[1] Ciesielczyk T., Cabrera A., Oleksiak A., Piątek W., Waligóra G., Almeida F., and Blanco V., 2021. An approach to reduce energy consumption and performance losses on heterogeneous servers using power capping. Journal of Scheduling, 24, pp. 489-505. [2] Aldossary M.,2021. A review of dynamic resource management in cloud computing environments. Computer Systems Science & Engineering, 36(3). [3] Ardagna D., Casale G., Ciavotta M., Pérez J.F., and Wang W., 2014. Quality-of-service in cloud computing: modeling techniques and their applications. Journal of Internet Services and Applications, 5, pp. 1-17. [4] Saswade N., Bharadi V., and Zanzane Y., 2016. Virtual machine monitoring in cloud computing. Procedia Computer Science, 79, pp. 135-142. [5] Silva Filho M.C., Monteiro C.C., Inácio P.R., and Freire M.M., 2018. Approaches for optimizing virtual machine placement and migration in cloud environments: A survey. Journal of Parallel and Distributed Computing, 111, pp. 222-250. [6] Kansal N.J., and Chana I., 2016. Energy-aware virtual machine migration for cloud computing-a firefly optimization approach. Journal of Grid Computing, 14, pp. 327-345. [7] Tarighi M., Motamedi S.A., and Sharifian S., 2010. A new model for virtual machine migration in virtualized cluster server based on fuzzy decision making. Arxiv Preprint Arxiv:1002.3329. [8] Wood T., Shenoy P.J., Venkataramani A., and Yousif M.S., 2007. Black-box and gray-box strategies for virtual machine migration. In NSDI, 7, pp. 17-17. [9] Beloglazov A., and Buyya R., 2010. Energy efficient resource management in virtualized cloud data centers. In 2010 10th IEEE/ACM International Conference on Cluster, Cloud and Grid Computing, pp. 826-831. [10] Cardosa M., Korupolu M.R., and Singh A., 2009. Shares and utilities based power consolidation in virtualized server environments. In 2009 IFIP/IEEE International Symposium on Integrated Network Management, pp. 327-334. [11] Chen X., Tang J.R., and Zhang Y., 2017. Towards a virtual machine migration algorithm based on multi-objective optimization. International Journal of Mobile Computing and Multimedia Communications (IJMCMC), 8(3), pp. 79-89. [12] Minarolli D., Mazrekaj A., and Freisleben B., 2017. Tackling uncertainty in long-term predictions for host overload and underload detection in cloud computing. Journal of Cloud Computing, 6, pp. 1-18. [13] Masoumzadeh S.S., and Hlavacs H., 2013. An intelligent and adaptive threshold-based schema for energy and performance efficient dynamic VM consolidation. In Energy Efficiency in Large Scale Distributed Systems: COST IC0804 European Conference, EE-LSDS 2013, Vienna, Austria, April 22-24, 2013, Revised Selected Papers, pp. 85-97. [14] Zhou Z., Abawajy J., Chowdhury M., Hu Z., Li K., Cheng H., Alelaiwi A.A., and Li F., 2018. Minimizing SLA violation and power consumption in cloud data centers using adaptive energy-aware algorithms. Future Generation Computer Systems, 86, pp. 836-850. [15] Salimian L., Safi Esfahani F., and Nadimi-Shahraki M.H., 2016. An adaptive fuzzy threshold-based approach for energy and performance efficient consolidation of virtual machines. Computing, 98(6), pp. 641-660. [16] Zahedi Fard S.Y., Ahmadi M.R., and Adabi S., 2017. A dynamic VM consolidation technique for QoS and energy consumption in cloud environment. the Journal of Supercomputing, 73(10), pp. 4347-4368. [17] Abdelsamea A., El-Moursy A.A., Hemayed E.E., and Eldeeb H., 2017. Virtual machine consolidation enhancement using hybrid regression algorithms. Egyptian Informatics Journal, 18(3), pp. 161-170. |