Application of machine learning algorithms in MBR simulation under big data platform
Author(s) -
Weiwei Li,
Chunqing Li,
Tao Wang
Publication year - 2020
Publication title -
water practice and technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.243
H-Index - 15
ISSN - 1751-231X
DOI - 10.2166/wpt.2020.095
Subject(s) - membrane fouling , support vector machine , membrane bioreactor , fouling , artificial neural network , random forest , process engineering , membrane , process (computing) , computer science , algorithm , flux (metallurgy) , environmental science , artificial intelligence , engineering , biological system , sewage treatment , materials science , environmental engineering , chemistry , metallurgy , biology , operating system , biochemistry
Membrane bioreactors (MBRs) are a sewage treatment process that combines membrane separation with bioreactor technology. It has great advantages in sewage treatment. Membrane fouling hinders MBR process development, however. Studies have shown that the degree of membrane fouling can be judged using the membrane flux rate. In this study, principal component analysis was used to extract the main factors affecting membrane fouling, then the random forest algorithm on the Hadoop big data platform was used to establish an MBR membrane flux prediction model, which was tested. In order to verify the model's effectiveness, BP neural network and SVM support vector machine models were established using the same experimental data. The experimental results from the different models were compared, and the results showed that the random forest algorithm gave the best MBR membrane flux predictions.
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