膜污染
均方误差
超参数
随机森林
人工神经网络
结垢
超滤(肾)
计算机科学
机器学习
人工智能
环境科学
工艺工程
工程类
数学
统计
膜
化学
色谱法
生物化学
作者
David J. Kovacs,Zhong Li,Brian W. Baetz,Youngseck Hong,Sylvain Donnaz,Xiaokun Zhao,Zhou Ping,Huihuang Ding,Quan Dong
标识
DOI:10.1016/j.memsci.2022.120817
摘要
Membrane bioreactors (MBRs) have proven to be an extremely effective wastewater treatment process combining ultrafiltration with biological processes to produce high-quality effluent. However, one of the major drawbacks to this technology is membrane fouling. Currently, mechanistic models are often used to estimate membrane fouling through transmembrane pressure (TMP), but their performance is not always satisfactory. In this study, data-driven machine learning techniques consisting of random forest (RF), artificial neural network (ANN), and long-short term memory network (LSTM) are used to build models to predict transmembrane pressure (TMP) at various stages of the MBR production cycle. The models are built with 4 years of high-resolution data from a confidential full-scale municipal WWTP. The model performances are examined using statistical measures such as coefficient of determination (R2), root mean squared error, mean absolute percentage error, and mean squared error. The results show that all models provide reliable predictions while the RF models have the best accuracy. Model uncertainty is quantified to determine the impact of hyperparameter tuning and the variance of extreme predictions. The proposed models can be useful tools in providing decision support to WWTP operators employing fouling mitigating strategies, leading to reduced capital and operational costs.
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