Enhancing agricultural wireless sensor network security through integrated machine learning approaches

IF 1.5 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Security and Privacy Pub Date : 2024-07-02 DOI:10.1002/spy2.437
Ishu Sharma, Aditya Bhardwaj, Keshav Kaushik
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Abstract

Wireless sensor network (WSN) works with a collection of multiple sensor nodes to fetch the data from the deployed environment to fulfill the application whether it is agricultural monitoring, industrial monitoring, etc. The agricultural region can be monitored by deploying sensor nodes to multiple verticals where continuous human presence is not feasible. These devices are equipped with limited resources and are easily vulnerable to various cyber‐attacks. The attacker can hack the sensor nodes to steal critical information from WSN devices. The cluster heads in the WSN play a vital role in the process of routing data packets and attackers launch malicious codes through sender nodes to hack or damage the cluster heads to shut down the entire deployed network of agricultural regions. This research paper proposes a framework to improve the security of WSNs by providing a shield to the cluster heads of the network using machine learning techniques. The experimental study of the paper includes the comparative analysis of three machine learning techniques decision tree classifier, Gaussian Naïve Bayes, and random forest classifier for predicting WSN attacks like flooding, gray hole, blackhole, and TDMA that are deployed to support the proposed WSN security framework on the attack dataset. The random forest classifier achieves an accuracy of 98%, Precision of 97.6%, Recall of 97.6%, and F1 score of 97.8% which is the maximum among the deployed machine learning techniques.
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通过综合机器学习方法加强农业无线传感器网络安全
无线传感器网络(WSN)由多个传感器节点组成,从部署的环境中获取数据,以满足农业监测、工业监测等应用的需要。在不可能持续有人驻守的多个垂直区域部署传感器节点,可对农业区域进行监测。这些设备配备的资源有限,很容易受到各种网络攻击。攻击者可以入侵传感器节点,从 WSN 设备中窃取关键信息。WSN 中的簇头在数据包路由过程中起着至关重要的作用,攻击者通过发送节点发射恶意代码,入侵或破坏簇头,从而关闭整个农业地区部署的网络。本研究论文提出了一个框架,利用机器学习技术为网络的簇头提供保护,从而提高 WSN 的安全性。本文的实验研究包括对决策树分类器、高斯奈夫贝叶斯和随机森林分类器三种机器学习技术进行比较分析,以预测WSN攻击(如洪水、灰洞、黑洞和TDMA)。随机森林分类器的准确率为 98%,精确率为 97.6%,召回率为 97.6%,F1 分数为 97.8%,是所部署的机器学习技术中最高的。
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