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Accurate Smoothing Methods for State Estimation of Continuous-Discrete Nonlinear Dynamic Systems

机译:连续离散非线性动力系统状态估计的精确平滑方法

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摘要

In this note, we extend the accurate continuous-discrete extended-cubature Kalman filter and continuous-discrete cubature Kalman filter to deal with the problem of Bayesian optimal smoothing in nonlinear dynamic systems. The dynamics can be modeled with nonlinear stochastic differential equations (SDEs) and the noise corrupted measurements are obtained at discrete time instants. To be consistent with the literature, the resulting nonlinear smoothers are referred to as the accurate continuous-discrete extended-cubature Kalman smoother and the continuous-discrete cubature Kalman smoother, respectively. We first present two approximation methodologies to solve the SDE encountered in the prediction step of continuous-discrete filter. Then, two types of novel Gaussian approximation smoothing methods are derived based on the fixed-interval Rauch-Tung-Striebel smoother, which computes the smoothing solution according to the stored filtering results. The performances of the proposed smoothing methods are demonstrated in a simulated application and the numerical results show that the newly presented approaches are more flexible and robust than other smoothing algorithms with lower computational cost.
机译:在本说明中,我们扩展了精确的连续离散扩展库尔曼滤波器和连续离散库尔曼滤波器,以解决非线性动力系统中的贝叶斯最优平滑问题。可以使用非线性随机微分方程(SDE)对动力学进行建模,并且可以在离散的时刻获得噪声破坏的测量结果。为了与文献一致,所得的非线性平滑器分别称为精确连续离散扩展库尔曼平滑器和连续离散孵化器卡尔曼平滑器。我们首先提出两种近似方法,以解决连续离散滤波器预测步骤中遇到的SDE。然后,基于固定间隔的Rauch-Tung-Striebel平滑器推导了两种新型的高斯近似平滑方法,该方法根据存储的滤波结果来计算平滑解。仿真结果表明了所提出的平滑方法的性能,数值结果表明,与其他平滑算法相比,新提出的方法具有更高的灵活性和鲁棒性,且计算成本较低。

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