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Holistic Context-Sensitivity for Run-Time Optimization of Flexible Manufacturing Systems

机译:柔性制造系统运行时优化的整体上下文敏感度

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Highly flexible manufacturing systems require continuous run-time (self-) optimization of processes with respect to diverse parameters, e.g., efficiency, availability, energy consumption etc. A promising approach for achieving (self-) optimization in manufacturing systems is the usage of the context sensitivity approach based on data streaming from high amount of sensors and other data sources. Cyber-physical systems play an important role as sources of information to achieve context sensitivity. Cyber-physical systems can be seen as complex intelligent sensors providing data needed to identify the current context under which the manufacturing system is operating. In this paper, it is demonstrated how context sensitivity can be used to realize a holistic solution for (self-) optimization of discrete flexible manufacturing systems, by making use of cyber-physical systems integrated in manufacturing systems/processes. A generic approach for context sensitivity, based on self-learning algorithms, is proposed aiming at a various manufacturing systems. The new solution encompasses run-time context extractor and optimizer. Based on the self-learning module both context extraction and optimizer are continuously learning and improving their performance. The solution is following Service Oriented Architecture principles. The generic solution is developed and then applied to two very different manufacturing processes.
机译:高度灵活的制造系统需要针对各种参数(例如效率,可用性,能耗等)进行连续的运行时(自我)优化。在制造系统中实现(自我)优化的一种有前途的方法是使用基于来自大量传感器和其他数据源的数据流的上下文敏感度方法。网络物理系统作为实现上下文敏感性的信息源发挥着重要作用。网络物理系统可以看作是复杂的智能传感器,可提供识别制造系统正在运行的当前环境所需的数据。在本文中,展示了如何利用上下文敏感性来通过利用集成在制造系统/过程中的网络物理系统来实现离散柔性制造系统的(自)优化的整体解决方案。针对各种制造系统,提出了一种基于自学习算法的通用上下文敏感方法。新解决方案包括运行时上下文提取器和优化器。基于自学习模块,上下文提取和优化器都在不断学习并提高其性能。该解决方案遵循面向服务的体系结构原则。开发了通用解决方案,然后将其应用于两个非常不同的制造过程。

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