Unleashing the Power of Multi-Agent Deep Learning: Cyber-Attack Detection in IoT

Authors

DOI:

https://doi.org/10.55938/ijgasr.v2i2.46

Keywords:

CNNs, RNNs, DBNs, Transfer Learning, Adversarial Attacks, Malware Detection, Botnet Detection, Network security, Adversarial Attacks

Abstract

Detecting botnet and malware cyber-attacks is a critical task in ensuring the security of computer networks. Traditional methods for identifying such attacks often involve static rules and signatures, which can be easily evaded by attackers. Dl is a subdivision of ML, has shown promise in enhancing the accuracy of detecting botnets and malware by analyzing large amounts of network traffic data and identifying patterns that are difficult to detect with traditional methods.

In order to identify abnormal traffic patterns that can be a sign of botnet or malware activity, deep learning models can be taught to learn the intricate interactions and correlations between various network traffic parameters, such as packet size, time intervals, and protocol headers. The models can also be trained to detect anomalies in network traffic, which could indicate the presence of unknown malware.

The threat of malware and botnet assaults has increased in frequency with the growth of the IoT. In this research, we offer a unique LSTM and GAN-based method for identifying such attacks. We utilise our model to categorise incoming traffic as either benign or malicious using a dataset of network traffic data from various IoT devices. Our findings show how well our method works by attaining high accuracy in identifying botnet and malware cyberattacks in IoT networks. This study makes a contribution to the creation of stronger and more effective security systems for shielding IoT devices from online dangers.

 One of the major advantages of using deep learning for botnet and malware detection is its ability to adapt to new and previously unknown attack patterns, making it a useful tool in the fight against constantly evolving cyber threats. However, DL models require large quantity of labeled data for training, and their performance can be affected by the quality and quantity of the data used.

 Deep learning holds great potential for improving the accuracy and effectiveness of botnet and malware detection, and its continued development and application could lead to significant advancements in the field of cybersecurity.

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Published

2023-06-30

How to Cite

Kaushik, P. (2023). Unleashing the Power of Multi-Agent Deep Learning: Cyber-Attack Detection in IoT. International Journal for Global Academic & Scientific Research, 2(2), 15–29. https://doi.org/10.55938/ijgasr.v2i2.46