Abstract
Cloud computing is an up-to-date model for distributing information processing utility and provides a large amount of resources through the internet. The major challenges affecting a cloud computing environment include resource provisioning and security. In this paper, we focused on resource provisioning mechanisms using Meta-heuristics techniques such as spider monkey optimization (SMO) and simulated annealing (SA). A simulated annealing algorithm helps to give a fine solution along with statistical promises for uncovering the best solution, yet it cannot notify whether the best solution is found. So it requires another method to overcome this drawback. This paper presents the Spider Monkey Optimization algorithm with Simulated Annealing (SMO-SA) to generate the best fitness value possible. The aim of the proposed hybrid algorithm is to generate the minimum fitness value by combining spider monkey optimization with simulated annealing to provision the resources dynamically. This paper also presents the step-by-step mathematical working of our proposed hybrid algorithm by applying it to the relevant data set and calculating the speedup factor as well as mean square error (MSE) value along with fitness value, which shows the effective impact of our proposed SMO-SA algorithm.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
References
Kumar TS (2019) Efficient resource allocation and QoS enhancements of IoT with fog network. J ISMAC 02:101–110
Chandy A (2019) Smart resource usage prediction using cloud computing for massive data processing systems. J Inf Technol Digit World 2:108–118
Srivastava P, Khan R (2018) A review paper on cloud computing. Int J Adv Res Comput Sci Softw Eng 8:17–20
Kumar N, Kumar S (2019) Resource management to virtual machine using branch and bound technique in cloud computing environment. Soft computing: theories and applications. Advances in intelligent systems and computing, vol 742. Springer, pp 365–373
Singh S, Chana I (2016) Cloud resource provisioning: survey, status and future research directions. Knowl Inf Syst 49(3):1005–1069
Sumalatha K, Anbarasi MS (2019) A review on various optimization techniques of resource provisioning in cloud computing. Int J Electr Comput Eng (IJECE) 9:629–634
Sharma H, Hazrati G, Bansal JC (2019) Spider monkey optimization algorithm. Evolutionary and swarm intelligence algorithms. Studies in computational intelligence, vol 779. Springer, pp 43–59
Dubey K, Sharma SC, Aida A (2020) A simulated annealing based energy-efficient VM placement policy in cloud computing. In: International conference on emerging trends in information technology and engineering (ic-ETITE). IEEE, pp 1–5
Addya KS, Kumar A, Sahoo B, Sarkar BKS (2017) Simulated annealing based VM placement strategy to maximize the profit for cloud service providers. Eng Sci Technol Int J 20:1249–1259
Leninfreda A, Dhanyab D, Kavithac S, Ashwini M (2019) Hybrid algorithm for resource provisioning with low cost and time using improved cost-based algorithm in hybrid cloud computing. J Intell Fuzzy Syst 1–10
Yasmeen A, Javaid N, Rehman O, Iftikhar H, Malik MF, Muhammad JF (2018) Efficient resource provisioning for smart buildings utilizing fog and cloud based environment. IEEE, pp 811–816
Mani K, Krishnan RM (2017) Flexible cost based cloud resource provisioning using enhanced PSO. Int J Comput Intell Res 13(6):1441–1453
Eawna MH, Hamdy S, EI-Horbaty EM (2015) New trends of resource provisioning in multi-tier cloud computing. In: Seventh international conference on intelligent computing and information systems (ICICIS'15). IEEE, pp 224–230
Gupta K, Deep K, Bansal JC (2017) Spider monkey optimization algorithm for constrained optimization problems. Soft Comput 21:6933–6962
Eawna MH, Mohammed SH (2015) Hybrid algorithm for resource provisioning of multi-tier cloud computing. In: International conference on communication, management and information technology (ICCMIT). Elsevier, pp 682–690
Sharma A, Sharma A, Panigrahi BK (2016) Ageist Spider Monkey Optimization algorithm. Swarm Evol Comput 1–23
Agarwal V, Rastogi R, Tiwari DC (2018) Spider Monkey Optimization: a survey. Int J Syst Assur Eng Manag 9:929–941
Swami V, Kumar S, Jain S (2018) An improved spider monkey optimization algorithm. Soft computing: theories and applications. Advances in intelligent systems and computing, vol 583. Springer, Singapore, pp 73–81
Hazratia G, Shannab H (2016) Modified spider monkey optimization. In: International workshop on computational intelligence (IWCI). IEEE, pp 209–214
Samriya JK, Kumar N (2022) Spider monkey optimization based energy-efficient resource allocation in cloud environment. Trends Sci 19(1):1–19
Kumar M, Kishor A, Abawajy J, Agarwal P (2022) ARPS: an autonomic resource provisioning and scheduling framework for cloud platforms. IEEE Trans Sustain Comput 7:386–399
Sharma Y, Taheri J (2020) Dynamic resource provisioning for sustainable cloud computing systems in the presence of correlated failures. IEEE Trans Sustain Comput (c) 1–13
Yashmeen A, Javaid N (2018) Resource provisioning for smart building utilizing fog and cloud based environment. In: 2018 14th international wireless communications & mobile computing conference (IWCMC). IEEE, pp 811–816
Gabi D, Ismail AB (2018) Hybrid Cat Swarm Optimization and simulated annealing for Dynamic task scheduling on cloud computing environment. J ICT 17(3):435–467
Kumar N, Kumar S (2018) Virtual machine placement using statistical mechanism in cloud computing environment. Int J Appl Evol Comput 9:23–31
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2023 The Author(s), under exclusive license to Springer Nature Switzerland AG
About this paper
Cite this paper
Archana, Kumar, N. (2023). A Meta Heuristics SMO-SA Hybrid Approach for Resource Provisioning in Cloud Computing Framework. In: Hemanth, J., Pelusi, D., Chen, J.IZ. (eds) Intelligent Cyber Physical Systems and Internet of Things. ICoICI 2022. Engineering Cyber-Physical Systems and Critical Infrastructures, vol 3. Springer, Cham. https://doi.org/10.1007/978-3-031-18497-0_42
Download citation
DOI: https://doi.org/10.1007/978-3-031-18497-0_42
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-031-18496-3
Online ISBN: 978-3-031-18497-0
eBook Packages: EngineeringEngineering (R0)