A Review on the Deployment of Intrusion Detection Systems for Wireless Sensor Network using AI
DOI:
https://doi.org/10.46610/JAHNMC.2025.v02i01.003Keywords:
Anomaly detection, Aid universal performance, Intrusion Detection Systems, Wireless Sensor Networks, protection threatsAbstract
Wireless Sensor Networks (WSNs) are essential for tracking and amassing statistics in numerous fields, which includes environmental tracking, healthcare, and business automation. However, the open nature and restrained property of WSNs cause them to particularly vulnerable to numerous safety threats. Intrusion Detection Systems (IDS) have emerged as crucial device for figuring out and mitigating the ones protection dangers inside WSNs. This evaluation explores the deployment of IDS in WSNs, inspecting numerous IDS techniques, which embody anomaly-primarily based completely, signature-based totally, and hybrid strategies, and assessing their effectiveness and performance in useful resource-limited environments. Furthermore, we speak the demanding situations in IDS implementation, which consist of strength intake, detection accuracy, and scalability, offering insights into contemporary upgrades geared towards overcoming the ones barriers. This takes a look at highlights the want for optimized IDS models that balance protection and useful aid efficiency, paving the way for extra sturdy WSN deployments.
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