Jurásková Veronika, Célerse Frederic, Laplaza Ruben, Corminboeuf Clemence
Laboratory for Computational Molecular Design (LCMD), Institute of Chemical Sciences and Engineering, Ecole Polytechnique Fédérale de Lausanne (EPFL), Lausanne 1015, Switzerland.
J Chem Phys. 2022 Apr 21;156(15):154112. doi: 10.1063/5.0085153.
Non-covalent bonding patterns are commonly harvested as a design principle in the field of catalysis, supramolecular chemistry, and functional materials to name a few. Yet, their computational description generally neglects finite temperature and environment effects, which promote competing interactions and alter their static gas-phase properties. Recently, neural network potentials (NNPs) trained on density functional theory (DFT) data have become increasingly popular to simulate molecular phenomena in condensed phase with an accuracy comparable to ab initio methods. To date, most applications have centered on solid-state materials or fairly simple molecules made of a limited number of elements. Herein, we focus on the persistence and strength of chalcogen bonds involving a benzotelluradiazole in condensed phase. While the tellurium-containing heteroaromatic molecules are known to exhibit pronounced interactions with anions and lone pairs of different atoms, the relevance of competing intermolecular interactions, notably with the solvent, is complicated to monitor experimentally but also challenging to model at an accurate electronic structure level. Here, we train direct and baselined NNPs to reproduce hybrid DFT energies and forces in order to identify what the most prevalent non-covalent interactions occurring in a solute-Cl-THF mixture are. The simulations in explicit solvent highlight the clear competition with chalcogen bonds formed with the solvent and the short-range directionality of the interaction with direct consequences for the molecular properties in the solution. The comparison with other potentials (e.g., AMOEBA, direct NNP, and continuum solvent model) also demonstrates that baselined NNPs offer a reliable picture of the non-covalent interaction interplay occurring in solution.
非共价键合模式通常被用作催化、超分子化学和功能材料等领域的设计原则。然而,它们的计算描述通常忽略了有限温度和环境效应,这些效应会促进竞争性相互作用并改变其静态气相性质。最近,基于密度泛函理论(DFT)数据训练的神经网络势(NNP)越来越受欢迎,用于模拟凝聚相中的分子现象,其精度与从头算方法相当。迄今为止,大多数应用都集中在固态材料或由有限数量元素组成的相当简单的分子上。在此,我们关注凝聚相中涉及苯并碲二唑的硫族元素键的持久性和强度。虽然含碲杂环芳烃分子已知与阴离子和不同原子的孤对表现出明显的相互作用,但竞争性分子间相互作用的相关性,特别是与溶剂的相互作用,在实验上难以监测,在精确的电子结构水平上建模也具有挑战性。在这里,我们训练直接和基线化的NNP以重现混合DFT能量和力,以便确定溶质 - Cl - 四氢呋喃混合物中最普遍的非共价相互作用是什么。在显式溶剂中的模拟突出了与溶剂形成的硫族元素键的明显竞争以及相互作用的短程方向性对溶液中分子性质的直接影响。与其他势(例如AMOEBA、直接NNP和连续介质溶剂模型)的比较也表明,基线化的NNP提供了溶液中发生的非共价相互作用相互作用的可靠图景。