GAC-KAN: An Ultra-Lightweight GNSS Interference Classifier for GenAI-Powered Consumer Edge Devices
Zhihan Zeng, Kaihe Wang, Zhongpei Zhang, Yue Xiu

TL;DR
This paper introduces GAC-KAN, a highly efficient GNSS interference classifier designed for resource-constrained GenAI-powered edge devices, utilizing physics-guided simulation and novel lightweight neural network components.
Contribution
It presents a new framework combining physics-based data synthesis and a compact neural network architecture for GNSS interference detection on edge devices.
Findings
Achieves 98.0% accuracy in interference classification
Contains only 0.13 million parameters, 660x fewer than ViT baselines
Demonstrates suitability for always-on security on resource-limited hardware
Abstract
The integration of Generative AI (GenAI) into Consumer Electronics (CE)--from AI-powered assistants in wearables to generative planning in autonomous Uncrewed Aerial Vehicles (UAVs)--has revolutionized user experiences. However, these GenAI applications impose immense computational burdens on edge hardware, leaving strictly limited resources for fundamental security tasks like Global Navigation Satellite System (GNSS) signal protection. Furthermore, training robust classifiers for such devices is hindered by the scarcity of real-world interference data. To address the dual challenges of data scarcity and the extreme efficiency required by the GenAI era, this paper proposes a novel framework named GAC-KAN. First, we adopt a physics-guided simulation approach to synthesize a large-scale, high-fidelity jamming dataset, mitigating the data bottleneck. Second, to reconcile high accuracy with…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Advanced Neural Network Applications · Wireless Signal Modulation Classification
