Selective Ensemble Extreme Learning Machine Modeling of Effluent Quality in Wastewater Treatment Plants

被引:0
作者
LiJie Zhao TianYou Chai DeCheng Yuan College of Information EngineeringShenyang University of Chemical TechnologyShenyang China State Key Laboratory of Synthetical Automation for Process IndustriesNortheastern UniversityShenyang China [1 ,2 ,2 ,1 ,1 ,110042 ,2 ,110189 ]
机构
关键词
Wastewater treatment process; effluent quality prediction; extreme learning machine; selective ensemble model; genetic algorithm;
D O I
暂无
中图分类号
X703 [废水的处理与利用];
学科分类号
083002 ;
摘要
Real-time and reliable measurements of the effluent quality are essential to improve operating efficiency and reduce energy consumption for the wastewater treatment process.Due to the low accuracy and unstable performance of the traditional effluent quality measurements,we propose a selective ensemble extreme learning machine modeling method to enhance the effluent quality predictions.Extreme learning machine algorithm is inserted into a selective ensemble frame as the component model since it runs much faster and provides better generalization performance than other popular learning algorithms.Ensemble extreme learning machine models overcome variations in different trials of simulations for single model.Selective ensemble based on genetic algorithm is used to further exclude some bad components from all the available ensembles in order to reduce the computation complexity and improve the generalization performance.The proposed method is verified with the data from an industrial wastewater treatment plant,located in Shenyang,China.Experimental results show that the proposed method has relatively stronger generalization and higher accuracy than partial least square,neural network partial least square,single extreme learning machine and ensemble extreme learning machine model.
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页码:627 / 633
页数:7
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