Enhanced Machine Learning Based Network Traffic Detection Model for IoT Network
DOI:
https://doi.org/10.3991/ijim.v18i19.50315Keywords:
Machine Learning (ML),Internet of Things (IoT), Network TrafficAbstract
Ensuring the security of networks is a significant hurdle in the rollout of the Internet of Things (IoT). A widely used protocol in the IoT ecosystem is message queuing telemetry transport (MQTT), which is based on the published-subscribe model. IoT manufacturers are expected to expand their usage of the MQTT protocol, which is expected to increase the number of cyber security threats against the protocol. IoT settings are crucial to overcoming scalability and computing resource issues and minimizing the characteristics needed for categorization. Machine learning (ML) is extensively used in traffic categorization and intrusion detection. This study proposes a ML-based network traffic detection model (MLNTDM) to enhance IoT application layer attack detection. The proposed architecture for the MQTT protocol is evaluated based on its effectiveness in detecting malicious attacks and how these affect various MQTT brokers. This study focuses on low-power-consuming ML algorithms for detecting IoT botnet offenses and identifying typical attacks and their responses. With this framework, each network flow provides information that can help identify the source of generated traffic and network assaults. Results from our approach, as shown in the experiment, prove more accuracy.
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Copyright (c) 2024 Mazen Alzyoud, Najah Al-shanableh, Eman Nashnush, Rabah Shboul, Raed Alazaidahb, Ghassan Samarab
This work is licensed under a Creative Commons Attribution 4.0 International License.