Yang Haifeng, Wang Yongjun, Li Chao, Han Lu, Zhang Qi, Xin Xiangjun
The School of Electronic Engineering, Beijing University of Posts and Telecommunications (BUPT), Xitucheng Road No. 10, 100876, Beijing, China.
The Inspur Electronic Information Industry Co., Ltd., Beijing, China.
Sci Rep. 2025 Jul 1;15(1):21552. doi: 10.1038/s41598-025-07595-1.
Channel modeling plays a pivotal role in the field of communications, particularly in the optical communication networks of backbone communication systems. Recent studies on optical channel modeling have utilized real-valued neural network (RVNN) to extract channel characteristics, an approach that does not fully account for the properties of complex-valued signals. To address this limitation, we propose a complex-valued conditional generative adversarial network (C-CGAN) in this paper to comprehensively learn channel features. We describe the architecture and parameters of the C-CGAN and employ complex-valued windowed construction for input data. Subsequently, we evaluate the model's accuracy and generalization capabilities using the normalized mean square error (NMSE) and benchmark it against the real-valued conditional generative adversarial network (R-CGAN). The results indicate that the C-CGAN achieves better generalization across various scenarios, including different dataset sizes, noise levels, and input feature complexities, while also exhibiting a more stable training process. The NMSE achieved by the C-CGAN remains below [Formula: see text] and outperforms the R-CGAN. Additionally, analysis from the perspective of floating-point operations (FLOPs) reveals that the computational complexity of the C-CGAN is relatively low. To further validate scalability, we introduce a self-loop cascading mechanism that, under constrained training datasets, improves NMSE performance by 22.48% compared to the R-CGAN.
信道建模在通信领域发挥着关键作用,特别是在骨干通信系统的光通信网络中。最近关于光信道建模的研究利用实值神经网络(RVNN)来提取信道特征,但这种方法并未充分考虑复值信号的特性。为解决这一局限性,我们在本文中提出了一种复值条件生成对抗网络(C-CGAN),以全面学习信道特征。我们描述了C-CGAN的架构和参数,并对输入数据采用复值加窗构造。随后,我们使用归一化均方误差(NMSE)评估模型的准确性和泛化能力,并将其与实值条件生成对抗网络(R-CGAN)进行基准测试。结果表明,C-CGAN在各种场景下都能实现更好的泛化,包括不同的数据集大小、噪声水平和输入特征复杂度,同时训练过程也更稳定。C-CGAN实现的NMSE保持在[公式:见原文]以下,优于R-CGAN。此外,从浮点运算(FLOPs)的角度分析表明,C-CGAN的计算复杂度相对较低。为进一步验证可扩展性,我们引入了一种自环级联机制,在受限的训练数据集下,与R-CGAN相比,NMSE性能提高了22.48%。