Maximizing ozone signals among chemical, meteorological, and climatological variability
The detection of meteorological, chemical, or other signals in modeled or observed air quality data – such as an estimate of a temporal trend in surface ozone data, or an estimate of the mean ozone of a particular region during a particular season – is a critical component of modern atmospheric...
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Copernicus Publications
2018-06-01
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Series: | Atmospheric Chemistry and Physics |
Online Access: | https://www.atmos-chem-phys.net/18/8373/2018/acp-18-8373-2018.pdf |
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language |
English |
format |
Article |
sources |
DOAJ |
author |
B. Brown-Steiner B. Brown-Steiner B. Brown-Steiner N. E. Selin N. E. Selin N. E. Selin R. G. Prinn R. G. Prinn R. G. Prinn E. Monier E. Monier S. Tilmes L. Emmons F. Garcia-Menendez |
spellingShingle |
B. Brown-Steiner B. Brown-Steiner B. Brown-Steiner N. E. Selin N. E. Selin N. E. Selin R. G. Prinn R. G. Prinn R. G. Prinn E. Monier E. Monier S. Tilmes L. Emmons F. Garcia-Menendez Maximizing ozone signals among chemical, meteorological, and climatological variability Atmospheric Chemistry and Physics |
author_facet |
B. Brown-Steiner B. Brown-Steiner B. Brown-Steiner N. E. Selin N. E. Selin N. E. Selin R. G. Prinn R. G. Prinn R. G. Prinn E. Monier E. Monier S. Tilmes L. Emmons F. Garcia-Menendez |
author_sort |
B. Brown-Steiner |
title |
Maximizing ozone signals among chemical, meteorological, and climatological variability |
title_short |
Maximizing ozone signals among chemical, meteorological, and climatological variability |
title_full |
Maximizing ozone signals among chemical, meteorological, and climatological variability |
title_fullStr |
Maximizing ozone signals among chemical, meteorological, and climatological variability |
title_full_unstemmed |
Maximizing ozone signals among chemical, meteorological, and climatological variability |
title_sort |
maximizing ozone signals among chemical, meteorological, and climatological variability |
publisher |
Copernicus Publications |
series |
Atmospheric Chemistry and Physics |
issn |
1680-7316 1680-7324 |
publishDate |
2018-06-01 |
description |
The detection of meteorological, chemical, or other signals in modeled or
observed air quality data – such as an estimate of a temporal trend in
surface ozone data, or an estimate of the mean ozone of a particular region
during a particular season – is a critical component of modern atmospheric
chemistry. However, the magnitude of a surface air quality signal is
generally small compared to the magnitude of the underlying chemical,
meteorological, and climatological variabilities (and their interactions)
that exist both in space and in time, and which include variability in
emissions and surface processes. This can present difficulties for both
policymakers and researchers as they attempt to identify the influence or
signal of climate trends (e.g., any pauses in warming trends), the impact
of enacted emission reductions policies (e.g., United States
NO<sub><i>x</i></sub> State Implementation Plans), or an estimate of the mean
state of highly variable data (e.g., summertime ozone over the northeastern
United States). Here we examine the scale dependence of the variability of
simulated and observed surface ozone data within the United States and the
likelihood that a particular choice of temporal or spatial averaging scales
produce a misleading estimate of a particular ozone signal. Our main
objective is to develop strategies that reduce the likelihood of
overconfidence in simulated ozone estimates. We find that while increasing
the extent of both temporal and spatial averaging can enhance signal
detection capabilities by reducing the noise from variability, a
strategic combination of particular temporal and spatial averaging scales can
maximize signal detection capabilities over much of the continental US. For
signals that are large compared to the meteorological variability (e.g.,
strong emissions reductions), shorter averaging periods and smaller spatial
averaging regions may be sufficient, but for many signals that are smaller
than or comparable in magnitude to the underlying meteorological variability,
we recommend temporal averaging of 10–15 years combined with some level of
spatial averaging (up to several hundred kilometers). If this level of
averaging is not practical (e.g., the signal being examined is at a local
scale), we recommend some exploration of the spatial and temporal variability
to provide context and confidence in the robustness of the result. These
results are consistent between simulated and observed data, as well as within a
single model with different sets of parameters. The strategies selected in
this study are not limited to surface ozone data and could potentially
maximize signal detection capabilities within a broad array of climate and
chemical observations or model output. |
url |
https://www.atmos-chem-phys.net/18/8373/2018/acp-18-8373-2018.pdf |
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doaj-5e55f3e8a16d41cb97be13ebb7ed7e0a2020-11-24T21:37:17ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242018-06-01188373838810.5194/acp-18-8373-2018Maximizing ozone signals among chemical, meteorological, and climatological variabilityB. Brown-Steiner0B. Brown-Steiner1B. Brown-Steiner2N. E. Selin3N. E. Selin4N. E. Selin5R. G. Prinn6R. G. Prinn7R. G. Prinn8E. Monier9E. Monier10S. Tilmes11L. Emmons12F. Garcia-Menendez13Center for Global Change Science, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USAJoint Program on the Science and Policy of Global Change, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USAnow at: Atmospheric and Environmental Research, 131 Hartwell Avenue, Lexington, MA 02421, USAJoint Program on the Science and Policy of Global Change, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USAInstitute for Data, Systems, and Society, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USADepartment of Earth, Atmospheric, and Planetary Sciences, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USACenter for Global Change Science, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USAJoint Program on the Science and Policy of Global Change, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USADepartment of Earth, Atmospheric, and Planetary Sciences, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USACenter for Global Change Science, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USAJoint Program on the Science and Policy of Global Change, Massachusetts Institute of Technology, 77 Massachusetts Ave, Cambridge, MA 02139, USAAtmospheric Chemistry Observations and Modeling Lab, National Center for Atmospheric Research, 3450 Mitchell Lane, Boulder, CO 80301, USAAtmospheric Chemistry Observations and Modeling Lab, National Center for Atmospheric Research, 3450 Mitchell Lane, Boulder, CO 80301, USADepartment of Civil, Construction, and Environmental Engineering, North Carolina State University, Raleigh, NC 27695, USAThe detection of meteorological, chemical, or other signals in modeled or observed air quality data – such as an estimate of a temporal trend in surface ozone data, or an estimate of the mean ozone of a particular region during a particular season – is a critical component of modern atmospheric chemistry. However, the magnitude of a surface air quality signal is generally small compared to the magnitude of the underlying chemical, meteorological, and climatological variabilities (and their interactions) that exist both in space and in time, and which include variability in emissions and surface processes. This can present difficulties for both policymakers and researchers as they attempt to identify the influence or signal of climate trends (e.g., any pauses in warming trends), the impact of enacted emission reductions policies (e.g., United States NO<sub><i>x</i></sub> State Implementation Plans), or an estimate of the mean state of highly variable data (e.g., summertime ozone over the northeastern United States). Here we examine the scale dependence of the variability of simulated and observed surface ozone data within the United States and the likelihood that a particular choice of temporal or spatial averaging scales produce a misleading estimate of a particular ozone signal. Our main objective is to develop strategies that reduce the likelihood of overconfidence in simulated ozone estimates. We find that while increasing the extent of both temporal and spatial averaging can enhance signal detection capabilities by reducing the noise from variability, a strategic combination of particular temporal and spatial averaging scales can maximize signal detection capabilities over much of the continental US. For signals that are large compared to the meteorological variability (e.g., strong emissions reductions), shorter averaging periods and smaller spatial averaging regions may be sufficient, but for many signals that are smaller than or comparable in magnitude to the underlying meteorological variability, we recommend temporal averaging of 10–15 years combined with some level of spatial averaging (up to several hundred kilometers). If this level of averaging is not practical (e.g., the signal being examined is at a local scale), we recommend some exploration of the spatial and temporal variability to provide context and confidence in the robustness of the result. These results are consistent between simulated and observed data, as well as within a single model with different sets of parameters. The strategies selected in this study are not limited to surface ozone data and could potentially maximize signal detection capabilities within a broad array of climate and chemical observations or model output.https://www.atmos-chem-phys.net/18/8373/2018/acp-18-8373-2018.pdf |