将深度学习数据分析技术整合到有能力的计划维护优化中

M. R. A. Purnomo
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引用次数: 0

摘要

制造系统必须由材料的可用性、简化的生产过程和准备好的生产线来支持,以实现生产目标。在大规模定制制造系统中,定制所需的机器数量相对较少。因此,对关键机器的维护将对该制造系统产生最大的影响。实施两种类型的维护策略:纠正性维护和预防性维护。纠正性维护需要更多的资源,因为由于致命故障,修复故障机器的时间和成本会更高。为了使管理层在装订机仍在运行时考虑预防性维护,必须配备深入的分析,证明所需的资源将减少。本文讨论了两个深度分析:利用深度学习数据分析技术基于平均故障间隔时间(MTBF)数据准确预测装订机的故障,以及在可用容量时间内优化维修总成本。本文的研究结果表明,与原始模型相比,所提出的深度学习数据分析技术可将MTBF预测精度提高66.12%,将总维护成本降低4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incorporating deep learning data analytics techniques in the optimisation of capacitated planned maintenance
Manufacturing systems must be supported by the availability of materials, a streamlined production process and a prepared production line to achieve the production target. In a mass customization manufacturing system, the number of machines required for customization is relatively small. Conse-quently, maintenance on critical machines will impact this manufacturing system the most. Two types of maintenance strategies are implemented: corrective and preventive maintenance. The corrective maintenance requires more resources since the time and cost to repair the breakdown machine will be higher due to fatal failure. For the management to consider preventive maintenance while the binding machines are still operational, it must be equipped with a deep analysis demonstrating that fewer resources will be required. This paper discusses two deep analyses: accurate prediction of the binding machines' breakdown based on Mean Time Between Failure (MTBF) data using a deep learning data analytics technique and optimizing the maintenance total cost in the available capacitated time. The findings and results of this paper show that the proposed deep learning data analytics technique can increase the MTBF prediction accuracy by up to 66.12% and reduce the total maintenance cost by up to 4% compared with the original model.
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