Cloud Replica Management-Based Hybrid Optimization
DOI:
https://doi.org/10.13052/jmm1550-4646.2047Keywords:
Cloud Computing, replica management, multi-objectives, GIGOL, oppositional learningAbstract
This research addresses the challenges in cloud-based replica management by proposing a novel strategy employing a Genetically Implied Greywolf with Oppositional Learning (GIGOL) hybrid optimization technique. This approach optimizes multi-objectives such as response time, load balancing, availability, replication cost, and energy consumption, ensuring cost-effectiveness and energy efficiency. The GIGOL model integrates Genetic Algorithm, opposition learning, and Grey Wolf Optimization, aiming to achieve optimal replica placement. The study emphasizes resolving overhead issues through machine learning techniques for efficient cloud-based replica management. Performance evaluation showcases improvements in response time, load balancing, availability, replication cost, and energy consumption, highlighting the effectiveness of the proposed approach within budget constraints and management policies.
Downloads
References
Shao, Yanling, Chunlin Li, and Hengliang Tang. “A data replica placement strategy for IoT workflows in collaborative edge and cloud environments.” Computer Networks, Vol. 148, pp. 46–59, 2019.
Peng, Su, Fucai Zhou, Jin Li, Qiang Wang, and Zifeng Xu. “Efficient, dynamic and identity-based remote data integrity checking for multiple replicas.” Journal of Network and Computer Applications, Vol. 134, pp. 72–88, 2019.
Khalajzadeh, Hourieh, Dong Yuan, Bing Bing Zhou, John Grundy, and Yun Yang. “Cost-effective dynamic data placement for efficient access of social networks.” Journal of Parallel and Distributed Computing, Vol. 141, pp. 82–98, 2020.
Jaradat, A., Alhussian, H., Patel, A. and Fati, S.M., 2020. Multiple users replica selection in data grids for fair user satisfaction: A hybrid approach. Computer Standards & Interfaces, 71, p. 103432.
Pan, Shaoming, Lian Xiong, Zhengquan Xu, Yanwen Chong, and Qingxiang Meng. “A dynamic replication management strategy in distributed GIS.” Computers & geosciences, Vol. 112, pp. 1–8, 2018.
Grace, R. Kingsy, and R. Manimegalai. “Dynamic replica placement and selection strategies in data grids—a comprehensive survey.” Journal of Parallel and Distributed Computing, Vol. 74, No. 2, pp. 2099–2108, 2014.
Gharehpasha, S., Masdari, M. and Jafarian, A., 2021. Virtual machine placement in cloud data centers using a hybrid multi-verse optimization algorithm. Artificial Intelligence Review, 54, pp. 2221–2257.
Li, Chunlin, YaPing Wang, Hengliang Tang, Yujiao Zhang, Yan Xin, and Youlong Luo. “Flexible replica placement for enhancing the availability in edge computing environment.” Computer Communications, Vol. 146, pp. 1–14, 2019.
Xu, X., C. Yang, and J. Shao. “Data replica placement mechanism for open heterogeneous storage systems.” Procedia Computer Science, Vol. 109, pp. 18–25, 2017.
Li, C., Liu, J., Lu, B. and Luo, Y., 2021. Cost-aware automatic scaling and workload-aware replica management for edge-cloud environment. Journal of Network and Computer Applications, 180, p. 103017.
Li, Chunlin, YaPing Wang, Hengliang Tang, and Youlong Luo. “Dynamic multi-objective optimized replica placement and migration strategies for SaaS applications in edge cloud.” Future Generation Computer Systems, Vol. 100, pp. 921–937, 2019.
Ke, X., Guo, C., Ji, S., Bergsma, S., Hu, Z. and Guo, L., 2021, September. Fundy: A scalable and extensible resource manager for cloud resources. In 2021 IEEE 14th International Conference on Cloud Computing (CLOUD) (pp. 540–550). IEEE.
Hamrouni, Tarek, Sarra Slimani, and F. Ben Charrada. “A survey of dynamic replication and replica selection strategies based on data mining techniques in data grids.” Engineering Applications of Artificial Intelligence, Vol. 48, pp. 140–158, 2016.
Rajput, N., Pandey, R.K. and Chauhan, A., 2022. Fuzzy optimisation of a production model with CNTFN demand rate under trade-credit policy. International Journal of Mathematics in Operational Research, 21(2), pp. 200–220.
Kulshrestha, R. and Shruti, 2021. Performance evaluation of call admission control based on signal quality in cellular mobile networks. International Journal of Mathematics in Operational Research, 20(1), pp. 1–19.
Guerrero, Carlos, Isaac Lera, and Carlos Juiz. “Migration-aware genetic optimization for map reduce scheduling and replica placement in hadoop.” Journal of Grid Computing, Vol. 16, No. 2, pp. 265–284, 2018.
Hamrouni, Tarek, Sarra Slimani, and F. Ben Charrada. “A survey of dynamic replication and replica selection strategies based on data mining techniques in data grids.” Engineering Applications of Artificial Intelligence, Vol. 48, pp. 140–158, 2016.
Radha, S., Maragathasundari, S. and Swedheetha, C., 2023. Analysis on a non-Markovian batch arrival queuing model with phases of service and multi vacations in cloud computing services. International Journal of Mathematics in Operational Research, 24(3), pp. 425–449.
Li, Chunlin, YiHan Zhang, and Youlong Luo. “Adaptive Replica Creation and Selection Strategies for Latency-Aware Application in Collaborative Edge-Cloud System.” The Computer Journal, Vol. 63, No. 9, pp. 1338–1354, 2020.