A comprehensive review on artificial intelligence in water treatment for optimization. Clean water now and the future.

IF 1.9 4区 环境科学与生态学 Q4 ENGINEERING, ENVIRONMENTAL Journal of Environmental Science and Health Part A-toxic\/hazardous Substances & Environmental Engineering Pub Date : 2023-01-01 Epub Date: 2024-01-31 DOI:10.1080/10934529.2024.2309102
Machodi Mathaba, JeanClaude Banza
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Abstract

Given the severe effects that toxic compounds present in wastewater streams have on humans, it is imperative that water and wastewater streams pollution be addressed globally. This review comprehensively examines various water and wastewater treatment methods and water quality management methods based on artificial intelligence (AI). Machine learning (ML) and AI have become a powerful tool for addressing problems in the real world and has gained a lot of interest since it can be used for a wide range of activities. The foundation of ML techniques involves training of a network with collected data, followed by application of learned network to the process simulation and prediction. The creation of ML models for process simulations requires measured data. In order to forecast and simulate chemical and physical processes such chemical reactions, heat transfer, mass transfer, energy, pharmaceutics and separation, a variety of machine-learning algorithms have recently been developed. These models have shown to be more adept at simulating and modeling processes than traditional models. Although AI offers many advantages, a number of disadvantages have kept these methods from being extensively applied in actual water treatment systems. Lack of evidence of application in actual water treatment scenarios, poor repeatability and data availability and selection are a few of the main problems that need to be resolved.

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人工智能在水处理优化中的应用综述。洁净水的现在与未来。
鉴于废水中的有毒化合物对人类的严重影响,在全球范围内解决水和废水污染问题势在必行。本综述全面探讨了基于人工智能(AI)的各种水和废水处理方法以及水质管理方法。机器学习(ML)和人工智能已成为解决现实世界中各种问题的有力工具,并因其可广泛应用于各种活动而备受关注。ML 技术的基础包括利用收集到的数据训练网络,然后将学习到的网络应用于流程模拟和预测。为工艺模拟创建 ML 模型需要测量数据。为了预测和模拟化学和物理过程,如化学反应、传热、传质、能源、制药和分离,最近开发了各种机器学习算法。与传统模型相比,这些模型在模拟和建模过程中表现得更为出色。虽然人工智能有很多优点,但也存在一些缺点,导致这些方法无法广泛应用于实际的水处理系统。缺乏在实际水处理方案中应用的证据、可重复性差以及数据的可用性和选择是需要解决的几个主要问题。
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来源期刊
CiteScore
4.10
自引率
4.80%
发文量
93
审稿时长
3.0 months
期刊介绍: 14 issues per year Abstracted/indexed in: BioSciences Information Service of Biological Abstracts (BIOSIS), CAB ABSTRACTS, CEABA, Chemical Abstracts & Chemical Safety NewsBase, Current Contents/Agriculture, Biology, and Environmental Sciences, Elsevier BIOBASE/Current Awareness in Biological Sciences, EMBASE/Excerpta Medica, Engineering Index/COMPENDEX PLUS, Environment Abstracts, Environmental Periodicals Bibliography & INIST-Pascal/CNRS, National Agriculture Library-AGRICOLA, NIOSHTIC & Pollution Abstracts, PubSCIENCE, Reference Update, Research Alert & Science Citation Index Expanded (SCIE), Water Resources Abstracts and Index Medicus/MEDLINE.
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