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Web service selection using particle swarm optimization and genetic algorithms

机译:使用粒子群优化和遗传算法的Web服务选择

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Current service-oriented architecture standards mainly rely on functional properties, however, service registries lack mechanisms for managing services' non-functional properties. These non-functional properties are expressed as quality of service (QoS) attributes. The user can describe the request of a service in terms of QoS attributes, i.e., the user aims for good service performance, e.g. low waiting time, high reliability and availability. This paper investigates service selection, and proposes two approaches; one which is based on a genetic algorithm and the other is based on a particle swarm optimization approach to match consumers with services based on QoS attributes as closely as possible. Both approaches are compared with an optimal assignment algorithm called the Munkres algorithm. Measurements are performed to quantify the overall match score, the execution time, and the scalability.
机译:当前的面向服务的体系结构标准主要依赖于功能属性,但是,服务注册表缺少用于管理服务的非功能属性的机制。这些非功能属性表示为服务质量(QoS)属性。用户可以根据QoS属性来描述服务的请求,即,用户旨在获得良好的服务性能,例如服务质量。等待时间短,可靠性高和可用性高。本文研究了服务选择,并提出了两种方法。一种基于遗传算法,另一种基于粒子群优化方法,以尽可能使消费者与基于QoS属性的服务匹配。将这两种方法与称为Munkres算法的最佳分配算法进行比较。进行测量以量化总体比赛得分,执行时间和可伸缩性。

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