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A quantum annealing approach for fault detection and diagnosis of graph-based systems

机译:一种用于基于图的系统故障检测和诊断的量子退火方法

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Diagnosing the minimal set of faults capable of explaining a set of given observations, e.g., from sensor readouts, is a hard combinatorial optimization problem usually tackled with artificial intelligence techniques. We present the mapping of this combinatorial problem to quadratic unconstrained binary optimization (QUBO), and the experimental results of instances embedded onto a quantum annealing device with 509 quantum bits. Besides being the first time a quantum approach has been proposed for problems in the advanced diagnostics community, to the best of our knowledge this work is also the first research utilizing the route Problem -> QUBO -> Direct embedding into quantum hardware, where we are able to implement and tackle problem instances with sizes that go beyond previously reported toy-model proof-of-principle quantum annealing implementations; this is a significant leap in the solution of problems via direct-embedding adiabatic quantum optimization. We discuss some of the programmability challenges in the current generation of the quantum device as well as a few possible ways to extend this work to more complex arbitrary network graphs.
机译:诊断能够解释一组给定观察结果(例如从传感器读数中得出)的最小故障集是通常用人工智能技术解决的硬组合优化问题。我们提出了这个组合问题到二次无约束二进制优化(QUBO)的映射,以及实例嵌入到具有509个量子比特的量子退火设备中的实验结果。据我们所知,这项工作不仅是首次提出一种针对高级诊断界中问题的量子方法,而且还是利用“问题-> QUBO->直接嵌入量子硬件”路线的第一项研究。能够以超出先前报告的玩具模型原理验证的量子退火实现的方式实现和解决问题实例;这是通过直接嵌入绝热量子优化解决问题的重大飞跃。我们讨论了当前一代量子设备中的一些可编程性挑战,以及将这项工作扩展到更复杂的任意网络图的几种可能方式。

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