TY - JOUR
T1 - AQ-Bench A benchmark dataset for machine learning on global air quality metrics
AU - Betancourt, Clara
AU - Stomberg, Timo
AU - Roscher, Ribana
AU - Schultz, Martin G.
AU - Stadtler, Scarlet
N1 - Publisher Copyright:
© Author(s) 2021.
PY - 2021/6/24
Y1 - 2021/6/24
N2 - With the AQ-Bench dataset, we contribute to the recent developments towards shared data usage and machine learning methods in the field of environmental science. The dataset presented here enables researchers to relate global air quality metrics to easy-access metadata and to explore different machine learning methods for obtaining estimates of air quality based on this metadata. AQ-Bench contains a unique collection of aggregated air quality data from the years 2010-2014 and metadata at more than 5500 air quality monitoring stations all over the world, provided by the first Tropospheric Ozone Assessment Report (TOAR). It focuses in particular on metrics of tropospheric ozone, which has a detrimental effect on climate, human morbidity and mortality, as well as crop yields. The purpose of this dataset is to produce estimates of various long-term ozone metrics based on time-independent local site conditions. We combine this task with a suitable evaluation metric. Baseline scores obtained from a linear regression method, a fully connected neural network and random forest are provided for reference and validation. AQ-Bench offers a low-threshold entrance for all machine learners with an interest in environmental science and for atmospheric scientists who are interested in applying machine learning techniques. It enables them to start with a real-world problem relevant to humans and nature. The dataset and introductory machine learning code are available at 10.23728/b2share.30d42b5a87344e82855a486bf2123e9f and https//gitlab.version.fz-juelich.de/esde/machine-learning/aq-bench . AQ-Bench thus provides a blueprint for environmental benchmark datasets as well as an example for data re-use according to the FAIR principles.
AB - With the AQ-Bench dataset, we contribute to the recent developments towards shared data usage and machine learning methods in the field of environmental science. The dataset presented here enables researchers to relate global air quality metrics to easy-access metadata and to explore different machine learning methods for obtaining estimates of air quality based on this metadata. AQ-Bench contains a unique collection of aggregated air quality data from the years 2010-2014 and metadata at more than 5500 air quality monitoring stations all over the world, provided by the first Tropospheric Ozone Assessment Report (TOAR). It focuses in particular on metrics of tropospheric ozone, which has a detrimental effect on climate, human morbidity and mortality, as well as crop yields. The purpose of this dataset is to produce estimates of various long-term ozone metrics based on time-independent local site conditions. We combine this task with a suitable evaluation metric. Baseline scores obtained from a linear regression method, a fully connected neural network and random forest are provided for reference and validation. AQ-Bench offers a low-threshold entrance for all machine learners with an interest in environmental science and for atmospheric scientists who are interested in applying machine learning techniques. It enables them to start with a real-world problem relevant to humans and nature. The dataset and introductory machine learning code are available at 10.23728/b2share.30d42b5a87344e82855a486bf2123e9f and https//gitlab.version.fz-juelich.de/esde/machine-learning/aq-bench . AQ-Bench thus provides a blueprint for environmental benchmark datasets as well as an example for data re-use according to the FAIR principles.
UR - http://www.scopus.com/inward/record.url?scp=85108678679&partnerID=8YFLogxK
U2 - 10.5194/essd-13-3013-2021
DO - 10.5194/essd-13-3013-2021
M3 - Article
AN - SCOPUS:85108678679
SN - 1866-3508
VL - 13
SP - 3013
EP - 3033
JO - Earth System Science Data
JF - Earth System Science Data
IS - 6
ER -