相位跟踪问题:非线性滤波方法

R. H. Hirpara, S. Sharma
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引用次数: 5

摘要

相位跟踪的概念已经在GPS系统、雷达系统、信号处理和通信系统等方面得到了应用。相位跟踪问题通常被形式化为一个非线性的有噪声的观测方程,其中测量非线性是加入了可加性噪声的正弦波。从动力系统的角度,叙述了测量方程相角的演变过程。因此,我们希望使用两种非线性滤波器从给定的观测中估计相角:(i)扩展卡尔曼滤波器(ii)高斯非线性滤波器。本文针对以Ornstein-Uhlenbeck过程为过程噪声,布朗噪声为观测噪声的相位跟踪滤波模型,开发了两种非线性滤波器。过滤效果是利用相当广泛的数值实验与两组不同的数据进行检验。本文揭示了彩色噪声过程、系统中的随机滤波方法以及控制和通信之间的联系。
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On a phase tracking problem: Non-linear filtering approaches
The concept of phase tracking has found its applications in GPS systems, radar systems, signal processing and communication systems etc. The phase tracking problem is generally formalized as a non-linear noisy observation equation in which the measurement non-linearity is sinusoid added with additive noise. From the dynamical systems' viewpoint, we state the evolution of the phase angle of the measurement equation. As a result of this, we wish to estimate the phase angle from given observations using two non-linear filters: (i) the extended Kalman filter (ii) a Gaussian non-linear filter. This paper develops two non-linear filters for a filtering model for the phase tracking in which the Ornstein-Uhlenbeck process is the process noise and the Brownian noise process is the observation noise. The filter efficacy is examined by utilizing quite extensive numerical experimentations with two different sets of data. This paper unfolds a connection between coloured noise processes, stochastic filtering methods in systems and control and communications.
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