An Optimized Energy Aware Code Offloading Using Task Scheduling Algorithm for Wireless Sensor Networks

Various duties are provided by cloud calculating in the internet-based network process. When designating jobs to the off-loader, rule analysis and system software are essential. Because the purpose of task scheduling is to weaken overall execution opportunity, which in proper sequence lowers energy consumption, scientists have demonstrated that this issue is a non-polynomial complete question. In order to reduce strength usage when tasks must be computed in a short amount of time, this paper addresses the question of activity organizing within a likely set of tasks |V|. To assess codes or tasks before offloading to the scheduler to make judgments established specific determinants, an optimization invention is presented known as revamped greedy-pile algorithm to resolve codes or tasks before offloading to the scheduler to make decisions established certain limits. The proposed blueprint is simulated, performance judgment shows that the algorithm runs faster in use at the time time distinguished to the existing Hungarian algorithm.

Author(s) Details:

Ifedotun Roseline Idowu,
Department of Computer Science, Federal College of Animal Health and Production Technology, Moor Plantation, Ibadan, Nigeria.

Kayode Okewale,
Department of Computer and Information Sciences, Northumbria University, Newcastle, England.

Samson Alobalorun Bamidele,
Department of Computer Science, Kwara State University, Ilorin, Nigeria.

Seun Patrick Ayobioloja,
Department of Computer Science, Federal College of Animal Health and Production Technology, Moor Plantation, Ibadan, Nigeria.

Please see the link here: https://stm.bookpi.org/RHMCS-V4/article/view/9157

Keywords: Code offload analyzer, code scheduler, WSNs, computation, workflow, greedy hill algorithm

Previous post Generalized Power Transformed Robust Ratio Type Estimator: An Application to COVID-19
Next post Determination of Trees Predictive Models for Surface Roughness in High-Speed Machining (HSP): A Study in Steel and Aluminum Metalworking Industry