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Development of an artificial neural network model for hydrologic and water quality modeling of agricultural watersheds

机译:农业流域水文水质建模人工神经网络模型的发展

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Agriculture is the leading source of non-point source pollution on a national scale. The driving force of non-point source pollution is the rainfall-runoff process, which is the transformation of rainfall to direct streamflow. This is a complex, nonlinear, time-varying, and space-distributed process on the watershed scale that is difficult to effectively model by conventional, deterministic means. Artificial neural networks (ANNs) offer a new approach to forecasting the hydrologic and water qualityresponse of a watershed system. The goal of this work is to develop an ANN model as a long-term forecasting tool for predicting the hydrology and water quality of agricultural watersheds. The chosen form of neural network is a flexible mathematical structure, which is capable of identifying complex nonlinear relationships between input and output data sets. In this paper, a multi-layer, feed forward ANN model was developed and tested using historical daily rainfall, streamflow, and nitrate information.Using observed rainfall, stream flow, and water quality data from the Vermilion River and Little Vermilion River watersheds in Illinois; the ANN was applied to predict daily stream flow and nutrient loads based on rainfall. The results show highly accruate performance of the ANN model (R~2 values > 0.90) in predicting daily stream flow and nitrate loads.
机译:农业是全国范围内的非点源污染的主要来源。非点源污染的驱动力是降雨径流过程,这是导致流程的降雨的转变。这是对流域级的复杂,非线性,时变和空间分布的过程,其难以通过常规确定的方式有效地模拟。人工神经网络(ANNS)提供了一种预测流域系统的水文和水质质量响应的新方法。这项工作的目标是将ANN模型作为一种长期预测工具,以预测农业流域水文和水质。所选择的神经网络形式是一种灵活的数学结构,其能够识别输入和输出数据集之间的复杂非线性关系。在本文中,使用历史每日降雨,流流程和硝酸盐信息开发和测试了多层的饲料前进ANN模型。观察到的降雨,流程和来自伊利诺伊州的小朱米河流域的降雨,流程和水质数据; ANN被应用于根据降雨预测日常流流量和营养负荷。结果表明,在预测日常流流程和硝酸盐载荷时,ANN模型(R〜2值> 0.90)的高度累计性能。

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