首页> 外文会议>Global Telecommunications Conference, 2001. GLOBECOM '01. IEEE >Blind adaptive detection for CDMA systems based on regularized independent component analysis
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Blind adaptive detection for CDMA systems based on regularized independent component analysis

机译:基于正则化独立分量分析的CDMA系统盲自适应检测

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We present a new approach to blind adaptive detection for CDMA systems based on regularized independent component analysis (ICA). Classical ICA algorithms are effective in separating linearly weighted signal mixtures consisting of subGaussian and superGaussian signals. However, they do not incorporate any information of the weighting matrix, in this case, the user's signature sequence into the formulation. This results in underutilization of the information available. To address this difficulty, we propose a new ICA algorithm that combines a contrast function and a regularization functional to integrate the information of the user's signature. A blind adaptive detector based on stochastic gradient optimization of the new cost function is derived. Simulation results show that the new technique provides good interference suppression, fast convergence and low BER performance when compared with other blind detectors.
机译:我们提出了一种基于正则化独立分量分析(ICA)的CDMA系统盲自适应检测的新方法。经典的ICA算法可有效地分离由次高斯和超高斯信号组成的线性加权信号混合。但是,它们没有将权重矩阵的任何信息(在这种情况下是用户的签名序列)合并到公式中。这导致未充分利用可用信息。为了解决此难题,我们提出了一种新的ICA算法,该算法结合了对比函数和正则化函数来整合用户签名的信息。推导了基于随机梯度优化的新代价函数的盲自适应检测器。仿真结果表明,与其他盲检测器相比,该新技术具有良好的干扰抑制,快速收敛和低BER性能。

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