论文标题
激发态的量子戴维森算法
Quantum Davidson Algorithm for Excited States
论文作者
论文摘要
激发的状态特性在各种化学和物理现象(例如电荷分离和发射发射)中起关键作用。然而,如量子相估计和变异量子本质量(VQE)所示,大多数现有量子算法的主要重点是基态。尽管已扩展了VQE型方法以探索激发态,但这些方法应对优化挑战。相比之下,已经引入了量子Krylov子空间(QK)方法来解决地面和激发态,将自己定位为量子相估计的具有成本效益的替代品。我们的研究提出了一种经济QKS算法,我们将其称为量子戴维森(Qdavidson)算法。这项创新取决于Krylov子空间的迭代扩展以及在Davidson框架内纳入预先调节器。通过使用特征态的残基来扩展Krylov子空间,我们设法制定了一个紧凑的子空间,该子空间与精确的解决方案紧密保持一致。与其他QK技术相比,这种迭代的子空间扩展为更快的收敛铺平了道路。使用量子模拟器,我们采用了新型的Qdavidson算法来深入研究各种系统的激发态性能,从海森伯格自旋模型到真实分子。与现有的QK方法相比,Qdavidson算法不仅会迅速收敛,而且需要明显较浅的电路。该效率将Qdavidson方法建立为务实的工具,用于阐明量子计算平台上的地面和激发状态性能。
Excited state properties play a pivotal role in various chemical and physical phenomena, such as charge separation and light emission. However, the primary focus of most existing quantum algorithms has been the ground state, as seen in quantum phase estimation and the variational quantum eigensolver (VQE). Although VQE-type methods have been extended to explore excited states, these methods grapple with optimization challenges. In contrast, the quantum Krylov subspace (QKS) method has been introduced to address both ground and excited states, positioning itself as a cost-effective alternative to quantum phase estimation. Our research presents an economic QKS algorithm, which we term the quantum Davidson (QDavidson) algorithm. This innovation hinges on the iterative expansion of the Krylov subspace and the incorporation of a pre-conditioner within the Davidson framework. By using the residues of eigenstates to expand the Krylov subspace, we manage to formulate a compact subspace that aligns closely with the exact solutions. This iterative subspace expansion paves the way for a more rapid convergence in comparison to other QKS techniques, such as the quantum Lanczos. Using quantum simulators, we employ the novel QDavidson algorithm to delve into the excited state properties of various systems, spanning from the Heisenberg spin model to real molecules. Compared to the existing QKS methods, the QDavidson algorithm not only converges swiftly but also demands a significantly shallower circuit. This efficiency establishes the QDavidson method as a pragmatic tool for elucidating both ground and excited state properties on quantum computing platforms.