基于遗传算法和模糊规则的服务组合

Mohammad Reza Gheisari, S. Emadi
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引用次数: 1

摘要

面向服务的体系结构的扩展和web服务数量的增加导致了对其使用需求的增加。但是,由于单独的单个服务可能不足以满足大多数相对复杂的业务流程需求,因此有必要将几个单独的服务组合起来以交付用户满意度。通过增加具有相同功能的服务的数量,每个服务提供的服务质量将在服务选择过程中发挥重要作用;在服务组合过程中,具有不同质量参数的不同服务组合在一起,提供一个新的任务。因此,为用户提供最优质的服务被认为是一个重要的问题。服务组合过程中具有挑战性的问题包括如何根据用户偏好将web服务与质量参数组合起来、组合过程的响应时间长、搜索空间大以及服务之间的相关性。本文通过考虑服务之间的关系对基于质量的服务组合进行建模,以提高服务质量(QoS)参数。提出的模型由几个步骤组成。在第一步中,将通过应用服务之间的相关性来修剪不合适的服务。在第二步中,通过确定QoS的质量级别,使用APSO算法选择最佳级别,最终选择最佳服务。在服务组合阶段,使用模糊遗传算法(FGA)将前一阶段选择的服务进行组合,以创建合适的组合服务。结果表明,在考虑服务之间相关性的情况下,通过整合质量参数并对候选服务进行删减,显著提高了响应时间标准,减小了搜索空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Service composition based on genetic algorithm and fuzzy rules
The expansion of service-oriented architecture and the increasing number of web services has led to an increase in demand for their use. But since a single service alone may not be enough to meet the most relatively complex business processes requirements, it is necessary to combine several individual services to deliver user satisfaction. By increasing the number of services that have the same functionality, the quality of service provided by each service will play an important role in the service selection process; in the process of service composition, different services with different quality parameters come together to provide a new task. Therefore, offering the best quality service to the user is considered an important issue. The challenging issues in the service composition process include how to combine the web services with quality parameters based on user preference, long response time for the composition process, large search space, and the correlation between the services. In this paper, the quality-based service composition is modeled by considering the relationship between the services to improve the quality of service (QoS) parameters. The proposed model consists of several steps. In the first step, the inappropriate services will be pruned by applying the correlation between the services. In the second step, by determining the quality levels for the QoS, the APSO algorithm is used to select the best levels and, finally, the best services. In the service combination stage, the services selected from the previous stage are combined using a fuzzy genetic algorithm (FGA) to create a suitable combination service. The results show that when the correlation between the services is considered, the response time criterion improves significantly by integrating the quality parameters and pruning the candidate services, and reduces the search space.
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