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A Generalized Least Absolute Deviation Method for Parameter Estimation of Autoregressive Signals

机译:自回归信号参数估计的广义最小绝对偏差法

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This paper proposes a generalized least absolute deviation (GLAD) method for parameter estimation of autoregressive (AR) signals under non-Gaussian noise environments. The proposed GLAD method can improve the accuracy of the estimation of the conventional least absolute deviation (LAD) method by minimizing a new cost function with parameter variables and noise error variables. Compared with second- and high-order statistical methods, the proposed GLAD method can obtain robustly an optimal AR parameter estimation without requiring the measurement noise to be Gaussian. Moreover, the proposed GLAD method can be implemented by a cooperative neural network (NN) which is shown to converge globally to the optimal AR parameter estimation within a finite time. Simulation results show that the proposed GLAD method can obtain more accurate estimates than several well-known estimation methods in the presence of different noise distributions.
机译:针对非高斯噪声环境下自回归(AR)信号的参数估计,提出了一种广义最小绝对偏差(GLAD)方法。所提出的GLAD方法可以通过使用参数变量和噪声误差变量最小化新的成本函数,从而提高传统最小绝对偏差(LAD)方法估计的准确性。与二阶和高阶统计方法相比,所提出的GLAD方法可以稳健地获得最佳的AR参数估计,而无需使测量噪声为高斯。而且,所提出的GLAD方法可以通过协作神经网络(NN)来实现,该协作神经网络被显示为在有限时间内全局收敛到最优AR参数估计。仿真结果表明,在存在不同噪声分布的情况下,所提出的GLAD方法比几种众所周知的估计方法可以获得更准确的估计。

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