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Modeling evapotranspiration: Some issues resolved

机译:蒸散量建模:解决了一些问题

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Evapotranspiration (ET) is an essential parameter for estimation of irrigation water requirements. Climatic variables (CV) along with soil and plant variables are known to influence ET exhibiting completely different patterns at some locations because of multicollinearity (MC). These factors, coupled with the complex phenomenon of transpiration have been largely responsible for the development of a large number of ET models. However, none of the models has been found to be satisfactory for all locations. Researchers have analyzed the causes as the lack of understanding of (i) the physics of transpiration, (ii) the separation of the process of transpiration from pure evaporation. Researchers now look for Artificial Neural Networks (ANN).They have claimed that use of ANN is very promising and competing against the existing popular models. But the problem with ANN is two-fold: several trials are involved in training with different combinations of variables, and requirements of large number of reliable data. This background has provided motivations for the study in this paper. The goal is to develop a procedure for identifying the minimum number of variables which must be considered for use in the ANN approach, and serve to choose the particular model/models for the location. The experiments conducted in this study use climatic data (CD) of over fifteen locations, falling in different climatic regions of the world. It is shown that much of the labor and cost involved in selecting the best combination of variables in ANN can be drastically reduced. Also, it reduces the burden of data collection program, besides answering the question of why some models perform poorly and some others do well. Tools employed for development of the procedure are: singular value decomposition (SVD), and variance decomposition proportions (VDP)
机译:蒸散量(ET)是估算灌溉用水需求的基本参数。已知气候变量(CV)以及土壤和植物变量会影响ET,因为多重共线性(MC)在某些位置上显示完全不同的模式。这些因素,加上复杂的蒸腾现象,在很大程度上导致了大量ET模型的发展。但是,没有一个模型可以在所有地点都令人满意。研究人员分析了原因,原因是缺乏对(i)蒸腾作用的物理学,(ii)蒸腾过程与纯蒸发的分离的了解。现在,研究人员正在寻找人工神经网络(ANN),他们声称使用人工神经网络非常有前途并且可以与现有的流行模型竞争。但是人工神经网络的问题是双重的:使用变量的不同组合以及大量可靠数据的需求进行的训练涉及多个试验。这种背景为本文的研究提供了动力。目标是开发一种程序,用于识别在ANN方法中必须考虑的最小变量数,并用于选择位置的特定模型。这项研究中进行的实验使用了分布在世界不同气候区域的15个以上位置的气候数据(CD)。结果表明,在ANN中选择变量的最佳组合所涉及的大量劳力和成本可以大大减少。此外,它还回答了为什么某些模型性能不佳而另一些模型性能良好的问题,从而减轻了数据收集程序的负担。用于开发程序的工具包括:奇异值分解(SVD)和方差分解比例(VDP)

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