高维数据流的故障分类:基于多重假设检验的方向性诊断框架

Fault classification for high‐dimensional data streams: A directional diagnostic framework based on multiple hypothesis testing

Naval Research Logistics · 2021
被引 17
ABS 3

中文导读

针对高维数据流中故障方向难以确定的问题,提出一个基于多重假设检验的三分类诊断框架,能有效控制误报率并提升诊断效果。

Abstract

Abstract In various modern statistical process control applications that involve high‐dimensional data streams (HDDS), accurate fault diagnosis of out‐of‐control (OC) streams is becoming crucial. The existing diagnostic approaches either focus on moderate‐dimensional processes or are unable to determine the shift direction accurately, especially when the signal‐to‐noise ratio is low. In this paper, we conduct a bold trial and consider the fault classification problem of the mean vector of HDDS where determining the shift direction of the OC streams is important to perform customized repairs. To this end, under the basic assumptions that the in‐control data streams are normal with mean 0 and variance 1, and that the high‐dimensional observations after the alarm are solely OC, the problem is formulated into a three‐classification multiple testing framework, and an efficient data‐driven diagnostic procedure is developed to minimize the expected number of false positives and to control the missed discovery rate at given level. The procedure is statistically optimal and computationally efficient, and improves the diagnostic effectiveness by considering directional information, which provides insights to guide further decisions. Both theoretical and numerical results reveal the superiority of the new method.

统计过程控制高维数据流故障诊断多重假设检验数据挖掘