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Convergence of a ML parameter-estimation algorithm for DS/SS systems in time-varying channels with strong interference

机译:具有强烈干扰的时变信道中DS / SS系统的ML参数估计算法的收敛性

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摘要

An unbiased, maximum-likelihood (ML), channel parameter-estimation algorithm for direct-sequence spread-spectrum systems with strong interference is discussed in this paper. The algorithm includes correcting terms to the extended Kalman filter (EKF) based on the gradient of the negative log-likelihood function of the output of a conventional matched filter. By an asymptotic analysis, the algorithm is shown to determine the actual parameters. A complete implementation of the algorithm is given, and its transient behavior is examined by computer simulations. Results show the ML algorithm, albeit optimal in the sense of unbiased parameter estimation, is less robust than the modified EKF described in the first reference.
机译:本文讨论了具有强干扰的直接序列扩频系统的无偏最大似然(ML)信道参数估计算法。该算法包括基于常规匹配滤波器的输出的负对数似然函数的梯度来校正扩展卡尔曼滤波器(EKF)的项。通过渐近分析,显示了该算法以确定实际参数。给出了该算法的完整实现,并通过计算机仿真检查了其瞬态行为。结果表明,尽管在无偏参数估计的意义上是最佳的,但ML算法比第一个参考文献中描述的改进的EKF鲁棒性较低。

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