Abstract

The development of brain-inspired neuromorphic computing architectures as a paradigm for Artificial Intelligence (AI) at the edge is a candidate solution that can meet strict energy and cost reduction constraints in the Internet of Things (IoT) application areas. Toward this goal, we present μBrain: the first digital yet fully event-driven without clock architecture, with co-located memory and processing capability that exploits event-based processing to reduce an always-on system's overall energy consumption (μW dynamic operation). The chip area in a 40 nm Complementary Metal Oxide Semiconductor (CMOS) digital technology is 2.82 mm2 including pads (without pads 1.42 mm2). This small area footprint enables μBrain integration in re-trainable sensor ICs to perform various signal processing tasks, such as data preprocessing, dimensionality reduction, feature selection, and application-specific inference. We present an instantiation of the μBrain architecture in a 40 nm CMOS digital chip and demonstrate its efficiency in a radar-based gesture classification with a power consumption of 70 μW and energy consumption of 340 nJ per classification. As a digital architecture, μBrain is fully synthesizable and lends to a fast development-to-deployment cycle in Application-Specific Integrated Circuits (ASIC). To the best of our knowledge, μBrain is the first tiny-scale digital, spike-based, fully parallel, non-Von-Neumann architecture (without schedules, clocks, nor state machines). For these reasons, μBrain is ultra-low-power and offers software-to-hardware fidelity. μBrain enables always-on neuromorphic computing in IoT sensor nodes that require running on battery power for years.

Highlights

  • Information processing in the brain has been a topic of active research for decades (Cappy, 2020)

  • This paper introduces μBrain, a neuromorphic IC for ultralow power (

  • For reference comparison of μBrain with other tiny spiking neural network processors, we perform the standard benchmark of handwritten digits recognition (MNIST)

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Summary

INTRODUCTION

Information processing in the brain has been a topic of active research for decades (Cappy, 2020). In neuromorphic architectures, sparsity exploitation results in skipping redundant operations, and efficiency is achieved by directly reducing both latency and energy consumption. Asynchronous event-driven processing allows for theoretically infinite scalability as every neuron can process its inputs independent of other neurons It lets the information flow as fast as possible, which results in a low latency response. This paper introduces μBrain, a neuromorphic IC for ultralow power (

Background and Related Literature
Event-Based Architecture
Spike Arbiter
The Multi-Phase-Oscillator and Delay Cell
RESULTS
Radar-Based Hand Gesture Classification With μBrain
Background
Full Text
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