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2022
DOI: 10.3390/en15134571
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Energy-Aware Bag-of-Tasks Scheduling in the Cloud Computing System Using Hybrid Oppositional Differential Evolution-Enabled Whale Optimization Algorithm

Abstract: Bag-of-Tasks (BoT) scheduling over cloud computing resources called Cloud Bag-of-Tasks Scheduling (CBS) problem, which is a well-known NP-hard optimization problem. Whale Optimization Algorithm (WOA) is an effective method for CBS problems, which still requires further improvement in exploration ability, solution diversity, convergence speed, and ensuring adequate exploration–exploitation tradeoff to produce superior scheduling solutions. In order to remove WOA limitations, a hybrid oppositional differential e… Show more

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Cited by 16 publications
(5 citation statements)
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“…For simulation results evaluation, the suggested strategy is compared to an existing technique that was implemented utilizing optimization algorithms such as whale optimization, earthworm, cuckoo search, and so on. We have compared our proposed approach with five existing techniques including h-DEWOA (hybrid-differential-evolution-enabled whaleoptimization algorithm) [38], cuckoo-search-differential algorithm (CSDEO) [39], Cuckoo-search-particle-swarmoptimization algorithm (CSPSO) [40], blacklist matrix-basedmulti-objective algorithm (BLEMO) [41], and EEOA (Electricearthworm-optimization algorithm) [10]. All comparisons are performed over 30 iterations across 10 workloads from the HPC2N and CEA-CURIE datasets.…”
Section: B Simulation Resultsmentioning
confidence: 99%
“…For simulation results evaluation, the suggested strategy is compared to an existing technique that was implemented utilizing optimization algorithms such as whale optimization, earthworm, cuckoo search, and so on. We have compared our proposed approach with five existing techniques including h-DEWOA (hybrid-differential-evolution-enabled whaleoptimization algorithm) [38], cuckoo-search-differential algorithm (CSDEO) [39], Cuckoo-search-particle-swarmoptimization algorithm (CSPSO) [40], blacklist matrix-basedmulti-objective algorithm (BLEMO) [41], and EEOA (Electricearthworm-optimization algorithm) [10]. All comparisons are performed over 30 iterations across 10 workloads from the HPC2N and CEA-CURIE datasets.…”
Section: B Simulation Resultsmentioning
confidence: 99%
“…The WOA-BAT hybrid algorithm emerges as a robust solution for optimizing smart grid operations, leveraging the complementary features of both the WOA and BAT. Amit et al [28] focus on solving task scheduling problems in cloud environments through a hybrid metaheuristic approach. The authors highlight the limitations in the standard WOA related to solution diversity, convergence speed, and exploration-exploitation tradeoff and propose h-DEWOA, integrating enhancements like chaotic maps for improved exploration, opposition-based learning for solution diversity, and differential evolution for enhanced exploration.…”
Section: Related Workmentioning
confidence: 99%
“…It followed a taxonomy focusing on virtualization, consolidation, and energy-awareness dimensions, reviewing each technique qualitatively based on key goals, methods, advantages, and limitations. Chhabra et al (2022) introduced a novel approach termed h-DEWOA, which integrates chaotic maps, opposition-based learning (OBL), and differential evolution (DE) with the standard WOA aim to enhance exploration, convergence speed, and the balance between exploration and exploitation. Additionally, an efficient allocation heuristic improved resource assignment.…”
Section: Heuristic Approaches For Task Schedulingmentioning
confidence: 99%