NEXUS:用于实时数据处理的 28 纳米 3.3pJ/SOP 16 核钻石拓扑尖峰神经网络。

Maryam Sadeghi, Yasser Rezaeiyan, Dario Fernandez Khatiboun, Sherif Eissa, Federico Corradi, Charles Augustine, Farshad Moradi
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摘要

功率限制和低集成密度阻碍了大脑级尖峰神经网络(SNN)的实现。为了应对这些挑战,多核 SNNs 被用来以高能量效率模拟大量神经元,其中尖峰数据包通过片上网络(NoC)路由。然而,在高尖峰流量条件下,信息可能会在 NoC 中丢失,从而导致性能下降。本文介绍的 NEXUS 是一种 16 核 SNN,采用 28 纳米 CMOS 技术制造,具有菱形 NoC 拓扑。它集成了 4096 个具有 100 万个 4 位突触权重的泄漏积分发射(LIF)神经元,占地面积为 2.16 平方毫米。所提出的 NoC 架构可扩展至任何网络规模,在 16 个内核的最大路由延迟为 5.1μs 的情况下,确保不会因数据包竞争而导致数据丢失。所提出的拥塞管理方法无需在路由器中使用先进先出(FIFO),因此路由器占地面积仅为 0.001 平方毫米。拟议的神经突触内核可将处理速度提高 8.5 倍,具体取决于输入的稀疏程度。SNN 在 0.9 V 电压下的峰值吞吐量为 4.7 GSOP/s,在 0.55 V 电压下每次突触操作 (SOP) 的最低能耗为 3.3 pJ。在芯片上映射了一个 4 层前馈网络,以 8.4Kclassification/ s 的速度对 MNIST 数字进行分类,准确率达 92.3%,每分类消耗 2.7-μJ 能量。此外,映射到芯片上的音频识别任务以 215-μJ/classification 的速度达到了 87.4% 的准确率。
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NEXUS: A 28nm 3.3pJ/SOP 16-Core Spiking Neural Network with a Diamond Topology for Real-Time Data Processing.

The realization of brain-scale spiking neural networks (SNNs) is impeded by power constraints and low integration density. To address these challenges, multi-core SNNs are utilized to emulate numerous neurons with high energy efficiency, where spike packets are routed through a network-on-chip (NoC). However, the information can be lost in the NoC under high spike traffic conditions, leading to performance degradation. This work presents NEXUS, a 16-core SNN with a diamond-shaped NoC topology fabricated in 28-nm CMOS technology. It integrates 4096 leaky integrate-and-fire (LIF) neurons with 1M 4-bit synaptic weights, occupying an area of 2.16 mm2. The proposed NoC architecture is scalable to any network size, ensuring no data loss due to contending packets with a maximum routing latency of 5.1μs for 16 cores. The proposed congestion management method eliminates the need for FIFO in routers, resulting in a compact router footprint of 0.001 mm2. The proposed neurosynaptic core allows for increasing the processing speed by up to 8.5× depending on input sparsity. The SNN achieves a peak throughput of 4.7 GSOP/s at 0.9 V, consuming a minimum energy per synaptic operation (SOP) of 3.3 pJ at 0.55 V. A 4-layer feed-forward network is mapped onto the chip, classifying MNIST digits with 92.3% accuracy at 8.4Kclassification/ s and consuming 2.7-μJ/classification. Additionally, an audio recognition task mapped onto the chip achieves 87.4% accuracy at 215-μJ/classification.

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Table of Contents Erratum to “Design of an Extreme Low Cutoff Frequency Highpass Frontend for CMOS ISFET via Direct Tunneling Principle” IEEE Transactions on Biomedical Circuits and Systems Publication Information IEEE Circuits and Systems Society Information Guest Editorial: Ultralow-Power Technologies for Edge Computing in Human-Machine Interface Applications
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