On the sum capacity of the Gaussian multiple access channel with feedback

E. Ardetsanizadeh, T. Javidi, Young-Han Kim, M. Wigger
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Abstract

This paper studies the sum capacity C(P) of the N-sender additive white Gaussian noise (AWGN) multiple access channel (MAC), under equal power constraint P, when noiseless output feedback is available to all the N senders. The multiletter characterization of the sum capacity, in terms of directed information, is considered as an optimization problem. The main result of this paper is to solve this problem when it is restricted to Gaussian causally conditional input distributions. Also, a dependence balance bound in terms of directed information is introduced, which for the case of memoryless channels is the same as the bound introduced by Kramer and Gastpar. This bound is used to capture the causality, however, since it is in general ¿non-convex¿ makes the problem technically hard. A general upper bound is obtained by forming the Lagrange dual problem and it is then shown that this upper bound coincides with the sum-rate achieved by Kramer's Fourier-MEC scheme. This result generalizes earlier work by Kramer and Gastpar on the achievable sum rate under a ¿per-symbol¿ power constraint to the one under the standard ¿block¿ power constraint.
带反馈的高斯多址信道的和容量
本文研究了在等功率约束P下,当所有N个发送端均可获得无噪声输出反馈时,N个发送端加性高斯白噪声(AWGN)多址信道(MAC)的总容量C(P)。基于有向信息的和容量的多字母表征被认为是一个优化问题。本文的主要成果是在高斯因果条件输入分布的情况下解决了这一问题。此外,还引入了有向信息的依赖平衡界,该界与Kramer和Gastpar引入的无记忆信道的依赖平衡界相同。然而,这个界限是用来捕捉因果关系的,因为它通常是“非凸的”,使得这个问题在技术上很困难。通过形成拉格朗日对偶问题得到了一个一般上界,并证明了该上界与Kramer的Fourier-MEC格式得到的和速率一致。这一结果将Kramer和Gastpar关于在“每符号”功率约束下可实现的和率的早期工作推广到标准“块”功率约束下的和率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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