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Integrated soft sensor with wavelet neural network and adaptive weighted fusion for water quality estimation in wastewater treatment process

机译:集成软传感器,具有小波神经网络和废水处理过程中水质估算的自适应加权融合

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摘要

It is difficult to estimate the water quality of the wastewater treatment process, because the operating conditions are frequently changed. This paper gives an effective adaptive estimation method, which uses Hammerstein with wavelet neural networks, adaptive weighted fusion, and approximate linear dependence (ALD) analysis. Adaptive stable learning algorithm for the local Hammerstein with wavelet neural networks is proposed. A novel synchronous learning of fusion weighs is discussed. On-line calibration of operating centers with ALD improves the estimation accuracy. The experimental results show that the proposed estimation method for the water quality COD (Chemical Oxygen Demand) is satisfied compared with the laboratory results even when the operating conditions are changed frequently.
机译:难以估计废水处理过程的水质,因为经常改变操作条件。 本文提供了一种有效的自适应估计方法,它使用具有小波神经网络的HAMBerstein,自适应加权融合和近似线性依赖(ALD)分析。 提出了具有小波神经网络的本地Hammerstein的自适应稳定学习算法。 讨论了一种新的融合重量的同步学习。 使用ALD的操作中心的在线校准提高了估计精度。 实验结果表明,即使经常发生操作条件,也满足了与实验室结果相比的所提出的水质鳕鱼(化学需氧量)的估计方法。

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