废水处理中的机器学习:综合文献计量学综述

IF 4.5 Q1 ENVIRONMENTAL SCIENCES ACS ES&T water Pub Date : 2025-01-06 DOI:10.1021/acsestwater.4c01047
Wenqi Yang,  and , Haiyan Li*, 
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引用次数: 0

摘要

准确识别和控制废水处理过程对于有效利用水资源至关重要。在线监测和计算能力的进步促进了人工智能(AI),特别是机器学习(ML)与废水处理系统的集成。本文采用文献计量学方法,对2000年至2022年433项ML在废水处理中的应用研究进行了分析,探讨了ML在废水处理中的研究趋势、热点和未来发展方向。自2015年以来,该领域的出版物大幅增加。美国和西班牙因其长期的贡献而引人注目,而中国尽管在2012年晚些时候进入该领域,但已成为出版物数量的主要贡献者。关键词分析显示,“神经网络”和“人工神经网络”是最常用的机器学习技术,此外还有“预测”、“优化”、“故障检测”和“设计”等术语。我们的综合综述进一步表明,机器学习在废水处理中的应用主要集中在特征识别、参数预测、异常检测和优化控制方面,主要应用场景包括系统、废水、废气和污泥。随着人工智能在废水处理领域的需求不断增长,多模型集成和深入发展可能成为未来研究的重点,以更有效地解决废水处理中的多目标挑战。
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 in Wastewater Treatment: A Comprehensive Bibliometric Review

Accurate identification and control of wastewater treatment processes are critical for the efficient use of water resources. Advances in online monitoring and computational capabilities have facilitated the integration of artificial intelligence (AI), particularly machine learning (ML), into wastewater treatment systems. This review analyzes 433 studies on ML applications in wastewater treatment from 2000 to 2022 using bibliometric methods, examining research trends, hotspots, and future directions. Since 2015, the field has experienced a significant surge in publications. The United States and Spain are notable for their long-standing contributions, while China, despite entering the field late in 2012, has emerged as the leading contributor in publication volume. Keyword analysis reveals “neural networks” and “artificial neural networks” as the most frequently applied ML techniques, alongside terms like “prediction”, “optimization”, “fault detection”, and “design”. Our comprehensive review further shows that ML applications in wastewater treatment primarily focus on feature identification, parameter prediction, anomaly detection, and optimized control with key application scenarios including systems, wastewater, waste gas, and sludge. As the demand for AI in wastewater treatment continues to grow, multimodel integration and in-depth development may become the focus of future research to address multiobjective challenges in wastewater treatment more effectively.

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