
You have already added 0 works in your ORCID record related to the merged Research product.
You have already added 0 works in your ORCID record related to the merged Research product.
Job scheduling problem in fog-cloud-based environment using reinforced social spider optimization
AbstractFog computing is an emerging research domain to provide computational services such as data transmission, application processing and storage mechanism. Fog computing consists of a set of fog server machines used to communicate with the mobile user in the edge network. Fog is introduced in cloud computing to meet data and communication needs for Internet of Things (IoT) devices. However, the vital challenges in this system are job scheduling, which is solved by examining the makespan, minimizing energy depletion and proper resource allocation. In this paper, we introduced a reinforced strategy Dynamic Opposition Learning based Social Spider Optimization (DOLSSO) Algorithm to enhance individual superiority and schedule workflow in Fog computing. The extensive experiments were conducted using the FogSim simulator to generate the dataset and an energy-efficient open-source tool utilized to model and simulate resource management in fog computing. The performance of the formulated model is ratified using two test cases. The proposed algorithm attained the optimized schedule with minimized cost function concerning the CPU processing period and assigned memory. Our simulation outcomes show the efficacy of the introduced technique in handling job scheduling issues, and the results are contrasted with five existing metaheuristic techniques. The results show that the proposed method achieves 10% - 15% better CPU utilization and 5%-10% less energy consumption than the other techniques.
- AUS (United States) United States
- Lebanese German University Lebanon
- VIT-AP University India
- Taif University Saudi Arabia
- Lebanese American University Lebanon
Computer engineering. Computer hardware, CloudSim, Computer Networks and Communications, Fog Computing, Real-time computing, TK7885-7895, Engineering, FOS: Electrical engineering, electronic engineering, information engineering, FOS: Mathematics, Edge Computing, Cloud computing, Smart Parking Solutions and Management, Electrical and Electronic Engineering, Biology, Job scheduling, Ecology, Internet of Things and Edge Computing, Low Power Wide Area Network Technologies, Mathematical optimization, QA75.5-76.95, Building and Construction, Edge computing, Job shop scheduling, Computer science, Distributed computing, Mobile Edge Computing, Energy consumption, Operating system, Social spider algorithm, Schedule, Electronic computers. Computer science, FOS: Biological sciences, Computer Science, Physical Sciences, Fog computing, Scheduling (production processes), Mathematics
Computer engineering. Computer hardware, CloudSim, Computer Networks and Communications, Fog Computing, Real-time computing, TK7885-7895, Engineering, FOS: Electrical engineering, electronic engineering, information engineering, FOS: Mathematics, Edge Computing, Cloud computing, Smart Parking Solutions and Management, Electrical and Electronic Engineering, Biology, Job scheduling, Ecology, Internet of Things and Edge Computing, Low Power Wide Area Network Technologies, Mathematical optimization, QA75.5-76.95, Building and Construction, Edge computing, Job shop scheduling, Computer science, Distributed computing, Mobile Edge Computing, Energy consumption, Operating system, Social spider algorithm, Schedule, Electronic computers. Computer science, FOS: Biological sciences, Computer Science, Physical Sciences, Fog computing, Scheduling (production processes), Mathematics
