2022
DOI: 10.3390/atmos13040506
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Analysis of PM2.5 and Meteorological Variables Using Enhanced Geospatial Techniques in Developing Countries: A Case Study of Cartagena de Indias City (Colombia)

Abstract: The dispersion of air pollutants and the spatial representation of meteorological variables are subject to complex atmospheric local parameters. To reduce the impact of particulate matter (PM2.5) on human health, it is of great significance to know its concentration at high spatial resolution. In order to monitor its effects on an exposed population, geostatistical analysis offers great potential to obtain high-quality spatial representation mapping of PM2.5 and meteorological variables. The purpose of this st… Show more

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Cited by 15 publications
(5 citation statements)
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“…While traditional air quality prediction methods have yielded some successes in certain instances, their application to predict air quality indicators using conventional statistical approaches has often fallen short. This is largely due to the intricate nature of time-series data, like PM2.5 and PM10, which exhibit high nonlinearity and instability attributed to a multitude of factors [18]. The accelerated advancement of data mining and machine learning techniques has sparked a surge of interest in leveraging these tools to enhance the precision and dependability of air quality prediction.…”
Section: Introductionmentioning
confidence: 99%
“…While traditional air quality prediction methods have yielded some successes in certain instances, their application to predict air quality indicators using conventional statistical approaches has often fallen short. This is largely due to the intricate nature of time-series data, like PM2.5 and PM10, which exhibit high nonlinearity and instability attributed to a multitude of factors [18]. The accelerated advancement of data mining and machine learning techniques has sparked a surge of interest in leveraging these tools to enhance the precision and dependability of air quality prediction.…”
Section: Introductionmentioning
confidence: 99%
“…Two of the coincident maximums also occur outside the periodic range of the dry season, perhaps correlated with other atmospheric or social situations that have not been determined. Meteorological variables in Cartagena de Indias have already been established as leading factors for increasing and decreasing PM 2.5 values [70]; therefore, dry and wet seasons must have a noticeable influence in air quality levels and childhood asthma incidence. In other world regions, relationships between PM 2.5 and meteorological dynamics have also been found in Hong Kong [71] in a positive correlation for pressure and a negative correlation for temperature.…”
Section: Discussionmentioning
confidence: 99%
“…The satellite-borne thermal emission and reflection radiometer on NASA's Terra satellite generates images from stereo image pairs. These stereo pairs have been used to generate a single-scene (60 km) DEM since 2001, with root mean square errors typically between 10 m and 25 m [35,36]. The topography of the study area is shown in Figure 3:…”
Section: Topography Datamentioning
confidence: 99%