计算机科学
代表(政治)
可扩展性
统计物理学
简单(哲学)
人工神经网络
势能面
势能
齐次空间
曲面(拓扑)
量子
人工智能
理论计算机科学
经典力学
物理
量子力学
数学
从头算
几何学
政治
法学
哲学
认识论
数据库
政治学
作者
Jiequn Han,Linfeng Zhang,Roberto Car,E Weinan
标识
DOI:10.4208/cicp.oa-2017-0213
摘要
We present a simple, yet general, end-to-end deep neural network representation of the potential energy surface for atomic and molecular systems. This methodology, which we call Deep Potential, is "first-principle" based, in the sense that no ad hoc approximations or empirical fitting functions are required. The neural network structure naturally respects the underlying symmetries of the systems. When tested on a wide variety of examples, Deep Potential is able to reproduce the original model, whether empirical or quantum mechanics based, within chemical accuracy. The computational cost of this new model is not substantially larger than that of empirical force fields. In addition, the method has promising scalability properties. This brings us one step closer to being able to carry out molecular simulations with accuracy comparable to that of quantum mechanics models and computational cost comparable to that of empirical potentials.
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