Machine Learning Approches for Evaluating the Properties of Materials

Nanna Ahlmann Ahm
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Abstract

Machine Learning for Materials Science is a primer on the subject that also delves into the specifics of where ML might be applied to materials science research. With a focus on where to collect data and some of the issues when choosing a strategy, this article includes example approaches for ML applied to experiments and modeling, such as the first steps in the procedure for constructing an ML solution for a materials science problem. The lengthy cycles of development, inefficiencies, and higher costs of conventional techniques of material discovery, such as the density functional theory- based and empirical trials and errors approach, make it impossible for materials research to keep up with modern advances. Hence, machine learning is extensively employed in material detection, material design, and material analysis because of its cheap computing cost and fast development cycle, paired with strong data processing and good prediction performance. This article summarizes recent applications of ML algorithms within different material science fields, discussing the advancements that are needed for widespread application, and details the critical operational procedures involved in evaluating the features of materials using ML.
评估材料性能的机器学习方法
《材料科学的机器学习》是一本关于该主题的入门书,它还深入研究了机器学习可能应用于材料科学研究的具体内容。本文将重点介绍在何处收集数据以及选择策略时的一些问题,包括将ML应用于实验和建模的示例方法,例如为材料科学问题构建ML解决方案过程中的第一步。传统的材料发现技术,如基于密度泛函理论和经验试验和错误方法,其开发周期长,效率低,成本高,使材料研究无法跟上现代进步。因此,机器学习以其低廉的计算成本和快速的开发周期,以及强大的数据处理能力和良好的预测性能,被广泛应用于材料检测、材料设计和材料分析。本文总结了机器学习算法在不同材料科学领域的最新应用,讨论了广泛应用所需的进展,并详细介绍了使用机器学习评估材料特征所涉及的关键操作程序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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