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Quantum Computation of Conical Intersections on a Programmable Superconducting Quantum Processor.

Shoukuan Zhao, Diandong Tang, Xiaoxiao Xiao, Ruixia Wang, Qiming Sun, Zhen Chen, Xiaoxia Cai, Zhendong Li, Haifeng Yu, Weihai Fang·February 20, 2024·DOI: 10.1021/acs.jpclett.4c01314
MedicinePhysics

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Abstract

Conical intersections (CIs) are pivotal in many photochemical processes. Traditional quantum chemistry methods, such as the state-average multiconfigurational methods, face computational hurdles in solving the electronic Schrödinger equation within the active space on classical computers. While quantum computing offers a potential solution, its feasibility in studying CIs, particularly on real quantum hardware, remains largely unexplored. Here, we present the first successful realization of a hybrid quantum-classical state-average complete active space self-consistent field method based on the variational quantum eigensolver (VQE-SA-CASSCF) on a superconducting quantum processor. This approach is applied to investigate CIs in two prototypical systems─ethylene (C2H4) and triatomic hydrogen (H3). We illustrate that VQE-SA-CASSCF, coupled with ongoing hardware and algorithmic enhancements, can lead to a correct description of CIs on existing quantum devices. These results lay the groundwork for exploring the potential of quantum computing to study CIs in more complex systems in the future.

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