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首页> 外文期刊>Water and environment journal: Journal of the Chartered Institution of Water and Environmental Management >Online sequential extreme learning machine in river water quality (turbidity) prediction: a comparative study on different data mining approaches
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Online sequential extreme learning machine in river water quality (turbidity) prediction: a comparative study on different data mining approaches

机译:在线连续极端学习机河流水质(浊度)预测:a比较研究在不同的数据挖掘方法

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摘要

As a measure of water quality, water turbidity might be a source of water pollution in drinking water resources. Henceforth, having a reliable tool for predicting turbidity values based on common water quantity/quality measured parameters is of great importance. In the present paper, the performance of the online sequential extreme learning machine (OS-ELM) in predicting daily values of turbidity in Brandywine Creek, Pennsylvania, is evaluated. For this purpose, in addition to the developed OS-ELM, several data-driven models, that is, multilayer perceptron neural network (MLPANN), the classification and regression tree (CART), the group method of data handling (GMDH) and the response surface method (RSM) have been applied. The general findings of the study confirm the superiority of the OS-ELM model over the other applied models so that the OS-ELM improved the averaged RMSE of the predicted values 9.1, 11.7, 20.5 and 29.3% over the MLPANN, GMDH, RSM and CART models, respectively.
机译:作为一个衡量水质,水浊度可能是一个饮用水源污染水资源。浊度值基于预测的工具常见的水数量/质量测量参数是非常重要的。性能的在线连续的极端每天学习机器(OS-ELM)在预测浊度值在白兰地酒溪,宾夕法尼亚州,是评估。发达OS-ELM之外,还有几数据驱动的模型,即多层感知器神经网络(MLPANN)分类和回归树(CART)组数据处理方法(GMDH)和应用响应面法(RSM)。一般的发现研究的确认OS-ELM模型的优越性所以OS-ELM改善了应用模型平均预测的RMSE值9.1,11.7,29.3%和20.5 MLPANN, GMDH, RSM和车模型,分别。

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