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Materials discovery and design using machine learning

机译:使用机器学习进行材料发现和设计

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The screening of novel materials with good performance and the modelling of quantitative structure-activity relationships (QSARs), among other issues, are hot topics in the field of materials science. Traditional experiments and computational modelling often consume tremendous time and resources and are limited by their experimental conditions and theoretical foundations. Thus, it is imperative to develop a new method of accelerating the discovery and design process for novel materials. Recently, materials discovery and design using machine learning have been receiving increasing attention and have achieved great improvements in both time efficiency and prediction accuracy. In this review, we first outline the typical mode of and basic procedures for applying machine learning in materials science, and we classify and compare the main algorithms. Then, the current research status is reviewed with regard to applications of machine learning in material property prediction, in new materials discovery and for other purposes. Finally, we discuss problems related to machine learning in materials science, propose possible solutions, and forecast potential directions of future research. By directly combining computational studies with experiments, we hope to provide insight into the parameters that affect the properties of materials, thereby enabling more efficient and target-oriented research on materials discovery and design.
机译:具有良好性能的新型材料的筛选以及定量构效关系(QSAR)的建模等是材料科学领域的热门话题。传统的实验和计算模型通常会消耗大量的时间和资源,并受其实验条件和理论基础的限制。因此,迫切需要开发一种新的方法来加快新型材料的发现和设计过程。近来,使用机器学习的材料发现和设计已受到越来越多的关注,并且在时间效率和预测准确性上都取得了很大的进步。在这篇综述中,我们首先概述了在材料科学中应用机器学习的典型模式和基本过程,然后对主要算法进行分类和比较。然后,就机器学习在材料特性预测,新材料发现和其他目的中的应用方面,回顾了当前的研究现状。最后,我们讨论了与材料科学中的机器学习相关的问题,提出了可能的解决方案,并预测了未来研究的潜在方向。通过将计算研究与实验直接结合,我们希望提供对影响材料特性的参数的深入了解,从而实现对材料发现和设计的更有效且面向目标的研究。

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