利用量子机器学习和语言建模设计复杂的浓缩合金

IF 17.3 1区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Matter Pub Date : 2024-10-02 DOI:10.1016/j.matt.2024.05.035
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引用次数: 0

摘要

设计新型复杂浓缩合金(CCA)是材料科学的一个重要课题。然而,由于复杂的高维成分-属性关系,即使在物理或经验规则的指导下,根据研究人员的经验调整材料属性也是一项挑战。在此,我们采用量子计算(QC)技术和机器学习模型,在物理冶金学中提供量子计算的概念验证应用。我们提出了一种量子支持向量机(QSVM)模型来预测单相 CCA。我们的研究表明,带有纠缠的微调量子内核具有良好的性能,最高准确率可达 89.4%。然后,QSVM 模型与一种基于文本挖掘的新方法联合用于识别 1741 个轻量级 CCA。同时,我们设计了一种可控方法来研究噪声对模型性能的影响,并发现要想获得高性能的 QSVM 模型,需要将噪声水平降到最低。这项研究为设计基于量子技术的 CCA 提供了一种实用的通用方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Designing complex concentrated alloys with quantum machine learning and language modeling

Designing complex concentrated alloys with quantum machine learning and language modeling

Designing complex concentrated alloys with quantum machine learning and language modeling
Designing novel complex concentrated alloys (CCAs) is an essential topic in materials science. However, due to the complicated high-dimensional component-property relationship, tuning material properties by researchers’ experience is challenging, even when guided by physical or empirical rules. Here, we adopt quantum computing (QC) technology and machine learning models to provide a proof-of-concept application of QC in physical metallurgy. We propose a quantum support vector machine (QSVM) model to predict single-phase CCAs. We show that fine-tuned quantum kernels with entanglement deliver promising performance, with a maximum accuracy of 89.4%. The QSVM model is then used to identify 1,741 lightweight CCAs jointly with a new text-mining-based method. Meanwhile, we devise a controllable approach to study the effect of noise on model performance and find that the noise level needs to be minimized for high-performance QSVM models. This study provides a practical and general approach to designing CCAs based on quantum technologies.
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来源期刊
Matter
Matter MATERIALS SCIENCE, MULTIDISCIPLINARY-
CiteScore
26.30
自引率
2.60%
发文量
367
期刊介绍: Matter, a monthly journal affiliated with Cell, spans the broad field of materials science from nano to macro levels,covering fundamentals to applications. Embracing groundbreaking technologies,it includes full-length research articles,reviews, perspectives,previews, opinions, personnel stories, and general editorial content. Matter aims to be the primary resource for researchers in academia and industry, inspiring the next generation of materials scientists.
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