论文标题
通过集成的机器学习对属性的元素贡献进行功能材料发现的元素选择
Element selection for functional materials discovery by integrated machine learning of elemental contributions to properties
论文作者
论文摘要
材料之间的根本差异来自其组成化学元素的独特性质。在根据给定晶体结构中元素的精确比率出现特定差异之前,材料可以由其组成化学元件的集合表示。通过在元素周期表的水平上工作,评估其相位场水平的材料可以降低组合复杂性以加速筛选,并规避与组成级别方法相关的挑战,例如相位场内的较差的外推,以及无法进行详尽抽样的挑战。这种早期阶段的歧视结合了相位场的新颖性对齐的新颖性与确定化学领域的杰出实验挑战,以通过优先考虑在反应中结合的元素来调查新的化学领域。在这里,我们证明可以根据目标功能性能的最大预期值评估相位场,并根据化学新颖性进行排名。我们开发和现在阶段是一种端到端的机器学习模型,结合了相位场的表示,分类,回归和排名。首先,从计算和实验报告的材料中的化学元素的同时存在构造构建体特征,然后采用注意机制来学习相位场的表示并评估其功能性能。在元素周期表的级别上,阶段量化观察功能性能的概率,估算其在相位场内的值,并对相位场的新颖性进行排名,我们在三种材料途径适用于高温超导率的三种材料途径的准确性上证明了其值,高温磁性,高磁性磁性和目标带量的能量。
Fundamental differences between materials originate from the unique nature of their constituent chemical elements. Before specific differences emerge according to the precise ratios of elements in a given crystal structure, a material can be represented by the set of its constituent chemical elements. By working at the level of the periodic table, assessment of materials at the level of their phase fields reduces the combinatorial complexity to accelerate screening, and circumvents the challenges associated with composition-level approaches such as poor extrapolation within phase fields, and the impossibility of exhaustive sampling. This early stage discrimination combined with evaluation of novelty of phase fields aligns with the outstanding experimental challenge of identifying new areas of chemistry to investigate, by prioritising which elements to combine in a reaction. Here, we demonstrate that phase fields can be assessed with respect to the maximum expected value of a target functional property and ranked according to chemical novelty. We develop and present PhaseSelect, an end-to-end machine learning model that combines the representation, classification, regression and ranking of phase fields. First, PhaseSelect constructs elemental characteristics from the co-occurrence of chemical elements in computationally and experimentally reported materials, then it employs attention mechanisms to learn representation for phase fields and assess their functional performance. At the level of the periodic table, PhaseSelect quantifies the probability of observing a functional property, estimates its value within a phase field and also ranks a phase field novelty, which we demonstrate with significant accuracy for three avenues of materials applications for high-temperature superconductivity, high-temperature magnetism, and targeted bandgap energy.