On Hybrid Detection of Wireless Communications Over Interference Channels: A Generalized Framework

Weijie Yuan;Shuangyang Li;Zhiqiang Wei;Yonghui Li;Pingzhi Fan
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Abstract

Modern wireless systems face interference due to rising spectrum efficiency demands and increasingly aggressive network designs. Despite its optimality, the huge complexity of the maximum likelihood (ML) detection hinders its deployment in the future wireless communication systems, which require low latency and high energy efficiency. In this paper, we develop a novel generalized framework for data detection in interference channels. In particular, we factorize the joint likelihood function of the transmitted symbols to obtain the marginal distribution of a single symbol following the sum-product (SP) algorithm. Motivated by the fact that the complexity of the SP algorithm is dominated by the summation process, we introduce Gaussian and Gaussian mixture models to reduce the state space of symbols, which helps to reduce the detection complexity. The proposed hybrid detection framework consists of three kinds of symbol distributions, i.e., original discrete, Gaussian, and Gaussian mixture distributions. To strike a balance between complexity and error performance, we can simply modify the components of different symbol distributions, offering high flexibility in practical applications. Furthermore, we analyze the performance of our proposed detection scheme and discuss the design guidelines for the mixture Gaussian messages. Simulation results demonstrated the effectiveness of the proposed algorithm.
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论干扰信道上的无线通信混合检测:通用框架
由于频谱效率要求的提高和网络设计的日趋激进,现代无线系统面临着干扰。尽管具有最优性,但最大可能性(ML)检测的巨大复杂性阻碍了其在未来无线通信系统中的部署,这需要低延迟和高能效。在本文中,我们开发了一种新的用于干扰信道中数据检测的广义框架。特别地,我们根据和积(SP)算法对传输符号的联合似然函数进行因式分解,得到单个符号的边际分布。考虑到SP算法的复杂度主要受求和过程的影响,引入高斯和高斯混合模型来减小符号的状态空间,从而降低检测复杂度。所提出的混合检测框架由三种符号分布组成,即原始离散分布、高斯分布和高斯混合分布。为了在复杂性和错误性能之间取得平衡,我们可以简单地修改不同符号分布的组件,在实际应用中提供高度的灵活性。此外,我们还分析了所提出的检测方案的性能,并讨论了混合高斯消息的设计准则。仿真结果验证了该算法的有效性。
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