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Machine-Learning Rationalization and Prediction of Solid-State Synthesis Conditions

机译:固态合成条件的机器学习合理化与预测

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摘要

There currently exist no quantitative methods to determine the appropriate conditions for solid-state synthesis.This not only hinders the experimental realization of novel materials but also complicates the interpretation and understanding of solid-state reaction mechanisms.Here,we demonstrate a machine-learning approach that predicts synthesis conditions using large solid-state synthesis data sets text-mined from scientific journal articles.Using feature importance ranking analysis,we discovered that optimal heating temperatures have strong correlations with the stability of precursor materials quantified using melting points and formation energies(ΔG_f,ΔHf).In contrast,features derived from the thermodynamics of synthesis-related reactions did not directly correlate to the chosen heating temperatures.This correlation between optimal solid-state heating temperature and precursor stability extends Tamman's rule from intermetallics to oxide systems,suggesting the importance of reaction kinetics in determining synthesis conditions.Heating times are shown to be strongly correlated with the chosen experimental procedures and instrument setups,which may be indicative of human bias in the data set.Using these predictive features,we constructed machine-learning models with good performance and general applicability to predict the conditions required to synthesize diverse chemical systems.
机译:目前尚无定量方法确定固态合成的适当条件。这不仅阻碍了新材料的实验实现,而且使固相反应机理的解释和理解变得复杂。在这里,我们展示了一种机器学习方法,该方法使用从科学期刊文章中文本挖掘的大型固态合成数据集来预测合成条件。通过特征重要性排序分析,发现最佳加热温度与熔点和形成能(Δ G_f,ΔHf)量化的前驱体材料稳定性有较强的相关性。相反,从合成相关反应的热力学中得出的特征与所选的加热温度没有直接关系。最佳固态加热温度与前驱体稳定性之间的这种相关性将Tamman定律从金属间化合物扩展到氧化物体系,表明反应动力学在确定合成条件中的重要性。加热时间与所选的实验程序和仪器设置密切相关,这可能表明数据集中存在人为偏差。利用这些预测特征,我们构建了具有良好性能和普遍适用性的机器学习模型,以预测合成不同化学体系所需的条件。

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