Machine Learning-Assisted Selection of Active Spaces for Strongly Correlated Transition Metal Systems

化学空间 计算机科学 原子轨道 密度矩阵重整化群 中间性中心性 物理 重整化群 化学 量子力学 数学 中心性 生物化学 组合数学 药物发现 电子
作者
Pavlo Golub,Andrej Antalík,Libor Veis,Jiří Brabec
出处
期刊:Journal of Chemical Theory and Computation [American Chemical Society]
卷期号:17 (10): 6053-6072 被引量:23
标识
DOI:10.1021/acs.jctc.1c00235
摘要

Active space quantum chemical methods could provide very accurate description of strongly correlated electronic systems, which is of tremendous value for natural sciences. The proper choice of the active space is crucial but a nontrivial task. In this article, we present a neural network-based approach for automatic selection of active spaces, focused on transition metal systems. The training set has been formed from artificial systems composed of one transition metal and various ligands, on which we have performed the density matrix renormalization group and calculated the single-site entropy. On the selected set of systems, ranging from small benchmark molecules up to larger challenging systems involving two metallic centers, we demonstrate that our machine learning models could predict the active space orbitals with reasonable accuracy. We also tested the transferability on out-of-the-model systems, including bimetallic complexes and complexes with ligands, which were not involved in the training set. Also, we tested the correctness of the automatically selected active spaces on a Fe(II)–porphyrin model, where we studied the lowest states at the DMRG level and compared the energy difference between spin states or the energy difference between conformations of ferrocene with recent studies.

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