Short Path Wind-Field Distance-Based Lagrangian Trajectory Model for Enhancing Atmospheric Dispersion Prediction Accuracy

Air pollution is a major global issue that not only threatens the safety of our planet but also poses risks to global health. Weather plays a crucial role in the rapid dispersion of air pollution. Various models have been used to predict air pollution; however, atmospheric pollution dispersion remai...

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Main Authors: Soukaina R'Bigui, Hind R'Bigui, Chiwoon Cho
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10266310/
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author Soukaina R'Bigui
Hind R'Bigui
Chiwoon Cho
author_facet Soukaina R'Bigui
Hind R'Bigui
Chiwoon Cho
author_sort Soukaina R'Bigui
collection DOAJ
description Air pollution is a major global issue that not only threatens the safety of our planet but also poses risks to global health. Weather plays a crucial role in the rapid dispersion of air pollution. Various models have been used to predict air pollution; however, atmospheric pollution dispersion remains unpredictable, especially in relation to meteorological conditions. Our research scope focuses on developing an Air Diffusion Model using Future Wind and Pollutant sensing data to enhance prediction accuracy. In this paper, we present a new approach based on a mathematical model named the Short Path Distance based Lagrangian Trajectory Model (SPD-LTM). This model utilizes a trajectory approach and short path wind-field distance optimization to predict future air dispersion using pollutant sensing data. The framework developed in this work aims to model changes in Particulate Matter (PM2.5) and predict its concentration based on short path distance and time dependencies. The Lagrangian trajectory and concentration calculations are performed using the Hybrid Single-Particulate Lagrangian Integrated Trajectory algorithm (HYSPLIT). Then, we apply the short path distance algorithm using the Dijkstra algorithm. The obtained results demonstrate that the SPD-LTM outperforms the usual LTM and provides better accuracy to our predictive model.
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spelling doaj.art-e2475261377549988722689bd90bc4f92023-10-09T23:02:04ZengIEEEIEEE Access2169-35362023-01-011110646510647510.1109/ACCESS.2023.332056310266310Short Path Wind-Field Distance-Based Lagrangian Trajectory Model for Enhancing Atmospheric Dispersion Prediction AccuracySoukaina R'Bigui0https://orcid.org/0009-0002-8303-921XHind R'Bigui1https://orcid.org/0000-0002-7533-0210Chiwoon Cho2https://orcid.org/0000-0002-8506-8367School of Industrial Engineering, University of Ulsan, Ulsan, Republic of KoreaDigital Enterprise Department, NSOFT Company Ltd., Ulsan, Republic of KoreaSchool of Industrial Engineering, University of Ulsan, Ulsan, Republic of KoreaAir pollution is a major global issue that not only threatens the safety of our planet but also poses risks to global health. Weather plays a crucial role in the rapid dispersion of air pollution. Various models have been used to predict air pollution; however, atmospheric pollution dispersion remains unpredictable, especially in relation to meteorological conditions. Our research scope focuses on developing an Air Diffusion Model using Future Wind and Pollutant sensing data to enhance prediction accuracy. In this paper, we present a new approach based on a mathematical model named the Short Path Distance based Lagrangian Trajectory Model (SPD-LTM). This model utilizes a trajectory approach and short path wind-field distance optimization to predict future air dispersion using pollutant sensing data. The framework developed in this work aims to model changes in Particulate Matter (PM2.5) and predict its concentration based on short path distance and time dependencies. The Lagrangian trajectory and concentration calculations are performed using the Hybrid Single-Particulate Lagrangian Integrated Trajectory algorithm (HYSPLIT). Then, we apply the short path distance algorithm using the Dijkstra algorithm. The obtained results demonstrate that the SPD-LTM outperforms the usual LTM and provides better accuracy to our predictive model.https://ieeexplore.ieee.org/document/10266310/PM2.5air pollutionpredictive modelshort-path distancetrajectory modelparticle trajectory
spellingShingle Soukaina R'Bigui
Hind R'Bigui
Chiwoon Cho
Short Path Wind-Field Distance-Based Lagrangian Trajectory Model for Enhancing Atmospheric Dispersion Prediction Accuracy
IEEE Access
PM2.5
air pollution
predictive model
short-path distance
trajectory model
particle trajectory
title Short Path Wind-Field Distance-Based Lagrangian Trajectory Model for Enhancing Atmospheric Dispersion Prediction Accuracy
title_full Short Path Wind-Field Distance-Based Lagrangian Trajectory Model for Enhancing Atmospheric Dispersion Prediction Accuracy
title_fullStr Short Path Wind-Field Distance-Based Lagrangian Trajectory Model for Enhancing Atmospheric Dispersion Prediction Accuracy
title_full_unstemmed Short Path Wind-Field Distance-Based Lagrangian Trajectory Model for Enhancing Atmospheric Dispersion Prediction Accuracy
title_short Short Path Wind-Field Distance-Based Lagrangian Trajectory Model for Enhancing Atmospheric Dispersion Prediction Accuracy
title_sort short path wind field distance based lagrangian trajectory model for enhancing atmospheric dispersion prediction accuracy
topic PM2.5
air pollution
predictive model
short-path distance
trajectory model
particle trajectory
url https://ieeexplore.ieee.org/document/10266310/
work_keys_str_mv AT soukainarbigui shortpathwindfielddistancebasedlagrangiantrajectorymodelforenhancingatmosphericdispersionpredictionaccuracy
AT hindrbigui shortpathwindfielddistancebasedlagrangiantrajectorymodelforenhancingatmosphericdispersionpredictionaccuracy
AT chiwooncho shortpathwindfielddistancebasedlagrangiantrajectorymodelforenhancingatmosphericdispersionpredictionaccuracy