机器学习驱动的跨尺度盐水和采出水处理膜设计

IF 3.1 4区 环境科学与生态学 Q3 ENGINEERING, ENVIRONMENTAL
Uzair Ahmad, Ahmed Abdala, Kim Choon Ng and Faheem Hassan Akhtar
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引用次数: 0

摘要

基于膜的海水淡化技术对于解决全球水资源短缺问题至关重要;然而,它们的性能优化仍然是一个复杂的挑战。本文探讨了机器学习(ML)在推进膜脱盐方面的潜力,重点是工艺优化、污染缓解和性能预测。我们提供了ML技术的全面分析,包括人工神经网络(ann),支持向量机(svm)和随机森林(RF),应用于膜系统,如反渗透(RO),正向渗透(FO),以及采出水的处理。该研究强调了数据驱动模型如何通过将操作参数(如压力、温度、进料盐度)与膜效率、能耗和结垢行为相关联来增强决策。重点放在基于人工神经网络的实时监测和预测控制框架上,与传统的机械方法相比,展示了它们在建模非线性相互作用方面的优势。我们还研究了机器学习在优化设计参数、维护策略和可再生能源集成海水淡化系统中的应用。讨论了数据稀缺性和模型通用性等挑战,以及将ML与新兴膜材料和混合工艺集成的未来方向。这篇综述强调了ML在弥合海水淡化理论和实践差距方面的作用,为研究人员和行业专家提供了可操作的见解,以部署智能和可持续的水处理解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Machine learning-driven design of membranes for saline and produced water treatment across scales

Machine learning-driven design of membranes for saline and produced water treatment across scales

Membrane-based desalination technologies are critical for addressing global water scarcity; however, their performance optimization remains a complex challenge. This review explores the potential of machine learning (ML) in advancing membrane desalination, with a focus on process optimization, fouling mitigation, and performance prediction. We provide a comprehensive analysis of ML techniques, including artificial neural networks (ANNs), support vector machines (SVMs), and random forest (RF), applied to membrane systems such as reverse osmosis (RO), forward osmosis (FO), and for the treatment of produced water. The study highlights how data-driven models enhance decision-making by correlating operational parameters (e.g., pressure, temperature, feed salinity) with membrane efficiency, energy consumption, and fouling behavior. A key emphasis is placed on ANN-based frameworks for real-time monitoring and predictive control, demonstrating their superiority in modeling non-linear interactions compared to traditional mechanistic approaches. We also examine ML applications in optimizing design parameters, maintenance strategies, and renewable-energy-integrated desalination systems. Challenges such as data scarcity and model generalizability are discussed, alongside future directions for integrating ML with emerging membrane materials and hybrid processes. This review highlights ML's role in bridging theoretical and practical gaps in desalination, offering actionable insights for researchers and industry experts to deploy intelligent and sustainable water treatment solutions.

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来源期刊
Environmental Science: Water Research & Technology
Environmental Science: Water Research & Technology ENGINEERING, ENVIRONMENTALENVIRONMENTAL SC-ENVIRONMENTAL SCIENCES
CiteScore
8.60
自引率
4.00%
发文量
206
期刊介绍: Environmental Science: Water Research & Technology seeks to showcase high quality research about fundamental science, innovative technologies, and management practices that promote sustainable water.
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