Research on integrated scheduling of equipment predictive maintenance and production decision based on physical modeling approach

Qinglei Zhang, Lei Yang, Jianguo Duan, Jiyun Qin, Ying Zhou
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Abstract

Equipment performance deteriorates continuously during the production process, which makes it difficult to achieve the expected effect of production decisions made in advance. Predictive maintenance and production decisions integrated scheduling aim to rationalise maintenance activities. It has been extensively researched. However, past studies have assumed that faults obey a specific probability distribution based on historical data. It is difficult to analyse equipment that is brand new into service or has poor historical failure data. Thus, in this paper, we construct a twin model of a device based on a physical modelling approach and tune it to ensure high fidelity of the model. Degradation curves were created based on equipment characteristics and developed maintenance activities.Develop an integrated scheduling model for predictive maintenance and production decisions with the goal of minimising maximum processing time. An improved genetic algorithm is used to solve the problem optimally. Finally, apply a practical scenario to verify the effectiveness of the proposed method.
基于物理建模方法的设备预测性维护和生产决策综合调度研究
设备性能在生产过程中会不断恶化,这使得提前做出的生产决策难以达到预期效果。预测性维护和生产决策综合排产旨在使维护活动合理化。人们对其进行了广泛的研究。然而,以往的研究都是假设故障服从基于历史数据的特定概率分布。对于全新投入使用或历史故障数据较少的设备,很难对其进行分析。因此,在本文中,我们基于物理建模方法构建了设备的孪生模型,并对其进行了调整,以确保模型的高保真性。根据设备特性和已开发的维护活动创建了退化曲线。为预测性维护和生产决策开发了一个综合调度模型,目标是最大限度地减少处理时间。使用改进的遗传算法优化解决问题。最后,应用实际场景验证所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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