Intelligent Time Series Anomaly Detection in IoT Using Feature Extraction and Hybrid Classification
Keywords:
Denial of Service; Internet of Things; Cybersecurity; Artificial Butterfly Optimization; Hybrid CapsNet; Anomaly Detection.Abstract
IoT cyberattacks are becoming more frequent and complicated, threatening individuals and organizations. IoT networks are vulnerable to internal and external cyberattacks because to their openness and self-configuration. DoS attacks are particularly destructive, stopping
genuine users from accessing key services. Traditional anomaly detection approaches fail to identify complex temporal correlations and are inaccurate and not robust.
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