首页> 外文OA文献 >INTEGRATED DECISION MAKING FOR PLANNING AND CONTROL OF DISTRIBUTED MANUFACTURING ENTERPRISES USING DYNAMIC-DATA-DRIVEN ADAPTIVE MULTI-SCALE SIMULATIONS (DDDAMS)
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INTEGRATED DECISION MAKING FOR PLANNING AND CONTROL OF DISTRIBUTED MANUFACTURING ENTERPRISES USING DYNAMIC-DATA-DRIVEN ADAPTIVE MULTI-SCALE SIMULATIONS (DDDAMS)

机译:使用动态数据驱动的自适应多尺度模拟(DDDAMS)进行分布式制造企业计划和控制的综合决策

摘要

Discrete-event simulation has become one of the most widely used analysis tools for large-scale, complex and dynamic systems such as supply chains as it can take randomness into account and address very detailed models. However, there are major challenges that are faced in simulating such systems, especially when they are used to support short-term decisions (e.g., operational decisions or maintenance and scheduling decisions considered in this research). First, a detailed simulation requires significant amounts of computation time. Second, given the enormous amount of dynamically-changing data that exists in the system, information needs to be updated wisely in the model in order to prevent unnecessary usage of computing and networking resources. Third, there is a lack of methods allowing dynamic data updates during the simulation execution. Overall, in a simulation-based planning and control framework, timely monitoring, analysis, and control is important not to disrupt a dynamically changing system. To meet this temporal requirement and address the above mentioned challenges, a Dynamic-Data-Driven Adaptive Multi-Scale Simulation (DDDAMS) paradigm is proposed to adaptively adjust the fidelity of a simulation model against available computational resources by incorporating dynamic data into the executing model, which then steers the measurement process for selective data update. To the best of our knowledge, the proposed DDDAMS methodology is one of the first efforts to present a coherent integrated decision making framework for timely planning and control of distributed manufacturing enterprises.To this end, comprehensive system architecture and methodologies are first proposed, where the components include 1) real time DDDAM-Simulation, 2) grid computing modules, 3) Web Service communication server, 4) database, 5) various sensors, and 6) real system. Four algorithms are then developed and embedded into a real-time simulator for enabling its DDDAMS capabilities such as abnormality detection, fidelity selection, fidelity assignment, and prediction and task generation. As part of the developed algorithms, improvements are made to the resampling techniques for sequential Bayesian inferencing, and their performance is benchmarked in terms of their resampling qualities and computational efficiencies. Grid computing and Web Services are used for computational resources management and inter-operable communications among distributed software components, respectively. A prototype of proposed DDDAM-Simulation was successfully implemented for preventive maintenance scheduling and part routing scheduling in a semiconductor manufacturing supply chain, where the results look quite promising.
机译:离散事件仿真已经成为针对大型,复杂和动态系统(例如供应链)的最广泛使用的分析工具之一,因为它可以考虑随机性并处理非常详细的模型。但是,在模拟这样的系统时,尤其是当它们用于支持短期决策(例如,本研究中考虑的运营决策或维护和调度决策)时,面临着重大挑战。首先,详细的仿真需要大量的计算时间。其次,考虑到系统中存在大量动态变化的数据,需要在模型中明智地更新信息,以防止不必要地使用计算和网络资源。第三,缺乏在仿真执行期间允许动态数据更新的方法。总体而言,在基于仿真的计划和控制框架中,及时进行监视,分析和控制对于不破坏动态变化的系统非常重要。为了满足这个时间要求并解决上述挑战,提出了一种动态数据驱动的自适应多尺度仿真(DDDAMS)范例,通过将动态数据合并到执行模型中,针对可用的计算资源来自适应地调整仿真模型的保真度。 ,然后引导测量过程进行选择性数据更新。据我们所知,提出的DDDAMS方法论是为分布式制造企业的及时规划和控制提供一致的综合决策框架的第一批工作之一。为此,首先提出了全面的系统架构和方法论,其中组件包括1)实时DDDAM-模拟,2)网格计算模块,3)Web服务通信服务器,4)数据库,5)各种传感器以及6)真实系统。然后,开发了四种算法并将其嵌入到实时模拟器中,以启用其DDDAMS功能,例如异常检测,保真度选择,保真度分配以及预测和任务生成。作为已开发算法的一部分,对顺序贝叶斯推理的重采样技术进行了改进,并根据其重采样质量和计算效率对它们的性能进行了基准测试。网格计算和Web服务分别用于计算资源管理和分布式软件组件之间的互操作通信。已成功实现了拟议的DDDAM-Simulation原型,用于半导体制造供应链中的预防性维护计划和零件工艺计划,结果看起来很有希望。

著录项

  • 作者

    Celik Nurcin;

  • 作者单位
  • 年度 2010
  • 总页数
  • 原文格式 PDF
  • 正文语种 EN
  • 中图分类

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