Embedding human knowledge in material screening pipeline as filters to identify novel synthesizable inorganic materials

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-07-16 DOI:10.1039/d4fd00120f
Basita Das, Kangyu Ji, FANG SHENG, Kyle McCall, Tonio Buonassisi
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Abstract

How might one embed a chemist’s knowledge into an automated materials-discovery pipeline? In generative design for inorganic crystalline materials, generating candidate compounds is no longer a bottleneck — there are now synthetic datasets of millions of compounds. However, weeding out unsynthesizable or difficult to synthesize compounds remains an outstanding challenge. Post-generation “filters” have been proposed as a means of embedding human domain knowledge, either in the form of scientific laws or rules of thumb. Examples include charge neutrality, electronegativity balance, and energy above hull. Some filters are “hard” and some are “soft” — for example, it is difficult to envision creating a stable compound while violating the rule of charge neutrality; however, several compounds break the Hume-Rothery rules. It is therefore natural to wonder: Can one compile a comprehensive list of “filters” that embed domain knowledge, adopt a principled approach to classifying them as either non- conditional or conditional "filters," and envision a software environment to implement combinations of these in a systematic manner? In this commentary we explore such questions, “filters” for screening of novel inorganic compounds for synthesizability.
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将人类知识嵌入材料筛选管道,作为识别新型可合成无机材料的过滤器
如何将化学家的知识嵌入自动材料发现管道?在无机晶体材料的生成设计中,生成候选化合物已不再是瓶颈--现在已有数百万个化合物的合成数据集。然而,如何剔除无法合成或难以合成的化合物仍是一项艰巨的挑战。有人提出了后代 "过滤器",以科学定律或经验法则的形式嵌入人类领域知识。这方面的例子包括电荷中性、电负性平衡和高于船体的能量。有些过滤是 "硬 "的,有些则是 "软 "的--例如,很难设想在违反电荷中性规则的同时还能创造出稳定的化合物;然而,有几种化合物却违反了 Hume-Rothery 规则。因此,我们自然会有这样的疑问:我们能否编制一份包含领域知识的 "过滤器 "综合清单,采用一种有原则的方法将它们归类为非条件 "过滤器 "或条件 "过滤器",并设想一种软件环境,以系统的方式实现这些过滤器的组合?在本评论中,我们将探讨此类问题,即筛选新型无机化合物合成性的 "过滤器"。
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CiteScore
7.20
自引率
4.30%
发文量
567
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