Predictive Motor Failure Prevention in Refinery Using Cloud Based Motor Current Signature Analysis
For over the last 10 years, vibration analysis paired with artificial intelligence has become a common method for motor failure identification. Motor Current Signature Analysis (MCSA) is a novel, non-invasive method that leverages recently available cloud processing power to deliver very similar predictive results comparable to vibration analysis. For critical motors, MCSA allows for a non-invasive, easy to install, and cost-effective motor monitoring method. In this paper, we will explore two main topics: 1) The MCSA data journey for critical motors where details are being continuously collected and transferred to a cloud-based analytics platform where they are compared on a data lake with other similar motors across the world to improve prediction and failure detection algorithms over time. 2) The detection and analysis of three different motor failure modes using Motor Current Signature Analysis on low voltage motors at a Refinery.
Date:
Nov 10 2023| Type:
Application Notes
Languages:
English| Version:
1.0
Document Reference:
IEEE-SE_MCSA_Paper
Files
File Name
Predictive Motor Failure Prevention-Rev-4-24-2023_SE.pdf