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首页> 外文期刊>IEEE Transactions on Acoustics, Speech, and Signal Processing >On the probability density function of the LMS adaptive filter weights
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On the probability density function of the LMS adaptive filter weights

机译:关于LMS自适应滤波器权重的概率密度函数

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The joint probability density function of the weight vector in least-mean-square (LMS) adaptation is studied for Gaussian data models. An exact expression is derived for the characteristic function of the weight vector at time n+1, conditioned on the weight vector at time n. The conditional characteristic function is expanded in a Taylor series and averaged over the unknown weight density to yield a first-order partial differential-difference equation in the unconditioned characteristic function of the weight vector. The equation is approximately solved for small values of the adaption parameter and the weights are shown to be jointly Gaussian with time-varying mean vector and covariance matrix given as the solution to well-known difference equations for the weight vector mean and covariance matrix. The theoretical results are applied to analyzing the use of the weights in detection and time delay estimation. Simulations that support the theoretical results are also presented.
机译:针对高斯数据模型,研究了最小均方(LMS)自适应中权向量的联合概率密度函数。以时间n的权重向量为条件,得出时间n + 1处的权重向量的特征函数的精确表达式。将条件特征函数扩展为泰勒级数,并在未知权重密度上求平均值,以在权重向量的未条件特征函数中产生一阶偏微分方程。对于较小的自适应参数值,近似求解该方程,并且权重与时变均值向量和协方差矩阵一起显示为高斯联合,作为权重向量均值和协方差矩阵的著名差分方程的解。理论结果可用于分析权重在检测和时延估计中的使用。还提供了支持理论结果的仿真。

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