量子算法
量子位元
量子模拟器
量子力学
量子门
量子电路
量子信息
哈密顿量(控制论)
作者
Jules Tilly,Glenn Jones,Hongxiang Chen,Leonard Wossnig,Edward R. Grant
出处
期刊:Physical Review A
[American Physical Society]
日期:2020-12-24
卷期号:102 (6): 062425-
被引量:11
标识
DOI:10.1103/physreva.102.062425
摘要
Solving for molecular excited states remains one of the key challenges of modern quantum chemistry. Traditional methods are constrained by existing computational capabilities, limiting the complexity of the molecules that can be studied or the accuracy of the results that can be obtained. Several quantum computing methods have been suggested to address this limitation. However, these typically have hardware requirements which may not be achieved in the near term. We propose a variational quantum machine learning based method to determine molecular excited states aiming at being as resilient as possible to the defects of early noisy intermediate scale quantum computers and demonstrate an implementation for ${\mathrm{H}}_{2}$ on IBM Quantum Computers. Our method uses a combination of two parametrized quantum circuits, working in tandem, combined with a variational quantum eigensolver to iteratively find the eigenstates of a molecular Hamiltonian.
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