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Parallelized sigma-point Kalman filtering for structural dynamics

机译:并行sigma-point卡尔曼滤波用于结构动力学

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In this paper, the sigma-point Kalman filter (S-PKF) is adopted to track the state of composite structures undergoing impact-induced delamination. Estimates provided by the S-PKF are obtained through a set of sigma-points, which independently evolve in time according to the system dynamics. Since the number of sigma-points grows proportionally to the number of degrees of freedom of the space-discretized structural system, the S-PKF can become computationally demanding. Starting from the aforementioned independent evolution of the sigma-points, we propose a parallel implementation of the S-PKF within a shared-memory (OpenMP) architecture. Scalability and accuracy issues are eventually discussed.
机译:本文采用sigma-point Kalman滤波器(S-PKF)来跟踪经历冲击诱导分层的复合结构的状态。 S-PKF提供的估计值是通过一组sigma-points获得的,这些sigma-points根据系统动态性随时间独立变化。由于sigma-points的数量与空间离散的结构系统的自由度的数量成比例地增长,因此S-PKF可能在计算上变得非常苛刻。从前面提到的sigma-points的独立演化开始,我们提出在共享内存(OpenMP)架构内并行实现S-PKF。最终讨论了可伸缩性和准确性问题。

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