Quantization-Aware Training of Spiking Neural Networks for Energy-Efficient Spectrum Sensing on Loihi Chip

IF 5.3 2区 计算机科学 Q1 TELECOMMUNICATIONS IEEE Transactions on Green Communications and Networking Pub Date : 2023-11-29 DOI:10.1109/TGCN.2023.3337748
Shiya Liu;Nima Mohammadi;Yang Yi
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Abstract

Spectrum sensing is a technique used to identify idle/busy bandwidths in cognitive radio. Energy-efficient spectrum sensing is critical for multiple-input-multiple-output (MIMO) orthogonal-frequency-division multiplexing (OFDM) systems. In this paper, we propose the use of spiking neural networks (SNNs), which are more biologically plausible and energy-efficient than deep neural networks (DNNs), for spectrum sensing. The SNN models are implemented on the Loihi chip, which is better suited for SNNs than GPUs. Quantization is an effective technique to reduce the memory and energy consumption of SNNs. However, previous quantization methods for SNNs have suffered from accuracy degradation when compared to full-precision models. This degradation can be attributed to errors introduced by the coarse estimation of gradients in non-differentiable quantization layers. To address this issue, we introduce a quantization-aware training algorithm for SNNs running on Loihi. To mitigate errors caused by the poor estimation of gradients, we do not use a fixed configuration for the quantizer, as is common in existing SNN quantization methods. Instead, we make the scale parameters of the quantizer trainable. Furthermore, our proposed method adopts a probability-based scheme to selectively quantize individual layers within the network, rather than quantizing all layers simultaneously. Our experimental results demonstrate that high-performance and energy-efficient spectrum sensing can be achieved using Loihi.
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利用量化感知训练尖峰神经网络,在 Loihi 芯片上实现高能效频谱传感
频谱感知是一种用于识别认知无线电中空闲/繁忙带宽的技术。高能效频谱感知对于多输入多输出(MIMO)正交频分复用(OFDM)系统至关重要。与深度神经网络(DNN)相比,尖峰神经网络(SNN)更符合生物学原理,也更节能。SNN 模型是在 Loihi 芯片上实现的,该芯片比 GPU 更适合 SNN。量化是降低 SNN 内存和能耗的有效技术。然而,与全精度模型相比,以前的 SNN 量化方法存在精度下降的问题。这种下降可归因于对非可变量化层中梯度的粗略估计所带来的误差。为了解决这个问题,我们为在 Loihi 上运行的 SNN 引入了量化感知训练算法。为了减少因梯度估计不准确而造成的误差,我们没有像现有的 SNN 量化方法那样使用固定的量化器配置。相反,我们使量化器的尺度参数可训练。此外,我们提出的方法采用基于概率的方案,选择性地量化网络中的各个层,而不是同时量化所有层。我们的实验结果表明,使用 Loihi 可以实现高性能、高能效的频谱感知。
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来源期刊
IEEE Transactions on Green Communications and Networking
IEEE Transactions on Green Communications and Networking Computer Science-Computer Networks and Communications
CiteScore
9.30
自引率
6.20%
发文量
181
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