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@ARTICLE{Chang:905407,
author = {Chang, Kai-Lan and Schultz, Martin and Lan, Xin and
McClure-Begley, Audra and Petropavlovskikh, Irina and Xu,
Xiaobin and Ziemke, Jerald R.},
title = {{T}rend detection of atmospheric time series},
journal = {Elementa},
volume = {9},
number = {1},
issn = {2325-1026},
address = {Washington, DC},
publisher = {BioOne},
reportid = {FZJ-2022-00659},
pages = {00035},
year = {2021},
abstract = {This paper is aimed at atmospheric scientists without
formal training in statistical theory. Its goal is to (1)
provide a critical review of the rationale for trend
analysis of the time series typically encountered in the
field of atmospheric chemistry, (2) describe a range of
trend-detection methods, and (3) demonstrate effective means
of conveying the results to a general audience. Trend
detections in atmospheric chemical composition data are
often challenged by a variety of sources of uncertainty,
which often behave differently to other environmental
phenomena such as temperature, precipitation rate, or stream
flow, and may require specific methods depending on the
science questions to be addressed. Some sources of
uncertainty can be explicitly included in the model
specification, such as autocorrelation and seasonality, but
some inherent uncertainties are difficult to quantify, such
as data heterogeneity and measurement uncertainty due to the
combined effect of short and long term natural variability,
instrumental stability, and aggregation of data from sparse
sampling frequency. Failure to account for these
uncertainties might result in an inappropriate inference of
the trends and their estimation errors. On the other hand,
the variation in extreme events might be interesting for
different scientific questions, for example, the frequency
of extremely high surface ozone events and their relevance
to human health. In this study we aim to (1) review trend
detection methods for addressing different levels of data
complexity in different chemical species, (2) demonstrate
that the incorporation of scientifically interpretable
covariates can outperform pure numerical curve fitting
techniques in terms of uncertainty reduction and improved
predictability, (3) illustrate the study of trends based on
extreme quantiles that can provide insight beyond standard
mean or median based trend estimates, and (4) present an
advanced method of quantifying regional trends based on the
inter-site correlations of multisite data. All
demonstrations are based on time series of observed trace
gases relevant to atmospheric chemistry, but the methods can
be applied to other environmental data sets.},
cin = {JSC},
ddc = {550},
cid = {I:(DE-Juel1)JSC-20090406},
pnm = {5111 - Domain-Specific Simulation $\&$ Data Life Cycle Labs
(SDLs) and Research Groups (POF4-511) / Earth System Data
Exploration (ESDE)},
pid = {G:(DE-HGF)POF4-5111 / G:(DE-Juel-1)ESDE},
typ = {PUB:(DE-HGF)16},
UT = {WOS:000740665000001},
doi = {10.1525/elementa.2021.00035},
url = {https://juser.fz-juelich.de/record/905407},
}