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

IF 1.8 Q3 ENGINEERING, INDUSTRIAL Journal of Quality in Maintenance Engineering Pub Date : 2023-03-14 DOI:10.1108/jqme-07-2022-0041
Roosefert Mohan, J. Roselyn, R. Uthra
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Abstract

PurposeThe 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/approachMeeting 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.FindingsThe 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/valueLong 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.
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基于LSTM的人工智能预测维护技术,通过工业4.0转型提高TPM实施工厂的可用率和OEE
目的通过工业4.0转型,基于人工智能(AI)的全面生产维护(TPM)状态维护(CBM)方法可以很好地提前预测故障,从而消除故障。设计/方法/方法在现有资源的情况下,按照交付时间表满足客户需求一直是一个巨大的挑战。设备的任何灾难性故障都会导致生产损失、机器损坏、维修成本、时间和交货影响的增加。如果提前预测到这些故障,则可以在故障发生之前解决故障,并满足需求供应链。TPM是一种重要的卓越运营工具,用于以最优方式利用工厂的现有资源。工业3.0中传统的基于时间的TPM维护(TBM)和CBM方法耗时且不够精确,无法实现零停机时间。基于人工智能和工业物联网的TPM在面向数字化数据的平台上实现了对机器健康状态的监测和控制,可减少95%的灾难性故障,提高了机器的质量和性能。基于识别出的与主要故障相关的关键特征参数,使用传感器进行测量,通过可编程逻辑控制器(PLC)进行数字化处理,通过监控和数据采集(SCADA)进行监控,并在服务器或云中进行预测。基于独创性/价值短期记忆的深度学习网络作为回归预测模型,用于预测零件或组件的剩余使用寿命RUL,并根据预测结果在故障发生前实施纠正措施。所提出的方法的可靠性和一致性得到验证,并在类似的机器上水平部署,以实现零停机时间。
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来源期刊
Journal of Quality in Maintenance Engineering
Journal of Quality in Maintenance Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
4.00
自引率
13.30%
发文量
24
期刊介绍: This exciting journal looks at maintenance engineering from a positive standpoint, and clarifies its recently elevatedstatus as a highly technical, scientific, and complex field. Typical areas examined include: ■Budget and control ■Equipment management ■Maintenance information systems ■Process capability and maintenance ■Process monitoring techniques ■Reliability-based maintenance ■Replacement and life cycle costs ■TQM and maintenance
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