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Daily pan evaporation modeling using chi-squared automatic interaction detector, neural networks, classification and regression tree

机译:使用卡方自动交互检测器,神经网络,分类和回归树进行每日锅蒸发建模

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Accurate prediction of daily pan evaporations plays a crucial role in water resources management since it has direct effect on water reservoirs, therefore drinking water supply systems. In this study, three machine learning (ML) methods such as classification and regression tree (C&RT), chi-squared automatic interaction detector (CHAID) and artificial neural networks (ANN) are applied to predict the daily pan evaporations in Ankara and Polatli stations in Turkey, both of which have dry climatic conditions. First part of the study focuses investigating the ability of C&RT, CHAID and ANN methods on predicting the daily pan evaporations in Ankara and Polatli stations have been investigated, separately. The estimations are made by using the inputs from the associated stations itselves. However, in the second part of the study, daily pan evaporations in Polatli station have been estimated by using the inputs obtained from Ankara station. The inputs for both parts consist of daily climatic data of maximum and minimum temperature, solar radiation, relative humidity and wind speed. Therefore, this study not only aims to compare the ability of ML models on two different stations, but it also investigates the ability of these models on prediction of daily pan evaporations in a station by using the inputs that were obtained from a nearby station. By comparing these models, it has been revealed that, ANN model has performed slightly better than the other models in both applications. Therefore, it can be concluded that daily pan evaporations could be successfully predicted by employing ANN model in both type of applications. (C) 2016 Elsevier B.V. All rights reserved.
机译:每天对锅内蒸发的准确预测在水资源管理中起着至关重要的作用,因为它直接影响水库,从而直接影响饮用水供应系统。在这项研究中,应用了三种机器学习(ML)方法,例如分类和回归树(C&RT),卡方自动交互检测器(CHAID)和人工神经网络(ANN)来预测安卡拉和波拉特利站的每日蒸发量在土耳其,两者都有干燥的气候条件。本研究的第一部分着重研究了C&RT,CHAID和ANN方法在预测安卡拉和波拉特利站日平均蒸发量方面的能力,分别进行了研究。通过使用来自相关站点本身的输入进行估算。然而,在研究的第二部分中,通过使用从安卡拉站获得的输入,估算了波拉特利站的每日锅蒸发量。这两个部分的输入都包括最高和最低温度,太阳辐射,相对湿度和风速的每日气候数据。因此,本研究不仅旨在比较两个不同站点上的ML模型的能力,而且还通过使用从附近站点获得的输入来研究这些模型在预测站点每日锅蒸发量方面的能力。通过比较这些模型,发现在两种应用中,ANN模型的性能都比其他模型稍好。因此,可以得出结论,通过在两种类型的应用中采用ANN模型,可以成功地预测每日锅蒸发。 (C)2016 Elsevier B.V.保留所有权利。

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