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Spectral analysis of atmospheric composition: application to surface ozone model-measurement comparisons

机译:大气成分的光谱分析:在地表臭氧模型测量比较中的应用

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Models of atmospheric composition play an essential role in our scientific understanding of atmospheric processes and in providing policy strategies to deal with societally relevant problems such as climate change, air quality, and ecosystem degradation. The fidelity of these models needs to be assessed against observations to ensure that errors in model formulations are found and that model limitations are understood. A range of approaches are necessary for these comparisons. Here, we apply a spectral analysis methodology for this comparison. We use the Lomb-Scargle periodogram, a method similar to a Fourier transform, but better suited to deal with the gapped data sets typical of observational data. We apply this methodology to long-term hourly ozone observations and the equivalent model (GEOS-Chem) output. We show that the spectrally transformed observational data show a distinct power spectrum with regimes indicative of meteorological processes (weather, macroweather) and specific peaks observed at the daily and annual timescales together with corresponding harmonic peaks at one-half, one-third, etc., of these frequencies. Model output shows corresponding features. A comparison between the amplitude and phase of these peaks introduces a new comparison methodology between model and measurements. We focus on the amplitude and phase of diurnal and seasonal cycles and present observational/model comparisons and discuss model performance. We find large biases notably for the seasonal cycle in the mid-latitude Northern Hemisphere where the amplitudes are generally overestimated by up to 16 ppbv, and phases are too late on the order of 1-5 months. This spectral methodology can be applied to a range of model-measurement applications and is highly suitable for Multimodel Intercomparison Projects (MIPs).
机译:大气成分模型在我们对大气过程的科学理解以及提供政策策略以应对与社会相关的问题(例如气候变化,空气质量和生态系统退化)方面起着至关重要的作用。这些模型的保真度需要根据观察结果进行评估,以确保发现模型公式中的错误并理解模型的局限性。这些比较需要多种方法。在这里,我们将光谱分析方法用于此比较。我们使用Lomb-Scargle周期图,该方法类似于傅立叶变换,但更适合处理典型的观测数据的空白数据集。我们将此方法应用于每小时的长期臭氧观测和等效模型(GEOS-Chem)的输出。我们显示,经频谱转换的观测数据显示出不同的功率谱,其中指示气象过程(天气,宏观天气)的体制和在每日和每年的时间尺度观察到的特定峰值以及相应的谐波峰值分别为一半,三分之一等。在这些频率中。模型输出显示相应的功能。这些峰的幅度和相位之间的比较引入了模型和测量之间的新比较方法。我们关注昼夜和季节周期的振幅和相位,并提出观测/模型比较并讨论模型性能。我们发现北半球中纬度地区的季节性周期存在较大偏差,在该季节中,振幅通常被高估了高达16 ppbv,相位太晚了大约1-5个月。这种频谱方法可以应用于各种模型测量应用,并且非常适合于多模型比对项目(MIP)。

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