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Fast reconstruction and prediction of frozen flow turbulence based on structured Kalman filtering

机译:基于结构化卡尔曼滤波的冻结流湍流快速重建与预测

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摘要

Efficient and optimal prediction of frozen flow turbulence using the complete observation history of the wavefront sensor is an important issue in adaptive optics for large ground-based telescopes. At least for the sake of error budgeting and algorithm performance, the evaluation of an accurate estimate of the optimal performance of a particular adaptive optics configuration is important. However, due to the large number of grid points, high sampling rates, and the non-rationality of the turbulence power spectral density, the computational complexity of the optimal predictor is huge. This paper shows how a structure in the frozen flow propagation can be exploited to obtain a state-space innovation model with a particular sparsity structure. This sparsity structure enables one to efficiently compute a structured Kalman filter. By simulation it is shown that the performance can be improved and the computational complexity can be reduced in comparison with auto-regressive predictors of low order.
机译:利用波前传感器的完整观测历史记录,有效,最佳地预测冻结流湍流是大型地面望远镜自适应光学系统中的重要问题。至少出于误差预算和算法性能的考虑,对特定自适应光学配置的最佳性能的准确估计的评估非常重要。但是,由于网格点数量多,采样率高以及湍流功率谱密度的不合理性,最佳预测变量的计算复杂度很高。本文展示了如何利用冻结流传播中的结构来获得具有特定稀疏结构的状态空间创新模型。这种稀疏结构使人们可以有效地计算结构化的卡尔曼滤波器。通过仿真表明,与低阶自回归预测器相比,可以提高性能并降低计算复杂度。

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