腐蚀抑制,缓蚀剂环境,以及机器学习的作用

A. Hughes, D. Winkler, James Carr, P. D. Lee, Y. S. Yang, M. Laleh, M. Tan
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引用次数: 3

摘要

机器学习(ML)为许多技术领域提供了一种新的设计范式,包括腐蚀抑制。然而,机器学习模型需要相对较大和多样化的训练集才能最有效。本文概述了缓蚀剂的研究进展,重点介绍了如何将腐蚀性能数据整合到机器学习中,以及如何通过各种缓蚀剂测试方法,特别是高通量性能测试,开发适合训练鲁棒ML模型的大型缓蚀剂性能数据集。它考察了不同类型的腐蚀副产物和电解质运行的环境,以了解如何更好地设计、选择和应用传统的缓蚀剂测试方法,以获得最有用的缓蚀剂性能数据。作者探讨了现代表征技术在定义封闭结构(例如搭接)中的腐蚀化学中的作用,并研究了如何通过这些技术生成的缓蚀数据库可以通过最近的发展来举例说明。最后,作者简要讨论了如何将特定结构、合金微观结构、浸出结构和漆膜动力学的影响纳入机器学习策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Corrosion Inhibition, Inhibitor Environments, and the Role of Machine Learning
Machine learning (ML) is providing a new design paradigm for many areas of technology, including corrosion inhibition. However, ML models require relatively large and diverse training sets to be most effective. This paper provides an overview of developments in corrosion inhibitor research, focussing on how corrosion performance data can be incorporated into machine learning and how large sets of inhibitor performance data that are suitable for training robust ML models can be developed through various corrosion inhibition testing approaches, especially high-throughput performance testing. It examines different types of environments where corrosion by-products and electrolytes operate, with a view to understanding how conventional inhibitor testing methods may be better designed, chosen, and applied to obtain the most useful performance data for inhibitors. The authors explore the role of modern characterisation techniques in defining corrosion chemistry in occluded structures (e.g., lap joints) and examine how corrosion inhibition databases generated by these techniques can be exemplified by recent developments. Finally, the authors briefly discuss how the effects of specific structures, alloy microstructures, leaching structures, and kinetics in paint films may be incorporated into machine learning strategies.
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4.50
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