Low-Latency Dimensional Expansion and Anomaly Detection Empowered Secure IoT Network

Wenhao Shao, Yanyan Wei, Praboda Rajapaksha, Dun Li, Zhigang Luo, Noel Crespi

Research output: Contribution to journalArticlepeer-review

Abstract

The Internet of Things (IoT) consists of a myriad of smart devices and offers tremendous innovation opportunities in industry, homes, and businesses to enhance the productivity and the quality of life. However, ecosystem of infrastructures and the services associated with IoT devices have introduced a new set of vulnerabilities and threats, resulting in abnormal values of information collected by sensors, jeopardizing system security. To secure sensor networks, it must be possible to detect such anomalies or sequences of patterns in IoT devices that significantly deviate from normal behavior. To perform this task, this paper proposes a real-time streaming anomaly detection method based on a Bloom filter combined with hashing. This method expands the data dimensions through a hashing algorithm, and then adopts competitive learning (Winner-Take-All) to build a multi-layer Bloom Filter anomaly detection model. The feasibility of the proposed algorithm is verified theoretically using two datasets, KDD (to detect anomalies at the TCP/IP network level) and Credit (to detect anomalies during credit card transactions). The simulation results show that the proposed in this paper can effectively identify anomalies in the simulation data streams, with almost 95% accuracy for both datasets.

Original languageEnglish
Pages (from-to)3865-3879
Number of pages15
JournalIEEE Transactions on Network and Service Management
Volume20
Issue number3
DOIs
Publication statusPublished - 1 Sept 2023

Keywords

  • Internet of Things
  • anomaly detection
  • bloom filter
  • sensor devices
  • system security

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