Theoretische Chemie, Universität Bielefeld, Postfach 100131, D-33501 Bielefeld, Germany.
J Chem Phys. 2018 Nov 28;149(20):204106. doi: 10.1063/1.5053664.
A new diabatization method based on artificial neural networks (ANNs) is presented, which is capable of reproducing high-quality data with excellent accuracy for use in quantum dynamics studies. The diabatic potential matrix is expanded in terms of a set of basic coupling matrices and the expansion coefficients are made geometry-dependent by the output neurons of the ANN. The ANN is trained with respect to data using a modified Marquardt-Levenberg back-propagation algorithm. Due to its setup, this approach combines the stability and straightforwardness of a standard low-order vibronic coupling model with the accuracy by the ANN, making it particularly advantageous for problems with a complicated electronic structure. This approach combines the stability and straightforwardness of a standard low-order vibronic coupling model with the accuracy by the ANN, making it particularly advantageous for problems with a complicated electronic structure. This novel ANN diabatization approach has been applied to the low-lying electronic states of NO as a prototypical and notoriously difficult Jahn-Teller system in which the accurate description of the very strong non-adiabatic coupling is of paramount importance. Thorough tests show that an ANN with a single hidden layer is sufficient to achieve excellent results and the use of a "deeper" layering shows no clear benefit. The newly developed diabatic ANN potential energy surface (PES) model accurately reproduces a set of more than 90 000 Multi-configuration Reference Singles and Doubles Configuration Interaction (MR-SDCI) energies for the five lowest PES sheets.
提出了一种基于人工神经网络(ANNs)的新的绝热化方法,该方法能够以极高的精度再现高质量数据,可用于量子动力学研究。非绝热势能矩阵展开为一组基本耦合矩阵,扩展系数通过 ANN 的输出神经元与几何相关。ANN 采用改进的 Marquardt-Levenberg 反向传播算法针对数据进行训练。由于其设置,这种方法将标准低阶振子耦合模型的稳定性和简单性与 ANN 的准确性相结合,使其特别有利于具有复杂电子结构的问题。这种新的 ANN 绝热化方法已应用于 NO 的低能电子态,作为一个原型和众所周知的 Jahn-Teller 系统,其中非常强的非绝热耦合的准确描述至关重要。彻底的测试表明,具有单个隐藏层的 ANN 足以取得优异的结果,并且使用“更深”的分层没有明显的好处。新开发的绝热 ANN 势能面(PES)模型准确地再现了超过 90000 组多组态参考单重态和双重态组态相互作用(MR-SDCI)能量,用于五个最低的 PES 片。