A Realistic Simulation Framework for Analog/Digital Neuromorphic Architectures
Quintana, Fernando M., Maryada, null, Galindo, Pedro L., Donati, Elisa, Indiveri, Giacomo, Perez-Peña, Fernando
–arXiv.org Artificial Intelligence
Developing dedicated neuromorphic computing platforms optimized for embedded or edge-computing applications requires time-consuming design, fabrication, and deployment of full-custom neuromorphic processors. To ensure that initial prototyping efforts, exploring the properties of different network architectures and parameter settings, lead to realistic results it is important to use simulation frameworks that match as best as possible the properties of the final hardware. This is particularly challenging for neuromorphic hardware platforms made using mixed-signal analog/digital circuits, due to the variability and noise sensitivity of their components. In this paper, we address this challenge by developing a software spiking neural network simulator explicitly designed to account for the properties of mixed-signal neuromorphic circuits, including device mismatch variability. The simulator, called ARCANA (A Realistic Simulation Framework for Analog/Digital Neuromorphic Architectures), is designed to reproduce the dynamics of mixed-signal synapse and neuron electronic circuits with autogradient differentiation for parameter optimization and GPU acceleration. We demonstrate the effectiveness of this approach by matching software simulation results with measurements made from an existing neuromorphic processor. We show how the results obtained provide a reliable estimate of the behavior of the spiking neural network trained in software, once deployed in hardware. This framework enables the development and innovation of new learning rules and processing architectures in neuromorphic embedded systems. Keywords: SNN, DPI, neuromorphic, PyTorch, DYNAP-SE 1. Introduction Mixed-signal neuromorphic circuits emulate the neural and synaptic dynamics observed in real neural systems, reproducing features such as limited precision, heterogeneity, and high
arXiv.org Artificial Intelligence
Sep-23-2024
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