塑料修复方面的创新:催化降解和机器学习的可持续解决方案。

IF 3.5 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
V.C. Deivayanai, S. Karishma, P. Thamarai, R. Kamalesh, A. Saravanan, P.R. Yaashikaa, A.S. Vickram
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引用次数: 0

摘要

塑料污染是一种极端的环境威胁,需要新颖的修复解决方案。本研究调查了机器学习(ML)技术与催化降解过程的整合,以改善塑料废物管理。本研究强调催化降解的效率和选择性,同时对几种机器学习技术进行了评估,看它们是否有能力加强这些过程。综述深入探讨了机器学习在预测催化剂性能、确定合适的反应条件以及改进催化剂设计以提高整体工艺性能方面的应用。还简要介绍了处理所有复杂数据和参数的强化学习、监督学习和无监督学习算法。论文还提供了一项技术经济研究,对这些 ML 驱动系统的性能、经济性和环境可持续性进行了评估。论文回顾了将 ML 与塑料净化催化降解相结合的新方法如何改变工艺,为可扩展和可持续的解决方案提供了新的见解。本综述通过全面考察,强调了这些现代策略在解决塑料污染这一紧迫问题方面的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Innovations in plastic remediation: Catalytic degradation and machine learning for sustainable solutions

Innovations in plastic remediation: Catalytic degradation and machine learning for sustainable solutions
Plastic pollution is an extreme environmental threat, necessitating novel restoration solutions. The present investigation investigates the integration of machine learning (ML) techniques with catalytic degradation processes to improve plastic waste management. Catalytic degradation is emphasized for its efficiency and selectivity, while several machine learning techniques are assessed for their capacity to enhance these processes. The review goes into ML applications for forecasting catalyst performance, determining appropriate reaction conditions, and refining catalyst design to improve overall process performance. Briefing about the reinforcement, supervised, and unsupervised learning algorithms that handle all complex data and parameters is explained. A techno-economic study is provided, evaluating these ML-driven system's performance, affordability, and environmental sustainability. The paper reviews how the novel method integrating ML with catalytic degradation for plastic cleanup might alter the process, providing new insights into scalable and sustainable solutions. This review emphasizes the usefulness of these modern strategies in tackling the urgent problem of plastic pollution by offering a comprehensive examination.
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来源期刊
Journal of contaminant hydrology
Journal of contaminant hydrology 环境科学-地球科学综合
CiteScore
6.80
自引率
2.80%
发文量
129
审稿时长
68 days
期刊介绍: The Journal of Contaminant Hydrology is an international journal publishing scientific articles pertaining to the contamination of subsurface water resources. Emphasis is placed on investigations of the physical, chemical, and biological processes influencing the behavior and fate of organic and inorganic contaminants in the unsaturated (vadose) and saturated (groundwater) zones, as well as at groundwater-surface water interfaces. The ecological impacts of contaminants transported both from and to aquifers are of interest. Articles on contamination of surface water only, without a link to groundwater, are out of the scope. Broad latitude is allowed in identifying contaminants of interest, and include legacy and emerging pollutants, nutrients, nanoparticles, pathogenic microorganisms (e.g., bacteria, viruses, protozoa), microplastics, and various constituents associated with energy production (e.g., methane, carbon dioxide, hydrogen sulfide). The journal''s scope embraces a wide range of topics including: experimental investigations of contaminant sorption, diffusion, transformation, volatilization and transport in the surface and subsurface; characterization of soil and aquifer properties only as they influence contaminant behavior; development and testing of mathematical models of contaminant behaviour; innovative techniques for restoration of contaminated sites; development of new tools or techniques for monitoring the extent of soil and groundwater contamination; transformation of contaminants in the hyporheic zone; effects of contaminants traversing the hyporheic zone on surface water and groundwater ecosystems; subsurface carbon sequestration and/or turnover; and migration of fluids associated with energy production into groundwater.
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