Adaptive State-Space Mamba for Real-Time Sensor Data Anomaly Detection
- URL: http://arxiv.org/abs/2503.22743v1
- Date: Wed, 26 Mar 2025 21:37:48 GMT
- Title: Adaptive State-Space Mamba for Real-Time Sensor Data Anomaly Detection
- Authors: Alice Zhang, Chao Li,
- Abstract summary: We propose an emphAdaptive State-Space Mamba framework for real-time sensor data anomaly detection.<n>Our approach is easily to other time-series tasks that demand rapid and reliable detection capabilities.
- Score: 2.922256022514318
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: State-space modeling has emerged as a powerful paradigm for sequence analysis in various tasks such as natural language processing, time-series forecasting, and signal processing. In this work, we propose an \emph{Adaptive State-Space Mamba} (\textbf{ASSM}) framework for real-time sensor data anomaly detection. While state-space models have been previously employed for image processing applications (e.g., style transfer \cite{wang2024stylemamba}), our approach leverages the core idea of sequential hidden states to tackle a significantly different domain: detecting anomalies on streaming sensor data. In particular, we introduce an adaptive gating mechanism that dynamically modulates the hidden state update based on contextual and learned statistical cues. This design ensures that our model remains computationally efficient and scalable, even under rapid data arrival rates. Extensive experiments on real-world and synthetic sensor datasets demonstrate that our method achieves superior detection performance compared to existing baselines. Our approach is easily extensible to other time-series tasks that demand rapid and reliable detection capabilities.
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