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Iterative statistical linear regression for Gaussian smoothing in continuous-time non-linear stochastic dynamic systems

机译:连续时间非线性随机动力系统中用于高斯平滑的迭代统计线性回归

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This paper considers approximate smoothing for discretely observed non-linear stochastic differential equations. The problem is tackled by developing methods for linearising stochastic differential equations with respect to an arbitrary Gaussian process. Two methods are developed based on (1) taking the limit of statistical linear regression of the discretised process and (2) minimising an upper bound to a cost functional. Their difference is manifested in the diffusion of the approximate processes. This in turn gives novel derivations of pre-existing Gaussian smoothers when Method I is used and a new class of Gaussian smoothers when Method 2 is used. Furthermore, based on the aforementioned development the iterative Gaussian smoothers in discrete-time are generalised to the continuous-time setting by iteratively re-linearising the stochastic differential equation with respect to the current Gaussian process approximation to the smoothed process. The method is verified in two challenging tracking problems, a reentry problem and a radar tracked coordinated turn model with state dependent diffusion. The results show that the method has competitive estimation accuracy with state-of-the-art smoothers. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文考虑了离散观测的非线性随机微分方程的近似平滑。通过开发针对任意高斯过程线性化随机微分方程的方法解决了该问题。基于(1)限制离散过程的统计线性回归的极限以及(2)最小化成本函数的上限,开发了两种方法。它们的差异体现在近似过程的扩散上。当使用方法I时,这反过来给出了预先存在的高斯平滑器的新颖派生;使用方法2时,这又给出了新一类的高斯平滑器。此外,基于上述发展,通过相对于平滑过程的当前高斯过程近似地将随机微分方程迭代地重新线性化,将离散时间的迭代高斯平滑器推广到连续时间设置。该方法在两个具有挑战性的跟踪问题,再入问题和具有状态依赖扩散的雷达跟踪协调转弯模型中得到了验证。结果表明,该方法与最新的平滑器相比具有竞争力的估计精度。 (C)2019 Elsevier B.V.保留所有权利。

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