基于时间序列模式的多层次小波神经网络模型的河流系统非点源污染预测

R. Singh
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引用次数: 0

摘要

除草剂、杀虫剂和其他化学药品被用于农田,以提高农业粮食产量。这些化学物质增加了河流系统中非点源污染物的浓度。非点源污染影响着人类健康和水环境。化学污染物进入河流或溪流的运输机制不是直截了当的,而是施用化学品和特定河流或溪流流域土地利用模式的复杂功能,难以准确量化。基于时间观测的模式的发展可以提高对这种复杂输送中潜在水文过程的理解。目前的工作利用小波理论在单分辨率和多分辨率水平上从时间观测中提取时间模式。然后利用基于前馈反向传播算法的人工神经网络(ANN)利用这些模式。然后利用小波-人工神经网络联合模型对河流水系非点源污染的月浓度进行预测。用实际数据说明了所提出的方法的应用,以估计由于在玉米田使用一种典型除草剂阿特拉津而导致的河流系统中的弥漫性污染浓度。有限的性能评价方法被发现比简单的时间序列更有效。
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Non point pollution predictions in river system using time series patterns in multi level wavelet-ANN model
Herbicides, pesticides, and other chemicals are employed in crop lands to increase the agricultural food productivity. These chemicals increase the concentration of non point pollutant in river systems. Non point pollution affects the health of human and aquatic environment. The transport mechanism of chemical pollutants into river or streams is not straight forward but complex function of applied chemicals and land use patterns in a given river or stream basin which are difficult to quantify accurately. Development of models based on temporal observations may improve understanding the underlying the hydrological processes in such complex transports. Present work utilized temporal patterns extracted from temporal observations using wavelet theory at single as well as multi resolution levels. These patterns are then utilized by an artificial neural network (ANN) based on feed forward backpropogation algorithm. The integrated model, Wavelet-ANN conjunction model, is then utilized to predict the monthly concentration of non point pollution in a river system. The application of the proposed methodology is illustrated with real data to estimate the diffuse pollution concentration in a river system due to application of a typical herbicide, atrazine, in corn fields. The limited performance evaluation of the methodology was found to work better than simple time series.
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