Multifault diagnosis in WSN using a hybrid metaheuristic trained neural network

Wireless sensor networks are susceptible to failures of nodes and links due to various physical or computational reasons. Some physical reasons include a very high temperature, a heavy load over a node, and heavy rain. Computational reasons could be a third-party intrusive attack, communication conf...

Full description

Bibliographic Details
Main Authors: Pabitra Mohan Khilar, Tirtharaj Dash
Format: Article
Language:English
Published: KeAi Communications Co., Ltd. 2020-02-01
Series:Digital Communications and Networks
Online Access:http://www.sciencedirect.com/science/article/pii/S2352864817303279
id doaj-cdaa4e07466d4ad388ff20edc960b546
record_format Article
spelling doaj-cdaa4e07466d4ad388ff20edc960b5462021-02-02T06:07:58ZengKeAi Communications Co., Ltd.Digital Communications and Networks2352-86482020-02-016186100Multifault diagnosis in WSN using a hybrid metaheuristic trained neural networkPabitra Mohan Khilar0Tirtharaj Dash1Department of Computer Science and Engineering, National Institute of Technology Rourkela, Odisha, 769008, IndiaDepartment of Computer Science and Information Systems, Birla Institute of Technology and Science Pilani, Goa Campus, Goa, 403726, India; Corresponding author.Wireless sensor networks are susceptible to failures of nodes and links due to various physical or computational reasons. Some physical reasons include a very high temperature, a heavy load over a node, and heavy rain. Computational reasons could be a third-party intrusive attack, communication conflicts, or congestion. Automated fault diagnosis has been a well-studied problem in the research community. In this paper, we present an automated fault diagnosis model that can diagnose multiple types of faults in the category of hard faults and soft faults. Our proposed model implements a feed-forward neural network trained with a hybrid metaheuristic algorithm that combines the principles of exploration and exploitation of the search space. The proposed methodology consists of different phases, such as a clustering phase, a fault detection and classification phase, and a decision and diagnosis phase. The implemented methodology can diagnose composite faults, such as hard permanent, soft permanent, intermittent, and transient faults for sensor nodes as well as for links. The proposed implementation can also classify different types of faulty behavior for both sensor nodes and links in the network. We present the obtained theoretical results and computational complexity of the implemented model for this particular study on automated fault diagnosis. The performance of the model is evaluated using simulations and experiments conducted using indoor and outdoor testbeds. Keywords: Wireless sensor network, Fault diagnosis, Link failures, Neural networks, Meta-heuristic algorithmhttp://www.sciencedirect.com/science/article/pii/S2352864817303279
collection DOAJ
language English
format Article
sources DOAJ
author Pabitra Mohan Khilar
Tirtharaj Dash
spellingShingle Pabitra Mohan Khilar
Tirtharaj Dash
Multifault diagnosis in WSN using a hybrid metaheuristic trained neural network
Digital Communications and Networks
author_facet Pabitra Mohan Khilar
Tirtharaj Dash
author_sort Pabitra Mohan Khilar
title Multifault diagnosis in WSN using a hybrid metaheuristic trained neural network
title_short Multifault diagnosis in WSN using a hybrid metaheuristic trained neural network
title_full Multifault diagnosis in WSN using a hybrid metaheuristic trained neural network
title_fullStr Multifault diagnosis in WSN using a hybrid metaheuristic trained neural network
title_full_unstemmed Multifault diagnosis in WSN using a hybrid metaheuristic trained neural network
title_sort multifault diagnosis in wsn using a hybrid metaheuristic trained neural network
publisher KeAi Communications Co., Ltd.
series Digital Communications and Networks
issn 2352-8648
publishDate 2020-02-01
description Wireless sensor networks are susceptible to failures of nodes and links due to various physical or computational reasons. Some physical reasons include a very high temperature, a heavy load over a node, and heavy rain. Computational reasons could be a third-party intrusive attack, communication conflicts, or congestion. Automated fault diagnosis has been a well-studied problem in the research community. In this paper, we present an automated fault diagnosis model that can diagnose multiple types of faults in the category of hard faults and soft faults. Our proposed model implements a feed-forward neural network trained with a hybrid metaheuristic algorithm that combines the principles of exploration and exploitation of the search space. The proposed methodology consists of different phases, such as a clustering phase, a fault detection and classification phase, and a decision and diagnosis phase. The implemented methodology can diagnose composite faults, such as hard permanent, soft permanent, intermittent, and transient faults for sensor nodes as well as for links. The proposed implementation can also classify different types of faulty behavior for both sensor nodes and links in the network. We present the obtained theoretical results and computational complexity of the implemented model for this particular study on automated fault diagnosis. The performance of the model is evaluated using simulations and experiments conducted using indoor and outdoor testbeds. Keywords: Wireless sensor network, Fault diagnosis, Link failures, Neural networks, Meta-heuristic algorithm
url http://www.sciencedirect.com/science/article/pii/S2352864817303279
work_keys_str_mv AT pabitramohankhilar multifaultdiagnosisinwsnusingahybridmetaheuristictrainedneuralnetwork
AT tirtharajdash multifaultdiagnosisinwsnusingahybridmetaheuristictrainedneuralnetwork
_version_ 1724301966938472448