HOGWO: a fog inspired optimized load balancing approach using hybridized grey wolf algorithm

A distributed archetype, the concept of fog computing relocates the storage, computation, and services closer to the network’s edge, where the data is generated. Despite these advantages, the users expect proper load management in the fog environment. This has expanded the Internet of Things (IoT) f...

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Veröffentlicht in:Cluster computing 2024-12, Vol.27 (9), p.13273-13294
Hauptverfasser: Das, Debashreet, Sengupta, Sayak, Satapathy, Shashank Mouli, Saini, Deepanshu
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container_issue 9
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container_title Cluster computing
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creator Das, Debashreet
Sengupta, Sayak
Satapathy, Shashank Mouli
Saini, Deepanshu
description A distributed archetype, the concept of fog computing relocates the storage, computation, and services closer to the network’s edge, where the data is generated. Despite these advantages, the users expect proper load management in the fog environment. This has expanded the Internet of Things (IoT) field, increasing user requests for the fog computing layer. Given the growth, Virtual Machines (VMs) in the fog layer become overburdened due to user demands. In the fog layer, it is essential to evenly and fairly distribute the workload among the segment’s current VMs. Numerous load-management strategies for fog environments have been implemented up to this point. This study aims to create a hybridized and optimized approach for load management (HOGWO), in which the population set is generated using the Invasive Weed Optimisation (IWO) algorithm. The rest of the functional part is done with the help of the Grey Wolf Optimization (GWO) algorithm. This process ensures cost optimization, increased performance, scalability, and adaptability to any domain, such as healthcare, vehicular traffic management, etc. Also, the efficiency of the enhanced approach is analyzed in various scenarios to provide a more optimal solution set. The proposed approach is well illustrated and outperforms the existing algorithms, such as Particle Swarm Optimization (PSO), Genetic Algorithm (GA), etc., in terms of cost and load management. It was found that more than 97% jobs were completed on time, according to the testing data, and the hybrid technique outperformed all other approaches in terms of fluctuation of load and makespan.
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subjects Artificial intelligence
Computer Communication Networks
Computer Science
Cost analysis
Cost control
Edge computing
Genetic algorithms
Internet of Things
Literature reviews
Operating Systems
Optimization techniques
Particle swarm optimization
Processor Architectures
Response time
Virtual environments
title HOGWO: a fog inspired optimized load balancing approach using hybridized grey wolf algorithm
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