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Performance-Based Bayesian Learning for Resource Collaboration Optimization in Manufacturing Grid

机译:基于性能的贝叶斯学习在制造网格资源协同优化中的应用

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Following the rapid development of Grid computing, Grid technology has been introduced into the manufacturing realm and is contemporarily being considered for the sharing of manufacturing resources. However current research in the subject-area is still immature and mainly focuses on conceptual framework development. Here a concrete performance-based Bayesian method for resource collaboration optimization in Extended Enterprise is proposed which improves and promotes research in applying Grid-thinking in inter-organizational manufacturing value chains. Based on the research background, problem statement, and the consideration of Bayesian learning, the method for probability dependency relationship modeling between the performance values of different manufacturing resource nodes in the Extended Enterprise is analysed; and is subsequently complimented by the development of an extended method for more general use. Finally, a system dynamics simulation model for the proposed method is established and the validity and effectivity of the suggested method is tested via a simple case study.
机译:随着网格计算的飞速发展,网格技术已被引入到制造领域,并正在考虑共享制造资源。但是,当前在主题领域的研究仍不成熟,主要集中在概念框架的开发上。本文提出了一种基于性能的贝叶斯具体方法用于扩展企业中的资源协作优化,该方法改进并促进了在组织间制造价值链中应用网格思想的研究。基于研究背景,问题陈述和贝叶斯学习的考虑,分析了扩展企业中不同制造资源节点的绩效值之间的概率依赖关系建模方法;后来被扩展为更通用的扩展方法所称赞。最后,建立了该方法的系统动力学仿真模型,并通过一个简单的案例研究了该方法的有效性和有效性。

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