Modeling and identification of adaptive optics systems to satisfy distributed Kalman filter model structural constraints

Jesse Cranney, J. Doná, P. Piatrou, F. Rigaut, V. Korkiakoski
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引用次数: 3

Abstract

Turbulence estimation in ground based telescopes as part of the Adaptive Optics (AO) control loop is inherently high-complexity. Even in smaller telescopes such as the EOS 1.8m telescope at Mt Stromlo Observatory, Canberra, closed-loop control systems are required to operate in the order of kHz with hundreds, if not thousands of internal states. Typical Matrix Vector Multiply (MVM) control calculations grow in computational demand to the order of N2. The Distributed Kalman Filter (DKF) proposed by Massioni et al [1] when being performed in the Fourier Domain allows the computational cost to scale as N log N [2], provided that the state space model is shift-invariant in its basis. In this paper we develop a procedure for the modeling and identification of a dynamic shift-invariant turbulence model that does not require prior knowledge of the layers velocities and turbulence profile, while satisfying the structural requirements of the DKF.
满足分布式卡尔曼滤波模型结构约束的自适应光学系统建模与辨识
作为自适应光学(AO)控制回路的一部分,地面望远镜湍流估计具有固有的高复杂性。即使在较小的望远镜中,如堪培拉斯特罗姆洛山天文台的EOS 1.8米望远镜,闭环控制系统也需要在数百甚至数千个内部状态下以千赫的顺序运行。典型的矩阵向量乘法(MVM)控制计算的计算量增长到N2的数量级。masasoni等[1]提出的分布式卡尔曼滤波器(Distributed Kalman Filter, DKF)在傅里叶域中执行时,只要状态空间模型在其基础上是移位不变的,则计算成本可以缩放为N log N[2]。在本文中,我们开发了一个动态移位不变湍流模型的建模和识别程序,该模型不需要预先了解层速度和湍流剖面,同时满足DKF的结构要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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