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Relative Performance of Artificial Neural Networks and Regression Models in Predicting Missing Water Quality Data

机译:人工神经网络和回归模型在缺失水质数据预测中的相对性能

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摘要

Groundwater quality data are essential in providing valuable insight about the magnitude and source of contamination, as well as spatial and temporal variations. Under many circumstances, due to missing observations, forecasting, and backfilling of the groundwater quality data becomes mandatory. This study is aimed to investigate the potential of the artificial neural networks and the regression models for forecasting and backfilling the groundwater quality data. Sulfate, chemical oxygen demand, sodium, potassium, and phosphorus were chosen as dependent (output) variables. Chemical and the hydrometeorological data collected over a 2-year time period in an industrial area in India were used for developing these models. Artificial neural networks were trained using the backpropagation algorithm on four different feed-forward architectures as well as the radial basis function. Relative strength effect was used to examine the usefulness of the input variables. Model comparison statistics indicate that neural network techniques based on backpropagation algorithm training are better than the regression models and can be the effective modeling tool for predicting and backfilling the water quality data.
机译:地下水质量数据对于提供有关污染的大小和来源以及时空变化的宝贵见解至关重要。在许多情况下,由于缺少观测值,必须对地下水质量数据进行预测和回填。这项研究旨在探讨人工神经网络和回归模型在预测和回填地下水质量数据方面的潜力。选择硫酸盐,化学需氧量,钠,钾和磷作为因变量(输出变量)。在印度的一个工业区,在两年的时间内收集的化学和水文气象数据被用于开发这些模型。使用反向传播算法在四种不同的前馈架构以及径向基函数上对人工神经网络进行了训练。相对强度效应用于检查输入变量的有用性。模型比较统计数据表明,基于反向传播算法训练的神经网络技术优于回归模型,可以作为预测和回填水质数据的有效建模工具。

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