Active learning strategies for the design of sustainable alloys.

IF 4.3 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES Philosophical Transactions of the Royal Society A: Mathematical, Physical and Engineering Sciences Pub Date : 2024-12-02 Epub Date: 2024-11-04 DOI:10.1098/rsta.2023.0242
Ziyuan Rao, Anurag Bajpai, Hongbin Zhang
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Abstract

Active learning comprises machine learning-based approaches that integrate surrogate model inference, exploitation and exploration strategies with active experimental feedback into a closed-loop framework. This approach aims at describing and predicting specific material properties, without requiring lengthy, expensive or repetitive experiments. Recently, active learning has shown potential as an approach for the design of sustainable materials, such as scrap-compatible alloys, and for enhancing the longevity of metallic materials. However, in-depth investigations into suited best-practice strategies of active learning for sustainable materials science are still scarce. This study aims to present and discuss active learning strategies for developing and improving sustainable alloys, addressing single-objective and multi-objective learning and modelling scenarios. As model cases, we discuss active learning strategies for optimizing Invar and magnetic alloys, representing single-objective scenarios, and more general steel design approaches, exemplifying multi-objective optimization. We discuss the significance of finding the right balance between exploitation and exploration strategies in active learning and suggest strategies to reduce the number of iterations across diverse scenarios. This kind of research aims to find metrics for a more effective application of active learning and is used here to advance the field of sustainable alloy design.This article is part of the discussion meeting issue 'Sustainable metals: science and systems'.

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设计可持续合金的主动学习策略。
主动学习包括基于机器学习的方法,这些方法将代理模型推断、利用和探索策略与主动实验反馈整合到一个闭环框架中。这种方法旨在描述和预测特定的材料特性,而无需进行冗长、昂贵或重复的实验。最近,主动学习作为一种设计可持续材料(如废料兼容合金)和提高金属材料寿命的方法,已经显示出其潜力。然而,针对可持续材料科学主动学习的最佳实践策略的深入研究仍然很少。本研究旨在介绍和讨论开发和改进可持续合金的主动学习策略,涉及单目标和多目标学习与建模情景。作为示范案例,我们讨论了优化因瓦合金和磁性合金的主动学习策略(代表单目标情景),以及更一般的钢铁设计方法(代表多目标优化)。我们讨论了在主动学习中找到开发和探索策略之间适当平衡的重要性,并提出了减少不同情景下迭代次数的策略。此类研究旨在为更有效地应用主动学习找到衡量标准,并在此用于推动可持续合金设计领域的发展。本文是讨论会议议题 "可持续金属:科学与系统 "的一部分。
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来源期刊
CiteScore
9.30
自引率
2.00%
发文量
367
审稿时长
3 months
期刊介绍: Continuing its long history of influential scientific publishing, Philosophical Transactions A publishes high-quality theme issues on topics of current importance and general interest within the physical, mathematical and engineering sciences, guest-edited by leading authorities and comprising new research, reviews and opinions from prominent researchers.
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