Air Quality Temporal Analyser: Interactive Temporal Analyses with Visual Predictive Assessments
Abstract
This work presents Air Quality Temporal Analyser (AQTA), an interactive system to support visual analyses of air quality data with time. This interactive AQTA allows the seamless integration of predictive models and detailed patterns analyses. While previous approaches lack predictive air quality options, this interface provides back-and-forth dialogue with the designed multiple Machine Learning (ML) models and comparisons for better visual predictive assessments. These models can be dynamically selected in real-time, and the user could visually compare the results in different time conditions for chosen parameters. Moreover, AQTA provides data selection, display, visualisation of past, present, future (prediction) and correlation structure among air parameters, highlighting the predictive models effectiveness. AQTA has been evaluated using Stuttgart (Germany) city air pollutants, i:e:, Particular Matter (PM) PM10, Nitrogen Oxide (NO), Nitrogen Dioxide (NO2), and Ozone (O3) and meteorological parameters like pressure, temperature, wind and humidity. The initial findings are presented that corroborate the city’'s COVID lockdown (year 2020) conditions and sudden changes in patterns, highlighting the improvements in the pollutants concentrations. AQTA, thus, successfully discovers temporal relationships among complex air quality data, interactively in different time frames, by harnessing the user's knowledge of factors influencing the past, present and future behavior, with the aid of ML models. Further, this study also reveals that the decrease in the concentration of one pollutant does not ensure that the surrounding air quality would improve as other factors are interrelated.
BibTeX
@inproceedings {10.2312:envirvis.20211083,
booktitle = {Workshop on Visualisation in Environmental Sciences (EnvirVis)},
editor = {Dutta, Soumya and Feige, Kathrin and Rink, Karsten and Zeckzer, Dirk},
title = {{Air Quality Temporal Analyser: Interactive Temporal Analyses with Visual Predictive Assessments}},
author = {Harbola, Shubhi and Koch, Steffen and Ertl, Thomas and Coors, Volker},
year = {2021},
publisher = {The Eurographics Association},
ISBN = {978-3-03868-148-9},
DOI = {10.2312/envirvis.20211083}
}
booktitle = {Workshop on Visualisation in Environmental Sciences (EnvirVis)},
editor = {Dutta, Soumya and Feige, Kathrin and Rink, Karsten and Zeckzer, Dirk},
title = {{Air Quality Temporal Analyser: Interactive Temporal Analyses with Visual Predictive Assessments}},
author = {Harbola, Shubhi and Koch, Steffen and Ertl, Thomas and Coors, Volker},
year = {2021},
publisher = {The Eurographics Association},
ISBN = {978-3-03868-148-9},
DOI = {10.2312/envirvis.20211083}
}
URI
https://doi.org/10.2312/envirvis.20211083https://diglib.eg.org:443/handle/10.2312/envirvis20211083