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A simulation-optimization approach for adaptive manufacturing capacity planning in small and medium-sized enterprises

机译:中小企业自适应制造能力规划的仿真优化方法

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摘要

Manufacturing capacity planning is one of the critical processes in every manufacturing company, and, with increasing exploitation of data and information technology, has necessarily become more efficient than before. However, the power to harness data and information for planning requires specific knowledge and resources, mostly limited to large enterprises. Small and medium-sized enterprises (SMEs) generally do not have sufficient resources to collect large amounts of data or the know-how to process and exploit data. Moreover, SMEs often fail to implement advanced techniques and tools (e.g., optimization tools or enterprise resource planning (ERP) software), owing to the cost and a lack of specific knowledge and personnel. This paper proposes a solution for reducing the burden on SMEs in collecting and utilizing data for the planning of manufacturing capacity. A simulation-optimization approach is adopted because of the complex nature of labor-intensive manufacturing in SMEs. The approach includes an artificial neural network for model simulation and data relationship recognition, combined with a genetic algorithm for optimizing manufacturing resource configuration. The proposed method can facilitate the process of planning manufacturing capacity for different yield targets, as tested in a case study of a pastry company and providing the means for the company to exploit both empirical and observational data for the purpose.
机译:制造能力规划是每个制造公司的关键流程之一,随着数据和信息技术的开发增加,必须比以前更有效。然而,用于利用数据和规划信息的权力需要具体的知识和资源,主要限于大型企业。中小企业(中小企业)一般没有足够的资源来收集大量数据或诀窍来处理和利用数据。此外,由于成本和缺乏特定知识和人员,中小企业经常未能实施先进的技术和工具(例如,优化工具或企业资源规划(ERP)软件)。本文提出了一种解决在收集和利用规划制造能力的数据时减少中小企业负担的解决方案。采用了一种模拟优化方法,因为中小企业的劳动密集型制造的复杂性。该方法包括用于模型仿真和数据关系识别的人工神经网络,与遗传算法组合用于优化制造资源配置。该方法可以促进规划不同产量目标的制造能力的过程,如针对糕点公司的案例研究,并为公司提供了为此目的利用经验和观测数据的手段。

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