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Application of Artificial Neural Networks for the Prediction of Water Quality Variables in the Nile Delta

机译:人工神经网络在尼罗河三角洲水质变量预测中的应用

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摘要

The quality of a water body is usually characterized by sets of physical, chemical, and biological parameters, which are mutually interrelated. Since August 1997, monthly records of 33 parameters, monitored at 102 locations on the Nile Delta drainage system, are stored in a National Database operated by the Drainage Research Institute (DRI). Correlation patterns may be found between water quantity and water quality parameters at the same location, or among water quality parameters within a monitoring location or among locations. Serial correlation is also detected in water quality variables. Through the investigation of the level of information redundancy, assessment and redesign of water quality monitoring network aim to improve the overall network efficiency and cost effectiveness. In this study, the potential of the Artificial Neural Network (ANN) on simulating interrelation between water quality parameters is examined. Several ANN inputs, structures and training possibilities are assessed and the best ANN model and modeling procedure is selected. The prediction capabilities of the ANN are compared with the linear regression models with autocorrelated residuals, usually used for this purpose. It is concluded that the ANN models are more accurate than the linear regression models having the same inputs and output.
机译:水体的质量通常以相互关联的一组物理,化学和生物学参数为特征。自1997年8月以来,在尼罗河三角洲排水系统的102个位置进行监视的33个参数的每月记录存储在排水研究所(DRI)运营的国家数据库中。可以在同一位置的水量和水质参数之间,或者在监视位置内或位置之间的水质参数之间找到关联模式。在水质变量中也检测到序列相关性。通过调查信息冗余程度,评估和重新设计水质监测网络旨在提高整体网络效率和成本效益。在这项研究中,人工神经网络(ANN)在模拟水质参数之间相互关系方面的潜力得到了检验。评估了几种人工神经网络输入,结构和训练可能性,并选择了最佳的人工神经网络模型和建模程序。将ANN的预测能力与通常用于此目的的具有自相关残差的线性回归模型进行比较。结论是,与具有相同输入和输出的线性回归模型相比,ANN模型更为准确。

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