A fiber channel modeling method based on complex neural networks.

Journal: Scientific reports
Published Date:

Abstract

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.

Authors

  • Haifeng Yang
    Jiangsu Agri-animal Husbandry Vocational College, Taizhou, 225300 China.
  • Yongjun Wang
    Department of Neurology, Beijing Tiantan Hospital, Beijing, China.
  • Chao Li
    McGill University Health Centre, McGill Adult Unit for Congenital Heart Disease Excellence, Montreal, Québec, Canada.
  • Lu Han
    Pfizer Worldwide Chemical Research and Development, Pfizer Inc. Groton Connecticut 06340 USA Sebastien.Monfette@pfizer.com.
  • Qi Zhang
    Department of Gastroenterology, The Affiliated Hospital of Qingdao University, Qingdao, China.
  • Xiangjun Xin

Keywords

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