激发态
量子计算机
量子
势能面
计算机科学
量子机器学习
量子化学
领域(数学)
子空间拓扑
统计物理学
量子力学
物理
人工智能
分子
数学
超分子化学
纯数学
作者
Qianjun Yao,Qun Ji,Xiaopeng Li,Yehui Zhang,Xinyu Chen,Ming‐Gang Ju,Jie Liu,Jinlan Wang
标识
DOI:10.1021/acs.jpclett.4c01445
摘要
Electronically excited-state problems represent a crucial research field in quantum chemistry, closely related to numerous practical applications in photophysics and photochemistry. The emerging of quantum computing provides a promising computational paradigm to solve the Schrödinger equation for predicting potential energy surfaces (PESs). Here, we present a deep neural network model to predict parameters of the quantum circuits within the framework of variational quantum deflation and subspace search variational quantum eigensolver, which are two popular excited-state algorithms to implement on a quantum computer. The new machine learning-assisted algorithm is employed to study the excited-state PESs of small molecules, achieving highly accurate predictions. We then apply this algorithm to study the excited-state properties of the ArF system, which is essential to a gas laser. Through this study, we believe that with future advancements in hardware capabilities, quantum computing could be harnessed to solve excited-state problems for a broad range of systems.
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