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利用统计插补方法填补长期太阳紫外线监测中的数据空白。

Filling data gaps in long-term solar UV monitoring by statistical imputation methods.

作者信息

Heinzl Felix, Lorenz Sebastian, Scholz-Kreisel Peter, Weiskopf Daniela

机构信息

Effects and Risks of Ionising and Non-Ionising Radiation, Federal Office for Radiation Protection, Ingolstaedter Landstr. 1, Oberschleissheim, 85764, Germany.

出版信息

Photochem Photobiol Sci. 2024 Jul;23(7):1265-1278. doi: 10.1007/s43630-024-00593-8. Epub 2024 May 24.

DOI:10.1007/s43630-024-00593-8
PMID:38789913
Abstract

Knowledge of long-term time trends of solar ultraviolet (UV) radiation on ground level is of high scientific interest. For this purpose, precise measurements over a long time are necessary. One of the challenges solar UV monitoring faces is the permanent and gap-free data collection over several decades. Data gaps hamper the formation and comparison of monthly or annual means, and, in the worst case, lead to incorrect conclusions in further data evaluation and trend analysis of UV data. For estimating data to fill gaps in long-term UV data series (daily radiant exposure and highest daily irradiance), we developed three statistical imputation methods: a model-based imputation, considering actual local solar radiation conditions using predictors correlated to the local UV values in an empirical model; an average-based imputation based on a statistical approach of averaging available local UV measurement data without predictors; and a mixture of these two imputation methods. A detailed validation demonstrates the superiority of the model-based imputation method. The combined method can be considered the best one in practice. Furthermore, it has been shown that the model-based imputation method can be used as an useful tool to identify systematic errors at and between calibration steps in long-term erythemal UV data series.

摘要

了解地面太阳紫外线(UV)辐射的长期时间趋势具有很高的科学价值。为此,需要进行长时间的精确测量。太阳紫外线监测面临的挑战之一是在几十年内进行持续且无间隙的数据收集。数据缺口会妨碍月均值或年均值的形成与比较,在最坏的情况下,会导致紫外线数据进一步评估和趋势分析得出错误结论。为了估计填补长期紫外线数据系列(每日辐射暴露量和每日最高辐照度)中的缺口的数据,我们开发了三种统计插补方法:基于模型的插补,在经验模型中使用与当地紫外线值相关的预测变量来考虑实际当地太阳辐射条件;基于统计方法的基于平均值的插补,对无预测变量的可用当地紫外线测量数据进行平均;以及这两种插补方法的混合。详细的验证证明了基于模型的插补方法的优越性。在实践中,组合方法可被视为最佳方法。此外,研究表明,基于模型的插补方法可作为识别长期红斑紫外线数据系列在校准步骤及步骤之间的系统误差的有用工具。

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本文引用的文献

1
Optimization algorithms as training approach with hybrid deep learning methods to develop an ultraviolet index forecasting model.以优化算法作为训练方法,结合混合深度学习方法来开发紫外线指数预测模型。
Stoch Environ Res Risk Assess. 2022;36(10):3011-3039. doi: 10.1007/s00477-022-02177-3. Epub 2022 Feb 24.
2
Impact of High Solar UV Radiant Exposures in Spring 2020 on SARS-CoV-2 Viral Inactivation in the UK.2020 年春季高太阳紫外线辐射暴露对英国 SARS-CoV-2 病毒失活的影响。
Photochem Photobiol. 2021 May;97(3):542-548. doi: 10.1111/php.13401. Epub 2021 Mar 5.
3
Global Solar UV Index: Australian measurements, forecasts and comparison with the UK.
全球太阳紫外线指数:澳大利亚的测量、预测及与英国的比较
Photochem Photobiol. 2004 Jan;79(1):32-9.