TL;DR
This paper presents a deep learning model that accurately predicts the number of k-barriers needed for intrusion detection in circular regions of wireless sensor networks, enhancing security and response times.
Contribution
It introduces a novel neural network-based approach for predicting k-barriers, outperforming existing benchmarks in accuracy and efficiency.
Findings
Model achieves high correlation coefficients (R ≈ 0.78-0.79)
Predicts k-barriers with low RMSE (41.15-48.36)
Outperforms benchmark algorithms in accuracy and speed
Abstract
Wireless Sensor Networks (WSNs) is a promising technology with enormous applications in almost every walk of life. One of the crucial applications of WSNs is intrusion detection and surveillance at the border areas and in the defense establishments. The border areas are stretched in hundreds to thousands of miles, hence, it is not possible to patrol the entire border region. As a result, an enemy may enter from any point absence of surveillance and cause the loss of lives or destroy the military establishments. WSNs can be a feasible solution for the problem of intrusion detection and surveillance at the border areas. Detection of an enemy at the border areas and nearby critical areas such as military cantonments is a time-sensitive task as a delay of few seconds may have disastrous consequences. Therefore, it becomes imperative to design systems that are able to identify and detect the…
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