Blind multiuser data estimation in asynchronous and unequal power DS-SS systems without any prior knowledge of spreading sequences

S. Ghavami, H. Alikhanian, B. Abolhassani, H. Saligheh Rad
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引用次数: 2

Abstract

In this paper, a two phase algorithm is proposed for both blind synchronization and data sequence estimation of all users without any prior knowledge about spreading sequences in asynchronous unequal power multi-user direct sequence spread spectrum (DS-SS) systems. In the first phase, for blind synchronization, an eigenvalue variation (EV) based method is proposed, which uses all estimated eigenvalues related to signal, which are discriminated from noise eigenvalues by a threshold. In this paper, is shown EV to be a powerful tool for blind synchronization in eavesdropping scenarios in which unequal power signals are received from users. In the second phase, for blind data sequence estimation of all users, a variable step-size independent component analysis (ICA) algorithm based on negentropy maximization of active users is proposed using subspace as a preprocessing step. There is no need to know any spreading sequences for data estimation of users. Computer simulations confirm much better performance by the proposed algorithm at the cost of some more complexity compared with that of using only a pure subspace algorithm. Moreover, we compare the performance of the proposed blind synchronization with that of a successive blind synchronization, and we show that the proposed method is much faster.
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异步非等功率DS-SS系统中无先验扩频序列的盲多用户数据估计
针对异步不等功率多用户直接序列扩频(DS-SS)系统中不需要事先知道扩频序列的所有用户,提出了一种两阶段的盲同步和数据序列估计算法。在第一阶段,提出了一种基于特征值变化的盲同步方法,该方法利用与信号相关的所有估计特征值,通过阈值与噪声特征值进行区分;本文的研究表明,在接收到不等功率用户信号的窃听场景中,EV是一种有效的盲同步工具。第二阶段,针对所有用户的盲数据序列估计,以子空间为预处理步骤,提出了一种基于活跃用户负熵最大化的变步长独立分量分析(ICA)算法。对于用户的数据估计,不需要知道任何扩展序列。计算机仿真结果表明,与纯子空间算法相比,该算法性能更好,但复杂度更高。此外,我们将所提出的盲同步方法与连续盲同步方法的性能进行了比较,结果表明所提出的盲同步方法的速度要快得多。
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