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Suboptimal FIR Filtering of Nonlinear Models in Additive White Gaussian Noise

机译:加性高斯白噪声中非线性模型的次优FIR滤波

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摘要

The first- and second-order extended finite impulse response (EFIR1 and EFIR2, respectively) filters are addressed for suboptimal estimation of nonlinear discrete-time state-space models with additive white Gaussian noise. It is shown that, unlike the extended Kalman filter (EKF) and EFIR2 filter, the EFIR1 one does not require noise statistics and initial errors. Only within a narrow region around actual noise covariances, EFIR filters fall a bit short of EKF and they demonstrate better performance otherwise. It is shown that the optimal averaging interval for EFIR filters can be determined via measurement without a reference model in a learning cycle. We also notice that the second-order approximation can improve the local performance, but it can also deteriorate it. We thus have no recommendations about its use, at least for tracking considered as an example of applications.
机译:针对具有加性高斯白噪声的非线性离散时间状态空间模型的次优估计,针对一阶和二阶扩展有限脉冲响应(分别为EFIR1和EFIR2)滤波器进行了处理。结果表明,与扩展卡尔曼滤波器(EKF)和EFIR2滤波器不同,EFIR1不需要噪声统计信息和初始误差。 EFIR滤波器仅在实际噪声协方差附近的狭窄区域内,比EKF稍差一些,否则它们会表现出更好的性能。结果表明,在学习周期中,无需参考模型即可通过测量确定EFIR滤波器的最佳平均间隔。我们还注意到,二阶近似可以改善局部性能,但也会使其恶化。因此,对于使用它,至少没有将其用作应用示例的跟踪,我们没有任何建议。

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