人工神经网络
多层感知器
污水处理
废水
线性回归
总悬浮物
合流下水道
感知器
变量(数学)
流出物
工程类
计算机科学
环境工程
环境科学
机器学习
数学
雨水
生物
数学分析
地表径流
化学需氧量
生态学
作者
Hannu Poutiainen,Harri Niska,Helvi Heinonen‐Tanski,Mikko Kolehmainen
摘要
We describe a neural network model of a municipal wastewater treatment plant (WWTP) in which on-line total solids (TS) sewer data generated by a novel microwave sensor is used as a model input variable. The predictive performance of the model is compared with and without sewer data and with modelling with a traditional linear multiple linear regression (MLR) model. In addition, the benefits of using neural networks are discussed. According to our results, the neural network based MLP (multilayer perceptron) model provides a better estimate than the corresponding MLR model of WWTP effluent TS load. The inclusion of sewer TS data as an input variable improved the performance of the models. The results suggest that increased on-line sensing of WWTPs should be stressed and that neural networks are useful as a modelling tool due to their capability of handling the nonlinear and dynamic data of sewer and WWTP systems.
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