SpikeDyn: A Framework for Energy-Efficient Spiking Neural Networks with Continual and Unsupervised Learning Capabilities in Dynamic Environments

Spiking Neural Networks (SNNs) bear the potential of efficient unsupervised and continual learning capabilities because of their biological plausibility, but their complexity still poses a serious research challenge to enable their energy-efficient design for resource-constrained scenarios (like embedded systems, IoT-Edge, etc.). We propose SpikeDyn, a comprehensive framework for energy-efficient SNNs with continual and unsupervised learning capabilities in dynamic environments, for both the training and inference phases. It is achieved through the following multiple diverse mechanisms: 1) reduction of neuronal operations, by replacing the inhibitory neurons with direct lateral inhibitions; 2) a memory- and energy-constrained SNN model search algorithm that employs analytical models to estimate the memory footprint and energy consumption of different candidate SNN models and selects a Pareto-optimal SNN model; and 3) a lightweight continual and unsupervised learning algorithm that employs adaptive learning rates, adaptive membrane threshold potential, weight decay, and reduction of spurious updates. Our experimental results show that, for a network with 400 excitatory neurons, our SpikeDyn reduces the energy consumption on average by 51 compared to the state-of-the-art. Due to the improved learning algorithm, SpikeDyn provides on avg. 21 for classifying the most recently learned task, and by 8 previously learned tasks.

READ FULL TEXT

page 3

page 6

research
07/17/2020

FSpiNN: An Optimization Framework for Memory- and Energy-Efficient Spiking Neural Networks

Spiking Neural Networks (SNNs) are gaining interest due to their event-d...
research
09/18/2023

Adaptive Reorganization of Neural Pathways for Continual Learning with Hybrid Spiking Neural Networks

The human brain can self-organize rich and diverse sparse neural pathway...
research
08/09/2023

Enhancing Efficient Continual Learning with Dynamic Structure Development of Spiking Neural Networks

Children possess the ability to learn multiple cognitive tasks sequentia...
research
07/12/2022

A developmental approach for training deep belief networks

Deep belief networks (DBNs) are stochastic neural networks that can extr...
research
12/24/2022

Mantis: Enabling Energy-Efficient Autonomous Mobile Agents with Spiking Neural Networks

Autonomous mobile agents such as unmanned aerial vehicles (UAVs) and mob...
research
08/16/2023

HyperSNN: A new efficient and robust deep learning model for resource constrained control applications

In light of the increasing adoption of edge computing in areas such as i...

Please sign up or login with your details

Forgot password? Click here to reset