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A Multi-Objective Approach to Force Field Optimization: Structures and Spin State Energetics of d~6 Fe(II) Complexes

机译:力场优化的多目标方法:d〜6 Fe(II)配合物的结构和自旋态能

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The next generation of force fields (FFs), regardless of the accuracy of the potential energy representation, will always have parameters that must be fitted in order to reproduce experimental and/or ab initio data accurately. Single objective methods have been used for many years to automate the obtaining of parameters, but this leads to ambiguity. The solution depends on the chosen weights and is therefore not unique. There have been few advances in solving this problem, which thus remains a major hurdle for the development of empirical FF methods. We propose a solution based on multi-objective evolutionary algorithms (MOEAs). MOEAs allow the FF to be tuned against the desired objectives and offer a powerful, efficient, and automated means to reparameterize FFs, or even discover the parameters for a new potential. Here, we illustrate the application of MOEAs by reparameterizing the ligand field molecular mechanics (LFMM) FF recently reported for modeling spin crossover in iron-(II)—amine complexes (Deeth et al. J. Am. Chetn. Soc. 2010, 132, 6876). We quickly recover the performance of the original parameter set and then significantly improve it to reproduce the geometries and spin state energy differences of an extended series of complexes with RMSD errors in Fe—N and N—N distances reduced from 0.06 A to 0.03 A and spin state energy difference RMSDs reduced from 1.5 kcal mol~- to 0.2 kcal mol~(-1) . The new parameter sets highlight, and help resolve, shortcomings both in the non-LFMM FF parameters and in the interpretation of experimental data for several other Fe(II)N6 amine complexes not used in the FF optimization.
机译:不管势能表示的准确性如何,下一代力场(FFs)始终将具有必须拟合的参数,以便准确地再现实验和/或从头算起的数据。多年以来一直使用单目标方法来自动获取参数,但这会导致模棱两可。解决方案取决于所选的权重,因此不是唯一的。解决该问题的进展很少,因此仍然是经验FF方法发展的主要障碍。我们提出了一种基于多目标进化算法(MOEA)的解决方案。 MOEA使FF能够针对所需目标进行调整,并提供了强大,高效且自动化的方法来重新设置FF参数,甚至发现具有新潜力的参数。在这里,我们通过重新参数化最近报道的用于模拟铁-(II)-胺络合物中的自旋交叉的配体场分子力学(LFMM)FF来说明MOEA的应用(Deeth等人,J。Am。Chetn。Soc。2010,132) ,6876)。我们迅速恢复了原始参数集的性能,然后对其进行了显着改进,以重现一系列扩展的配合物的几何形状和自旋态能量差,其中Fe-N和N-N距离的RMSD误差从0.06 A降低至0.03 A自旋态能量差RMSDs从1.5 kcal mol〜-降低到0.2 kcal mol〜(-1)。新的参数集突出并帮助解决了非LFMM FF参数以及在FF优化中未使用的其他几种Fe(II)N6胺配合物的实验数据解释方面的缺陷。

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