On-line optimal design of process noise covariance in nonlinear Kalman Filters: A hemodynamic model application

Mahmoud K. Madi, F. Karameh
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引用次数: 1

Abstract

The Kalman Filter (KF) is a powerful state estimation technique developed for linear time-varying systems and has recently extended for estimating nonlinear time varying dynamical systems. However, a major challenge for this technique is the choice of the tuning filter parameters that often necessitates a long and tedious process, particularly for large nonlinear systems. In the present work, we propose a new method based on Adaptive Design Optimization (ADO) method in which the tuning parameters are autonomous designed, within the forward Kalman pass, based on sensitivity analysis of the model. The method is applied for the model inversion in a hemodynamic model for which the hidden states (hemodynamic variables) along with unknown neuronal activity (NA) input are estimated based on simulated noisy BOLD signal observations. The proposed approach is demonstrated to produce more confident estimates and better convergence without the need of an iterative tuning process from the designer.
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非线性卡尔曼滤波器中过程噪声协方差的在线优化设计:一个血流动力学模型的应用
卡尔曼滤波(KF)是一种用于线性时变系统的强大状态估计技术,近年来已扩展到估计非线性时变动力系统。然而,该技术的一个主要挑战是选择调谐滤波器参数,这通常需要一个漫长而繁琐的过程,特别是对于大型非线性系统。在本工作中,我们提出了一种基于自适应设计优化(ADO)方法的新方法,该方法基于模型的灵敏度分析,在前向卡尔曼通道内自主设计调谐参数。该方法应用于血流动力学模型的模型反演,该模型基于模拟的有噪声BOLD信号观测估计隐含状态(血流动力学变量)和未知神经元活动(NA)输入。所提出的方法被证明可以产生更有信心的估计和更好的收敛性,而不需要设计人员的迭代调整过程。
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