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Service Composition in IoT using Genetic algorithm and Particle swarm optimization

机译:使用遗传算法和粒子群优化的IOT中的服务组成

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摘要

Web service compositions are commendable in structuring innovative applications for different Internet-based business solutions. The existing services can be reused by the other applications via the web. Due to the availability of services that can serve similar functionality, suitable Service Composition (SC) is required. There is a set of candidates for each service in SC from which a suitable candidate service is picked based on certain criteria. Quality of service (QoS) is one of the criteria to select the appropriate service. A standout amongst the most important functionality presented by services in the Internet of Things (IoT) based system is the dynamic composability. In this paper, two of the metaheuristic algorithms namely Genetic Algorithm (GA) and Particle Swarm Optimization (PSO) are utilized to tackle QoS based service composition issues. QoS has turned into a critical issue in the management of web services because of the immense number of services that furnish similar functionality yet with various characteristics. Quality of service in service composition comprises of different non-functional factors, for example, service cost, execution time, availability, throughput, and reliability. Choosing appropriate SC for IoT based applications in order to optimize the QoS parameters with the fulfillment of user’s necessities has turned into a critical issue that is addressed in this paper. To obtain results via simulation, the PSO algorithm is used to solve the SC problem in IoT. This is further assessed and contrasted with GA. Experimental results demonstrate that GA can enhance the proficiency of solutions for SC problem in IoT. It can also help in identifying the optimal solution and also shows preferable outcomes over PSO.
机译:Web服务组成可称为构建基于互联网的业务解决方案的创新应用。现有服务可以通过Web由其他应用程序重用。由于可以提供类似功能的服务的可用性,需要合适的服务组成(SC)。 SC中的每个服务都有一组候选者,从中根据某些标准选择合适的候选服务。服务质量(QoS)是选择适当服务的标准之一。基于Internet(IoT)的系统中的服务中最重要的功能在最重要的功能中是动态可兼能的突出功能。在本文中,利用了两种遗传算法(GA)和粒子群优化(PSO)来解决基于QoS的服务成分问题。 QoS在Web服务管理中变成了一个关键问题,因为提供了具有各种特征的类似功能的巨大服务。服务组合物的服务质量包括不同的非功能因素,例如服务成本,执行时间,可用性,吞吐量和可靠性。为基于IOT的应用程序选择合适的SC,以优化QoS参数随着用户的必要性而变成了本文解决的关键问题。为了通过模拟获得结果,PSO算法用于解决IOT中的SC问题。进一步评估和与Ga对比。实验结果表明,GA可以提高IOT中SC问题的解决方案的熟练度。它还可以有助于识别最佳解决方案,并且还显示PSO上的优选结果。

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