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STATISTICAL AND TREND ANALYSIS OF RAINFALL DATA IN KUCHING, SARAWAK FROM 1968-2010 Ambun Dindang, Azlai bin Taat, Phuah Eng Beng, Atifah binti Mohd Alwi, Alliscia Ak Mandai, Siti Fauziah binti Mat Adam, Farah Safura binti Othman, Dayang Norazila binti Awang Bima and Delan Lah. ABSTRACT This study is an attempt to analyze and determine the monthly, annual and seasonal trends of rainfall in Kuching based on the recorded rainfall data from the Kuching observation station in 1968 to 2010. The trend is obtained using regression linear analysis while the significance of the observed trend is calculated using Mann Kendall test. The statistical analysis was also carried out to determine the measure of central tendency and dispersion. The results showed an overall no statistical significant trend for annual and monthly long term rainfall data. All monsoon seasons showed insignificant statistical trend even though the Oct inter monsoon leans in the negative while the other monsoon favoured a positive trend. Keywords: Regression Linear Analysis, Mann Kendall Test, Rainfall, Trend 1. INTRODUCTION 1.1 Climate of Malaysia Malaysia has an equatorial climate characterized by uniform temperature, high humidity and copious rainfall. Uniform periodic changes in the wind flow patterns can be described the four seasons, namely, the Southwest monsoon, Northeast monsoon and two shorter periods of inter-monsoon seasons. The seasonal wind flow patterns coupled with the local topographic features determine the rainfall distribution patterns over the country. However, in recent years, several extreme rainfall events have been reported in Malaysia. For example, an extreme rainfall event occurred on 9-11 December 2004 caused severe flooding over the east coast of Peninsular Malaysia. Besides that, southern part of peninsular Malaysia also experienced the massive floods event in the late of December 2006 and in the middle of January 2007 due to heavy rainfall. In addition, according to previous study, 2009 was known as the extreme year for Sarawak which is two heavy rainfall episodes occurred in Sarawak in early 2009 causing severe floods that almost covered whole Sarawak (Hamdan, et.al, 2010). These events have raised concern promoting research on analyzing the rainfall trend and behaviour of daily rainfall to investigate whether these changes possibly due to climate change. 1.2 Evaluation Information and Researches on Rainfall Trend Analysis Statistics analysis from observations data show the changes in weather pattern over the decades can be used to identify climate change. Rainfall and temperature are often used as important climate parameters to determine changes in global climate. Based upon the Intergovernmental Panel on Climate Change (IPCC) Fourth Assessment Report (AR4), global temperatures have risen by about 0.74°C since the beginning of the 20th century. The global averaged temperature is the parameter that most clearly defines global warming. Rising sea level and decrease in snow and ice extent during summer are indications of global warming. There is a direct influence of global warming on changes in precipitation and heavy rain. From the Clausius-Clapeyron relation, water-holding capacity of atmosphere increase by about 7% per 1°C warming. This shows that the occurrence of global warming contributed to intensify extreme rainfall as well as the rainfall event. 1 Changes in behaviour of these climate indices have attracted a lot of attention from scientists and researchers throughout the world. Lots of studies have been conducted on the trend of the rainfall and temperature. Reviews of relevant research included, the study about the Turkish precipitation data trend (Partal and Kahya, 2006), investigation on the variability and trend of Summer Monsoon Rainfall over Bangladesh (Ahasan et al. 2010), application of Mann Kendall test to investigate rainfall trend in Orissa, India (Mondal et al. 2012), analysing the trend of precipitation data in Pieria Region (Karpouzos et al. 2010) and a study of annual rainfall trend for Southern Asia region (Manton et al. 2001). In addition, a lot of researches on the rainfall trend analysis were conducted especially in the temperate region and several in the tropic region. For the Southeast Asia region, Manton et al. (2001) found that annual rainfall in the Southeast Asia region decrease between 1961 and 1998. The number of rainy days is also found to decrease significantly throughout most of the countries of Southeast Asia. In Malaysia, there are several studies in investigate the behaviour and trend in daily rainfall data, for example, Suhaila et al. (2010) investigate the seasonal rainfall trend in peninsula Malaysia and Hashim et al. (2010) study the trend in rainfall data for Ipoh, Perak. However, a lot of studies on rainfall trend analysis need to be done especially in a small scale area to find out whether there is any significant climate change affecting that area. 1.3 Purpose of the Study This study is a preliminary attempt to observe and investigate the trend of the rainfall in Kuching, Sarawak. Monthly and seasonal rainfall data were analyzed to detect the variability and changes in the trend. 2 2. MATERIALS AND METHODS 2.1 Data Long- term data records are essential for detecting trends or changes. In this study, the observed daily and monthly rainfall data of Kuching during the period 1968-2010 (43 years) were obtained from the Climate Division of Malaysian Meteorological Department (MMD). Daily rainfall data has been summed into monthly and annual totals. For further analysis, the monthly rainfall data has been categorized according to four seasons, Northeast Monsoon (Nov-Mar), Southwest Monsoon (May-Sept), and two transition periods (Apr and Oct). 2.2 Study area Kuching City is located in western part of Sarawak state of Malaysia as shown in Figure 1. This capital city of Sarawak is a fast growing city experiencing rapid urbanization with a population of about six hundred thousand. Figure 1: Study area – Kuching City. 3 2.3 Methods The statistical analysis is used to determine the measure of central tendency (mean and range) and dispersion (standard deviation) for rainfall data of Kuching. For identifying the trend in the rainfall data, the statistical analysis of linear regression method is used. The results obtained are further verified by using a non-parametric Mann-Kendall test. Figure 2 shows the procedure of the analysis being applied in this study. Data preparation Linear Regression Analysis Mann-Kendall Test Analysis Seasonal Trend Annual and Monthly Trend Figure 2 : Procedure of the analysis applied in this study 2.3.1 Linear Regression Linear regression is one of the simplest methods to calculate the trend of data in time series. The equation of linear regression line is given by Y=a + bX, Where, x is the explanatory variable and Y is the dependent variable. The slope line is b, and a is the intercept (value of y when x=0). The slope of regression describes the trend whether positive or negative. In this study independent variable, Y is rainfall and explanatory variable X is year. 4 Linear regression requires the assumption of normal distribution. In this case, the null hypothesis is that the slope of the line is zero or there is no trend in the data. The significant of the slope show by the probability value (p-value) of it. In this study, Microsoft Excel was used to calculate the trend lines and statistical values of linear regression analysis .The pvalue from the analysis is test for the significant level α=0.05. The value of R-square (R2), or the square of the correlation coefficient from the regression analysis is used to show how strong the correlation and relationship between the variable X and Y. The value is a fraction between 0.0 - 1.0. A R2 value of 1.0 means that the correlation becomes strong and all points lie on a straight line. On the other hands, when R2 value of 0.0 means that there is no any correlation and no linear relationship between X and Y. 2.3.2 Mann-Kendall Test The Mann-Kendall test, is a non-parametric approach, has been widely used for detection of trend in different fields of research including hydrology and climatology (Ampitiyawatta and Guo, 2009). It is used for identifying trends in time series data. Each data value is compared to all subsequent data values. The initial value, S, is assumed to be 0 (no trend). If a data value from a later time period is higher than a data value from an earlier time period, S is incremented by 1. If the data value from later time period is lower than a data value from an earlier time period, S is decremented by 1. The net result of all such increments and decrements yield the final value of S. Mann Kendall statistic (S) is given by n −1 S = n ∑ ∑ sign ( x j − xk ) k =1 j = k +1 where: sign ( x j − x k ) = + 1 jika ( x j − x k ) > 0 0 jika ( x j − x k ) = 0 − 1 jika ( x j − x k ) < 0 5 The S statistic, in cases where the sample size n is larger than 10, is approximately normally distributed with the mean equal to 0. The variance statistic is given as: n n ( n − 1)( 2 n + 5 ) − ∑ t ( t − 1)( 2 t + 5 ) t Var ( S ) − 18 where t is the extent of any given ties. Then the test statistic, Zc is given below: S −1 Var ( S ) z= 0 S +1 Var ( S ) if S > 0 if S = 0 if S < 0 The presence of a statistically trend is evaluated using the Z value. A positive (negative) value of Z indicates an upward (downward) trend. The statistic Z has a normal distribution to test for either upward or downward trend at α level of significance (usually 5% with Z0.025=1.96), H0 is reject if the absolute value of Z is greater than Z1-α/2 (Rejected Ho: |Z|>Z1-α/2 ) where Z1-α/2 is the standard normal deviates and α is the significant level for the test. Probability value (p-value) from two-tailed test using the Z value also can be used to test the significant trend. If the p-value is greater than α, the null hypothesis (Ho: there is no trend in data series) is failed to reject. 6 3. RESULT AND DISCUSSION 3.1 Annual and Monthly Rainfall Analysis Figure 3: An average of annual rainfall in Kuching from 1968-2010 Figure 3 shows the long-term average pattern of the annual rainfall of Kuching. The annual mean rainfall over Kuching from 1968 to 2010 is 4214.5mm . The maximum rainfall was recorded in 1977 (5293.4 mm) while the minimum rainfall recorded in 1997 (2822.6mm). Figure 4: The Mean Monthly Rainfall of Kuching in 1968-2010 7 Figure 4, shows the mean monthly rainfall of Kuching during the period 1968-2010 (43 years). It shows that Kuching experiences unimodal mean monthly rainfall pattern throughout the year. The highest amount of average monthly rainfall was recorded in January (719.0mm) and contributes to 32% of annual rainfall, followed by December (11.48%) and February (11.35%), and the lowest was in July (201.4mm) with 4.78% of annual total followed by June ( 5.34% ) and August (5.57%). Rainfall decrease gradually from the month of January to July and start increases in the month of August to December. Table 1: Kuching statistical properties of annual and monthly rainfall from 1968-2010 Month Season Mean (mm) Minimum (mm) Maximum (mm) Range (mm) Standard Deviation (mm) Coeff. Variation Jan Feb Mar Apr May Jun July Aug Sep Oct Nov Dec Annual NE NE NE INT SW SW SW SW SW INT NE NE 719.0 478.3 348.8 278.5 251.6 225.2 201.4 234.6 270.4 359.2 364.1 483.6 4214.5 145.8 119.5 148.7 84.6 86.7 105.2 70.1 22.2 94.8 165.6 157.4 145 2822.6 1351.2 1274.5 748.4 503.2 431.8 542.2 385.2 546.5 451.4 625.2 600.8 880.8 5293.4 1205.4 1155 599.7 418.6 345.1 437 315.1 524.3 356.6 459.6 443.4 735.8 2470.8 281.8 226.6 139.9 102.8 74.5 85.4 78.5 106.4 99.7 120.2 104.2 148.0 562.4 0.39 0.47 0.40 0.37 0.30 0.38 0.39 0.45 0.37 0.33 0.29 0.31 0.13 Table 1 shows statistical properties of monthly and annual rainfall for Kuching. Generally, the monthly rainfall distribution in Kuching is variable. Coefficient of variation (ratio of standard deviation and mean) is suitable measure of variability of rainfall. The monthly coefficient of variation (CV) for this area lies between 0.29-0.47. The CV is highest during February (0.47), followed by August (0.45) and the least during November (0.29) and May (0.30). 8 Table 2: Regression Statistic results for annual and monthly rainfall Month Regression Equation R-square P-value Statistical significant Jan y=2.94x+654.3 0.02 0.40 No Feb y=0.65x+464.3 0.00 0.82 No Mar y=0.36x+340.8 0.00 0.84 No April y=0.40x+269.7 0.00 0.77 No May y=0.61x+238.2 0.01 0.51 No June y=1.44x+193.4 0.05 0.17 No July y=0.98x+179.9 0.02 0.32 No Aug y=0.26x+228.8 0.00 0.84 No Sept y=-0.07x+272.0 0.00 0.95 No Oct y=-0.63x+373.1 0.00 0.67 No Nov y=-1.23x+391.3 0.02 0.34 No Dec y=-0.30x+490.3 0.00 0.87 No Annual y=5.34x+4095.8 0.01 0.44 No The result of the linear regression and Mann- Kendall trend analysis is presented in Table 2 and Table 3 respectively. In these trend test, trend of rainfall for 43 years from January to December has been calculated for each month individually. The linear trend lines of the monthly rainfall shows decreasing trend in September, October, November and December and increasing trend for other months and annual rainfall data. Since the probability value (p-value) from regression analysis for the slopes of monthly and annual trend lines greater than the significant level α=0.05, the null hypothesis, H0: there is no trend in data, is fail to reject. That means, there is no statistical significant trend in the annual and monthly rainfall data for Kuching. The R-squared statistic also indicates a very weak relationship between the variables (rainfall) and year. To verify the results of linear trend lines, Mann-Kendall statistic, S, is used. Table 3 below shows the result from the Mann-Kendall trend analysis. From the value of S, the monthly rainfall trend from January to December shows the increasing trend except for August, October and November. The positive value of S also is an indicator of an increasing trend for annual rainfall. However, the result of annual and monthly p-value have shown that 9 there is no significant trend neither at 0.1, 0.01 nor 0.05 significant level, so that we cannot reject the null hypothesis H0 (no trend in the series). In other words, there is no significant trend in annual and monthly rainfall data for Kuching. Table 3: Mann-Kendall Statistic Result for annual and monthly rainfall Month Range (years) Z value p- value Trend 43 MK Statistic(S) 51 0.5233 0.6008 Increase Statistically Significant No Jan Feb 43 43 0.4395 0.6603 Increase No Mar 43 41 0.4186 0.6755 Increase No Apr 43 47 0.4814 0.6302 Increase No May 43 113 1.1721 0.2412 Increase No June 43 89 0.9210 0.3571 Increase No July 43 70 0.7221 0.4702 Increase No Aug 43 -31 -0.3140 0.7535 Decrease No Sept 43 3 0.0209 0.9833 Increase No Oct 43 -53 -0.5442 0.5863 Decrease No Nov 43 -73 -0.7535 0.4511 Decrease No Dec 43 49 0.5023 0.6155 Increase No Annual 43 91 0.9419 0.3462 Increase No 3.2 Seasonal Rainfall Analysis The variability and distribution pattern of rainfall in Malaysia is much influenced by seasonal wind flow and local topographic features. Northeast monsoon in Malaysia is characterized by steady easterly or north easterly winds of 10-20 knots. This season is known as the major rainy seasons which often cause the severe floods due to heavy rainfall. The prevailing wind flow generally from southwestly of light, below 15 knots is characterized the Southwest Monsoon. The Southwest Monsoon is comparatively drier seasons throughout the country. During the inter monsoon seasons, the wind are generally light and variable. From the Figure 5, it shows that the highest amount of rainfall in Kuching is in Northeast Monsoon (Nov- Mar) which is 2393.8mm that contributes 56.8% of the annual rainfall. For inter-monsoon (Apr), Southwest Monsoon (May- Sept), and inter-monsoon (Oct) to annual rainfall is 6.6%, 28.1 % and 8.5%, respectively. The result shows that Kuching 10 rainfall is directly influence by the monsoon seasons, which is wet season in Northeast Monsoon and comparatively dry season in Southwest Monsoon. The coefficient of variation in Inter-monsoon (Apr and Oct) is higher than the Northeast and Southwest monsoon (Table 4). It is show that the rainfall variability in the Inter-Monsoon is larger than other seasons. Figure 5: Kuching Mean Seasonal Rainfall Table 4: Kuching statistical properties of Seasonal rainfall Season Mean (mm) Minimum (mm) Maximum (mm) Range (mm) Standard Deviation (mm) Coeff. Variation NE 2393.8 1614.1 3271.3 1657.2 414.3 0.17 SW 1183.1 713.3 1729.2 1015.9 216.3 0.18 INT APR 278.5 84.6 503.2 418.6 102.8 0.37 INT OCT 359.2 165.6 625.2 459.6 120.2 0.33 The linear regression analysis shows decreasing trend in Inter-monsoon (Oct) whereas an increasing trend has been observed for other seasons (Table 5). Since the pvalue for the slope of all monsoon system is greater than 0.05, there is no statistically significant relationship between rainfall and year at 95% confidence level. The value of Rsquare also indicates a very weak relationship between the variables and period. 11 From the Mann-Kendall analysis, the S values for each monsoon system are presented in Table 6. The analysis found that negative trend only detected in Inter-Monsoon (Oct), and the other monsoon shows the positive trend. This result shows the conformation of regression analysis. However, the probability value for each monsoon is greater than the significant level 0.1, 0.01 and 0.05. All the values of Z are also less than Z0.025. which makes it statistically non-significant. Table 5: Regression Statistic results for seasonal rainfall Season R-Square p- value NE Monsoon Regression Equation y=2.41x+2340.8 0.01 0.82 Statistically Significant No SW Monsoon y=3.22x+1112.3 0.03 0.33 No Inter Monsoon (Oct) y= -0.63x+373.06 0.00 0.59 No Inter Monsoon (Apr) y=0.40x+269.65 0.00 0.84 No Table 6: Mann-Kendall Statistic Result for seasonal rainfall Season Range (years) MK Statistic(S) Z value p- value Trend Statistically Significant NE Monsoon 43 37 0.3768 0.7063 Increase No SW Monsoon 43 81 0.8372 0.4025 Increase No Inter Monsoon (Oct) Inter Monsoon (Apr) 43 -53 -0.5651 0.572 Decrease No 43 47 0.4814 0.6302 Increase No 12 4. CONCLUSION AND FUTURE STUDIES The rainfall behaviour especially the variability and trend is important for the proper design of water related system such as drainage system and clean water supply in rapidly growing cities like Kuching City. From the result of the linear regression and Mann- Kendall analysis, there is insignificant increasing trend in annual mean rainfall data. The monthly rainfall data from linear regression analysis showed an increasing trend except for September, October, November and December. Mann-Kendall analysis results show the decreasing trend in August, Oct and November. However, the result indicate no statistical significant in monthly rainfall trend and very weak correlation between rainfall and period. The results of these test analyses also indicate no significant trend in seasonal rainfall data. All the results signify no significant detectable effect of global warming on the annual, monthly and seasonal rainfall trend in Kuching. Air pollution and deforestations from urbanization process are some of the factors that affecting the climate change. As the environmental impact from urbanization process maybe quite minimal on this area, this could lead to the least change in rainfall trend. Further studies are needed to be conducted to consider other rainfall characteristics such as extreme rainfall, raindays and other climate change parameter for this station and nearby station to verify whether the significant trend have occurred. Studies also should be carried out to find more information on the effect of climate change at this study area which is predicted can establish a correlation between temperature and extreme rainfall. According to Westra et al. (2013), he found that there is a statistically significant effect of the globally averaged near-surface temperature to the extreme rainfall, which is, the median intensity of extreme precipitation with changed in proportion with changes in global mean temperature at rate between 5.9% and 7.7% K−1. Hence, it could be said that extreme rainfall events is related to global warming. As there are many extreme events occurred at this study area recently, further investigations can be a good approach to develop the current rainfall trend and compare with data from previous analyses as well as the relationship between environmental impact and extreme events may be determined Moreover, result from the future studies is also useful to provide information for the drainage system planning whereby the occurrence of floods can be expected to be more frequent with respect to the rising intensity of extreme rainfall events. 13 REFFERENCE Ampitiyawatta, A.D. and Guo, S., 2009, Precipitation trends in the Kalu Ganga basin in Sri Lanka, The Journal of Agricultural Science, 4(1), 10-18 Ahasan, M.N., Chowdary, M.A.M and Quadir, D.A., 2010, Variability and trends of summer monsoon rainfall over Bangladesh, Journal of Hydrology and Meteorology, 7(1), 1-17 Gemmer, M., Becker, S. and Jiang, T., 2004, Observed monthly precipitation trends in China 1951-2002, Theor.Appl.Clomatol, 77, 39-45 Hamdan, H., Lias, N., Zakaria, R., Taat, A. and Adam, 2010, Extreme weather of Sarawak 2009, JMM Research Publication,1 Hashim, M., Ismail, W.R., Nayan, N., Ngah, M.S.Y.C. and Ibrahim, M.H., 2012, Analysis of rainfall trend in Ipoh city, Perak 1970-2007, Journal of Social Sciences and Humanities, 7(1), 149-164 Karpouzos, D.K., Kavalieratou, S. and Babajimopoulos, C., 2010, Trend analysis of precipitation data in Pieria region, European Water, 30, 31-40 Manton, M.J., Della-Marta,P.M., Haylock, M.R., Hennessy, K.J., Nicholls, N., Chambers, L.E., Collins, D.A., Daw, GG., Finet, A., Gunawan, D., Inape, K., Isobe, H., Kestin, T.S., Lefale, P., Leyu, C.H., Lwin, T., Maitrepierre, L., , Ouprasitwong, N., Page, C.M., Pahalad, J., Plummer, N., Salinger, M.J., Suppiah, R., Tran, V.L., Trewin, B., Tibig, I. and Yee, D., 2001, Trends in extreme daily rainfall and temperature in Southeast Asia and the South Pasific : 1961-1998, International Journal of Climatology (in press) Mondal, A., Kundu, S. and Mukhopadhyay, A., 2012, Rainfall trend analysis by MannKendall test : A case study of Nort-Eastern Part of Cuttack district, Orissa, International Journal of Geology, Earth and Environment Sciences, 2(1), 70-78 Ngah, M.S.Y.C., Reid, I. and Hashim, M., 2012, Rainfall trend analysis using 50 years historical data in newly developed catchment in Peninsulart Malaysia, Middle-East J. 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