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Task-driven manufacturing cloud service proactive discovery and optimal configuration method

机译:任务驱动的制造云服务主动发现和最佳配置方法

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摘要

Cloud manufacturing (CMfg) is emerging as a promising manufacturing paradigm, which can realize and provide distributed and heterogeneous manufacturing resources as services for all phases of the product lifecycle. A task-driven manufacturing cloud service (MCS) proactive discovery and optimal configuration method is presented in this paper to realize full-scale sharing, on-demand use, and collaborative configuration of manufacturing resources in CMfg. In this research, two kinds of resources, including manufacturing machine and manufacturing cell (MC), are viewed as a breakthrough point of the investigation of multi-granularity resource configuration process. During resource modeling, advanced information and sensor technologies are adopted to construct the information models of resources, which consist of static attributes, real-time manufacturing data, and evaluation information. It makes the traditional production process more transparent, traceable, and on-line controllable. By applying the service proactive discovery mechanism, service providers rapidly respond to task requirements on the basis of real-time status and submit requests to perform tasks proactively. Hence, the responsiveness and initiative of service providers are highly enhanced. Consequently, the efficient discovery of potential services can be achieved. In service configuration process, a scientific evaluation system is established to perform the comprehensive assessment of services. Then, through the evaluation method based on grey relational analysis (GRA), the service optimal configuration is implemented. Finally, the effectiveness of proposed models and methods is validated by a case study.
机译:云制造(CMfg)作为一种有前途的制造范例正在兴起,它可以实现并提供分布式和异构的制造资源作为产品生命周期所有阶段的服务。本文提出了一种任务驱动的制造云服务主动发现和最优配置方法,以实现CMfg中制造资源的全面共享,按需使用和协同配置。在这项研究中,制造机器和制造单元(MC)这两种资源被视为研究多粒度资源配置过程的突破点。在资源建模过程中,采用先进的信息和传感器技术构建资源的信息模型,该模型由静态属性,实时制造数据和评估信息组成。它使传统的生产过程更加透明,可追溯和在线可控。通过应用服务主动发现机制,服务提供者可以根据实时状态快速响应任务要求,并主动提交执行任务的请求。因此,大大提高了服务提供商的响应能力和主动性。因此,可以实现潜在服务的有效发现。在服务配置过程中,建立了科学的评估系统对服务进行综合评估。然后,通过基于灰色关联分析(GRA)的评估方法,实现了服务的最优配置。最后,通过案例研究验证了所提出的模型和方法的有效性。

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