Machine learning driven prediction of lattice constants in transition metal dichalcogenides

Bhupendra Sharma, Laxman Chaudhary, Rajendra Adhikari, Madhav Prasad Ghimire
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Abstract

Machine learning represents an emerging branch of artificial intelligence, centering on the enhancement of algorithms in computer programs through the utilization of data and the accumulation of research-driven knowledge. The requirement for artificial intelligence in materials science is essential due to the significant need for innovative high-performance materials on a large scale. In this report, the gradient boosting regression tree model of machine learning was applied to predict the lattice constants of cubic and trigonal MX2 systems (M=transition metal and X=chalcogen atoms). The theoretical/experimental values of the materials were compared to the predicted values to calculate the standard errors such as RMSE (root mean square error) and MAE (mean absolute error). The features used to predict lattice constants were ionic radius, lattice angles, bandgap, formation energy, total magnetic moment, density and oxidation states. The features versus contribution barplot has been drawn to reveal the contribution level of each parameter in the degree of [0,1] to obtain the predictions. This report provides a precise account of the prediction methodology for lattice parameters of the transition metal dichalcogenides family, a process that was previously not reported.
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机器学习驱动的过渡金属二钴化物晶格常数预测
机器学习是人工智能的一个新兴分支,其核心是通过利用数据和积累研究驱动的知识来增强计算机程序中的算法。由于对创新高性能材料的大规模需求,材料科学领域对人工智能的需求至关重要。本报告应用机器学习的梯度提升回归树模型来预测立方和三方 MX2 体系(M=过渡金属,X=钙原原子)的晶格常数。将材料的理论/实验值与预测值进行比较,以计算标准误差,如 RMSE(均方根误差)和 MAE(平均绝对误差)。用于预测晶格常数的特征包括离子半径、晶格角度、带隙、形成能、总磁矩、密度和氧化态。绘制了特征与贡献柱状图,以揭示每个参数在 [0,1] 范围内对预测结果的贡献程度。本报告提供了过渡金属二钙化族晶格参数预测方法的精确说明,而这一过程以前从未报道过。
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