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Bibliographic Details
Main Authors: Wang, Xu, Han, Puyu, Kang, Jiaju, Pan, Weichao, Gong, Luqi
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2502.02428
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Table of Contents:
  • Industrial sensor networks produce complex signals with nonlinear structure and shifting distributions. We propose RIE-SenseNet, a novel geometry-aware Transformer model that embeds sensor data in a Riemannian manifold to tackle these challenges. By leveraging hyperbolic geometry for sequence modeling and introducing a manifold-based augmentation technique, RIE-SenseNet preserves sensor signal structure and generates realistic synthetic samples. Experiments show RIE-SenseNet achieves >90% F1-score, far surpassing CNN and Transformer baselines. These results illustrate the benefit of combining non-Euclidean feature representations with geometry-consistent data augmentation for robust pattern recognition in industrial sensing.