Analog Spiking Neuron in CMOS 28 nm Towards Large-Scale Neuromorphic Processors
The computational complexity of deep learning algorithms has given rise to significant speed and memory challenges for the execution hardware. In energy-limited portable devices, highly efficient processing platforms are indispensable for reproducing the prowess afforded by much bulkier processing p...
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Zusammenfassung: | The computational complexity of deep learning algorithms has given rise to
significant speed and memory challenges for the execution hardware. In
energy-limited portable devices, highly efficient processing platforms are
indispensable for reproducing the prowess afforded by much bulkier processing
platforms.
In this work, we present a low-power Leaky Integrate-and-Fire (LIF) neuron
design fabricated in TSMC's 28 nm CMOS technology as proof of concept to build
an energy-efficient mixed-signal Neuromorphic System-on-Chip (NeuroSoC). The
fabricated neuron consumes 1.61 fJ/spike and occupies an active area of 34 $\mu
m^{2}$, leading to a maximum spiking frequency of 300 kHz at 250 mV power
supply.
These performances are used in a software model to emulate the dynamics of a
Spiking Neural Network (SNN). Employing supervised backpropagation and a
surrogate gradient technique, the resulting accuracy on the MNIST dataset,
using 4-bit post-training quantization stands at 82.5\%. The approach
underscores the potential of such ASIC implementation of quantized SNNs to
deliver high-performance, energy-efficient solutions to various embedded
machine-learning applications. |
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DOI: | 10.48550/arxiv.2408.07734 |