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Machine learning informed predictor importance measures of environmental parameters in maritime optical turbulence

机译:机器学习明智的预测措施在海洋光湍流中的环境参数

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摘要

Prediction of the index of refraction structure constant C-n(2) in the low-altitude maritime environment is challenging. To improve predictive models, deeper understanding of the relationships between environmental parameters and optical turbulence is required. To that end, a robust data set of C-n(2) as well as numerous meteorological parameters were collected over a period of approximately 15 months along the Chesapeake Bay adjacent to the Severn River in Annapolis, Maryland. The goal was to derive new insights into the physical relationships affecting optical turbulence in the near-maritime environment. Using data-driven machine learning feature selection approaches, the relative importance of 12 distinct, measurable environmental parameters was analyzed and evaluated. Random forest nodal purity analysis was the primary machine learning approach to relative importance determination. The relative feature importance results indicated that air temperature and pressure were important parameters in predicting C-n(2) in the maritime environment. In addition, the relative importance findings suggest that the air-water temperature difference, temporal hour weight, and time of year, as measured through seasonality, have strong associations with C-n(2) and could be included to improve model prediction accuracy. (C) 2020 Optical Society of America
机译:在低空海洋环境中预测折射结构恒定C-N(2)的常数C-N(2)是具有挑战性的。为了改善预测模型,需要更深入地理解环境参数和光学湍流之间的关系。为此,在Chesapeake海湾沿着马里兰州安纳波利斯的Severn River邻近的Chesapeake海湾,收集了一种强大的C-N(2)和许多气象参数的数据集。目标是导出新的见解,进入影响近海环境中光学湍流的物理关系。使用数据驱动的机器学习特征选择方法,分析和评估了12个不同可测量的环境参数的相对重要性。随机森林节头纯度分析是相对重要性确定的主要机器学习方法。相对特征重要性结果表明,空气温度和压力是预测海洋环境中C-N(2)的重要参数。此外,相对重要的研究结果表明,通过季节性度测量的空气水温差,时间重量和时间与C-N(2)具有强大的关联,可以包括在内,以提高模型预测准确性。 (c)2020美国光学学会

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  • 来源
    《Applied optics》 |2020年第21期|共11页
  • 作者单位

    US Naval Acad Mech Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

    US Naval Acad Mech Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

    US Naval Acad Mech Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

    US Naval Acad Elect &

    Comp Engn Dept 1 Wilson Rd Annapolis MD 21402 USA;

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  • 正文语种 eng
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