Sum Standard Deviation of Frequency – A Context Independent Machine Condition Trend Indicator

Authors

DOI:

https://doi.org/10.37256/dmt.3220233254

Keywords:

fault diagnostics, fault prognostics, synchrosqueezed wavelet transform, scalogram, standard deviation of frequency, SSDF

Abstract

In Industry 4.0, multiple research subjects have been involved in processing enormous information generated during the manufacturing process. Meanwhile, they all pursue the same goal, that is, to maintain the manufacturing process at good operating state. Hence, many researchers are focusing their researches on continuous health monitoring using digital signal processing techniques, in particular, most researches are focused on recognition of a fault condition only. However, by the time when a fault is recognised, at least one reject has been produced, or an impact to the system's operation has occurred. In addition, many algorithms are designed specifically for certain class of applications. This paper proposes a new system health condition indicator, Sum Standard Deviation of Frequency (SSDF), which is computed from a new computational process that segments raw data streams into time segments and the segments are synchrosqueezed continuous wavelet transformed. As long as sufficient data is available, SSDF shows distinct consecutive regions for "normal", "marginal" and "abnormal" machine conditions. Actions can then be taken while the machine is in "marginal" conditions in which the manufacturing quality is still acceptable. SSDF does not link to any application context information of the raw signal data stream hence making it context independent.

 

Author Biographies

Shi Feng, School of Engineering, RMIT University, Melbourne, VIC 3000, Australia

 

 

 

John P.T. Mo, School of Engineering, RMIT University, Melbourne, VIC 3000, Australia

 

 

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Published

2023-10-27

How to Cite

1.
Feng S, Mo JP. Sum Standard Deviation of Frequency – A Context Independent Machine Condition Trend Indicator. Digit. Manuf. Technol. [Internet]. 2023 Oct. 27 [cited 2024 May 21];3(2):230-49. Available from: https://ojs.wiserpub.com/index.php/DMT/article/view/3254