Censored regression system identification based on the least mean M-estimate algorithm

Gen Wang, Haiquan Zhao
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Abstract

Classical adaptive algorithms have good convergence performance in linear regression system identification. However, they will face performance degradation while dealing with censored data since only incomplete information can be obtained. In this paper, the least mean M-estimate algorithm for censored regression (CR-LMM) is proposed for the robust parameter estimation. To compensate for the bias caused by censored observation, the probit regression model is employed to derive the estimated error for constructing the M-estimate cost function. The cost function can expel the adverse impact of the impulsive noise, and it is solved by the unconstrained optimization method. Computer simulations in the impulsive environment are carried out to demonstrate that the proposed CR-LMM algorithm exhibits better convergence performance than the existing algorithms in censored regression system identification scenarios.
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基于最小均值m估计算法的截尾回归系统辨识
经典自适应算法在线性回归系统辨识中具有良好的收敛性能。然而,由于只能获得不完整的信息,它们在处理审查数据时将面临性能下降的问题。本文提出了截短回归的最小均值m估计算法(CR-LMM),用于鲁棒参数估计。为了补偿截尾观测造成的偏差,采用概率回归模型推导估计误差,构造m估计代价函数。成本函数可以排除脉冲噪声的不利影响,并采用无约束优化方法进行求解。在脉冲环境下的计算机仿真结果表明,本文提出的CR-LMM算法在删检回归系统辨识场景下具有比现有算法更好的收敛性能。
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