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Input determination for neural network models in water resources applications. Part 1 - background and methodology

机译:水资源应用中神经网络模型的输入确定。第1部分-背景和方法

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The use of artificial neural network (ANN) models in water resources applications has grown considerably over the last decade. However, an important step in the ANN modelling methodology that has received little attention is the selection of appropriate model inputs. This article is the first in a two-part series published in this issue and addresses the lack of a suitable input determintion methodology for ANN models in water resources applications. The current state of input determination is reviewed and two input determination methodologies are presented. The first method is a model-free approach, which utilises a measure of the mutual information criterion to characterise the dependence between a potential model input and the output variable. To facilitate the calculation of dependence in the case of multiple inputs, a partial measure of the mutual information criterion is us In the second method, a self-organizing map (SOM) is used to reduce the dimensionality of the input space and obtain independent inputs. To determine which inputs have a significant relationship with the output (dependent) variable. a hybrid genetic algorithm and general regression neural network (GAGRNN) is used. Both input determination techniques are tested on a number of synthetic data sets. where the dependence attributes were known a priori. In the second paper of the series, the input determination methodology is applied to a real-world case study in order to determine suitable model inputs for forecasting salinity in the River Murray, South Australia, 14 days in advance. (C) 2004 Elsevier B.V. All rights reserved.
机译:在过去的十年中,人工神经网络(ANN)模型在水资源应用中的使用已大大增加。然而,在ANN建模方法学中一个很少受到关注的重要步骤是选择合适的模型输入。本文是本期分两部分的系列文章的第一篇,解决了水资源应用中ANN模型缺乏合适的输入确定方法的问题。回顾了输入确定的当前状态,并提出了两种输入确定方法。第一种方法是无模型方法,它利用互信息标准的度量来表征潜在模型输入和输出变量之间的依赖性。为了便于在多个输入的情况下计算依赖关系,我们使用了互信息准则的部分度量。在第二种方法中,使用自组织映射(SOM)来减少输入空间的维数并获得独立的输入。确定哪些输入与输出(因变量)有显着关系。混合遗传算法和通用回归神经网络(GAGRNN)被使用。两种输入确定技术都在许多综合数据集上进行了测试。先验的依赖性属性。在该系列的第二篇文章中,将输入确定方法应用于实际案例研究,以便提前14天确定合适的模型输入以预测南澳大利亚河默里河的盐度。 (C)2004 Elsevier B.V.保留所有权利。

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