TY - JOUR T1 - Evaporation and precipitation prediction for future time frames via combined machine learning-climate change models: Quri Gol Wetland Case AU - Sattari, Mohammad Taghi AU - Abdollahpour Azad, Mohammad Reza AU - Jalali, Mohammad Reza AU - Mastouri, Reza PY - 2025 DA - March Y2 - 2024 DO - 10.15832/ankutbd.1509731 JF - Journal of Agricultural Sciences JO - J Agr Sci-Tarim Bili PB - Ankara University WT - DergiPark SN - 1300-7580 SP - 447 EP - 469 VL - 31 IS - 2 LA - en AB - Evaporation is a critical component in the management of water resources. Due to the complex interactions between various meteorological variables involved in evaporation calculations, numerous nonlinear models have been developed. The applicability and performance of these models vary depending on the specific climatic conditions of each region. This study evaluates the impacts of climate change on evaporation and precipitation patterns in the Quri Gol Wetland, located in East Azerbaijan, Iran, using machine learning models and climate change projections. Evaporation values for the present period (1991-2020) were estimated using six machine learning models: Random Forest (RF), Gradient Boosted Tree (GBT), Generalized Linear Model (GLM), Support Vector Machine (SVM), Gaussian Process Regression (GPR), and deep learning (DL). Future projections (2021-2050, 2051- 2080, 2081-2100) were based on the LARS-WG and SDSM models under three climate scenarios (RCP 2.6, RCP 4.5, and RCP 8.5). The performance of the machine learning models was assessed using statistical metrics including R2, Scatter Index (SI), Mean Absolute Error (MAE), Willmott’s Index (WI), and Kling-Gupta Efficiency (KGE). The RF and DL models provided the most accurate predictions, with RF achieving an R2 of 0.821 and an MAE of 0.902, while DL reached an R2 of 0.822 and an MAE of 0.915 in the validation phase. Results from climate change projections indicated a significant increase in evaporation over the next century, with cumulative evaporation rising by up to 50.01% under the RCP 8.5 scenario by 2081-2100. In contrast, the projected increase in precipitation was much smaller, reaching a maximum of 16% in the same period. This imbalance between evaporation and precipitation highlights the potential for increasing water stress in the Quri Gol Wetland. The findings emphasize the need for adaptive water management strategies to mitigate the effects of increased evaporation and maintain ecological stability in the region. KW - Climate change KW - Meteorological variables KW - Evaporation KW - Machine learning KW - Statistical indices CR - Ahmadaali J, Barani G A, Qaderi K, Hessari B (2018). 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