Bottleneck Detection of Manufacturing Systems Using Data Driven Method

Lin Li, Q. Chang, J. Ni, G. Xiao, S. Biller
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引用次数: 41

Abstract

Bottlenecks in a production line have been shown to be one of the main reasons that impede productivity. Correctly and efficiently identifying botdeneck locations can improve the utilisation of finite manufacturing resources, increase the system throughput, and minimize the total cost of production. Current bottleneck detection schemes can be separated into two categories: analytical and simulation-based. For the analytical method, the system performance is assumed to be described by a statistical distribution. Although an analytical model is good at long term prediction, this type of model is not adequate for solving the bottleneck detection problem in the short term. On the other hand, the simulation-based method has disadvantages, such as long development time and decreased flexibility for different production scenarios, which greatly impede its wide implementation. Because of all these problems, a data driven bottleneck detection method has been constructed based on the real-time data from manufacturing systems. Using this new method, bottleneck locations can be identified in both the short term and long term. Furthermore, the proposed data driven bottleneck detection method has been verified using the results from both the analytical and simulation methods.
基于数据驱动方法的制造系统瓶颈检测
生产线上的瓶颈已被证明是阻碍生产力的主要原因之一。正确有效地识别瓶颈位置可以提高有限制造资源的利用率,提高系统吞吐量,最大限度地降低生产总成本。目前的瓶颈检测方案可分为两类:基于分析的和基于仿真的。在分析方法中,假设系统性能用统计分布来描述。虽然分析模型擅长长期预测,但这种类型的模型不足以解决短期的瓶颈检测问题。另一方面,基于仿真的方法存在开发时间长、对不同生产场景的灵活性较差等缺点,极大地阻碍了其广泛应用。针对这些问题,提出了一种基于制造系统实时数据的数据驱动瓶颈检测方法。利用这种新方法,可以在短期和长期内确定瓶颈位置。此外,本文提出的数据驱动瓶颈检测方法通过分析和仿真结果进行了验证。
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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