A pre-whitening with block-bootstrap cross-correlation procedure for temporal alignment of data sampled by eddy covariance systems

IF 3 4区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES Environmental and Ecological Statistics Pub Date : 2024-04-21 DOI:10.1007/s10651-024-00615-9
Vitale Domenico, Fratini Gerardo, Helfter Carol, Hortnagl Lukas, Kohonen Kukka-Maaria, Mammarella Ivan, Nemitz Eiko, Nicolini Giacomo, Rebmann Corinna, Sabbatini Simone, Papale Dario
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Abstract

The eddy covariance (EC) method is a standard micrometeorological technique for monitoring the exchange rate of the main greenhouse gases across the interface between the atmosphere and ecosystems. One of the first EC data processing steps is the temporal alignment of the raw, high frequency measurements collected by the sonic anemometer and gas analyser. While different methods have been proposed and are currently applied, the application of the EC method to trace gases measurements highlighted the difficulty of a correct time lag detection when the fluxes are small in magnitude. Failure to correctly synchronise the time series entails a systematic error on covariance estimates and can introduce large uncertainties and biases in the calculated fluxes. This work aims at overcoming these issues by introducing a new time lag detection procedure based on the assessment of the cross-correlation function (CCF) between variables subject to (i) a pre-whitening based on autoregressive filters and (ii) a resampling technique based on block-bootstrapping. Combining pre-whitening and block-bootstrapping facilitates the assessment of the CCF, enhancing the accuracy of time lag detection between variables with correlation of low order of magnitude (i.e. lower than \(-1\)) and allowing for a proper estimate of the associated uncertainty. We expect the proposed procedure to significantly improve the temporal alignment of the EC time-series measured by two physically separate sensors, and to be particularly beneficial in centralised data processing pipelines of research infrastructures (e.g. the Integrated Carbon Observation System, ICOS-RI) where the use of robust and fully data-driven methods, like the one we propose, constitutes an essential prerequisite.

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用于涡度协方差系统采样数据时间配准的预白化与分块-bootstrap 交叉相关程序
涡度协方差(EC)方法是一种标准的微气象技术,用于监测大气与生态系统界面上主要温室气体的交换率。涡度协方差数据处理的第一步是对声波风速计和气体分析仪收集的原始高频测量数据进行时间校准。虽然已经提出并应用了不同的方法,但在痕量气体测量中应用欧共体方法凸显了在通量较小时正确检测时滞的困难。如果不能正确同步时间序列,就会对协方差估算产生系统误差,并可能在计算的通量中引入较大的不确定性和偏差。这项工作旨在通过引入一种新的时滞检测程序来克服这些问题,该程序基于对变量之间的交叉相关函数(CCF)的评估,并受制于(i)基于自回归滤波器的预白化和(ii)基于块引导的重采样技术。将预白化和分块-引导相结合有助于评估 CCF,提高低量级(即低于 \(-1\))相关变量之间时滞检测的准确性,并允许对相关不确定性进行适当估计。我们希望所提出的程序能够显著改善由两个物理上独立的传感器测量的EC时间序列的时间一致性,并特别有利于研究基础设施(如综合碳观测系统,ICOS-RI)的集中数据处理管道,在这些基础设施中,使用像我们所提出的这种稳健且完全由数据驱动的方法是一个必要的先决条件。
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来源期刊
Environmental and Ecological Statistics
Environmental and Ecological Statistics 环境科学-环境科学
CiteScore
5.90
自引率
2.60%
发文量
27
审稿时长
>36 weeks
期刊介绍: Environmental and Ecological Statistics publishes papers on practical applications of statistics and related quantitative methods to environmental science addressing contemporary issues. Emphasis is on applied mathematical statistics, statistical methodology, and data interpretation and improvement for future use, with a view to advance statistics for environment, ecology and environmental health, and to advance environmental theory and practice using valid statistics. Besides clarity of exposition, a single most important criterion for publication is the appropriateness of the statistical method to the particular environmental problem. The Journal covers all aspects of the collection, analysis, presentation and interpretation of environmental data for research, policy and regulation. The Journal is cross-disciplinary within the context of contemporary environmental issues and the associated statistical tools, concepts and methods. The Journal broadly covers theory and methods, case studies and applications, environmental change and statistical ecology, environmental health statistics and stochastics, and related areas. Special features include invited discussion papers; research communications; technical notes and consultation corner; mini-reviews; letters to the Editor; news, views and announcements; hardware and software reviews; data management etc.
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