论文标题
用于发射机定位的量子传感器网络算法
Quantum Sensor Network Algorithms for Transmitter Localization
论文作者
论文摘要
量子传感器(QS)能够以极高的灵敏度测量各种物理现象。 QSS已用于多种应用,例如原子干涉仪,但是已经提出或开发了量子传感器网络(QSN)的应用。我们查看QSN的自然应用 - 事件的定位(尤其是无线信号发射器)。在本文中,我们开发了使用QSN定位发射机的有效基于量子的技术。我们的方法将本地化问题作为一个良好的量子状态歧视(QSD)问题,并解决了其在本地化问题中的挑战。特别是,量子状态歧视解决方案可能会遭受高误差的可能性,尤其是当状态数量(即在我们案例中潜在发射器位置的数量)可能很高时。我们通过开发两级定位方法来应对这一挑战,该方法将发射器定位在第一层的粗糙粒度,然后在第二层的粒度上更加细腻。我们通过开发新方案来解决一般测量的不切实际性的额外挑战,这些方案可以用训练有素的参数化混合量子量子电路来代替QSD的测量运算符。我们使用自定义模拟器的评估结果表明,我们的最佳方案能够达到仪表级(1-5m)的本地化精度;在离散位置的情况下,它实现了几乎完美(99-100 \%)的分类精度。
A quantum sensor (QS) is able to measure various physical phenomena with extreme sensitivity. QSs have been used in several applications such as atomic interferometers, but few applications of a quantum sensor network (QSN) have been proposed or developed. We look at a natural application of QSN -- localization of an event (in particular, of a wireless signal transmitter). In this paper, we develop effective quantum-based techniques for the localization of a transmitter using a QSN. Our approaches pose the localization problem as a well-studied quantum state discrimination (QSD) problem and address the challenges in its application to the localization problem. In particular, a quantum state discrimination solution can suffer from a high probability of error, especially when the number of states (i.e., the number of potential transmitter locations in our case) can be high. We address this challenge by developing a two-level localization approach, which localizes the transmitter at a coarser granularity in the first level, and then, in a finer granularity in the second level. We address the additional challenge of the impracticality of general measurements by developing new schemes that replace the QSD's measurement operator with a trained parameterized hybrid quantum-classical circuit. Our evaluation results using a custom-built simulator show that our best scheme is able to achieve meter-level (1-5m) localization accuracy; in the case of discrete locations, it achieves near-perfect (99-100\%) classification accuracy.