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Accurate cubature and extended Kalman filtering methods for estimating continuous-time nonlinear stochastic systems with discrete measurements

机译:精确的培养空间和扩展的卡尔曼滤波方法,用于估计具有离散测量的连续时间非线性随机系统

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This paper further advances the idea of accurate Gaussian filtering towards efficient cubature Kalman filters for estimating continuous-time nonlinear stochastic systems with discrete measurements. It implies that the moment differential equations describing evolution of the predicted mean and covariance of the propagated Gaussian density in time are solved accurately, i.e. with negligible error. The latter allows the total error of the cubature Kalman filtering to be reduced significantly and results in a new accurate continuous-discrete cubature Kalman filtering method. At the same time, we revise the earlier developed version of the accurate continuous-discrete extended Kalman filter by amending the involved iteration and relaxing the utilized global error control mechanism. In addition, we build a mixed-type method, which unifies the best features of the accurate continuous-discrete extended and cubature Kalman filters. More precisely, the time updates are done in this state estimator as those in the first filter whereas the measurement updates are conducted with use of the third-degree spherical-radial cubature rule applied for approximating the arisen Gaussian-weighted integrals. All these are examined in severe conditions of tackling a seven-dimensional radar tracking problem, where an aircraft executes a coordinated turn, and compared to the state-of-the-art cubature Kalman filters.
机译:本文进一步将精确的高斯滤波的思想推向有效的库尔曼卡尔曼滤波器,以估计具有离散测量的连续时间非线性随机系统。这意味着描述了预测均值的演化和所传播的高斯密度随时间变化的协方差的矩微分方程可以准确地求解,即误差可忽略不计。后者可以大大减少培养皿卡尔曼滤波的总误差,并导致一种新的精确连续离散的培养皿卡尔曼滤波方法。同时,我们通过修正涉及的迭代并放宽了所使用的全局误差控制机制,修订了精确连续离散扩展卡尔曼滤波器的早期开发版本。此外,我们建立了一种混合类型的方法,该方法统一了精确的连续离散扩展和库尔曼卡尔曼滤波器的最佳功能。更准确地说,在此状态估计器中进行的时间更新与在第一个滤波器中进行的时间更新相同,而测量更新是通过使用三次球面辐射量法则规则进行的,该规则用于近似所产生的高斯加权积分。在应对七维雷达跟踪问题的严酷条件下检查了所有这些问题,其中飞机执行协调的转弯,并与最新的库曼卡尔曼滤波器进行了比较。

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