A remote health condition monitoring system based on compressed sensing

Jie Liu, Youmin Hu, Yanglong Lu, Yan Wang, L. Xiao, Kunming Zheng
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引用次数: 1

Abstract

Data-driven health condition monitoring has received increasing attentions. However, the bandwidth of transmission channels imposes the limit on the amount of sensor data to be used in remote condition monitoring systems in real-time applications. In this paper, a remote health condition monitoring (RHCM) method based on compressed sensing (CS) is proposed for machine state classification and signal reconstruction. Compressed sensor signals can be directly used to identify different machine states based on a pre-constructed dictionary without the need of traditional feature extraction process. Alternatively, the complete signals can also be reconstructed from the compressed signals and traditional classification approaches can be applied. A case study based on rolling bearing is used to show that the proposed RHCM method can effectively recognize and classify the machine states under different operation conditions using low-volume sensor signals, and the reconstructed signals are accurate enough for post-evaluation or quality assessment of on-site machine process.
基于压缩感知的远程健康状态监测系统
数据驱动的健康状态监测越来越受到人们的关注。然而,传输信道的带宽限制了远程状态监测系统中实时应用的传感器数据量。提出了一种基于压缩感知(CS)的远程健康状态监测方法,用于机器状态分类和信号重构。压缩后的传感器信号可以直接用于基于预构造字典的机器状态识别,而不需要传统的特征提取过程。或者,也可以从压缩后的信号重构完整的信号,并采用传统的分类方法。以滚动轴承为例,表明所提出的RHCM方法可以利用小体积传感器信号对不同运行条件下的机器状态进行有效识别和分类,重构后的信号足够准确,可用于现场机器过程的后评价或质量评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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