Multi-Fault Diagnosis Of Industrial Rotating Machines Using Data-Driven
Approach: A Review Of Two Decades Of Research
- URL: http://arxiv.org/abs/2206.14153v1
- Date: Mon, 30 May 2022 14:54:27 GMT
- Title: Multi-Fault Diagnosis Of Industrial Rotating Machines Using Data-Driven
Approach: A Review Of Two Decades Of Research
- Authors: Shreyas Gawde, Shruti Patil, Satish Kumar, Pooja Kamat, Ketan Kotecha,
Ajith Abraham
- Abstract summary: This paper implements a systematic literature review on a Data-driven approach for multi-fault diagnosis of Industrial Rotating Machines.
The PRISMA method is a collection of guidelines for the composition and structure of systematic reviews and other meta-analyses.
It identifies the foundational work done in the field and gives a comparative study of different aspects related to multi-fault diagnosis of industrial rotating machines.
- Score: 19.89641921844766
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Industry 4.0 is an era of smart manufacturing. Manufacturing is impossible
without the use of machinery. Majority of these machines comprise rotating
components and are called rotating machines. The engineers' top priority is to
maintain these critical machines to reduce the unplanned shutdown and increase
the useful life of machinery. Predictive maintenance (PDM) is the current trend
of smart maintenance. The challenging task in PDM is to diagnose the type of
fault. With Artificial Intelligence (AI) advancement, data-driven approach for
predictive maintenance is taking a new flight towards smart manufacturing.
Several researchers have published work related to fault diagnosis in rotating
machines, mainly exploring a single type of fault. However, a consolidated
review of literature that focuses more on multi-fault diagnosis of rotating
machines is lacking. There is a need to systematically cover all the aspects
right from sensor selection, data acquisition, feature extraction, multi-sensor
data fusion to the systematic review of AI techniques employed in multi-fault
diagnosis. In this regard, this paper attempts to achieve the same by
implementing a systematic literature review on a Data-driven approach for
multi-fault diagnosis of Industrial Rotating Machines using Preferred Reporting
Items for Systematic Reviews and Meta-Analysis (PRISMA) method. The PRISMA
method is a collection of guidelines for the composition and structure of
systematic reviews and other meta-analyses. This paper identifies the
foundational work done in the field and gives a comparative study of different
aspects related to multi-fault diagnosis of industrial rotating machines. The
paper also identifies the major challenges, research gap. It gives solutions
using recent advancements in AI in implementing multi-fault diagnosis, giving a
strong base for future research in this field.
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