论文标题
部分可观测时空混沌系统的无模型预测
Battle of the Predictive Wavefront Controls: Comparing Data and Model-Driven Predictive Control for High Contrast Imaging
论文作者
论文摘要
基于地面的高对比度系外行星成像需要最先进的自适应光学(AO)系统,以便检测出更明亮的宿主星星旁边的极度微弱的行星。 For such extreme AO systems (with high actuator count deformable mirrors over a small field of view), the lag time of the correction (which can impact our system by the amount the wavefront has changed by the time the system is able to apply the correction) which can be anywhere from ~1-5 milliseconds, can cause wavefront errors on spatial scales that lead to speckles at small angular separations from the central star in the final science image.纠正这些畸变的一种途径是预测控制,其中以前的波前信息用于预测单一延迟时间中波前的未来状态,并且该预测状态被用作使用可变形镜的校正。在这里,我们考虑了两种用于预测控制的方法:使用经验正交函数和物理动机的预测傅立叶控制的数据驱动预测。这些方法的性能和鲁棒性先前尚未并排比较。在本文中,我们通过将这些预测变量应用于模拟大气和天上的遥测方法来比较这些预测因子,以调查其性能差异的情况,包括在不同的风速下测试它们,C_N^2个配置文件和时间滞后。我们还讨论了在圣克鲁斯极限AO实验室(SEAL)测试台上测试这两种算法的未来计划。
Ground-based high contrast exoplanet imaging requires state-of-the-art adaptive optics (AO) systems in order to detect extremely faint planets next to their brighter host stars. For such extreme AO systems (with high actuator count deformable mirrors over a small field of view), the lag time of the correction (which can impact our system by the amount the wavefront has changed by the time the system is able to apply the correction) which can be anywhere from ~1-5 milliseconds, can cause wavefront errors on spatial scales that lead to speckles at small angular separations from the central star in the final science image. One avenue for correcting these aberrations is predictive control, wherein previous wavefront information is used to predict the future state of the wavefront in one-system-lag's time, and this predicted state is applied as a correction with a deformable mirror. Here, we consider two methods for predictive control: data-driven prediction using empirical orthogonal functions and the physically-motivated predictive Fourier control. The performance and robustness of these methods have not previously been compared side-by-side. In this paper, we compare these predictors by applying them as post-facto methods to simulated atmospheres and on-sky telemetry, to investigate the circumstances in which their performance differs, including testing them under different wind speeds, C_n^2 profiles, and time lags. We also discuss future plans for testing both algorithms on the Santa Cruz Extreme AO Laboratory (SEAL) testbed.