论文标题

使用杂种量子古典神经网络的地面和激发态的势能表面推断

Potential energy surfaces inference of both ground and excited state using hybrid quantum-classical neural network

论文作者

Nishida, Yasutaka, Aiga, Fumihiko

论文摘要

随着对量子计算的不断增长的兴趣,变异量子本索(VQE)吸引了很多关注,这是可能应用近期量子计算机的应用。尽管VQE经常应用于量子化学,但要获得可靠的结果需要高的计算成本,因为需要无限的许多测量来获得准确的期望值,并且计算了多次预期值,以最大程度地减少各种优化过程中的成本函数。因此,有必要在实用任务中降低VQE的计算成本,例如以化学精度估算势能表面(PESS),这对于分子结构和化学反应动力学的分析特别重要。最近已经提出了一个杂种量子古典神经网络,用于VQE的替代建模[Xia $ et \ al $,熵22,828(2020)]。使用该模型,可以准确推断出一个简单分子(例如H2)的基态能,而无需变化优化程序。在这项研究中,我们通过使用子空间 - 搜索量子量子质量程序来扩展模型,以便可以通过化学准确性来推断地面和激发态的佩斯。我们还通过使用IBM的QASM后端来证明采样噪声对预训练模型的性能的影响。

Reflecting the increasing interest in quantum computing, the variational quantum eigensolver (VQE) has attracted much attentions as a possible application of near-term quantum computers. Although the VQE has often been applied to quantum chemistry, high computational cost is required for reliable results because infinitely many measurements are needed to obtain an accurate expectation value and the expectation value is calculated many times to minimize a cost function in the variational optimization procedure. Therefore, it is necessary to reduce the computational cost of the VQE for a practical task such as estimating the potential energy surfaces (PESs) with chemical accuracy, which is of particular importance for the analysis of molecular structures and chemical reaction dynamics. A hybrid quantum-classical neural network has recently been proposed for surrogate modeling of the VQE [Xia $et\ al$, Entropy 22, 828 (2020)]. Using the model, the ground state energies of a simple molecule such as H2 can be inferred accurately without the variational optimization procedure. In this study, we have extended the model by using the subspace-search variational quantum eigensolver procedure so that the PESs of the both ground and excited state can be inferred with chemical accuracy. We also demonstrate the effects of sampling noise on performance of the pre-trained model by using IBM's QASM backend.

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