High-dimensional data has become popular due to the easy accessibility of sensors in modern industrial applications. However, one specific challenge is that it is often not easy to obtain complete measurements due to limited sensing powers and resource constraints. Furthermore, distinct failure patterns may exist in the systems, and it is necessary to identify the true failure pattern. This work focuses on the online adaptive monitoring of high-dimensional data in resource-constrained environments with multiple potential failure modes. To achieve this, we propose to apply the Shiryaev-Roberts procedure on the failure mode level and utilize the multi-arm bandit to balance the exploration and exploitation. We further discuss the theoretical property of the proposed algorithm to show that the proposed method can correctly isolate the failure mode. Finally, extensive simulations and two case studies demonstrate that the change point detection performance and the failure mode isolation accuracy can be greatly improved.
翻译:高维数据由于现代工业应用中的传感器容易获得而变得很受欢迎。然而,一个具体的挑战在于,由于遥感力量和资源限制有限,往往不容易获得完整的测量。此外,系统中可能存在不同的故障模式,有必要查明真正的故障模式。这项工作侧重于在资源紧张、有多种潜在故障模式的环境下对高维数据进行在线适应性监测。为此,我们提议对故障模式水平采用Shiryaev-Roberts程序,并利用多臂波段来平衡勘探和开发。我们进一步讨论了拟议算法的理论属性,以表明拟议方法能够正确分离故障模式。最后,广泛的模拟和两个案例研究表明,改变点探测性能和故障模式隔离性能可以大大改进。