CRAINIOct 19, 2023

Network-Aware AutoML Framework for Software-Defined Sensor Networks

arXiv:2310.12914v212 citationsh-index: 18Has Code
Originality Incremental advance
AI Analysis

This addresses security vulnerabilities in software-defined sensor networks, which is an incremental improvement for network security in IoT environments.

The paper tackles DDoS attack detection in software-defined sensor networks by proposing a network-aware AutoML framework that selects an ideal machine learning algorithm based on network constraints, resulting in traffic packets being delivered with additional delays under attacks.

As the current detection solutions of distributed denial of service attacks (DDoS) need additional infrastructures to handle high aggregate data rates, they are not suitable for sensor networks or the Internet of Things. Besides, the security architecture of software-defined sensor networks needs to pay attention to the vulnerabilities of both software-defined networks and sensor networks. In this paper, we propose a network-aware automated machine learning (AutoML) framework which detects DDoS attacks in software-defined sensor networks. Our framework selects an ideal machine learning algorithm to detect DDoS attacks in network-constrained environments, using metrics such as variable traffic load, heterogeneous traffic rate, and detection time while preventing over-fitting. Our contributions are two-fold: (i) we first investigate the trade-off between the efficiency of ML algorithms and network/traffic state in the scope of DDoS detection. (ii) we design and implement a software architecture containing open-source network tools, with the deployment of multiple ML algorithms. Lastly, we show that under the denial of service attacks, our framework ensures the traffic packets are still delivered within the network with additional delays.

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