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Identification of climate data in ANN applications for estimation of evapotranspiration

机译:在人工神经网络中识别气候数据以估算蒸散量

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Evapotranspiration (ET) is an essential parameter for estimation of irrigation water requirements. Climatic variables (CV) along with soil and plant factors are known to influence ET exhibiting completely different patterns at some locations because of the effect 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. In the recent past applications of Artificial Neural Network (ANN) have been reported with remarkable success over 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 time-series data. The goal of this paper is to identify minimum number of variables which must be considered for use in the ANN applications. The experiments conducted in this study use reliable climatic data (CD) of four locations of a region whose data have also featured in ANN applications reported elsewhere. It is shown that much of the labor and cost involved in selecting the best combination of variables in ANN can be drastically reduced by using a procedure described in this paper. Importantly, the procedure answers the question of why some models perform poorly and some others do well. The tools employed for development of the procedure on-line are: singular value decomposition (SVD) from linear algebra; and Radial Basis Function Networks from ANN, using a new technique of error analysis on-line.
机译:蒸散量(ET)是估算灌溉用水需求的基本参数。由于多重共线性(MC)的影响,气候变量(CV)以及土壤和植物因素会影响ET在某些位置表现出完全不同的模式。这些因素,加上复杂的蒸腾现象,在很大程度上促成了大量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。在最近的过去,已经报道了人工神经网络(ANN)在流行模型上的巨大成功。但是,人工神经网络的问题有两个:涉及使用变量的不同组合进行训练的大量试验,以及对大量时间序列数据的需求。本文的目的是确定在ANN应用程序中必须考虑的最小变量数。在这项研究中进行的实验使用了区域四个位置的可靠气候数据(CD),这些数据在其他地方报道的ANN应用中也具有重要意义。结果表明,使用本文所述的方法可以大大减少在ANN中选择变量的最佳组合所涉及的大量人工和成本。重要的是,该过程回答了以下问题:为什么某些模型的性能较差而另一些模型的效果却很好。用于在线开发过程的工具包括:线性代数的奇异值分解(SVD);以及使用ANN的径向基函数网络进行在线错误分析的新技术。

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