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Statistical regularization for trend detection: an integrated approach for detecting long-term trends from sparse tropospheric ozone profiles

机译:趋势检测的统计正规化:一种从稀疏的对流层臭氧型材中检测长期趋势的综合方法

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Detecting a tropospheric ozone trend from sparsely sampled ozonesonde profiles (typically once per week) is challenging due to the short-lived anomalies in the time series resulting from ozone's high temporal variability. To enhance trend detection, we have developed a sophisticated statistical approach that utilizes a geoadditive model to assess ozone variability across a time series of vertical profiles. Treating the profile time series as a set of individual time series on discrete pressure surfaces, a class of smoothing spline ANOVA (analysis of variance) models is used for the purpose of jointly modeling multiple correlated time series (on separate pressure surfaces) by their associated seasonal and interannual variabilities. This integrated fit method filters out the unstructured variation through a statistical regularization (i.e., a roughness penalty) by taking advantage of the additional correlated data points available on the pressure surfaces above and below the surface of interest. We have applied this technique to the trend analysis of the vertically correlated time series of tropospheric ozone observations from (1)?IAGOS (In-service Aircraft for a Global Observing System) commercial aircraft profiles above Europe and China throughout 1994–2017 and (2)?NOAA GML's (Global Monitoring Laboratory) ozonesonde records at Hilo, Hawaii, (1982–2018) and Trinidad Head, California (1998–2018). We illustrate the ability of this technique to detect a consistent trend estimate and its effectiveness in reducing the associated uncertainty in the profile data due to the low sampling frequency. We also conducted a sensitivity analysis of frequent IAGOS profiles above Europe (approximately 120 profiles per month) to determine how many profiles in a month are required for reliable long-term trend detection. When ignoring the vertical correlation, we found that a typical sampling strategy (i.e. four profiles per month) might result in 7% of sampled trends falling outside the 2σ uncertainty interval derived from the full dataset with an associated 10% of mean absolute percentage error. Based on a series of sensitivity studies, we determined optimal sampling frequencies for (1)?basic trend detection and (2)?accurate quantification of the trend. When applying the integrated fit method, we find that a typical sampling frequency of four profiles per month is adequate for basic trend detection; however, accurate quantification of the trend requires 14 profiles per month. Accurate trend quantification can be achieved with only 10 profiles per month if a regular sampling frequency is applied. In contrast, the standard separated fit method, which ignores the vertical correlation between pressure surfaces, requires 8 profiles per month for basic trend detection and 18 profiles per month for accurate trend quantification. While our method improves trend detection from sparse datasets, the key to substantially reducing the uncertainty is to increase the sampling frequency.
机译:从稀疏采样的臭氧的臭氧型材(通常每周一次)检测到对流层臭氧趋势是由于臭氧的高度时间变异性的时间序列中的短暂异常而挑战。为了提高趋势检测,我们开发了一种复杂的统计方法,利用Geoadditive模型来评估横跨垂直轮廓序列的臭氧变异性。将轮廓时间序列视为离散压力表面上的一组单独的时间序列,一类平滑样条Anova(方差分析)模型用于通过它们的相关联共同建模多个相关时间序列(在单独的压力表面上)季节性和持续的变量。该集成拟合方法通过利用上方和下方的压力表面上可用的附加相关数据点,通过统计正则化(即,粗糙度惩罚)来滤除非结构化变化。我们已经将这种技术应用于来自(1)的垂直相关时间序列的垂直相关时间序列的趋势分析来自(1)?IAGOS(在全球观测系统的服务飞机上)在欧洲和中国的商用飞机配置文件,在整个1994 - 2017年和(2 )?Noaa GML的(全球监测实验室)HiLo,Hawaii,(1982-2018)和加利福尼亚州特立尼达负责人(1998-2018)。我们说明了这种技术检测到一致趋势估计的能力及其在减少由于低采样频率的简档数据中的相关不确定性的有效性。我们还对欧洲(每月大约120个分布)进行了频繁的IAGOS配置文件的敏感性分析,以确定可靠的长期趋势检测需要一个月内的概况。当忽略垂直相关性时,我们发现典型的采样策略(即每月四个简档)可能导致7%的采样趋势落在从完整数据集中导出的2σ不确定性间隔之外,其中相关的10%的平均绝对百分比误差。基于一系列敏感性研究,我们确定了(1)的最佳采样频率?基本趋势检测和(2)?准确量化趋势。应用综合拟合方法时,我们发现每月四个轮廓的典型采样频率适用于基本趋势检测;但是,对趋势的准确量化每月需要14个分布。如果应用规则采样频率,则每月只有10个简档可以实现精确的趋势量化。相反,忽略压力表面之间的垂直相关性的标准分离拟合方法需要每月8个分布,用于基本趋势检测和每月18个分布,以准确趋势量化。虽然我们的方法从稀疏数据集提高了趋势检测,但基本上减少不确定性的关键是增加采样频率。

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