Secured node detection technique based on artificial neural network for wireless sensor network
The wireless sensor network is becoming the most popular network in the last recent years as it can measure the environmental conditions and send them to process purposes. Many vital challenges face the deployment of WSNs such as energy consumption and security issues. Various attacks could be subje...
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2023
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my.uniten.dspace-263412023-05-29T17:09:18Z Secured node detection technique based on artificial neural network for wireless sensor network Hasan B. Alani S. Saad M.A. 57218909003 57195407170 57211413695 The wireless sensor network is becoming the most popular network in the last recent years as it can measure the environmental conditions and send them to process purposes. Many vital challenges face the deployment of WSNs such as energy consumption and security issues. Various attacks could be subjects against WSNs and cause damage either in the stability of communication or in the destruction of the sensitive data. Thus, the demands of intrusion detection-based energy-efficient techniques rise dramatically as the network deployment becomes vast and complicated. Qualnet simulation is used to measure the performance of the networks. This paper aims to optimize the energy-based intrusion detection technique using the artificial neural network by using MATLAB Simulink. The results show how the optimized method based on the biological nervous systems improves intrusion detection in WSN. In addition to that, the unsecured nodes are affected the network performance negatively and trouble its behavior. The regress analysis for both methods detects the variations when all nodes are secured and when some are unsecured. Thus, Node detection based on packet delivery ratio and energy consumption could efficiently be implemented in an artificial neural network. � 2021 Institute of Advanced Engineering and Science. All rights reserved. Final 2023-05-29T09:09:18Z 2023-05-29T09:09:18Z 2021 Article 10.11591/ijece.v11i1.pp536-544 2-s2.0-85091140084 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85091140084&doi=10.11591%2fijece.v11i1.pp536-544&partnerID=40&md5=cd00ccbe1ae86a7eeb08f97665b38c80 https://irepository.uniten.edu.my/handle/123456789/26341 11 1 536 544 All Open Access, Gold, Green Institute of Advanced Engineering and Science Scopus |
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The wireless sensor network is becoming the most popular network in the last recent years as it can measure the environmental conditions and send them to process purposes. Many vital challenges face the deployment of WSNs such as energy consumption and security issues. Various attacks could be subjects against WSNs and cause damage either in the stability of communication or in the destruction of the sensitive data. Thus, the demands of intrusion detection-based energy-efficient techniques rise dramatically as the network deployment becomes vast and complicated. Qualnet simulation is used to measure the performance of the networks. This paper aims to optimize the energy-based intrusion detection technique using the artificial neural network by using MATLAB Simulink. The results show how the optimized method based on the biological nervous systems improves intrusion detection in WSN. In addition to that, the unsecured nodes are affected the network performance negatively and trouble its behavior. The regress analysis for both methods detects the variations when all nodes are secured and when some are unsecured. Thus, Node detection based on packet delivery ratio and energy consumption could efficiently be implemented in an artificial neural network. � 2021 Institute of Advanced Engineering and Science. All rights reserved. |
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57218909003 Hasan B. Alani S. Saad M.A. |
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Hasan B. Alani S. Saad M.A. |
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Hasan B. Alani S. Saad M.A. Secured node detection technique based on artificial neural network for wireless sensor network |
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Hasan B. |
title |
Secured node detection technique based on artificial neural network for wireless sensor network |
title_short |
Secured node detection technique based on artificial neural network for wireless sensor network |
title_full |
Secured node detection technique based on artificial neural network for wireless sensor network |
title_fullStr |
Secured node detection technique based on artificial neural network for wireless sensor network |
title_full_unstemmed |
Secured node detection technique based on artificial neural network for wireless sensor network |
title_sort |
secured node detection technique based on artificial neural network for wireless sensor network |
publisher |
Institute of Advanced Engineering and Science |
publishDate |
2023 |
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