EdgeSpike: Spiking Neural Networks for Low-Power Autonomous Sensing in Edge IoT Architectures
Gustav Olaf Yunus Laitinen-Fredriksson Lundstrom-Imanov, Taner Yilmaz

TL;DR
EdgeSpike introduces a comprehensive SNN framework for low-power, autonomous sensing in edge IoT devices, combining training, architecture search, hardware optimization, and on-device learning.
Contribution
It presents a unified, hardware-aware SNN framework with novel training, architecture search, and continual learning capabilities for edge IoT applications.
Findings
Achieves 91.4% accuracy, close to CNN baselines.
Reduces energy per inference by up to 47x on neuromorphic hardware.
Extends battery life by over six times in field deployment.
Abstract
We propose EdgeSpike, a co-designed spiking neural network (SNN) framework for autonomous low-power sensing in edge Internet of Things (IoT) architectures. EdgeSpike unifies (i) a hybrid surrogate-gradient and direct-encoding training pipeline, (ii) a hardware-aware neural architecture search (NAS) bounded by per-inference energy and memory budgets, (iii) an event-driven runtime targeting Intel Loihi 2, SpiNNaker 2, and commodity ARM Cortex-M microcontrollers with custom spike-sparse SIMD kernels, and (iv) a lightweight local plasticity rule enabling continual on-device adaptation without backpropagation. The framework is evaluated across five sensing tasks (keyword spotting, vibration-based machine fault detection, surface electromyography gesture recognition, 77 GHz radar human-activity classification, and structural-health acoustic-emission monitoring) on three hardware targets.…
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