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Uncertainty of weekly nitrate-nitrogen forecasts using artificial neural networks

机译:使用人工神经网络的每周硝酸盐氮预报的不确定性

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Nonpointsource pollution affects the quality of numerous watersheds in the Midwestern United States. The Illinois State Water Survey conducted this study to (1) assess the potential of artificial neural networks (ANNs) in forecasting weekly nitrate-nitrogen (nitrate-N) concentration; and (2) evaluate the uncertainty associated with those forecasts. Three ANN models were applied to predict weekly nitrate-N concentrations in the Sangamon River near Decatur, Illinois, based on past weekly precipitation, air temperature, discharge, and past nitrate-N concentrations. Those ANN models were more accurate than the linear regression models having the same inputs and output. Uncertainty of the ANN models was further expressed through the entropy principle, as defined in the information theory. Using several inputs in an ANN-based forecasting model reduced the uncertainty expressed through the marginal entropy of weekly nitrate-N concentrations. The uncertainty of predictions was expressed as.conditional entropy of future nitrate concentrations for given past precipitation, temperature, discharge, and nitrate-N concentration. In general, the uncertainty of predictions decreased with model complexity. Including additional input variables produced more accurate predictions. However, using the previous weekly data (week t-1) did not reduce the uncertainty in the predictions of future nitrate concentrations (week t+1) based on current weekly data (week t). [References: 27]
机译:面源污染影响着美国中西部众多流域的质量。伊利诺伊州水调查局进行了这项研究,以(1)评估人工神经网络(ANN)在预测每周硝酸盐-氮(硝酸盐-N)浓度中的潜力; (2)评估与这些预测相关的不确定性。基于过去的每周降水量,气温,流量和过去的硝酸盐氮浓度,应用了三种神经网络模型来预测伊利诺伊州迪凯特附近的桑加蒙河中每周的硝酸盐氮浓度。这些ANN模型比具有相同输入和输出的线性回归模型更为准确。 ANN模型的不确定性进一步通过信息理论中定义的熵原理来表达。在基于ANN的预测模型中使用多个输入可以减少每周硝酸盐氮浓度的边际熵所表示的不确定性。对于给定的过去降水,温度,流量和硝态氮浓度,预测的不确定性表示为未来硝酸盐浓度的条件熵。通常,预测的不确定性随着模型的复杂性而降低。包括其他输入变量可产生更准确的预测。但是,使用以前的每周数据(t-1周)并不能减少基于当前每周数据(t周)预测未来硝酸盐浓度(t + 1周)的不确定性。 [参考:27]

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