Investigation of Multilayer Perceptron Regression-based Models to Forecast Reference Evapotranspiration (ETo)

S. Jain, Anil K. Gupta
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Abstract

Reference evapotranspiration (ETo) is a valuable factor in the hydrological process and its estimation is a sophisticated and nonlinear problem. In this study, the utility of multilayer perceptron regression is investigated to estimate ETo of Jodhpur city, India which has a hot arid climate. Four different multilayer perceptron regression-based models are created and compared in this study. Multilayer perceptron regression is a popular tool used to predict the results of sophisticated problems. Each created model has a different architecture, in which the size (neurons) of the input and hidden layers is decided by the maximal correlation relationship between meteorological attributes and observed ETo using the Food Agriculture Organization Penman-Monteith method (FAO-PM56). This study found that model with meteorology inputs (namely both high and low temperatures, solar radiation, wind speed at 2 m, and humidity) and nine neurons at the hidden layer achieved high predictive accuracy with mean absolute error (MAE) of 0.08, mean squared error (MSE) of 0.01, root mean squared error (RMSE) of 0.10, Pearson correlation (r) of 0.99, and coefficient of determination (r2) of 0.99. The finding of this study is that the multilayer perceptron regression-based models with at least three meteorological inputs (temperature, solar radiation, and wind speed) can effectively utilize to estimate ETo and may receive attention from agriculturists, engineers, and researchers for irrigation scheduling, water resource handling, crop production enhancement, draught area prediction, etc.
基于多层感知器回归模型预测参考蒸散量的研究
参考蒸散发(ETo)是水文过程中一个有价值的因子,其估算是一个复杂的非线性问题。本文研究了利用多层感知器回归估计炎热干旱气候的印度焦特布尔市的经济效益。本研究建立并比较了四种不同的多层感知器回归模型。多层感知器回归是一种流行的工具,用于预测复杂问题的结果。每个创建的模型都有不同的架构,其中输入层和隐藏层的大小(神经元)由使用粮农组织Penman-Monteith方法(FAO-PM56)的气象属性与观测到的ETo之间的最大相关关系决定。本研究发现,以气象输入(高温和低温、太阳辐射、2 m风速和湿度)和9个隐层神经元为模型的预测精度较高,平均绝对误差(MAE)为0.08,均方误差(MSE)为0.01,均方根误差(RMSE)为0.10,Pearson相关系数(r)为0.99,决定系数(r2)为0.99。本研究发现,具有至少三种气象输入(温度、太阳辐射和风速)的多层感知器回归模型可以有效地用于估计ETo,并可能受到农业学家、工程师和研究人员在灌溉调度、水资源处理、作物增产、干旱面积预测等方面的关注。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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