机器学习提高膜基废水处理性能:综述

Panchan Dansawad , Yanxiang Li , Yize Li , Jingjie Zhang , Siming You , Wangliang Li , Shouliang Yi
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引用次数: 0

摘要

机器学习(ML)是一种数据驱动的方法,可用于基于现有数据设计、分析、预测和优化流程。近年来,ML在改善废水处理中的膜分离性能方面得到了应用。已经开发了模型来预测膜从废水中分离污染物的性能,设计膜制造的最佳条件以提高膜分离性能,并预测反洗膜和膜污染。本文综述了基于ML的膜分离建模的进展,并探讨了ML在膜分离废水处理中的未来发展方向。综述了在基于膜分离的废水处理中广泛使用的ML算法的优缺点。人工神经网络(ANN)是最常用的基于膜分离的污水处理建模算法。建议未来的研究侧重于集成ML算法的开发,并将ML算法与其他建模方法(例如,基于过程的模型和统计模型)相结合。这将有助于实现ML应用程序的更高精度和更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Machine learning toward improving the performance of membrane-based wastewater treatment: A review

Machine learning (ML) is a data-driven approach that can be applied to design, analyze, predict, and optimize a process based on existing data. Recently, ML has found its application in improving membrane separation performance for wastewater treatment. Models have been developed to predict the performance of membranes to separate contaminants from wastewater, design optimum conditions for membrane fabrication for greater membrane separation performance and predict backwashing membranes and membrane fouling. This review summarizes the progress of ML-based membrane separation modeling and explores the direction of the future development of ML in membrane separation-based wastewater treatment. The strengths and drawbacks of the ML algorithms extensively used in membrane separation-based wastewater treatment are summarized. Artificial neural network (ANN) was the most used algorithm for modeling membrane separation-based wastewater treatment. Future research is recommended to focus on the development of integrated ML algorithms and on combining ML algorithms with other modeling approaches (e.g., process-based models and statistical models). This will serve to achieve higher accuracy and better performance of the ML application.

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