Hybrid Electro Search with Ant Colony Optimization Algorithm for Task Scheduling in a Sensor Cloud Environment for Agriculture Irrigation Control System

Integrating cloud computing with wireless sensor networks creates a sensor cloud (WSN). Some real-time applications, such as agricultural irrigation control systems, use a sensor cloud. The sensor battery life in sensor clouds is constrained. The data center’s computers consume a lot of energy to of...

Full description

Saved in:
Bibliographic Details
Main Authors: Murali Subramanian, Manikandan Narayanan, B. Bhasker, S. Gnanavel, Md Habibur Rahman, C. H. Pradeep Reddy
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2022/4525220
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849308006479560704
author Murali Subramanian
Manikandan Narayanan
B. Bhasker
S. Gnanavel
Md Habibur Rahman
C. H. Pradeep Reddy
author_facet Murali Subramanian
Manikandan Narayanan
B. Bhasker
S. Gnanavel
Md Habibur Rahman
C. H. Pradeep Reddy
author_sort Murali Subramanian
collection DOAJ
description Integrating cloud computing with wireless sensor networks creates a sensor cloud (WSN). Some real-time applications, such as agricultural irrigation control systems, use a sensor cloud. The sensor battery life in sensor clouds is constrained. The data center’s computers consume a lot of energy to offer storage in the cloud. The emerging sensor cloud technology-enabled virtualization. Using a virtual environment has many advantages. However, different resource requirements and task execution cause substantial performance and parameter optimization issues in cloud computing. In this study, we proposed the hybrid electro search with ant colony optimization (HES-ACO) technique to enhance the behavior of task scheduling, for those considering parameters such as total execution time, cost of the execution, makespan time, the cloud data center energy consumption like throughput, response time, resource utilization task rejection ratio, and deadline constraint of the multicloud. Electro search and the ant colony optimization algorithm are combined in the proposed method. Compared to HESGA, HPSOGA, AC-PSO, and PSO-COGENT algorithms, the created HES-ACO algorithm was simulated at CloudSim and found to optimize all parameters.
format Article
id doaj-art-1fd9040f88e744e5a9db8285483b7ecd
institution Kabale University
issn 1099-0526
language English
publishDate 2022-01-01
publisher Wiley
record_format Article
series Complexity
spelling doaj-art-1fd9040f88e744e5a9db8285483b7ecd2025-08-20T03:54:34ZengWileyComplexity1099-05262022-01-01202210.1155/2022/4525220Hybrid Electro Search with Ant Colony Optimization Algorithm for Task Scheduling in a Sensor Cloud Environment for Agriculture Irrigation Control SystemMurali Subramanian0Manikandan Narayanan1B. Bhasker2S. Gnanavel3Md Habibur Rahman4C. H. Pradeep Reddy5School of Computer Science and EngineeringSchool of Computer Science and EngineeringSchool of Computer Science and EngineeringDepartment of Computing TechnologiesDepartment of Computer Science and EngineeringSchool of Computer Science and EngineeringIntegrating cloud computing with wireless sensor networks creates a sensor cloud (WSN). Some real-time applications, such as agricultural irrigation control systems, use a sensor cloud. The sensor battery life in sensor clouds is constrained. The data center’s computers consume a lot of energy to offer storage in the cloud. The emerging sensor cloud technology-enabled virtualization. Using a virtual environment has many advantages. However, different resource requirements and task execution cause substantial performance and parameter optimization issues in cloud computing. In this study, we proposed the hybrid electro search with ant colony optimization (HES-ACO) technique to enhance the behavior of task scheduling, for those considering parameters such as total execution time, cost of the execution, makespan time, the cloud data center energy consumption like throughput, response time, resource utilization task rejection ratio, and deadline constraint of the multicloud. Electro search and the ant colony optimization algorithm are combined in the proposed method. Compared to HESGA, HPSOGA, AC-PSO, and PSO-COGENT algorithms, the created HES-ACO algorithm was simulated at CloudSim and found to optimize all parameters.http://dx.doi.org/10.1155/2022/4525220
spellingShingle Murali Subramanian
Manikandan Narayanan
B. Bhasker
S. Gnanavel
Md Habibur Rahman
C. H. Pradeep Reddy
Hybrid Electro Search with Ant Colony Optimization Algorithm for Task Scheduling in a Sensor Cloud Environment for Agriculture Irrigation Control System
Complexity
title Hybrid Electro Search with Ant Colony Optimization Algorithm for Task Scheduling in a Sensor Cloud Environment for Agriculture Irrigation Control System
title_full Hybrid Electro Search with Ant Colony Optimization Algorithm for Task Scheduling in a Sensor Cloud Environment for Agriculture Irrigation Control System
title_fullStr Hybrid Electro Search with Ant Colony Optimization Algorithm for Task Scheduling in a Sensor Cloud Environment for Agriculture Irrigation Control System
title_full_unstemmed Hybrid Electro Search with Ant Colony Optimization Algorithm for Task Scheduling in a Sensor Cloud Environment for Agriculture Irrigation Control System
title_short Hybrid Electro Search with Ant Colony Optimization Algorithm for Task Scheduling in a Sensor Cloud Environment for Agriculture Irrigation Control System
title_sort hybrid electro search with ant colony optimization algorithm for task scheduling in a sensor cloud environment for agriculture irrigation control system
url http://dx.doi.org/10.1155/2022/4525220
work_keys_str_mv AT muralisubramanian hybridelectrosearchwithantcolonyoptimizationalgorithmfortaskschedulinginasensorcloudenvironmentforagricultureirrigationcontrolsystem
AT manikandannarayanan hybridelectrosearchwithantcolonyoptimizationalgorithmfortaskschedulinginasensorcloudenvironmentforagricultureirrigationcontrolsystem
AT bbhasker hybridelectrosearchwithantcolonyoptimizationalgorithmfortaskschedulinginasensorcloudenvironmentforagricultureirrigationcontrolsystem
AT sgnanavel hybridelectrosearchwithantcolonyoptimizationalgorithmfortaskschedulinginasensorcloudenvironmentforagricultureirrigationcontrolsystem
AT mdhabiburrahman hybridelectrosearchwithantcolonyoptimizationalgorithmfortaskschedulinginasensorcloudenvironmentforagricultureirrigationcontrolsystem
AT chpradeepreddy hybridelectrosearchwithantcolonyoptimizationalgorithmfortaskschedulinginasensorcloudenvironmentforagricultureirrigationcontrolsystem