首页> 外文会议>International Symposium on Neural Networks pt.2; 20040819-20040821; Dalian; CN >Performance Analysis of Recurrent Neural Networks Based Blind Adaptive Multiuser Detection in Asynchronous DS-CDMA Systems
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Performance Analysis of Recurrent Neural Networks Based Blind Adaptive Multiuser Detection in Asynchronous DS-CDMA Systems

机译:递归神经网络在异步DS-CDMA系统中基于盲自适应多用户检测的性能分析

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摘要

With dynamics property and highly parallel mechanism, recurrent neural networks (RNN) can effectively implement blind adaptive multiuser detection at the circuit time constant level. In this paper, the RNN based blind adaptive multiuser detection is extended to ubiquitous asynchronous DS-CDMA systems, and the performance of the output signal to interference plus noise ratio, asymptotic multiuser efficiency, computational complexity, operating time, and mismatch of the detector are quantitatively analyzed. With performance analysis and numerical simulations, it is shown that RNN based blind adaptive multiuser detection can converge at the steady quickly and offer significant performance improvement over some existing popular detectors in eliminating multiple access interference and "near-far" resistance.
机译:借助动力学特性和高度并行的机制,递归神经网络(RNN)可以在电路时间常数水平上有效地实现盲自适应多用户检测。本文将基于RNN的盲自适应多用户检测扩展到了普遍存在的异步DS-CDMA系统,并且输出信号的性能与干扰加噪声比,渐近多用户效率,计算复杂度,工作时间以及检测器的失配有关。定量分析。通过性能分析和数值模拟,结果表明基于RNN的盲自适应多用户检测可以快速稳定收敛,并且在消除多址访问干扰和“远近”抗力方面,与某些现有的流行检测器相比,性能显着提高。

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