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Performance Evaluation of Production Systems Using Real-Time Machine Degradation Signals

机译:使用实时机器劣化信号的生产系统性能评估

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A machine's degradation status directly influences the operational performance of the production system, such as productivity and product quality. For example, machines associated with different health states may have different remaining life before failure, thus impacting the system throughput. Therefore, it is critical to analyze the coupling between the overall system performance and the machine degradation to better production decision-making, such as maintenance and product dispatch decisions. In this paper, we propose a novel model to evaluate the production performance of a two-machine-and-one-buffer line, given the real-time machine degradation signals. Specifically, a phase-type distribution-based continuous-time Markov chain model is formulated to estimate the system throughput by utilizing the remaining life prediction from the degradation signals. A case study is provided to demonstrate the applicability and effectiveness of the proposed method. Note to Practitioners-Machine degradation is commonly observed in many industries, such as automotive, semiconductor, and food production, which gradually deteriorates the machine conditions in different operating processes and affects the production system performance. In practice, sensors are largely deployed on the factory floor to monitor the machine's operating condition. However, a gap still exists between machine operating conditions and system performance. In this paper, we develop an analytical model to predict the machine remaining lifetime and estimate the system performance of a small scale production system, using the machine degradation signals from sensors. Furthermore, a Bayesian updating scheme is provided, which enables online evaluation by utilizing the real-time signals. Such a method provides an effective tool for production engineers to analyze the real-time system performance, and further conduct system improvements and control.
机译:机器的退化状态直接影响生产系统的运行性能,如生产力和产品质量。例如,与不同的健康状态相关联的机器可能在发生故障之前具有不同的剩余寿命,从而影响系统吞吐量。因此,分析整体系统性能与机器劣化之间的耦合至关重要,以更好的生产决策,例如维护和产品调度决策。本文提出了一种新颖的模型,以评估双机和一缓冲线的生产性能,给定实时机器劣化信号。具体地,通过利用来自劣化信号的剩余寿命预测,配制基于相位类型的连续时间马尔可夫链模型以估计系统吞吐量。提供案例研究以证明所提出的方法的适用性和有效性。关于从业者 - 机器劣化通常在许多行业中观察到,例如汽车,半导体和食品生产,这些行业逐渐降低了不同的操作过程中的机器条件,并影响生产系统性能。在实践中,传感器在很大程度上部署在工厂地板上以监控机器的运行状况。但是,机器操作条件和系统性能之间仍然存在间隙。在本文中,我们开发了一个分析模型,以预测机器剩余的寿命并估算小规模生产系统的系统性能,使用来自传感器的机器劣化信号。此外,提供了一种贝叶斯更新方案,其通过利用实时信号来实现在线评估。这种方法为生产工程师提供了一种有效的工具,用于分析实时系统性能,进一步进行系统改进和控制。

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