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首页> 外文期刊>KSCE journal of civil engineering >Daily prediction of total coliform concentrations using artificial neural networks
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Daily prediction of total coliform concentrations using artificial neural networks

机译:使用人工神经网络每日预测大肠菌群的总浓度

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摘要

Current water quality monitoring systems depend on the analysis of in situ grab samples. This is both cost- and labor-intensive, which makes it difficult to conduct daily monitoring tests. One possible way of overcoming this problem is to use a modeling approach. This paper describes the use of an artificial neural network, Self-organizing Linear Output (SOLO), as a modeling approach to predict total coliform concentrations from rainfall and streamflow data. Six different input scenarios are tested to check the efficiency of the SOLO approach, and the results show that the prediction of total coliform concentrations is possible if rainfall events occur. However, poor estimation results are obtained when there is no rain. The model performance improves slightly during periods of no rain if streamflow data are incorporated into the input. However, the model requires more input variables for no-rain periods, because the streamflow data do not enable observed variations to be fully predicted.
机译:当前的水质监测系统依赖于现场抓取样品的分析。这既费钱又费力,这使得进行日常监测测试变得困难。解决此问题的一种可能方法是使用建模方法。本文介绍了一种人工神经网络,即自组织线性输出(SOLO),作为一种通过降雨和水流数据预测大肠菌群总浓度的建模方法。测试了六个不同的输入方案以检查SOLO方法的效率,结果表明,如果发生降雨事件,则可以预测大肠菌群的总浓度。但是,没有雨时,估计结果差。如果将流量数据合并到输入中,则在无雨期间模型性能会略有改善。但是,该模型在无雨期需要更多的输入变量,因为流量数据不能完全预测观察到的变化。

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