Department of Water Engineering, Sari Agricultural Science And Natural Resources University, Sari, Iran.
Department of Irrigation & Reclamation Engineering, Faculty of Agriculture Engineering & Technology, College of Agriculture & Natural Resources, University of Tehran, Iran's National Science Foundation (INSF), Tehran, Iran.
Environ Monit Assess. 2021 May 24;193(6):355. doi: 10.1007/s10661-021-09060-8.
Evaporation is an important meteorological variable that has a great impact on water resources. In the current research, climatology data, and seasonal coefficient have been used to estimate monthly pan evaporation (E) for 2005-2018 study years at four selected stations of the Urmia Lake basin with Dsa and six selected stations of Gavkhouni basin with Bsk climate categories, in Iran. Estimation of monthly E was performed using data-driven methods such as artificial neural networks (ANNs), adaptive neuro-fuzzy inference system (ANFIS), and gene expression programming (GEP) as well as wavelet-hybrids (WANN, WANFIS, and WGEP). Based on the evaluation criteria, the WGEP model performance was better than the other models in estimating the monthly E. The results indicated that WGEP and ANN are the best and poorest models for all stations without affecting the climate condition of basins. The values of RMSE for WGEP model for stations of Urmia Lake and Gavkhouni basins were varied from 15.839 to 26.727 and 20.651 to 70.318, respectively. Also, the values of RMSE for ANN model for stations of Urmia Lake and Gavkhouni basins were varied from 29.397 to 38.452 and 30.635 to 85.237, respectively. The model's performance was improved as a result of considering the data noise elimination and applying seasonal coefficient to estimate E of various climatic conditions This study with presenting mathematical equations for estimating monthly E has a significant impact on the management and planning of water resources policymakers in the future.
蒸发是一个重要的气象变量,对水资源有很大的影响。在当前的研究中,使用气候学数据和季节性系数,估算了伊朗乌尔米亚湖流域四个选定站点(Dsa 气候区)和加夫库尼流域六个选定站点(Bsk 气候区)2005 年至 2018 年的月均蒸发量(E)。使用数据驱动方法,如人工神经网络(ANNs)、自适应神经模糊推理系统(ANFIS)和基因表达编程(GEP)以及小波混合(WANN、WANFIS 和 WGEP)估算月均 E。根据评价标准,WGEP 模型在估算月均 E 方面的性能优于其他模型。结果表明,WGEP 和 ANN 是所有站点的最佳和最差模型,而不会影响流域的气候条件。WGEP 模型在乌尔米亚湖和加夫库尼流域站点的 RMSE 值分别为 15.839 到 26.727 和 20.651 到 70.318。ANN 模型在乌尔米亚湖和加夫库尼流域站点的 RMSE 值分别为 29.397 到 38.452 和 30.635 到 85.237。由于考虑了数据噪声消除并应用季节性系数来估算各种气候条件下的 E,模型的性能得到了提高。本研究提出了估算月均 E 的数学方程,对未来水资源管理者和决策者具有重要意义。