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Comparison of artificial neural networks and prediction models for reference evapotranspiration estimation in a semi-arid region

机译:人工神经网络与参考模型在半干旱地区参考蒸散量估算的比较

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Estimation of reference evapotranspiration (ETo) is essential for determination of crop water requirements. In this research, Penman-FAO (P-FAO) and Penman-Monteith (PM) equations were calibrated and validated by lysimeter-measured ETo with six and four weather parameters. Furthermore, two input structures (six and four weather parameters) to artificial neural networks (ANNs) were investigated. Results showed that the accuracy of the PM equation is greater than that of the P-FAO equation. An empirical equation was developed to estimate daily ETo using mean daily temperature and relative humidity, and sunshine hours. The accuracy of the equation to estimate daily ETo using smooth weather data is greater than that of an equation using original data. Furthermore, ANNs were able to estimate ETo properly. The accuracy of ANNs with six inputs is higher than that obtained using the P-FAO equation and is similar to that determined using the PM equation. A decrease in number of inputs to ANNs generally decreased the accuracy of estimation, however, ANNs were able to estimate ETo properly when wind speed and solar radiation were unavailable. Furthermore, the accuracy of ANNs, with four input parameters is greater than that obtained using the PM equation and is similar to that obtained with P-FAO and the developed empirical equations.
机译:参考蒸发蒸腾量(ET o )的估算对于确定作物需水量至关重要。在这项研究中,Penman-FAO(P-FAO)和Penman-Monteith(PM)方程通过用测湿仪测量的ET o 的六个和四个天气参数进行校准和验证。此外,还研究了人工神经网络(ANN)的两个输入结构(六个和四个天气参数)。结果表明,PM方程的精度高于P-FAO方程的精度。建立了一个经验公式,使用平均每日温度和相对湿度以及日照时间来估计每日的ET o 。使用平稳天气数据估算每日ET o 的公式的精度要高于使用原始数据估算的公式的精度。此外,人工神经网络能够正确估计ET o 。具有六个输入的ANN的精度高于使用P-FAO方程获得的精度,并且类似于使用PM方程确定的精度。人工神经网络输入数量的减少通常会降低估计的准确性,但是,当没有风速和太阳辐射时,人工神经网络能够正确估计ET o 。此外,具有四个输入参数的人工神经网络的精度大于使用PM方程获得的精度,并且与使用P-FAO和已开发的经验方程式获得的精度相似。

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