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Low-rank tensor integration for Gaussian filtering of continuous time nonlinear systems

机译:低秩张量积分用于连续时间非线性系统的高斯滤波

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Integration-based Gaussian filters such as un-scented, cubature, and Gauss-Hermite filters are effective ways to assimilate data and models within nonlinear systems. Traditionally, these filters have only been applicable for systems with a handful of states due to stability and scalability issues. In this paper, we present a new integration method for scaling quadrature-based filters to higher dimensions. Our approach begins by decomposing the dynamics and observation models into separated, low-rank tensor formats. Once in low-rank tensor format, adaptive integration techniques may be used to efficiently propagate the mean and covariance of the distribution of the system state with computational complexity that is polynomial in dimension and rank. Simulation results are shown on nonlinear chaotic systems with 20 state variables.
机译:基于积分的高斯滤波器,例如无味,培养皿和高斯-赫尔姆特滤波器,是在非线性系统中吸收数据和模型的有效方法。传统上,由于稳定​​性和可伸缩性问题,这些过滤器仅适用于状态很少的系统。在本文中,我们提出了一种新的集成方法,用于将基于正交的滤波器缩放到更高的尺寸。我们的方法开始于将动力学和观察模型分解为分离的低秩张量格式。一旦处于低秩张量格式,自适应积分技术就可以有效地传播系统状态分布的均值和协方差,其计算复杂度在维度和秩上是多项式。在具有20个状态变量的非线性混沌系统上显示了仿真结果。

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