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Using the mutual information technique to select explanatory variables in artificial neural networks for rainfall forecasting

机译:使用互信息技术在人工神经网络中选择解释变量进行降雨预报

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The artificial neural network (ANN), a data-driven approach, is a powerful tool for forecasting rainfall. However, selecting the appropriate explanatory variables in order to develop ANN models for this purpose is a major challenge. Recent studies in various fields have highlighted the usefulness of the mutual information (MI) technique in identifying explanatory variables for application in non-linear problems, which, however, has largely been unexplored in forecasting rainfall. The present study was carried out to fill this knowledge gap. Three ANN models were developed, with different explanatory variables, to forecast the rainfall in Mumbai, India. Model A used temporal data of past rainfall events, Model B used selected meteorological data apart from rainfall and Model C used those variables identified by the MI technique. When the results of Model C were compared with those of Models A and B, a reduction of 5.79 and 4.11% in normalized mean square error, respectively, 16.66 and 12.90% improvement in efficiency index, respectively, and 3.22 and 4.24% reduction in the root mean square error, respectively, were observed. Thus, this study highlights the superiority of the MI technique in selecting explanatory variables for ANN modelling, not only because of the enhanced performance of the model with respect to various indicators but also because this performance has been achieved with a simple ANN architecture.
机译:人工神经网络(ANN)是一种数据驱动的方法,是预报降雨量的强大工具。但是,为此目的选择适当的解释变量以开发ANN模型是一项重大挑战。最近在各个领域的研究都强调了互信息(MI)技术在识别用于非线性问题的解释变量中的有用性,然而,在预测降雨量方面还没有得到很大的探索。进行本研究是为了填补这一知识空白。开发了三种具有不同解释变量的ANN模型,以预测印度孟买的降雨量。模型A使用过去降雨事件的时间数据,模型B使用除降雨以外的选定气象数据,模型C使用通过MI技术识别的变量。当将模型C的结果与模型A和B的结果进行比较时,标准化均方误差分别减少了5.79和4.11%,效率指数分别降低了16.66和12.90%,效率降低了3.22和4.24%分别观察到均方根误差。因此,本研究强调了MI技术在选择用于ANN建模的解释变量方面的优势,这不仅是因为模型在各种指标方面的性能得到了增强,而且还因为这种性能已通过简单的ANN架构实现。

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