论文标题
使用机器学习技术在短时间内的光学湍流预测
Optical turbulence forecast over short timescales using machine learning techniques
论文作者
论文摘要
与地面天文学相关的光学湍流和大气参数的预测正成为望远镜计划和AO工具在几种主要望远镜中优化的重要目标。这种详细且准确的预测通常是通过数值大气模型进行的。最近,还使用基于自动进度方法的技术提供了短期预测(提前几个小时)(ALTA项目),这是旨在提高预测准确性的策略的一部分。已经证明,到目前为止,这种技术能够实现前所未有的表演。这种短期预测利用了数值模型的预测和实时观察结果。近年来,机器学习(ML)技术也开始用于提供大气和湍流预测。初步结果表明,对于自回归方法甚至通过持久性预测,准确性并没有真正具有竞争力。该技术可能适用于大气模型。因此,有趣的是研究其性能和特征的主要特征(也是因为有大量算法可能可以访问),以了解到目前为止取得的结果是否可以使用ML进一步改善。在这项研究中,我们将纯机器学习应用于短期预测(1-2小时)的星形气候和其他大气参数上方。
Forecast of optical turbulence and atmospheric parameters relevant for ground-based astronomy is becoming an important goal for telescope planning and AO instruments optimization in several major telescope. Such detailed and accurate forecast is typically performed with numerical atmospheric models. Recently short-term forecasts (a few hours in advance) are also being provided (ALTA project) using a technique based on an autoregression approach, as part of a strategy that aims to increase the forecast accuracy. It has been proved that such a technique is able to achieve unprecedented performances so far. Such short-term predictions make use of the numerical model forecast and real-time observations. In recent years machine learning (ML) techniques also started to be used to provide an atmospheric and turbulence forecast. Preliminary results indicate however an accuracy not really competitive with respect to the autoregressive method or even prediction by persistence. This technique might be applicable joint to atmospheric model. It is therefore interesting to investigate the main features of their performances and characteristics (also because there is a great number of algorithms potentially accessible) to understand if results achieved so far can be further improved using ML. In this study we focus on a purely machine learning application to short term forecast (1-2 hours) of astroclimatic and other atmospheric parameters above VLT.