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QoS-Aware Service Composition in Cloud Manufacturing: A Gale–Shapley Algorithm-Based Approach

机译:云制造中的QoS感知服务组合:基于血管朔眼算法的方法

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Cloud manufacturing (CMfg) is an emerging paradigm that aims to provide on-demand manufacturing services over the Internet. Service composition as an important means for generating value-added services plays an important role in achieving the aim of CMfg. Most of previous works focused on exploring techniques of service composition for a single composite task using meta-heuristic algorithms. However, the issue of service composition for multiple composite tasks has rarely been considered. Meta-heuristic algorithms suffer from cumbersome parameter tuning as well as the tendency of getting into local optima. In addition, the effectiveness of different algorithms has not yet been fully explored when different degrees of constraints are imposed. Different from approaches in most of the previous works, this paper proposes an extended Gale-Shapley (GS) algorithm-based approach for service composition that allows generation of multiple service composition solutions effectively. Requirements with different constraints are considered. Experimental results indicate that: 1) meta-heuristic algorithms can be used in various scenarios with different degrees of constraints. However, they are incapable of finding the optimal solutions in situations with relatively loose constraints, and moreover, the failure rate of finding solutions for a batch of multiple tasks is high; 2) the dynamic programming (DP) is a method that is the most sensitive to constraints. It performs better only under loose constraints and in the case of a single requirement; and 3) the application range of the GS method proposed is wider than that of the DP method. It can achieve better performance when constraints are relaxed irrespective of task status (i.e., a single task or multiple tasks), and moreover, it can make more tasks find solutions in the multitask scenario without service reuse.
机译:云制造(CMFG)是一个新兴范式,旨在通过互联网提供按需制造服务。服务组合作为生成增值服务的重要手段在实现CMFG的目标方面发挥着重要作用。以前的大多数作品侧重于使用元 - 启发式算法探索单个复合任务的服务组合技术。但是,已经考虑了多个复合任务的服务组合问题。元启发式算法遭受繁琐的参数调整以及进入当地最佳的趋势。此外,当施加不同程度的约束时,尚未完全探索不同算法的有效性。本文提出了基于巨大的岩石福利(GS)算法的维修组合物的延长了大的岩石 - 福利(GS)算法的方法。考虑具有不同约束的要求。实验结果表明:1)可以在不同程度的约束的各种场景中使用元启发式算法。然而,它们无法在相对松散的限制中找到最佳解决方案,而且,批量多次任务的寻找解决方案的失败率高; 2)动态编程(DP)是一种对约束最敏感的方法。它只在松动的限制下和单一要求的情况下表现得更好; 3)所提出的GS方法的应用范围比DP方法更宽。它可以实现更好的性能,而无论任务状态(即单个任务或多个任务),以及此外,它可以在没有服务重用的情况下在多任务方案中找到更多任务。

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