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Nonlinear least l(p)-norm filters for nonlinear autoregressive alpha-stable processes

机译:非线性最少L(P) - 非线性自回归α稳定过程的滤波器

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The alpha-stable distribution family has received great interest recently, due to its ability to successfully model impulsive data. alpha-stable distributions have found applications in areas such as radar signal processing, audio restoration, financial time series modeling, and image processing. Various works on linear parametric models with alpha-stable innovations have been reported in the literature. However, some recent work has demonstrated that linear models are not in general adequate to capture all characteristics of heavy-tailed data. Moreover, it is known that the optimal minimum dispersion estimator for alpha-stable data is not necessarily linear. Therefore, in this paper, we suggest a shift in the interest to nonlinear parametric models for problems involving alpha-stable distributions. In particular, we study a simple yet analytic nonlinear random process model namely polynomial autoregressive alpha-stable processes. Polynomial autoregression and Volterra filtering have been successful models for some biomedical and seismic signals reflecting their underlying nonlinear generation mechanisms. In this paper, we employ alpha-stable processes instead of classical Gaussian distribution as an innovation sequence and arrive at a model capable of describing asymmetric as well as impulsive characteristics. We provide a number of novel adaptive and block type algorithms for the estimation of model parameters of this class of nonlinear processes efficiently. Simulation results on synthetic data demonstrate clearly the superiority of the novel algorithms to classical techniques. The paper concludes with a discussion of the application areas of the techniques developed in the paper, including impulsive noise suppression, nonlinear system identification, target tracking, and nonlinear channel equalization. (C) 2002 Elsevier Science (USA). [References: 54]
机译:最近,alpha稳定的分销家庭已经获得了很大的利益,因为它能够成功模拟冲动数据。 alpha稳定的分布在雷达信号处理,音频恢复,金融时间序列建模和图像处理等领域中发现了应用。在文献中报道了各种作品,具有alpha稳定的创新的线性参数模型。然而,最近的一些工作表明,线性模型通常足以捕获重型数据的所有特征。此外,已知α稳定数据的最佳最小色散估计器不一定是线性的。因此,在本文中,我们建议对涉及α稳定分布的问题的非线性参数模型的兴趣转变。特别是,我们研究了一个简单的分析非线性随机过程模型,即多项式自回归α稳定过程。多项式自动增加和Volterra滤波对于反映其底层非线性发电机制的一些生物医学和地震信号已经成功模型。在本文中,我们使用α稳定的过程而不是经典高斯分布作为创新序列,并到达能够描述不对称的模型以及脉冲特性。我们提供了许多新颖的自适应和块类型算法,用于有效地估计这类非线性过程的模型参数。合成数据的仿真结果显然明确地证明了新颖算法对经典技术的优越性。本文结束了讨论本文中的技术的应用领域,包括脉冲噪声抑制,非线性系统识别,目标跟踪和非线性信道均衡。 (c)2002年Elsevier Science(美国)。 [参考:54]

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