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Application of Artificial Intelligence to Estimate the Reference Evapotranspiration at North Bihar, India

机译:人工智能在北比尔,印度北迈哈尔估算参考蒸散量的应用

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This paper estimates the reference evapotranspiration on daily basis and to develop the models using various training functions of Artificial Neural Network (ANN). The potential of ANN is investigated in modeling of daily reference evapotranspirationobtained using standard Penman-Monteith equation. The study compares results obtained using mean absolute error, root mean square error, coefficient of determination and Mean absolute percentage error statics used as criteria for evaluation of model performance. The major objective of this study was to estimate daily reference evapotranspiration using an artificial neural network technique with LM, GDM and OSS learning algorithms and compares if a trained neural network with limited input variables canestimate reference evapotranspiration (ET0) efficiently. The comparison results indicate that the LM training function is faster and has a better accuracy than GDM and OSS. The value of coefficient of determination for LM, GDM and OSS function is 0.960,0.959 and 0.949 respectively. LM produced high value of determination coefficient and lower value of root mean square error rather than other two training functions. So it is considered as best model for reference evapotranspiration estimation in Pusa.
机译:本文估计每日参考蒸发,并使用人工神经网络(ANN)的各种培训函数开发模型。利用标准Penman-Monteith方程研究了ANN的潜力在日常参考蒸肥中的建模中。该研究比较了使用平均绝对误差,均方根误差,确定系数和平均绝对百分比误差估计来进行比较,用作评估模型性能的标准。本研究的主要目的是利用LM,GDM和OSS学习算法的人工神经网络技术估计日常参考蒸发,并比较培训的Neural网络,其中有限的输入变量有效地将参考evapotranspiration(ET0)有效。比较结果表明,LM训练功能更快,具有比GDM和OSS更好的准确性。 LM,GDM和OSS函数的测定系数分别为0.960,0.959和0.949。 LM产生高值的确定系数和较低的根均方误差值,而不是其他两个训练功能。因此,它被认为是pusa中参考蒸发估计的最佳模型。

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