English

Real-time Interference Identification via Supervised Learning: Embedding Coexistence Awareness in IoT Devices

Signal Processing 2018-12-12 v3

Abstract

Energy sampling-based interference detection and identification (IDI) methods collide with the limitations of commercial off-the-shelf (COTS) IoT hardware. Moreover, long sensing times, complexity and inability to track concurrent interference strongly inhibit their applicability in most IoT deployments. Motivated by the increasing need for on-device IDI for wireless coexistence, we develop a lightweight and efficient method targeting interference identification already at the level of single interference bursts. Our method exploits real-time extraction of envelope and model-aided spectral features, specifically designed considering the physical properties of signals captured with COTS hardware. We adopt manifold supervised-learning (SL) classifiers ensuring suitable performance and complexity trade-off for IoT platforms with different computational capabilities. The proposed IDI method is capable of real-time identification of IEEE 802.11b/g/n, 802.15.4, 802.15.1 and Bluetooth Low Energy wireless standards, enabling isolation and extraction of standard-specific traffic statistics even in the case of heavy concurrent interference. We perform an experimental study in real environments with heterogeneous interference scenarios, showing 90%-97% burst identification accuracy. Meanwhile, the lightweight SL methods, running online on wireless sensor networks-COTS hardware, ensure sub-ms identification time and limited performance gap from machine-learning approaches.

Keywords

Cite

@article{arxiv.1809.10085,
  title  = {Real-time Interference Identification via Supervised Learning: Embedding Coexistence Awareness in IoT Devices},
  author = {Simone Grimaldi and Aamir Mahmood and Mikael Gidlund},
  journal= {arXiv preprint arXiv:1809.10085},
  year   = {2018}
}

Comments

14 pages, Updated title

R2 v1 2026-06-23T04:19:20.106Z