Testing the performance of field calibration techniques for low-cost gas sensors in new deployment locations: across a county line and across Colorado
<p>We assessed the performance of ambient ozone (O<sub>3</sub>) and carbon dioxide (CO<sub>2</sub>) sensor field calibration techniques when they were generated using data from one location and then applied to data collected at a new location. This was motivated by a...
Main Authors: | , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2018-11-01
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Series: | Atmospheric Measurement Techniques |
Online Access: | https://www.atmos-meas-tech.net/11/6351/2018/amt-11-6351-2018.pdf |
Summary: | <p>We assessed the performance of ambient ozone (O<sub>3</sub>) and carbon dioxide
(CO<sub>2</sub>) sensor field calibration techniques when they were generated using
data from one location and then applied to data collected at a new location.
This was motivated by a previous study (Casey et al., 2018), which highlighted
the importance of determining the extent to which field calibration
regression models could be aided by relationships among atmospheric trace
gases at a given training location, which may not hold if a model is applied
to data collected in a new location. We also explored the sensitivity of
these methods in response to the timing of field calibrations relative to
deployment periods. Employing data from a number of field deployments in
Colorado and New Mexico that spanned several years, we tested and compared
the performance of field-calibrated sensors using both linear models (LMs)
and artificial neural networks (ANNs) for regression. Sampling sites covered
urban and rural–peri-urban areas and environments influenced by oil and gas production.
We found that the best-performing model inputs and model type depended on
circumstances associated with individual case studies, such as differing
characteristics of local dominant emissions sources, relative timing of model
training and application, and the extent of extrapolation outside of
parameter space encompassed by model training. In agreement with findings
from our previous study that was focused on data from a single location
(Casey et al., 2018), ANNs remained more effective than LMs
for a number of these case studies but there were some exceptions. For
CO<sub>2</sub> models, exceptions included case studies in which training
data collection took place more than several months subsequent to the test
data period. For O<sub>3</sub> models, exceptions included case studies in
which the characteristics of dominant local emissions sources (oil and gas
vs. urban) were significantly different at model training and testing
locations. Among models that were tailored to case studies on an individual
basis, O<sub>3</sub> ANNs performed better than O<sub>3</sub> LMs in six out of
seven
case studies, while CO<sub>2</sub> ANNs performed better than CO<sub>2</sub>
LMs in three out of five case studies. The performance of O<sub>3</sub> models tended
to be more sensitive to deployment location than to extrapolation in time,
while the performance of CO<sub>2</sub> models tended to be more sensitive to
extrapolation in time than to deployment location. The performance of
O<sub>3</sub> ANN models benefited from the inclusion of several secondary
metal-oxide-type sensors as inputs in five of seven case studies.</p> |
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ISSN: | 1867-1381 1867-8548 |