Enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigm

In recent years, fog and mobile edge computing have grown rapidly due to the large amount of data generated by the Internet of Thing (IoT) devices. It provides a variety of services within the end user IoT environment, but suffers from inefficient scheduling, which results in more significant delays...

Full description

Bibliographic Details
Main Authors: T. Saravanan, S. Saravanakumar
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2022-01-01
Series:International Journal of Intelligent Networks
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666603022000227
_version_ 1797987122318147584
author T. Saravanan
S. Saravanakumar
author_facet T. Saravanan
S. Saravanakumar
author_sort T. Saravanan
collection DOAJ
description In recent years, fog and mobile edge computing have grown rapidly due to the large amount of data generated by the Internet of Thing (IoT) devices. It provides a variety of services within the end user IoT environment, but suffers from inefficient scheduling, which results in more significant delays than cloud computing. In this research we propose a data migration procedure that beats the metrics of delay, response time, and load balancing rate in the fog computing paradigm. It is possible to reduce the amount of replicated and integrated data by using Sequence Cover Cat Swarm Optimization (SCCSO) and Sequence Cover Particle Swarm Optimization (SCPSO) by using appropriate Virtual machines (VMs) which lock highly used machines and give service to low used machines in cloud communication storage.; this allows us to obtain resources efficiently in the fog environment. After being tested in the iFogsim climate, The protocols performed better in the iFogsim climate in terms of response time, scheduling time load balancing rate and delay than the other scheduling algorithms.
first_indexed 2024-04-11T07:43:41Z
format Article
id doaj.art-31f513843eea4d9587996e1db9041642
institution Directory Open Access Journal
issn 2666-6030
language English
last_indexed 2024-04-11T07:43:41Z
publishDate 2022-01-01
publisher KeAi Communications Co., Ltd.
record_format Article
series International Journal of Intelligent Networks
spelling doaj.art-31f513843eea4d9587996e1db90416422022-12-22T04:36:23ZengKeAi Communications Co., Ltd.International Journal of Intelligent Networks2666-60302022-01-013204212Enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigmT. Saravanan0S. Saravanakumar1Department of CSE, GITAM University, Bengaluru; Corresponding author.Department of CSE, Jain University, BengaluruIn recent years, fog and mobile edge computing have grown rapidly due to the large amount of data generated by the Internet of Thing (IoT) devices. It provides a variety of services within the end user IoT environment, but suffers from inefficient scheduling, which results in more significant delays than cloud computing. In this research we propose a data migration procedure that beats the metrics of delay, response time, and load balancing rate in the fog computing paradigm. It is possible to reduce the amount of replicated and integrated data by using Sequence Cover Cat Swarm Optimization (SCCSO) and Sequence Cover Particle Swarm Optimization (SCPSO) by using appropriate Virtual machines (VMs) which lock highly used machines and give service to low used machines in cloud communication storage.; this allows us to obtain resources efficiently in the fog environment. After being tested in the iFogsim climate, The protocols performed better in the iFogsim climate in terms of response time, scheduling time load balancing rate and delay than the other scheduling algorithms.http://www.sciencedirect.com/science/article/pii/S2666603022000227Optimization techniqueScheduling algorithmsData migrationFog devicesEdge computingCloud layers and virtual machines
spellingShingle T. Saravanan
S. Saravanakumar
Enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigm
International Journal of Intelligent Networks
Optimization technique
Scheduling algorithms
Data migration
Fog devices
Edge computing
Cloud layers and virtual machines
title Enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigm
title_full Enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigm
title_fullStr Enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigm
title_full_unstemmed Enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigm
title_short Enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigm
title_sort enhancing investigations in data migration and security using sequence cover cat and cover particle swarm optimization in the fog paradigm
topic Optimization technique
Scheduling algorithms
Data migration
Fog devices
Edge computing
Cloud layers and virtual machines
url http://www.sciencedirect.com/science/article/pii/S2666603022000227
work_keys_str_mv AT tsaravanan enhancinginvestigationsindatamigrationandsecurityusingsequencecovercatandcoverparticleswarmoptimizationinthefogparadigm
AT ssaravanakumar enhancinginvestigationsindatamigrationandsecurityusingsequencecovercatandcoverparticleswarmoptimizationinthefogparadigm