Fu Weiqiang, Mo Yujie, Xiao Yi, Liu Chang, Zhou Feng, Wang Yang, Zhou Jielong, Zhang Yingsheng J
Beijing StoneWise Technology Co., Ltd., Haidian Street 15, Haidian District, Beijing 100080, China.
J Chem Theory Comput. 2024 Jun 11;20(11):4533-4544. doi: 10.1021/acs.jctc.3c01181. Epub 2024 Jun 3.
Exclusively prioritizing the precision of energy prediction frequently proves inadequate in satisfying multifaceted requirements. A heightened focus is warranted on assessing the rationality of potential energy curves predicted by machine learning-based force fields (MLFFs), alongside evaluating the pragmatic utility of these MLFFs. This study introduces SWANI, an optimized neural network potential stemming from the ANI framework. Through the incorporation of supplementary physical constraints, SWANI aligns more cohesively with chemical expectations, yielding rational potential energy profiles. It also exhibits superior predictive precision compared with that of the ANI model. Additionally, a comprehensive comparison is conducted between SWANI and a prominent graph neural network-based model. The findings indicate that SWANI outperforms the latter, particularly for molecules exceeding the dimensions of the training set. This outcome underscores SWANI's exceptional capacity for generalization and its proficiency in handling larger molecular systems.
仅仅将能量预测的精度作为唯一优先考虑因素,往往被证明不足以满足多方面的需求。在评估基于机器学习的力场(MLFFs)预测的势能曲线的合理性以及评估这些MLFFs的实际效用方面,有必要给予更多关注。本研究引入了SWANI,这是一种源自ANI框架的优化神经网络势能。通过纳入补充物理约束,SWANI与化学预期更紧密地契合,产生合理的势能分布。与ANI模型相比,它还表现出更高的预测精度。此外,还对SWANI与一个著名的基于图神经网络的模型进行了全面比较。结果表明,SWANI优于后者,特别是对于超过训练集维度的分子。这一结果凸显了SWANI卓越的泛化能力及其处理更大分子系统的能力。