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A conceptual framework for dynamic manufacturing resource service composition and optimization in service-oriented networked manufacturing

机译:一种概念性制造资源服务组成和优化在面向服务的网络制造中的概念框架

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A trend in up-to-date developments in service computing focuses on the theme of dynamic composition and optimization of services and its application in service-oriented networked manufacturing (SONM). The paper addresses the particularities of manufacturing resource service composition and optimization (MRSCO) in SONM and proposes a conceptual framework. In this framework, cyber-physical systems (CPS) are incorporated into the manufacturing domain, together with the sensing model and cognitive model that are proposed herein, to integrate the offline resources with online services. Then the QoS models of component manufacturing resource services (MRS), basic constructs and composite MRS are formulated, with the consideration of coexistence of online and offline service phases. Based on the theory of receding horizon control approach and all the aforementioned models, a self-adaptive mechanism is designed in response to the dynamic QoS of MRS and variation of QoS goals, ultimately to guarantee the optimality of composite manufacturing service at runtime. Finally, a prototype platform is developed. The findings suggest constructive ways to model and evaluate MRS in dynamic MRSCO and to transit from a one-off optimization to the feedback-based, closed-loop adaptive MRSCO.
机译:服务计算上最新发展的趋势侧重于动态成分和服务优化的主题及其在面向服务的网络制造(SONM)的应用。本文讨论了SONM中制造资源服务成分和优化(MRSCO)的特殊性,并提出了一个概念框架。在该框架中,网络物理系统(CPS)被纳入制造域,以及本文提出的传感模型和认知模型,以将离线资源与在线服务集成。然后,配制了组件制造资源服务(MRS),基本构建和复合MRS的QoS模型,审议了在线和离线服务阶段的共存。基于后退地平线控制方法和所有上述模型的理论,自适应机制响应于QoS目标的动态QoS和QoS目标的变化而设计,最终能够在运行时保证复合制造服务的最优性。最后,开发了一个原型平台。调查结果表明了模拟和评估动态MRSCO MRS的建设性方式,并从一次性优化转换到基于反馈的闭环自适应MRSCO。

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