Features Exploration from Datasets Vision in Air Quality Prediction Domain
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Altres documents de l'autoria: Iskandaryan, Ditsuhi; Ramos, Jose Francisco; Trilles, Sergio
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INVESTIGACIONMetadades
Títol
Features Exploration from Datasets Vision in Air Quality Prediction DomainData de publicació
2021-02-28Editor
MDPIISSN
2073-4433Cita bibliogràfica
Iskandaryan, D.; Ramos, F.; Trilles, S. Features Exploration from Datasets Vision in Air Quality Prediction Domain. Atmosphere 2021, 12, 312. https://doi.org/10.3390/ atmos12030312Tipus de document
info:eu-repo/semantics/articleVersió de l'editorial
https://www.mdpi.com/2073-4433/12/3/312Versió
info:eu-repo/semantics/publishedVersionParaules clau / Matèries
Resum
Air pollution and its consequences are negatively impacting on the world population
and the environment, which converts the monitoring and forecasting air quality techniques as
essential tools to combat this problem. ... [+]
Air pollution and its consequences are negatively impacting on the world population
and the environment, which converts the monitoring and forecasting air quality techniques as
essential tools to combat this problem. To predict air quality with maximum accuracy, along with the
implemented models and the quantity of the data, it is crucial also to consider the dataset types. This
study selected a set of research works in the field of air quality prediction and is concentrated on the
exploration of the datasets utilised in them. The most significant findings of this research work are:
(1) meteorological datasets were used in 94.6% of the papers leaving behind the rest of the datasets
with a big difference, which is complemented with others, such as temporal data, spatial data, and
so on; (2) the usage of various datasets combinations has been commenced since 2009; and (3) the
utilisation of open data have been started since 2012, 32.3% of the studies used open data, and 63.4%
of the studies did not provide the data. [-]
Publicat a
Atmosphere, Vol. 12, Iss. 3, núm. 312 (March 2021)Entitat finançadora
Universitat Jaume I | Ministeri de Ciència i Innovació (Espanya) | Generalitat Valenciana
Codi del projecte o subvenció
PREDOC/2018/61 | IJC2018-035017-I | GV / 2020/035
Títol del projecte o subvenció
Programa predoctoral PINV2018 | Programa postdoctoral Juan de la Cierva
Drets d'accés
info:eu-repo/semantics/openAccess
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