基于量子生成对抗网络的信道建模

Zhairui Gong, Xinling He, Zhifan Wan, Zetong Li, Xianchao Zhang, Xutao Yu
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引用次数: 0

摘要

信道建模在通信系统中是不可缺少的。提出了一种基于量子生成对抗模型的信道建模新方案。量子生成对抗网络是一种以量子电路为生成模块,深度神经网络为判别模块的生成对抗模型,利用量子算法在模拟随机信道模型的概率分布方面的优势。实验在IBM QX量子计算平台上进行。分析了成本函数的梯度下降和Kullback-Leibler散度。结果验证了量子生成对抗网络用于信道建模的可行性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Channel Modeling Based On Quantum Generative Adversarial Network
Channel modeling is indispensable in a communication system. In this paper, a novel scheme for channel modeling using quantum generative adversarial model was proposed. A quantum generative adversarial network is a generative adversarial model with a quantum circuit as the generative module and a deep neural network as the discriminant module, thereby exploiting the privilege of quantum algorithms in simulating probability distributions to stochastic channel models. Experiments were conducted on IBM QX quantum computing platform. The gradient descent of the cost function and Kullback-Leibler divergence were analyzed. Results verify the feasibility and superiority of the quantum generative adversarial network for channel modeling.
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