Optimal and suboptimal white noise smoothers for nonlinear stochastic systems
来源期刊:中南大学学报(英文版)2013年第3期
论文作者:WANG Xiao-xu(王小旭) PAN Quan(潘泉) LIANG Yan(梁彦) CHENG Yong-mei(程咏梅)
文章页码:655 - 662
Key words:nonlinear stochastic system; white noise smoother; optimal framework; unscented transformation
Abstract: A new approach of smoothing the white noise for nonlinear stochastic system was proposed. Through presenting the Gaussian approximation about the white noise posterior smoothing probability density function, an optimal and unifying white noise smoothing framework was firstly derived on the basis of the existing state smoother. The proposed framework was only formal in the sense that it rarely could be directly used in practice since the model nonlinearity resulted in the intractability and infeasibility of analytically computing the smoothing gain. For this reason, a suboptimal and practical white noise smoother, which is called the unscented white noise smoother (UWNS), was further developed by applying unscented transformation to numerically approximate the smoothing gain. Simulation results show the superior performance of the proposed UWNS approach as compared to the existing extended white noise smoother (EWNS) based on the first-order linearization.
WANG Xiao-xu(王小旭), PAN Quan(潘泉), LIANG Yan(梁彦), CHENG Yong-mei(程咏梅)
(College of Automation, Northwestern Polytechnical University, Xi’an 710072, China)
Abstract:A new approach of smoothing the white noise for nonlinear stochastic system was proposed. Through presenting the Gaussian approximation about the white noise posterior smoothing probability density function, an optimal and unifying white noise smoothing framework was firstly derived on the basis of the existing state smoother. The proposed framework was only formal in the sense that it rarely could be directly used in practice since the model nonlinearity resulted in the intractability and infeasibility of analytically computing the smoothing gain. For this reason, a suboptimal and practical white noise smoother, which is called the unscented white noise smoother (UWNS), was further developed by applying unscented transformation to numerically approximate the smoothing gain. Simulation results show the superior performance of the proposed UWNS approach as compared to the existing extended white noise smoother (EWNS) based on the first-order linearization.
Key words:nonlinear stochastic system; white noise smoother; optimal framework; unscented transformation