TL;DR
GothX is a flexible, automated traffic generator for IoT networks that creates realistic legitimate and malicious datasets, aiding machine learning-based security research with customizable, scalable, and labeled traffic scenarios.
Contribution
This work introduces GothX, a novel, configurable traffic generator for IoT networks that supports multiple protocols and automatic scenario execution, enhancing dataset creation for security analysis.
Findings
GothX successfully generates realistic IoT traffic datasets.
It can replicate and enrich existing datasets like MQTTset.
GothX scales to 450 sensors on a single machine.
Abstract
In recent years, machine learning-based anomaly detection (AD) has become an important measure against security threats from Internet of Things (IoT) networks. Machine learning (ML) models for network traffic AD require datasets to be trained, evaluated and compared. Due to the necessity of realistic and up-to-date representation of IoT security threats, new datasets need to be constantly generated to train relevant AD models. Since most traffic generation setups are developed considering only the author's use, replication of traffic generation becomes an additional challenge to the creation and maintenance of useful datasets. In this work, we propose GothX, a flexible traffic generator to create both legitimate and malicious traffic for IoT datasets. As a fork of Gotham Testbed, GothX is developed with five requirements: 1)easy configuration of network topology, 2) customization of…
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