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Blind System Identification in Noise Using a Dynamic-Based Estimator

机译:使用基于动态的估算器的噪声识别噪声识别

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In this work we consider the problem of blind system identification in noise driven by an independent and identically distributed (i.i.d) non-Gaussian signal generated from a deterministic nonlinear chaotic system. A new estimator for the phase space volume (PSV) which is a dynamic-based property of chaos is derived using the maximum likelihood formulation. This novel estimator of PSV is denoted as the maximum likelihood phase space volume (ML-PSV). The Cramér Rao Lower Bound (CRLB) of the ML-PSV estimator has also been derived. We have shown that the mean square error of the ML-PSV estimate gradually approaches its CRLB asymptotically. An algorithm is formulated that applies the ML-PSV estimator as an objective function in the task of blind system identification of autoregressive (AR) and moving average (MA) models. The proposed technique is shown to improve blind identification performance at low signal-to-noise ratio (SNR) when the system is driven by both chaotic numeric and symbolic signals. The efficiency of our proposed method is compared with conventional blind identification methods through simulations. Our technique is further validated through experimental evaluation based on a software defined radio (SDR). Results show that the ML-PSV method outperforms the existing blind identification methods producing estimates at a low SNR of $le20$ dB.
机译:在这项工作中,我们考虑由独立的非线性混沌系统产生的独立且相同分布的(I.I.D)非高斯信号驱动的盲系统识别问题。使用最大似然配方导出是混沌的基于动态的基于动态的基于混沌的基于动态的新估计器。 PSV的这种新估计表示为最大似然相空间体积(ML-PSV)。也得到了ML-PSV估计器的CramérRAO下限(CRLB)。我们已经表明ML-PSV估计的均方误差逐渐接近其CRLB渐近。制定了将ML-PSV估计器应用于自回归(AR)和移动平均(MA)模型的盲系统识别任务中的目标函数的算法。当系统由混沌数字和符号信号驱动时,所提出的技术被示出为改善低信噪比(SNR)处的盲识别性能。通过模拟将我们提出的方法的效率与常规盲识别方法进行比较。我们的技术通过基于软件定义的无线电(SDR)进行实验评估进一步验证。结果表明,ML-PSV方法优于生长在<内联公式XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink = “http://www.w3.org/1999/xlink”> $ Le20 $ DB。

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