Abstract
Cloud computing spreading in such a tremendous way that the energy consumption of the network and computing resources causes the emission of enormous quantities of CO2 to the environment that force to manage energy consumption. Here, we propose modified sun-and-wind energy-aware routing (MSWEAR) new cloud network model and routing algorithm to find the location of Data Center (DC) geographically. So, the data can be moved efficiently and effectively which will hamper the environment lesser than the usage of non-renewable energy sources. An effort has been put to balance the delay versus low energy consumption among DC of cloud to optimize the CO2 emission. The proposed mechanism improves the QoS through optimizing cost, load, and minimizing the reduction of carbon (emission of CO2). We have tried to derive an ideal network based on MSWEAR algorithm to maximize the DCs usage of renewable energy sources and studied the performances. Our proposed mechanism is compared with the benchmark mechanisms and found performing better in its class.












Similar content being viewed by others
References
Lagen, S., Pascual-Iserte, A., Munoz, O., & Vidal, J. (2018). Energy efficiency in latency-constrained application offloading from mobile clients to multiple virtual machines. IEEE Transactions on Signal Processing, 66(4), 1065–1079.
Armbrust, M., Fox, A., Griffith, R., Joseph, A. D., Katz, R., Konwinski, A., Lee, G., Patterson, D., Rabkin, A., Stoica, I., & Zaharia, M. (2010). A view of cloud computing. Communications of the ACM, 53(4), 50–8.
Govardhan, P., & Srinivasan, P. (2019). Enhanced evolutionary computing assisted robust SLA-centric load balancing system for mega cloud data centers. Cybernetics and Information Technologies, 19(3), 74–93.
Bhargavi, K., & Sathish Babu, B. (2019). Uncertainty aware resource provisioning framework for cloud using expected 3-SARSA learning agent: NSS and FNSS based approach. Cybernetics and Information Technologies, 19(3), 94–117.
Li, X., & Hu, H. (2019). QoS routing algorithm based on entropy granularity in the network transmission. Cybernetics and Information Technologies, 19(4), 61–72.
Rani, S., & Suri, P. K. (2020). An efficient and scalable hybrid task scheduling approach for cloud environment. International Journal of Information Technology, 12(4), 1451–1457.
Bala, M. (2018). Proportionate resource utilization based VM allocation method for large scaled datacenters. International Journal of Information Technology, 10(3), 349–357.
Nayak, S. C., & Tripathy, C. (2019). An improved task scheduling mechanism using multi-criteria decision making in cloud computing. International Journal of Information Technology and Web Engineering, 14(2), 66.
Farnworth, E., & Castilla-rubio, J. C. (2020). SMART 2020: Enabling the low carbon economy in the information age.
Clark, C., Fraser, K., Hand, S., Hansen, J. G., Jul, E., Limpach, C., Pratt, I., & Warfield, A. (2005). Live migration of virtual machines. Design, 2, 273–286.
Parida, S., Nayak, S. C., Priyadarshi, P., Pattnaik, P. K., & Ray, G. (2018). Petri net: Design and analysis of parallel task scheduling algorithm (vol. 443).
Parida, S., Pati, B., Nayak, S. C., & Panigrahi, C. R. (2022). eMRA: An efficient multi-optimization based resource allocation technique for infrastructure cloud. Journal of Ambient Intelligence and Humanized Computing, 6, 66.
Gattulli, M. Tornatore, M., Fiandra, R., & Pattavina, A. (2012). Low-carbon routing algorithms for cloud computing services in IP-over-WDM networks. In IEEE international conference communications (pp. 2999–3003).
Gattulli, M., Tornatore, M., Fiandra, R., & Pattavina, A. (2014). Low-emissions routing for cloud computing in IP-over-WDM networks with data centers. IEEE Journal on Selected Areas in Communications, 32(1), 28–38.
Larumbe, F., & Sansò, B. (2013). A tabu search algorithm for the location of data centers and software components in green cloud computing networks. IEEE Transactions on Cloud Computing, 1(1), 22–35.
Shen, G., & Tucker, R. S. (2009). Energy-minimized design for IP over WDM networks. Journal of Optical Communications and Networking, 1(1), 176–186.
Dong, X., El-Gorashi, T., & Elmirghani, J. M. H. (2011). Energy-efficient IP over WDM networks with data centres. International Conference on Transparent Optical Networks, 66, 1–8.
Carroll, R., Balasubramaniam, S., Botvich, D., & Donnelly, W. (2011). Dynamic optimization solution for green service migration in data centres. In IEEE international conference on communications.
Stevens, T., De Leenheer, M., De Turek, F., Dhoedt, B., & Demeester, P. (2006). Distributed job scheduling based on multiple constraints anycast routing. In 2006 3rd International conference on broadband communications networks systems (BROADNETS 2006).
De Santi, J., Drummond, A. C., Da Fonseca, N. L. S., & Jukan, A. (2010). Load balancing for holding-time-aware dynamic traffic grooming. In GLOBECOM—IEEE global telecommunications conference.
Baliga, J., Ayre, R. W. A., Hinton, K., & Tucker, R. S. (2011). Green cloud computing: Balancing energy in processing, storage, and transport. Proceedings of the IEEE, 99(1), 149–167.
Ardagna, D., Panicucci, B., Trubian, M., & Zhang, L. (2012). Energy-aware autonomic resource allocation in multitier virtualized environments. IEEE Transactions on Services Computing, 5(1), 2–19.
Wan, Y.-H. (2004). Wind power plant behaviors: Analyses of long-term wind power data (pp. 1–59).
Musumeci, F., Tornatore, M., & Pattavina, A. (2012). A power consumption analysis for IP-Over-WDM core network architectures. Journal of Optical Communications and Networking, 4(2), 108–117.
Hsu, C. H., Chen, S. C., Lee, C. C., Chang, H. Y., Lai, K. C., Li, K. C., & Rong, C. (2011). Energy-aware task consolidation technique for cloud computing. In Proceedings of the 2011 3rd IEEE international conference on cloud computer technology science CloudCom 2011 (pp. 115–121).
Beloglazov, A., Abawajy, J., & Buyya, R. (2012). Energy-aware resource allocation heuristics for efficient management of data centers for Cloud computing. Future Generation Computer Systems, 28(5), 755–768.
Li, F., Cao, J., Wang, X., & Sun, Y. (2017). A QoS guaranteed technique for cloud applications based on software defined networking. IEEE Access, 5, 21229–21241.
She, Q., Wei, X., Nie, G., & Chen, D. (2019). QoS-aware cloud service composition: A systematic mapping study from the perspective of computational intelligence. Expert Systems with Applications, 138, 112804.
Singh, S., Chana, I., & Singh, M. (2017). The journey of QoS-aware autonomic cloud computing. IT Professional, 19(2), 42–49.
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Bhoi, A.K., Kabat, M.R., Nayak, S.C. et al. Renewable energy source based quality of service (QoS)-aware routing mechanism in cloud network. Wireless Netw 28, 1703–1718 (2022). https://doi.org/10.1007/s11276-022-02935-9
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11276-022-02935-9