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<scp>Hybrid Fuzzy Archimedes</scp>‐based <scp>Light GBM‐XGBoost</scp> model for distributed task scheduling in mobile edge computing

G. Kumaresan, K Devi, S. Shanthi, B. Muthusenthil, A. Samydurai

2023Transactions on Emerging Telecommunications Technologies10 citationsDOIOpen Access PDF

Abstract

Abstract Mobile edge computing (MEC) mainly offers strong computing capabilities and functions to finish the delay‐sensitive task in time with the help of 5G wireless networks. Task scheduling is a technique for managing the increasing number of mobile edge users, decreasing task execution time, and improving the system's load‐balancing capabilities. To achieve these goals, a distributed task scheduling system is developed in this research to satisfy multi‐objectives such as cost, total execution time, overhead, and energy consumption for large‐scale MEC tasks. First, a Hybrid Fuzzy Archimedes (HFA) algorithm is proposed to select the MEC node, which finishes the tasks with minimal cost and a higher security level. In the second step, the Hybrid LGBM and XGBoost architecture is formed to minimize the energy consumption and latency of each node for distributed task scheduling. The HFA algorithm modifies the search behavior of the Archimedes optimization algorithm using the fuzzy tendency factor and a normalized objective function. The HFA algorithm mainly selects the rule with an improved security value and lower cost for delay‐sensitive applications. The main aim of the hybrid LGBM‐XGBoost architecture is to minimize energy consumption and latency by taking the makespan and energy values. The efficiency of the proposed methodology is evaluated in terms of resource utilization, average completion time, completion rate, and Computation Workload Completion Rate. The proposed model offers a 20% improvement in average completion time and a 30% improvement in the energy consumption ratio. When 64 users are present in the system, the proposed model offers a CPU usage of 22% whereas MOCOSC, ADMM, and ANNIDS approaches offer CPU utilization of 62%, 78%, and 82%, respectively.

Topics & Concepts

Computer scienceEnergy consumptionScheduling (production processes)Mobile edge computingDistributed computingWorkloadLatency (audio)Job shop schedulingReal-time computingComputer networkServerMathematical optimizationOperating systemEngineeringElectrical engineeringTelecommunicationsRouting (electronic design automation)MathematicsIoT and Edge/Fog ComputingContext-Aware Activity Recognition SystemsIoT Networks and Protocols
<scp>Hybrid Fuzzy Archimedes</scp>‐based <scp>Light GBM‐XGBoost</scp> model for distributed task scheduling in mobile edge computing | Litcius