Measurement-Driven Navigation in Many-Body Hilbert Space: Active-Decision Steering

IF 11 Q1 PHYSICS, APPLIED
Yaroslav Herasymenko, Igor Gornyi, Yuval Gefen
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引用次数: 0

Abstract

The challenge of preparing a system in a designated state spans diverse facets of quantum mechanics. To complete this task of steering quantum states, one can employ quantum control through a sequence of generalized measurements, which direct the system towards the target state. In an active version of this protocol, the obtained measurement readouts are used to adjust the protocol on the go. This enables a sped-up performance relative to the passive version of the protocol, where no active adjustments are included. In this work, we consider such active measurement-driven steering as applied to the challenging case of many-body quantum systems. The target states of highest interest would be those with multipartite entanglement. Such state preparation in a measurement-based protocol is limited by the natural constraints for system-detector couplings. We develop a framework for finding such physically feasible couplings, based on parent Hamiltonian construction. For helpful decision-making strategies, we offer Hilbert-space-orientation techniques, comparable to those used in navigation. The first one is to tie the active-decision protocol to the greedy accumulation of the cost function, such as the target state fidelity. We show the potential of a significant speedup, employing this greedy approach to a broad family of matrix product state targets. For system sizes considered here, an average value of the speedup factor f across this family settles about 20, for some targets even reaching a few thousands. We also identify a subclass of matrix product state targets, including the ground state of the Affleck-Kennedy-Lieb-Tasaki spin chain, for which the value of f increases with system size. In addition to the greedy approach, the second wayfinding technique is to map out the available measurement actions onto a quantum state machine. A decision-making protocol can be based on such a representation, using semiclassical heuristics. This state-machine-based approach can be applied to a more restricted set of targets, where it sometimes offers advantages over the cost-function-based method. We give an example of a W-state preparation, which is accelerated with this method by f≃3.5, outperforming the greedy protocol for this target.3 MoreReceived 24 December 2021Revised 10 October 2022Accepted 10 May 2023DOI:https://doi.org/10.1103/PRXQuantum.4.020347Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article's title, journal citation, and DOI.Published by the American Physical SocietyPhysics Subject Headings (PhySH)Research AreasEntanglement productionQuantum controlQuantum state engineeringWeak values & weak measurementsTechniquesApproximation methods for many-body systemsQuantum InformationCondensed Matter, Materials & Applied Physics
多体希尔伯特空间中的测量驱动导航:主动决策导向
在指定状态下制备系统的挑战跨越了量子力学的各个方面。为了完成操纵量子态的任务,可以通过一系列广义测量来使用量子控制,这些测量将系统引导到目标状态。在该协议的活动版本中,获得的测量读数用于在运行中调整协议。这使得相对于协议的被动版本(不包括主动调整)的性能更快。在这项工作中,我们考虑将这种主动测量驱动的转向应用于多体量子系统的挑战性情况。最令人感兴趣的目标状态将是那些具有多方纠缠的状态。在基于测量的协议中,这种状态准备受到系统探测器耦合的自然约束的限制。我们开发了一个框架,以寻找这种物理上可行的耦合,基于母体哈密顿构造。对于有用的决策策略,我们提供了希尔伯特空间定向技术,与导航中使用的技术相当。第一种是将主动决策协议与代价函数的贪婪累积(如目标状态保真度)联系起来。我们展示了显著加速的潜力,将这种贪婪方法应用于广泛的矩阵乘积状态目标。对于这里考虑的系统大小,整个系列的加速因子f的平均值约为20,对于某些目标甚至达到数千。我们还确定了矩阵积态目标的子类,包括Affleck-Kennedy-Lieb-Tasaki自旋链的基态,其f值随系统大小而增加。除了贪心方法之外,第二种寻路技术是将可用的测量动作映射到量子状态机上。决策协议可以基于这种表示,使用半经典启发式。这种基于状态机的方法可以应用于更有限的目标集,在这些目标集中,它有时比基于成本函数的方法更具优势。我们给出了一个w态制备的例子,该方法通过f≃3.5加速w态的制备,优于该目标的贪婪协议根据知识共享署名4.0国际许可协议,美国物理学会于2023年5月10日接受doi:https://doi.org/10.1103/PRXQuantum.4.020347Published。这项工作的进一步分发必须保持作者的归属和已发表文章的标题,期刊引用和DOI。发表于美国物理学会物理学科标题(PhySH)研究领域纠缠产生量子控制量子态工程弱值与弱测量技术多体系统的近似方法量子信息凝聚态材料与应用物理
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CiteScore
14.60
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