Browsing by Author "Kamran, M"
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- item: Conference-Full-textClimate Change Impacts and Adaptation Measures in Giritale Reservoir in Polonnaruwa Sri LankaKamran, M; Wijesekera, NTSClimate change is one of the most important global environmental challenges, which affects the overall system by affecting food production, water supply, health, energy, etc. For study purpose Giritale reservoir in Polonnaruwa district of dry zone in Sri Lanka was selected. Catchment area of the reservoir is 24.3 sq.km and command area is 3075 ha. Data for the reservoir was collected from irrigation department, Colombo and 6 year (2010-2015) rainfall data collected also from irrigation department. This study investigated the impact of climate change, adaption and mitigation measures reservoir system. After a review three scenarios were identified. Scenario 1 rainfall increase 15.8% and temperature increase 8% and scenario2 rainfall increase 14% and temperature increase1.6% and scenario 3 is rainfall is projected to increase by 48% for the Southwest Monsoon by 2050 and Northeast Monsoon, which occurs in the drier northern region, is predicted to decrease by 27–29%. For the worst scenario four adaptation measures were proposed. Among the four only two adaptations could be quantified, and the best adaptation measure was identified. Among scenario option’s, the scenario 2 is the worst scenario and adaptation measure taken for scenario2consist of two options. Option1 is changing the crop type and option 2 is increasing the canal efficiency. For option 1 105 days paddy for Maha and Yala was taken and also green gram for both Maha and Yala was considered and for option2 canal efficiency increased by 10% . Therefore comparing the results adaptation use of green gram improved the cropping intensity by 13%.For verification of result actual rainfall data is not enough and also for predicting the climate trend. Future climate projections indicate that the climate is changing and impacts on agriculture sector can be expected and Worst climate change scenario for the Gritale scheme is when increasing rainfall 14% and also increase the evaporation 6.4%.
- item: Thesis-Full-textEffect of watershed subdivision and antecedent moisture condition on HEC-HMS model performance in the Maha Oya basin, Sri LankaKamran, M; Rajapakse, RLHLEffect of Watershed Subdivision and Antecedent Moisture Condition on HEC-HMS Model Performance in the Maha Oya Basin, Sri Lanka Rainfall-Runoff models such as Hydrologic Modeling System (HEC-HMS) are used for predicting the hydrologic response of watersheds. Due to the effect of discretization, the model accuracy increases with number and watershed sub-divisions and the inferred level of soil saturation in the model. Therefore, an important issue that must be addressed by all users of these models is the determining of an appropriate level of watershed subdivision and Antecedent Moisture Condition (AMC) for runoff simulation. The present research study was conducted in an attempt to find appropriate answers for the above two modelling issues. As a case study, the Badalgama watershed is selected as study area in the Maha Oya Basin in Sri Lanka. Spatial extent of Badalgama watershed is 1272 km2 with an upstream river length of 96 km. Four rainfall stations and one river gauge station are selected in Badalgama watershed. Daily rainfall and streamflow data were used for calibration period from 2005 ~ 2008 and for validation period from 2010 ~ 2013. River basin was divided into 3, 6, 9, and 16 number of subdivisions based on critical threshold area method using ArcGIS 10.5. Nash–Sutcliffe (NASH) and Mean Ratio of Absolute Error (MRAE) objective functions were selected as the evaluation criteria of the model. HEC-HMS modeling was carried out for different subdivisions and varying AMC conditions. The result shows that with MRAE objective function, the accuracy of the model increased by 4.5% up to six subdivisions and with NASH, the accuracy increased by 4.2% with respect to the same lumped model. The accuracy of the model found to decrease for the model with six subdivisions to sixteen sub-divisions. The accuracy of the model with Antecedent Moisture Condition with AMC-III was found to increase by 12.04% as compared to AMC-II. With the above findings, it is concluded that subdivision of watershed for modeling results in no more than modest improvements in prediction of low flow and medium flow simulation. As the result shows in the AMC analysis AMC-III produced improved accuracy of 12.04% in calibration period and 6.60% for validation period as compared to AMC-II. The event-wise estimation of AMC led to further increase in model accuracy. In this research, the recession method was considered for the base flow simulation which led to a mass balance error exceeding 20%. Therefore, it is recommended apply linear reservoir method as base flow simulation method to further improve the modelling accuracy by conserving the water balance.