Abstract
Millions of digital devices total the Internet of Things (IoT), and this allows very easy interaction from users connecting the devices. IoT is one of the tech sectors that is expanding most rapidly, but it can also be very vulnerable to hazards. Infections and abnormal placement on the Internet of Things (IoT) framework is an increasing threat in the field of technology. In view of the growing IoT foundation usage across all industries, attacks and dangers on these systems have also grown proportional. Leveraging typical machine learning methods, cyber-attack detection plays a critical role in avoiding damage from cyberattacks on IoT devices. IoT Cyber Attacks are Not Detected by ANN Artificial Neural Networks Using Deep Learning Techniques CNN-DRL (Convolutional Neural Networks-Deep Reinforcement Learning) Hybrid Approach: Detects Attacks, including Distributed Denial of Service (DDoS), Zero-day, and Eavesdropping Attacks.
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More From: International Journal of Innovative Science and Research Technology (IJISRT)
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