论文标题

二进制MIMO通过同型优化及其深层适应

Binary MIMO Detection via Homotopy Optimization and Its Deep Adaptation

论文作者

Shao, Mingjie, Ma, Wing-Kin

论文摘要

在本文中,我们考虑了在一位量化的观测值和二进制符号星座下的最大样品(ML)MIMO检测。该问题是由于最近在大规模MIMO系统中采用粗量化的兴趣而引起的,这是缩小硬件复杂性和能耗的有效方法。经典的MIMO检测技术考虑了未定量的观察结果,其中许多不适用于单位MIMO案例。我们使用称为同型优化的策略为一位ML MIMO检测问题开发了一种新的非凸优化算法。这个想法是将ML问题转换为一系列近似问题的顺序,从易于(凸)到硬性(接近ML),每个问题都是对先前的逐渐修改。然后,我们的尝试是迭代地追踪这些近似问题的解决方案路径。该同质算法非常适合深入展开的应用,这是一种最近流行的方法,用于将某些基于模型的算法转换为数据驱动和增强性能的方法。尽管我们最初的重点是一位MIMO检测,但该提出的技术也自然适用于经典的非量化MIMO检测。我们进行了广泛的模拟,并表明,与许多最先进的算法相比,提出的同质算法都不深和深度算法具有令人满意的比特概率性能。此外,深层同型算法具有较低的计算复杂性。

In this paper we consider maximum-likelihood (ML) MIMO detection under one-bit quantized observations and binary symbol constellations. This problem is motivated by the recent interest in adopting coarse quantization in massive MIMO systems--as an effective way to scale down the hardware complexity and energy consumption. Classical MIMO detection techniques consider unquantized observations, and many of them are not applicable to the one-bit MIMO case. We develop a new non-convex optimization algorithm for the one-bit ML MIMO detection problem, using a strategy called homotopy optimization. The idea is to transform the ML problem into a sequence of approximate problems, from easy (convex) to hard (close to ML), and with each problem being a gradual modification of its previous. Then, our attempt is to iteratively trace the solution path of these approximate problems. This homotopy algorithm is well suited to the application of deep unfolding, a recently popular approach for turning certain model-based algorithms into data-driven, and performance enhanced, ones. While our initial focus is on one-bit MIMO detection, the proposed technique also applies naturally to the classical unquantized MIMO detection. We performed extensive simulations and show that the proposed homotopy algorithms, both non-deep and deep, have satisfactory bit-error probability performance compared to many state-of-the-art algorithms. Also, the deep homotopy algorithm has attractively low computational complexity.

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