Xu Zhaopeng, Wu Qi, Lu Weiqi, Ji Honglin, Chen Hui, Ji Tonghui, Yang Yu, Qiao Gang, Tang Jianwei, Cheng Chen, Liu Lulu, Wang Shangcheng, Liang Junpeng, Wei Jinlong, Hu Weisheng, Shieh William
Opt Lett. 2024 Jun 15;49(12):3500-3503. doi: 10.1364/OL.527293.
Neural network (NN)-based equalizers have been widely applied for dealing with nonlinear impairments in intensity-modulated direct detection (IM/DD) systems due to their excellent performance. However, the computational complexity (CC) is a major concern that limits the real-time application of NN-based receivers. In this Letter, we propose, to our knowledge, a novel weight-adaptive joint mixed-precision quantization and pruning approach to reduce the CC of NN-based equalizers, where only integer arithmetic is taken into account instead of floating-point operations. The NN connections are either directly cutoff or represented by a proper number of quantization bits by weight partitioning, leading to a hybrid compressed sparse network that computes much faster and consumes less hardware resources. The proposed approach is verified in a 50-Gb/s 25-km pulse amplitude modulation (PAM)-4 IM/DD link using a directly modulated laser (DML) in the C-band. Compared with the traditional fully connected NN-based equalizer operated with standard floating-point arithmetic, about 80% memory can be saved at a minimum network size without degrading the system performance. Quantization is also shown to be more suitable to over-parameterized NN-based equalizers compared with NNs selected at a minimum size.
基于神经网络(NN)的均衡器因其出色的性能已被广泛应用于处理强度调制直接检测(IM/DD)系统中的非线性损伤。然而,计算复杂度(CC)是一个主要问题,限制了基于NN的接收机的实时应用。在本信函中,据我们所知,我们提出了一种新颖的权重自适应联合混合精度量化和剪枝方法,以降低基于NN的均衡器的计算复杂度,其中仅考虑整数运算而非浮点运算。通过权重划分,NN连接要么直接切断,要么由适当数量的量化比特表示,从而形成一个混合压缩稀疏网络,其计算速度更快且消耗更少的硬件资源。所提出的方法在一个50 Gb/s、25 km的脉冲幅度调制(PAM)-4 IM/DD链路中得到验证,该链路使用C波段的直接调制激光器(DML)。与采用标准浮点运算的传统全连接基于NN的均衡器相比,在最小网络规模下可节省约80%的内存,且不会降低系统性能。与在最小规模下选择的神经网络相比,量化也被证明更适合参数过多的基于NN的均衡器。