首页> 外文会议>Conference on adaptive optics systems >Remembrance of Phases Past: An Autoregressive Method for Generating Realistic Atmospheres in Simulations
【24h】

Remembrance of Phases Past: An Autoregressive Method for Generating Realistic Atmospheres in Simulations

机译:阶段纪念阶段:一种用于在模拟中产生现实气氛的自回归方法

获取原文

摘要

The advent of expensive, large-aperture telescopes and complex adaptive optics (AO) systems has strengthened the need for detailed simulation of such systems from the top of the atmosphere to control algorithms. The credibility of any simulation is underpinned by the quality of the atmosphere model used for introducing phase variations into the incident photons. Hitherto, simulations which incorporate wind layers have relied upon phase screen generation methods that tax the computation and memory capacities of the platforms on which they run. This places limits on parameters of a simulation, such as exposure time or resolution, thus compromising its utility. As aperture sizes and fields of view increase the problem will only get worse. We present an autoregressive method for evolving atmospheric phase that is efficient in its use of computation resources and allows for variability in the power contained in frozen flow or stochastic components of the atmosphere. Users have the flexibility of generating atmosphere datacubes in advance of runs where memory constraints allow to save on computation time or of computing the phase at each time step for long exposure times. Preliminary tests of model atmospheres generated using this method show power spectral density and rms phase in accordance with established metrics for Kolmogorov models.
机译:昂贵,大孔径望远镜和复杂的自适应光学(AO)系统的出现增强了对从大气层的顶部进行详细仿真,以控制算法。任何模拟的可信度都是由用于将相变的气氛模型的质量产生基础。迄今为止,包含风层的模拟依赖于屏幕生成方法征收征收它们运行的​​平台的计算和存储器能力。这部分限制了模拟的参数,例如曝光时间或分辨率,从而损害其实用程序。随着光圈尺寸和视野增加,问题只会变得更糟。我们提出了一种自动增加的方法,用于演化的大气相,这在其使用计算资源的使用中,并且允许在大气中冷冻流或随机分量中包含的功率的可变性。用户在运行的运行之前具有生成大气数据库的灵活性,其中存储约束允许在计算时间或在每次步骤中计算相位进行长时间的曝光时间来计算相位。使用该方法产生的模型气氛的初步测试显示了根据Kolmogorov模型的既定度量的功率谱密度和RMS相位。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号