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Bayesian quadrature in nonlinear filtering

机译:非线性滤波中的贝叶斯正交

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The paper deals with the state estimation of nonlinear stochastic discrete-time systems by means of quadrature-based filtering algorithms. The algorithms use quadrature to approximate the moments given by integrals. The aim is at evaluation of the integral by Bayesian quadrature. The Bayesian quadrature perceives the integral itself as a random variable, on which inference is to be performed by conditioning on the function evaluations. Advantage of this approach is that in addition to the value of the integral, the variance of the integral is also obtained. In this paper, we improve estimation of covariances in quadrature-based filtering algorithms by taking into account the integral variance. The proposed modifications are applied to the Gauss-Hermite Kalman filter and the unscented Kalman filter algorithms. Finally, the performance of the modified filters is compared with the unmodified versions in numerical simulations. The modified versions of the filters exhibit significantly improved estimate credibility and a comparable root-mean-square error.
机译:本文利用基于正交的滤波算法处理非线性随机离散时间系统的状态估计。该算法使用正交近似积分给出的矩。目的是通过贝叶斯正交求积分。贝叶斯正交将积分本身视为一个随机变量,在该变量上将通过对函数求值进行条件化来进行推断。该方法的优点在于,除了积分的值之外,还获得了积分的方差。在本文中,我们通过考虑积分方差来改进基于正交的滤波算法中协方差的估计。拟议的修改应用于高斯-赫尔姆特卡尔曼滤波器和无味卡尔曼滤波器算法。最后,在数值模拟中将修改后的滤波器的性能与未修改的版本进行比较。过滤器的修改版本显示出显着提高的估计可信度和可比的均方根误差。

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