Quantized Reservoir Computing on Edge Devices for Communication Applications

Shiya Liu, Lingjia Liu, Y. Yi
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引用次数: 3

Abstract

With the advance of edge computing, a fast and efficient machine learning model running on edge devices is needed. In this paper, we propose a novel quantization approach that reduces the memory and compute demands on edge devices without losing much accuracy. Also, we explore its application in communication such as symbol detection in 5G systems, attack detection of smart grid, and dynamic spectrum access. Conventional neural networks such as convolutional neural networks (CNNs) and recurrent neural networks (RNNs) could be exploited on these applications and achieve state-of-the-art performance. However, conventional neural networks consume a large amount of computation and storage resources, and thus do not fit well to edge devices. Reservoir computing (RC), which is a framework for computation derived from RNN, consists of a fixed reservoir layer and a trained readout layer. The advantages of RC compared to traditional RNNs are faster learning and lower training costs. Besides, RC has faster inference speed with fewer parameters and resistance to overfitting issues. These merits make the RC system more suitable for applications running on edge devices. We apply the proposed quantization approach to RC systems and demonstrate the proposed quantized RC system on Xilinx Zynq®-7000 FPGA board. On the sequential MNIST dataset, the quantized RC system utilizes 62%, 65%, and 64% less of DSP, FF, and LUT, respectively compared to the floating-point RNN. The inference speed is improved by 17 times with an 8% accuracy drop.
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通信应用边缘设备上的量子化储层计算
随着边缘计算的发展,需要一种运行在边缘设备上的快速高效的机器学习模型。在本文中,我们提出了一种新的量化方法,可以减少边缘设备的内存和计算需求,同时又不会损失太多精度。此外,我们还探讨了它在通信中的应用,如5G系统中的符号检测、智能电网的攻击检测和动态频谱接入。卷积神经网络(cnn)和循环神经网络(rnn)等传统神经网络可以在这些应用中得到利用,并实现最先进的性能。然而,传统的神经网络消耗大量的计算和存储资源,因此不适合边缘设备。储层计算(RC)是由RNN衍生而来的一种计算框架,它由一个固定的储层和一个训练好的读出层组成。与传统rnn相比,RC的优点是学习速度更快,训练成本更低。此外,RC具有更快的推理速度、更少的参数和抗过拟合问题。这些优点使RC系统更适合在边缘设备上运行的应用。我们将提出的量化方法应用于RC系统,并在Xilinx Zynq®-7000 FPGA板上演示了提出的量化RC系统。在序列MNIST数据集上,与浮点RNN相比,量化RC系统使用的DSP、FF和LUT分别减少了62%、65%和64%。推理速度提高了17倍,精度下降了8%。
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