Litcius/Paper detail

A Reliable Approach for Lightweight Anomaly Detection in Sensors Using Continuous Wavelet Transform and Vector Clustering

Rami Ahmad, Waseem Alhasan, Raniyah Wazirali, Rania Almajalid

2024IEEE Sensors Journal8 citationsDOI

Abstract

In the rapidly evolving field of sensor technology, efficient and accurate anomaly detection is critical across applications from environmental monitoring to cybersecurity. Traditional approaches often fail in real-time sensor data scenarios due to high computational requirements and lack of labeled datasets. This article presents a lightweight, unsupervised anomaly detection framework that combines continuous wavelet transform (CWT) with support vector clustering (SVC), aiming to reduce computational complexity and dynamically adapt to the data flow. Extensive validation on the Intel Berkeley Research Laboratory (IBRL) dataset demonstrates that our method not only handles sensor aberrations effectively, but also achieves a significant detection accuracy of 93.2% for drift readings, confirming its robustness and efficiency.

Topics & Concepts

Anomaly detectionCluster analysisWavelet transformComputer sciencePattern recognition (psychology)WaveletContinuous wavelet transformArtificial intelligenceData miningDiscrete wavelet transformAnomaly Detection Techniques and ApplicationsAdvanced Chemical Sensor TechnologiesFault Detection and Control Systems