SAT-CEP-monitor: An air quality monitoring software architecture
combining complex event processing with satellite remote sensing
- URL: http://arxiv.org/abs/2401.16339v1
- Date: Mon, 29 Jan 2024 17:45:23 GMT
- Title: SAT-CEP-monitor: An air quality monitoring software architecture
combining complex event processing with satellite remote sensing
- Authors: Badr-Eddine Boudriki Semlali, Chaker El Amrani, Guadalupe Ortiz, Juan
Boubeta-Puig, Alfonso Garcia-de-Prado
- Abstract summary: Urban areas are the most affected by the degradation of air quality caused by anthropogenic gas emissions.
We propose a software architecture that efficiently combines complex event processing with remote sensing data from various satellite sensors to monitor air quality in NRT.
- Score: 2.962390297307338
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Air pollution is a major problem today that causes serious damage to human
health. Urban areas are the most affected by the degradation of air quality
caused by anthropogenic gas emissions. Although there are multiple proposals
for air quality monitoring, in most cases, two limitations are imposed: the
impossibility of processing data in Near Real-Time (NRT) for remote sensing
approaches and the impossibility of reaching areas of limited accessibility or
low network coverage for ground data approaches. We propose a software
architecture that efficiently combines complex event processing with remote
sensing data from various satellite sensors to monitor air quality in NRT,
giving support to decision-makers. We illustrate the proposed solution by
calculating the air quality levels for several areas of Morocco and Spain,
extracting and processing satellite information in NRT. This study also
validates the air quality measured by ground stations and satellite sensor
data.
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