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Three Natural Computation methods for joint channel estimation and symbol detection in multiuser communications

机译:多用户通信中用于联合信道估计和符号检测的三种自然计算方法

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This paper studies three of the most important optimization algorithms belonging to Natural Computation (NC): genetic algorithm (GA), tabu search (TS) and simulated quenching (SQ). A concise overview of these methods, including their fundamentals, drawbacks and comparison, is described in the first half of the paper. Our work is particularized and focused on a specific application: joint channel estimation and symbol detection in a Direct-Sequence/Code-Division Multiple-Access (DS/CDMA) multiuser communications scenario; therefore, its channel model is described and the three methods are explained and particularized for solving this. Important issues such as suboptimal convergence, cycling search or control of the population diversity have deserved special attention. Several numerical simulations analyze the performance of these three methods, showing, as well, comparative results with well-known classical algorithms such as the Minimum Mean Square Error estimator (MMSE), the Matched Filter (MF) or Radial Basis Function (RBF)-based detection schemes. As a consequence, the three proposed methods would allow transmission at higher data rates over channels under more severe fading and interference conditions. Simulations show that our proposals require less computational load in most cases. For instance, the proposed GA saves about 73% of time with respect to the standard GA. Besides, when the number of active users doubles from 10 to 20, the complexity of the proposed GA increases by a factor of 8.33, in contrast to 32 for the optimum maximum likelihood detector. The load of TS and SQ is around 15-25% higher than that of the proposed GA. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文研究了属于自然计算(NC)的三种最重要的优化算法:遗传算法(GA),禁忌搜索(TS)和模拟淬灭(SQ)。本文的上半部分对这些方法进行了简要概述,包括它们的基本原理,缺点和比较。我们的工作专门针对特定应用:在直接序列/码分多址(DS / CDMA)多用户通信场景中的联合信道估计和符号检测;因此,描述了它的信道模型,并解释和具体说明了解决该问题的三种方法。诸如次优收敛,循环搜索或种群多样性控制等重要问题值得特别关注。若干数值模拟分析了这三种方法的性能,并且还显示了与众所周知的经典算法(例如最小均方误差估计器(MMSE),匹配滤波器(MF)或径向基函数(RBF))的比较结果-基于检测方案。结果,三种提出的方​​法将允许在更严重的衰落和干扰条件下以更高的数据速率在信道上进行传输。仿真表明,在大多数情况下,我们的建议所需的计算量较少。例如,相对于标准GA,拟议的GA可节省约73%的时间。此外,当活动用户的数量从10翻倍到20时,拟议GA的复杂度增加了8.33倍,而最佳最大似然检测器的复杂度则为32倍。 TS和SQ的负载比拟议的GA负载高约15-25%。 (C)2016 Elsevier B.V.保留所有权利。

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