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Artificial neural network-genetic algorithm for estimation of crop evapotranspiration in a semi-arid region of Iran

机译:人工神经网络遗传算法估算伊朗半干旱地区农作物的蒸散量

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摘要

This study compares the daily potato crop evapotranspiration (ET_C) estimated by artificial neural network (ANN), neural network-genetic algorithm (NNGA) and multivariate nonlinear regression (MNLR) methods. Using a 6-year (2000-2005) daily meteorological data recorded at Tabriz synoptic station and the Penman-Monteith FAO 56 standard approach (PMF-56), the daily ET_C was determined during the growing season (April-September). Air temperature, wind speed at 2 m height, net solar radiation, air pressure, relative humidity and crop coefficient for every day of the growing season were selected as the input of ANN models. In this study, the genetic algorithm was applied for optimization of the parameters used in ANN approach. It was found that the optimization of the ANN parameters did not improve the performance of ANN method. The results indicated that MNLR, ANN and NNGA methods were able to predict potato ET_C at desirable level of accuracy. However, the MNLR method with highest coefficient of determination (R~2 > 0.96, P value < 0.05) and minimum errors provided superior performance among the other methods.
机译:本研究比较了通过人工神经网络(ANN),神经网络遗传算法(NNGA)和多元非线性回归(MNLR)方法估算的每日马铃薯作物蒸散量(ET_C)。使用在大不里士天气台站记录的6年(2000-2005年)每日气象数据和Penman-Monteith FAO 56标准方法(PMF-56),在生长季节(4月至9月)确定每日ET_C。选择生长季节每天的气温,2 m高度的风速,净太阳辐射,气压,相对湿度和作物系数作为ANN模型的输入。在这项研究中,遗传算法被用于优化神经网络方法中使用的参数。结果发现,神经网络参数的优化并不能提高神经网络方法的性能。结果表明,MNLR,ANN和NNGA方法能够以期望的准确度预测马铃薯ET_C。然而,具有最高确定系数(R〜2> 0.96,P值<0.05)和最小误差的MNLR方法在其他方法中具有优越的性能。

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