Load balancing in Fog-Cloud Environment
DOI:
https://doi.org/10.26438/ijcse/v7i6.7177Keywords:
Cloud computing, Fog computing, Internet of things, Task schedulingAbstract
Fog computing is latest addition in the environment of cloud computing which mainly brings cloud resources closer to the client. The main aim of fog computing is to execute the small tasks of smart devices at the edge devices whereas to put away the main intensive and non-sensitive tasks for the remote execution on the cloud. This overcomes the drawback that the cloud had due to the centralised control and problems of executing the small sensitive task at the remote area. In this paper, we provide the algorithm based on the three parameters time, energy consumption, and network usage on the basis of that, scheduling of task can take place between the two, cloud as well as fog, which distributes the load between them. The results we get, show that there is a significant decrease in time approximately 40%, network usage with 40% and significant decrease in energy consumption also on running tasks on fog than cloud . Finally, we assess the achievement of the task through the experimental simulation which shows significant decrease in the parameter values for local tasks at the fog computing.
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