A Genetic PSO Algorithm with QoS-Aware Cluster Cloud Service Composition

The QoS-aware cloud service composition is a significantly crucial concern in dynamic cloud environment. There is multi-nature services are clustered together and integrated with multiple domains over the internet. Because of increasing number private and public cloud sources and predominantly all cloud services offers similar services. However this differs in their functionalities depend on the QoS constraints. This drags more complexity in choosing a clustered cloud services with optimal QoS concert, an enhanced Genetic Particle Swarm Optimization (GPSO) Algorithm is anticipated to crack this crisis. With the intention to construct the QoS-aware cloud composition algorithm, all the parameters to be redefined such as price, position, response time and reputation. The Adaptive Non-Uniform Mutation (ANUM) approach is proposed to attain the best particle globally to boost the population assortment on the motivation of conquering the prematurity level of GPSO algorithm. This strategy also matched with other similar techniques to acquire the convergence intensity. The efficiency of the anticipated algorithm for QoS-aware cloud service composition is exemplified and evaluated with a Modified Genetic Algorithm (MGA), GN_S_Net, and PSOA the outcomes of investigational assessment signifies that our model extensively achieves than the existing approaches by means of execution time with improved QoS performance parameters.

[1]  Zibin Zheng,et al.  QoS-Aware Web Service Recommendation by Collaborative Filtering , 2011, IEEE Transactions on Services Computing.

[2]  Wenbin Wang,et al.  An improved Particle Swarm Optimization Algorithm for QoS-aware Web Service Selection in Service Oriented Communication , 2010, Int. J. Comput. Intell. Syst..

[3]  Peter Dolog,et al.  A Scalable Approach for QoS-Based Web Service Selection , 2008, ICSOC Workshops.

[4]  Jinjun Chen,et al.  Combining Local Optimization and Enumeration for QoS-aware Web Service Composition , 2010, 2010 IEEE International Conference on Web Services.

[5]  Yue Ma,et al.  Quick convergence of genetic algorithm for QoS-driven web service selection , 2008, Comput. Networks.

[6]  Fei Tao,et al.  FC-PACO-RM: A Parallel Method for Service Composition Optimal-Selection in Cloud Manufacturing System , 2013, IEEE Transactions on Industrial Informatics.

[7]  Anne H. H. Ngu,et al.  QoS computation and policing in dynamic web service selection , 2004, WWW Alt. '04.

[8]  Sung Chan Jun,et al.  An SLA-based cloud computing that facilitates resource allocation in the distributed data centers of a cloud provider , 2012, The Journal of Supercomputing.

[9]  Danilo Ardagna,et al.  Adaptive Service Composition in Flexible Processes , 2007, IEEE Transactions on Software Engineering.

[10]  Mara Nikolaidou,et al.  An Integrated Approach to Automated Semantic Web Service Composition through Planning , 2012, IEEE Transactions on Services Computing.

[11]  Martin Bichler,et al.  Service-oriented computing , 2006, Computer.

[12]  Alec Wolman,et al.  Volley: Automated Data Placement for Geo-Distributed Cloud Services , 2010, NSDI.

[13]  Abdelkader H. Ouda,et al.  Resource allocation in a network-based cloud computing environment: design challenges , 2013, IEEE Communications Magazine.

[14]  Thomas Risse,et al.  Combining global optimization with local selection for efficient QoS-aware service composition , 2009, WWW '09.

[15]  Fuyuki Ishikawa,et al.  Towards network-aware service composition in the cloud , 2012, WWW.

[16]  Raouf Boutaba,et al.  QoS-aware service composition and adaptation in autonomic communication , 2005, IEEE Journal on Selected Areas in Communications.

[17]  Thomas Risse,et al.  Selecting skyline services for QoS-based web service composition , 2010, WWW '10.

[18]  Yang Yang,et al.  A genetic-based approach to web service composition in geo-distributed cloud environment , 2015, Comput. Electr. Eng..

[19]  Randy H. Katz,et al.  A view of cloud computing , 2010, CACM.