非最小相位FIR系统的峰度盲辨识

M. Boumahdi, J. Lacoume
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This approach does not provide a complete statistical description. It only allows to identify minimum phase, maximum phase or zero phase system. Recently Higher order statistics (HOS) than two (multicorrelation or polyspectrum) ($1) have received the attention of the statistics signal processing, and theory literature, for processing non-gaussian linear or non-linear processes. For gaussian processes all their HOS are identically zero. Furthermore, all odd order statistics are identically zero for processes with symmetric Probability Density Function (PDF), that is why we choose to use fourthorder statistics. The use of HOS in time domain using parametric approach based on AR, MA, or ARMA model, has provided different solutions to non-minimum phase blind identification problem (92). 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引用次数: 4

摘要

本文提出了一种用移动平均模型估计非最小相位有限脉冲响应(FIR)系统的方法。它基于最大峰度性质。根据输出系统的二阶统计量估计出谱等效最小相位滤波器。峰度允许我们首先从其SEMP滤波器的零点定位相关传递函数的零点,然后估计MA模型的真实阶数。在模拟地震数据上,我们将该方法与Gianakis和Mendel算法以及Tugnait算法进行了比较。结果表明,该方法对复杂工艺条件具有较好的鲁棒性。经典的解决线性时不变系统盲辨识问题的方法仅使用二阶统计量(自压缩或谱)。这种方法不提供完整的统计描述。它只允许识别最小相位、最大相位或零相位系统。近年来,高阶统计量(HOS)在处理非高斯线性或非线性过程方面受到了统计信号处理和理论文献的关注。对于高斯过程,它们所有的HOS都等于零。此外,对于具有对称概率密度函数(PDF)的过程,所有奇阶统计量都等于零,这就是我们选择使用四阶统计量的原因。基于AR、MA或ARMA模型的参数化方法在时域中使用HOS,为非最小相位盲识别问题提供了不同的解决方案(92)。为了识别有限脉冲响应(FIR)系统,我们的目的是使用二阶统计量,谱等效最小相位(SEMP)系统进行估计,并适当地使用最大峰度来恢复真实系统(03)。对于给定的MA阶数,我们比较了Gianakis-Mendel算法和Tugnait算法。在硬条件下:数据长度短,模MA阶高(54.1),对模拟地震数据进行了比较。使用相同的数据,我们展示了该方法估计真阶的能力(94.2)。1)高阶统计量对于随机变量的居屋值的描述基本上是用累积量来实现的。让我们用(Xl,…), X,,) n个实值随机变量,它们的m阶交积量可由它们的第二个特征函数的泰勒级数展开定义为:
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Blind Identification of Non-minimum Phase FIR Systems Using the Kurtosis
In this paper we present a method to estimate nonminimum phase finite impulse response (FIR) system, using Moving-Average (MA) model. It is based on maximum kurtosis properties. The spectrally equivalent minimum phase (SEMP) filter is estimated from second order statistics of the output system. The kurtosis allow us first to localise the zeros of the associated transfer_ function from the zeros of its SEMP filter, then to estimate the true order of the MA model. On simulated seismic data we compare the proposed method to Gianakis and Mendel's algorithm and Tugnait's algorithm. The results obtained confm the robustness of the method to hard conditions of process. INTRODUCTION The classical approach to solve the problem of blind identification of linear time invariant system only uses second order statistics (autocomelation or spectrum). This approach does not provide a complete statistical description. It only allows to identify minimum phase, maximum phase or zero phase system. Recently Higher order statistics (HOS) than two (multicorrelation or polyspectrum) ($1) have received the attention of the statistics signal processing, and theory literature, for processing non-gaussian linear or non-linear processes. For gaussian processes all their HOS are identically zero. Furthermore, all odd order statistics are identically zero for processes with symmetric Probability Density Function (PDF), that is why we choose to use fourthorder statistics. The use of HOS in time domain using parametric approach based on AR, MA, or ARMA model, has provided different solutions to non-minimum phase blind identification problem (92). To identify finite impulse response (FIR) system, our purpose is to estimate using second order statistics, the spectrally equivalent minimum phase (SEMP) systcm, and using the maximum kurtosis properly to recover the true system (03). For given order of the MA, we compare the method lo Gianakis-Mendel's algorithm and Tugnait's algorithm. This comparison is made on simulated seismic dah, with hard condition : short data Icngth and high order of die MA (54.1). Using the same data we show the capacity of the method to estimate the true order (94.2). 1) HIGH ORDER STATISTICS The description of HOS for random variables is essentially made using the cumulants. Let us take ( Xl , . . , X,, ) n-real valued random variable, their crosscumulants of order "m" can be defined from the Taylor series expansion of their second characteristic function by:
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