2021
DOI: 10.1016/j.scitotenv.2020.141424
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DatAC: A visual analytics platform to explore climate and air quality indicators associated with the COVID-19 pandemic in Spain

Abstract: The coronavirus disease 2019 (COVID-19) pandemic has caused an unprecedented global health crisis, with several countries imposing lockdowns to control the coronavirus spread. Important research efforts are focused on evaluating the association of environmental factors with the survival and spread of the virus and different works have been published, with contradictory results in some cases. Data with spatial and temporal information is a key factor to get reliable results and, although there are some data rep… Show more

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Cited by 47 publications
(38 citation statements)
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References 39 publications
(45 reference statements)
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“…Reducing occupancy has been recommended for airborne infection risk control [ 3 , 16 ]. Under some urgent scenarios, even the lockdown of a whole city is adopted [ 30 ]. Reducing occupancy is particularly useful when other practical measures cannot effectively control airborne infection risk, such as airborne infection risk control of COVID-19 when the schools, office, etc .…”
Section: Discussionmentioning
confidence: 99%
“…Reducing occupancy has been recommended for airborne infection risk control [ 3 , 16 ]. Under some urgent scenarios, even the lockdown of a whole city is adopted [ 30 ]. Reducing occupancy is particularly useful when other practical measures cannot effectively control airborne infection risk, such as airborne infection risk control of COVID-19 when the schools, office, etc .…”
Section: Discussionmentioning
confidence: 99%
“…Brazil: (Dantas et al, 2020;Krecl et al, 2020;Nakada and Urban, 2020;Siciliano et al, 2020a) Other: (Mendez-Espinosa et al, 2020;Pacheco et al, 2020;Zalakeviciute et al, 2020;Zambrano-Monserrate and Ruano, 2020) Europe Multiple countries: (Baldasano, 2020;Collivignarelli et al, 2020;Filippini et al, 2020;Gautam, 2020a;Giani et al, 2020;Gualtieri et al, 2020;Higham et al, 2020;Ljubenkov et al, 2020;Sicard et al, 2020;Tobías et al, 2020;Martorell-Marugán et al, 2021) Oceania Australia: (Fu et al, 2020) New Zealand: (Patel et al, 2020) Africa Morocco: (Ass et al, 2020;Otmani et al, 2020) This includes the "discussed but not corrected" and "not discussed or corrected" categories in Figure 2. (Zheng et al, 2020), and Tianjin (Dai et al, 2020), China.…”
Section: Southeast Asiamentioning
confidence: 99%
“…, 2020),(Zhang et al, 2020d), United Kingdom:(Higham et al, 2020),(Fu et al, 2020;Zhang et al, 2020d), Russia:(Fu et al, 2020), Italy:(Fu et al, 2020), France:(Fu et al, 2020),(Zhang et al, 2020d), Spain:(Fu et al, 2020),(Martorell-Marugán et al, 2021),(Zhang et al, 2020d), and Germany:(Zhang et alet al, 2020a;Chen et al, 2020d;Jia et al, 2020b;Liu et al, 2020c;Qiu et al, 2020;Yuan et al, 2021), India:(Chatterjee et al, 2020;Panda et al, 2020), Italy:(Collivignarelli et al, 2020), United Kingdom: (Ropkins and Tate, 2020), Canada: (Adams, 2020), United States:(Xiang et al, 2020), and Brazil:(Nakada and Urban, 2020;Siciliano et al, 2020b) AOD India:(Gautam, 2020b;Ranjan et al, 2020;Zhang et al, 2020d), China(Diamond and Wood, 2020;Ghahremanloo et al, 2020;Zhang et al, 2020d;Shen et al, 2021), South Korea, and Japan(Ghahremanloo et al, 2020), North America, and Europe(Zhang et al, 2020d) NMVOCs China:(Ghahremanloo et al, 2020;Jia et al, 2020b;Qiu et al, 2020), South Korea:(Ghahremanloo et al, 2020), Japan:(Ghahremanloo et al, 2020;Zhang et al, 2020b), India:(Beig et al, 20...…”
mentioning
confidence: 99%
“…In general, several studies present the hypothesis that atmospheric pollution associated with certain climatological factors (such as, high humidity and low wind speed) may support a longer permanence of viral particles in the air, fostering the rapid spread of COVID-19 within polluted regions [5,11,12,14,15]. In this context, Martorell-Marugán et al [16] suggest new tools for supporting increased data analysis and statistical capabilities that allow users to explore trends and associations between critical environmental data and the spread of COVID-19 in society. In particular, Megahed and Ghoneim [17] argue that the COVID-19 pandemic has transformed the built environment because of the fear of infection; as a result, appropriate architecture and urbanism can reduce potential risks or stop the spread of infectious diseases by designing a healthy and sustainable built environment.…”
Section: Introduction and Related Workmentioning
confidence: 99%