Efficient approximation approaches to minimal exposure path problem in probabilistic coverage model for wireless sensor networks

A well-known method for evaluating the coverage quality of Wireless Sensor Networks (WSNs) is using exposure as a measure, especially in barrier coverage problems. Among all studies related to exposure, discussions regarding the Minimal Exposure Path (MEP) problem have dominated research in recent y...

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Published inApplied Soft Computing Vol. 76; pp. 726 - 743
Main Authors Binh, Huynh Thi Thanh, Binh, Nguyen Thi My, Ngoc, Nguyen Hong, Ly, Dinh Thi Ha, Nghia, Nguyen Duc
Format Journal Article
LanguageEnglish
Japanese
Published Elsevier B.V 01.03.2019
Elsevier BV
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Online AccessGet full text
ISSN1568-4946
1872-9681
DOI10.1016/j.asoc.2018.12.022

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Summary:A well-known method for evaluating the coverage quality of Wireless Sensor Networks (WSNs) is using exposure as a measure, especially in barrier coverage problems. Among all studies related to exposure, discussions regarding the Minimal Exposure Path (MEP) problem have dominated research in recent years. The problem aims to find a path on which an intruder can penetrate through the sensing field with the lowest probability of being detected. This path along with its exposure value enables network infrastructure designers to identify the worst-case coverage of the WSN and make necessary improvements. Most prior research worked on the MEP problem under the assumption that there are no environmental factors such as vibration, temperature, etc., which causes errors in practical WSN systems. To overcome this drawback, we first formulate the MEP problem based on Probabilistic Coverage Model with noise (hereinafter PM-based-MEP) and introduce a new definition of the exposure metric for this model. The PM-based-MEP is then converted into a numerically functional extreme with high dimension, non-differentially and non-linearity. Adapting to these characteristics, we propose two approximation methods, GB-MEP and GA-MEP, for solving the converted problem. GB-MEP is based on the traditional grid-based method which is fine-tuned by several tweaks, and GA-MEP is formed by the genetic algorithm with a featured individual representation and an effective combination of genetic operators. Experimental results on numerous instances indicate that the proposed algorithms are suitable for the converted PM-based-MEP problem and perform well regarding both solution accuracy and computation time compared with existing approaches. •Formulated a minimal exposure path problem under the probabilistic coverage model with noise in a wireless sensor networks, called PM-based-MEP.•A new definition of exposure measure for this model is also introduced.•Converted the PM-based-MEP into an optimization problem with an objective function and constraints which permits the use of mathematical optimization methods to solve.•Proposed a new genetic algorithm and a grid-based method incorporated with several improvements to solve PM-based-MEP problem.•Conducted simulations and analyzed experimental results to give insights into the effectiveness of each proposed algorithm.
ISSN:1568-4946
1872-9681
DOI:10.1016/j.asoc.2018.12.022