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LSTM based artificial intelligence predictive maintenance technique for availability rate and OEE improvement in a TPM implementing plant through Industry 4.0 transformation

Roosefert Mohan (Department of EEE, SRM Institute of Science and Technology, Chennai, India)
J. Preetha Roselyn (Department of EEE, SRM Institute of Science and Technology, Chennai, India)
R. Annie Uthra (Department of EEE, SRM Institute of Science and Technology, Chennai, India)

Journal of Quality in Maintenance Engineering

ISSN: 1355-2511

Article publication date: 14 March 2023

Issue publication date: 8 November 2023

482

Abstract

Purpose

The artificial intelligence (AI) based total productive maintenance (TPM) condition based maintenance (CBM) approach through Industry 4.0 transformation can well predict the breakdown in advance to eliminate breakdown.

Design/methodology/approach

Meeting the customer requirement as per the delivery schedule with the existing resources are always a big challenge in industries. Any catastrophic breakdown in the equipment leads to increase in production loss, damage to machines, repair cost, time and affects delivery. If these breakdowns are predicted in advance, the breakdown can be addressed before its occurrence and the demand supply chain can be met. TPM is one of the essential operational excellence tool used in industries to utilize the existing resources of a plant in a optimal way. The conventional time based maintenance (TBM) and CBM approach of TPM in Industry 3.0 is time consuming and not accurate enough to achieve zero down time.

Findings

The proposed AI and IIoT based TPM is achieved in a digitalized data oriented platform to monitor and control the health status of the machine which may reduce the catastrophic breakdown by 95% and also improves the quality rate and machine performance rate. Based on the identified key signature parameters related to major breakdown are measured using the sensors, digitalised by programmable logic controller (PLC) and monitored by supervisory control and data acquisition (SCADA) and predicted in server or cloud.

Originality/value

Long short term memory based deep learning network was developed as a regression forecasting model to predict the remaining useful life RUL of the part or assembly and based on the predictions, corrective action has been implemented before the occurrence of breakdown. The reliability and consistency of the proposed approach are validated and horizontally deployed in similar machines to achieve zero downtime.

Keywords

Citation

Mohan, R., Roselyn, J.P. and Uthra, R.A. (2023), "LSTM based artificial intelligence predictive maintenance technique for availability rate and OEE improvement in a TPM implementing plant through Industry 4.0 transformation", Journal of Quality in Maintenance Engineering, Vol. 29 No. 4, pp. 763-798. https://doi.org/10.1108/JQME-07-2022-0041

Publisher

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Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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