Reservoir Evaporation Forecasting Based on Climate Change Scenarios Using Artificial Neural Network Model

被引:0
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作者
Yeşim Ahi
Çiğdem Coşkun Dilcan
Daniyal Durmuş Köksal
Hüseyin Tevfik Gültaş
机构
[1] Ankara University,Water Management Institute
[2] Ankara University,Agricultural Structure and Irrigation Department, Agriculture Faculty
[3] Bilecik Seyh Edebali University,Biosystem Engineering Department
来源
关键词
Climate change; Machine learning algorithms; Modelling; Water resources; Agricultural water use;
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摘要
Climate plays a dominant role in influencing the process of evaporation and is projected to have adverse effects on water resources especially in the wake of a changing climate. In order to understand the impact of climate change on water resources, artificial intelligence models that possesses rapid decision-making ability, are used. This study was carried out to estimate evaporation in the Karaidemir Reservoir in Turkey with artificial neural networks (ANNs). The daily meteorological data covering the irrigation season were provided for a 30-year reference period and used to develop artificial neural network models. Predicted meteorological data based on climate change projections of HadGEM2-ES and MPI-ESM-MR under the Representative Concentration Pathway (RCP) 4.5 and 8.5 future emissions scenarios between 2000–2098 were utilized for future evaporation projections. The study also focuses on optimal crop patterns and water requirement planning in the future. ANNs model was run for each of the scenarios created based on ReliefF algorithm results using different testing-training-validation rates and learning algorithms of Bayesian Regularization (BR), Levenberg–Marquardt (L-M) and Scaled Conjugate Gradient (SCG). The performance of each alternative model was compared with coefficient of determination (R2) and mean square error (MSE) measures. The obtained results revealed that the ANNs model has high performance in estimation with a few input parameters, statistically. Projected surface water evaporation for the long term (2080–2098) showed an increase of 1.0 and 3.1% for the RCP4.5 scenarios of the MPI and HadGEM model, and a 14% decrease and 7.3% increase for the RCP8.5 scenarios, respectively.
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页码:2607 / 2624
页数:17
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