首页> 外文期刊>Central European journal of operations research: CEJOR >QoS and energy consumption aware service composition and optimal-selection based on Pareto group leader algorithm in cloud manufacturing system
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QoS and energy consumption aware service composition and optimal-selection based on Pareto group leader algorithm in cloud manufacturing system

机译:云制造系统中基于Pareto组长算法的QoS和能耗感知服务组合及最优选择

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摘要

Service composition and optimal selection (SCOS) is one of the key issues for implementing a cloud manufacturing system. Exiting works on SCOS are primarily based on quality of service (QoS) to provide high-quality service for user. Few works have been delivered on providing both high-quality and low-energy consumption service. Therefore, this article studies the problem of SCOS based on QoS and energy consumption (QoS-EnCon). First, the model of multi-objective service composition was established; the evaluation of QoS and energy consumption (EnCon) were investigated, as well as a dimensionless QoS objective function. In order to solve the multi-objective SCOS problem effectively, then a novel globe optimization algorithm, named group leader algorithm (GLA), was introduced. In GLA, the influence of the leaders in social groups is used as an inspiration for the evolutionary technology which is design into group architecture. Then, the mapping from the solution (i.e., a composed service execute path) of SCOS problem to a GLA solution is investigated, and a new multi-objective optimization algorithm (i.e., GLA-Pareto) based on the combination of the idea of Pareto solution and GLA is proposed for addressing the SCOS problem. The key operators for implementing the Pareto-GA are designed. The results of the case study illustrated that compared with enumeration method, genetic algorithm (GA), and particle swarm optimization, the proposed GLA-Pareto has better performance for addressing the SCOS problem in cloud manufacturing system.
机译:服务组合和最佳选择(SCOS)是实现云制造系统的关键问题之一。 SCOS上的现有工作主要基于服务质量(QoS),以便为用户提供高质量的服务。提供高质量和低能耗服务的工作很少。因此,本文基于QoS和能耗(QoS-EnCon)研究SCOS问题。首先,建立了多目标服务组合模型。研究了QoS和能耗的评估(EnCon),以及无量纲QoS目标函数。为了有效解决多目标SCOS问题,提出了一种新颖的地球优化算法,称为组长算法(GLA)。在GLA中,社会群体中的领导者的影响力被用作设计成群体架构的进化技术的灵感。然后,研究了从SCOS问题的解决方案(即组合服务执行路径)到GLA解决方案的映射,并基于帕累托思想的组合提出了一种新的多目标优化算法(即GLA-Pareto)。解决方案,并提出了GLA解决SCOS问题。设计了用于实施Pareto-GA的关键运营商。案例研究结果表明,与枚举方法,遗传算法(GA)和粒子群优化算法相比,本文提出的GLA-Pareto在解决云制造系统中的SCOS问题方面具有更好的性能。

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