含伯努利机和转换的批量装配系统动态性能预测

Zunjun Wang;Zhiyang Jia;Xiuxuan Tian;Jingchuan Chen;Bei Pan
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引用次数: 1

摘要

全球竞争和客户需求的多样化对制造企业提出了巨大的挑战。如何组织生产以实现高生产率和低成本成为他们的首要任务。与此同时,技术创新的快速步伐促进了新型柔性自动化的发展。因此,越来越多的制造企业转向多产品和小批量生产,这种生产策略可以提高产量,降低成本,快速响应市场。小批量生产的一个显著特点是系统主要在瞬态运行。瞬态可能对制造系统产生重大影响。因此,有必要对系统的动态性能进行估计。装配系统是一类典型的生产系统,本文主要研究小批量生产不同类型产品的装配系统的动态性能预测问题。并且假定系统具有伯努利可靠性机、有限缓冲和转换的特征。首先建立了基于马尔可夫分析的数学模型,然后给出了三机装配系统性能评价的解析公式。在此基础上,提出了一种基于分解和聚合的大型装配系统动态性能预测方法。与蒙特卡罗仿真相比,该方法具有较高的精度和计算效率。
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Dynamic Performance Prediction in Batch-Based Assembly System with Bernoulli Machines and Changeovers
Worldwide competition and diverse demand of customers pose great challenges to manufacturing enterprises. How to organize production to achieve high productivity and low cost becomes their primary task. In the mean time, the rapid pace of technology innovation has contributed to the development of new types of flexible automation. Hence, increasing manufacturing enterprises convert to multi-product and small-batch production, a manufacturing strategy that brings increased output, reduced costs, and quick response to the market. A distinctive feature of small-batch production is that the system operates mainly in the transient states. Transient states may have a significant impact on manufacturing systems. It is therefore necessary to estimate the dynamic performance of systems. As the assembly system is a typical class of production systems, in this paper, we focus on the problem of dynamic performance prediction of the assembly systems that produce small batches of different types of products. And the system is assumed to be characterized with Bernoulli reliability machines, finite buffers, and changeovers. A mathematical model based on Markovian analysis is first derived and then, the analytical formulas for performance evaluation of three-machine assembly systems are given. Moreover, a novel approach based on decomposition and aggregation is proposed to predict dynamic performance of large-scale assembly systems that consist of multiple component lines and additional processing machines located downstream of the assemble machine. The proposed approach is validated to be highly accurate and computationally efficient when compared to Monte Carlo simulation.
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