedback to climate. ⇒ Vegetation dynamics should be considered in numerical simulation when you analyze the impact of climate change. ( Cox 2000 , Alo and Wang7 2010 ) 1-3-4. Inundation Effect ⇒ Inundation has a big impact to river discharge. ⇒ Considering inundation effect is essential to estimate the discharge of rivers on continent. [ @Amazon river, Alsdorf et. al. 2011] 8 1-3-5. Uncertainties of Future Projection of Climate Change 0 “Detailed, regional-scale research on the impact of, and vulnerability to, climate change and variability with reference to water is needed” (IPCC AR4) ferent GCMs if d 4 t a e n Ju n o Rainfall ⇒ But there are big uncertainties in the model 9 1-4. Summary of Scientific Challenges • Spatial & Temporal Variety of Climatology CALDAS • Land – Atmosphere Feedback ⇒ regional climate model coupled with land data assimilation system. • Vegetation Dynamics • Inundation Effect • Uncertainties of Future Projection of Climate Change WEB-DHM ⇒ distributed hydrological model coupled with dynamic vegetation model and inundation model. 10 PART_1 1-5. Entire Outline of the Study CALDAS Climate model with LDAS PART_2 An al yze …… West African Monsoon dynamics that drives spatial & temporal variety. Mechanism of Land – Atmosphere Feedback in West Africa RIVER DISCHARGE VS WEBDHM Distributed hydrological model GROUND WATER LEAF AREA INDEX MODEL DEVELOPMENT VS VS Ground observation GRACE satellite observation MODIS satellite observation Validation by using satellite & ground observation data PART_3 Future Projection Run WEBDHM by corrected GCM in CMIP3 Make use of validated system 11 PART_1 CALDAS Climate model with LDAS An al yze …… West African Monsoon dynamics that drives spatial & temporal variety. Mechanism of Land – Atmosphere Feedback in West Africa 2, Preliminary Demonstration –PART1- Analysis of West African Monsoon Dynamics 12 2-1. Methodology ; CALDAS [ Rasmy 2011] rk ewo m a r F l Mode ⇒ Using land data assimilation system, the capacity to estimate soil moisture is improved. ⇒ So, CALDAS is suitable to analyze land – atmosphere feedback. 13 2-2. Analysis of West African Monsoon Onset ⇒ By analyzing vertical and meridional circulation, and heating of atmosphere, we found there are two processes of monsoon onset. 14 2-3. Analysis of Land –Atmosphere Feedback and Its Contribution of Monsoon Onset ⇒ Strong sensible heat flux from land drives updraft on Sahel region. ⇒ And this shallow updraft is main driver of monsoon onset by heating atmosphere due to condensation of moisture. 15 PART_2 RIVER DISCHARGE VS WEBDHM Distributed hydrological model GROUND WATER LEAF AREA INDEX MODEL DEVELOPMENT VS VS Ground observation GRACE satellite observation MODIS satellite observation Validation by using satellite & ground observation data 3, Preliminary Demonstration –PART2- Validation of Distributed Hydrological Model, WEB-DHM 16 3-1. Methodology ; WEB-DHM [ Wang et. al. 2004 ] GBHM • Distributed representation of the spatial variation; • Slope-driven runoff generation and River Routing; • Groundwater dynamics Coupling SiB2 • Well formulated 1D simulation of water and energy fluxes in SVAT system • Good prediction system of photosynthesis and respiration. 17 3-1. Methodology ; WEB-DHM [ Wang et. al. 2004 ] + Flood Model • Formulate flood plain reservoir to consider inundation effects GBHM Coupling Dynamic Vegetation Model + • Formulate vegetation dynamics to calculate seasonal cycle of vegetation and get the future projection of distribution of it. SiB2 18 3-2-1. River Discharge (not considering an inundation effect) ⇒ The simulation without flood model doesn’t have the enough capacity to reproduce river discharge. 19 3-2-2. River Discharge (considering an inundation effect) ⇒ Flood model can improve the result. ⇒ Improving the quality of input dataset is needed. 20 3-3. Ground Water ⇒ WEB-DHM basin averaged ground water depth can reproduce its seasonal cycle. ⇒ GRACE satellite observation can make a good information about total water storage on land area.21 3-4. Leaf Area Index ⇒ WEB-DHM coupling with dynamic vegetation model can show the seasonal cycle of LAI. ⇒ In-situ observation is needed for a further investigation. 22 PART_2 RIVER DISCHARGE VS WEBDHM Distributed hydrological model GROUND WATER LEAF AREA INDEX MODEL DEVELOPMENT VS VS Ground observation GRACE satellite observation MODIS satellite observation Validation by using satellite & ground observation data PART_3 Future Projection Run WEBDHM by corrected GCM in CMIP3 Make use of validated system 4, Preliminary Demonstration –PART3- Future Projection 23 4-1. Methodology ; Selecting GCMs and Bias Correction for Future Projection in regional scale Scoring and Selection CMIP3 23 GCMS by comparing observations & reanalysis ↓ cccma_cgcm3_1 cccma_cgcm3_1_t63 Miroc_hires Rainfall – Bias Correction Other Forcings ( temperature, Radiation etc….) 1981-1992 Ground observed Rainfall WEB-DHM Bias corrected 1981-1992 GCM simulated Rainfall 2046-2058 GCM simulated Rainfall 24 4-2. Rainfall ( wet region ) ⇒ One of the models reproduce the tendency of drought on August 25 4-2. Rainfall ( wet region ) 26 4-2. Rainfall ( wet region ) ⇒ Generally, extreme event would increase in the future. 27 4-3. River Discharge ⇒ 2 models reproduce huge extreme river discharge compared with the past simulation case. ⇒ One of the models reproduce high low water discharge. 28 4-4. Leaf Area Index ⇒ Comparing past simulation, future projection shows the decrease of LAI. 29 MODEL OUTPUT River Discharge Ground Water Soil Moisture Weather Prediction (rainfall) Land Productivity 5, Conclusion 30 5, Conclusion 0 Regional climate model with land data assimilation system can contribute not only to realize accuracy weather forecast but to get scientific knowledge about the mechanism of climate system in west Africa. 0 Distributed hydrological model which include inundation model and dynamic vegetation model has the capacity to contribute to global & regional water resource management. 0 Future projection still has a big uncertainties, but our method makes it possible to start to discuss how to adapt to climate change in regional scale. Thank you for your listening ! 31 [email protected] APPENDIX 32 2-2-1. Model Input 1 - rainfall - 33 2-2-2. Model Input 2 - Elevation - ⇒ We use 90m DEM that is upscaled to 1km, same as model resolution. 34 2-2-3. Model Input 3 - Soil Type ⇒ FAO dataset ⇒ There are 124 soil type in the basin ⇒ The variety of soil types make it difficult to calibrate the model. 35 2-2-4. Model Input 4 - Meteorological Forcing 0 JRA 25 reanalysis dataset - for Past run – 0 Spatial resolution : 110km (T106L40) 0 6-hourly 0 CMIP3 Multi – Model database - for Future Projection – 0 About 20 GCMs is included. 36 4-2-1. Rainfall ( dry region ) ⇒ There are some gaps between GCMs. ⇒ It is difficult to derive a consistent tendency from future projection. 37 4-2-1. Rainfall ( dry region ) 38 4-2-1. Rainfall ( dry region ) ⇒ Temporal variability of maximum rainfall would increase in the dry region. 39