Cargando…

Proposal of a Methodology for Prediction of Indoor PM(2.5) Concentration Using Sensor-Based Residential Environments Monitoring Data and Time-Divided Multiple Linear Regression Model

This study aims to propose an indoor air quality prediction method that can be easily utilized and reflects temporal characteristics using indoor and outdoor input data measured near the indoor target point as input to calculate indoor PM(2.5) concentration through a multiple linear regression model...

Descripción completa

Detalles Bibliográficos
Autores principales: Park, Shin-Young, Yoon, Dan-Ki, Park, Si-Hyun, Jeon, Jung-In, Lee, Jung-Mi, Yang, Won-Ho, Cho, Yong-Sung, Kwon, Jaymin, Lee, Cheol-Min
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10304647/
https://www.ncbi.nlm.nih.gov/pubmed/37368626
http://dx.doi.org/10.3390/toxics11060526
_version_ 1785065559298146304
author Park, Shin-Young
Yoon, Dan-Ki
Park, Si-Hyun
Jeon, Jung-In
Lee, Jung-Mi
Yang, Won-Ho
Cho, Yong-Sung
Kwon, Jaymin
Lee, Cheol-Min
author_facet Park, Shin-Young
Yoon, Dan-Ki
Park, Si-Hyun
Jeon, Jung-In
Lee, Jung-Mi
Yang, Won-Ho
Cho, Yong-Sung
Kwon, Jaymin
Lee, Cheol-Min
author_sort Park, Shin-Young
collection PubMed
description This study aims to propose an indoor air quality prediction method that can be easily utilized and reflects temporal characteristics using indoor and outdoor input data measured near the indoor target point as input to calculate indoor PM(2.5) concentration through a multiple linear regression model. The atmospheric conditions and air pollution detected in one-minute intervals using sensor-based monitoring equipment (Dust Mon, Sentry Co Ltd., Seoul, Korea) inside and outside houses from May 2019 to April 2021 were used to develop the prediction model. By dividing the multiple linear regression model into one-hour increments, we attempted to overcome the limitation of not representing the multiple linear regression model’s characteristics over time and limited input variables. The multiple linear regression (MLR) model classified by time unit showed an improvement in explanatory power by up to 9% compared to the existing model, and some hourly models had an explanatory power of 0.30. These results indicated that the model needs to be subdivided by time period to more accurately predict indoor PM(2.5) concentrations.
format Online
Article
Text
id pubmed-10304647
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-103046472023-06-29 Proposal of a Methodology for Prediction of Indoor PM(2.5) Concentration Using Sensor-Based Residential Environments Monitoring Data and Time-Divided Multiple Linear Regression Model Park, Shin-Young Yoon, Dan-Ki Park, Si-Hyun Jeon, Jung-In Lee, Jung-Mi Yang, Won-Ho Cho, Yong-Sung Kwon, Jaymin Lee, Cheol-Min Toxics Article This study aims to propose an indoor air quality prediction method that can be easily utilized and reflects temporal characteristics using indoor and outdoor input data measured near the indoor target point as input to calculate indoor PM(2.5) concentration through a multiple linear regression model. The atmospheric conditions and air pollution detected in one-minute intervals using sensor-based monitoring equipment (Dust Mon, Sentry Co Ltd., Seoul, Korea) inside and outside houses from May 2019 to April 2021 were used to develop the prediction model. By dividing the multiple linear regression model into one-hour increments, we attempted to overcome the limitation of not representing the multiple linear regression model’s characteristics over time and limited input variables. The multiple linear regression (MLR) model classified by time unit showed an improvement in explanatory power by up to 9% compared to the existing model, and some hourly models had an explanatory power of 0.30. These results indicated that the model needs to be subdivided by time period to more accurately predict indoor PM(2.5) concentrations. MDPI 2023-06-12 /pmc/articles/PMC10304647/ /pubmed/37368626 http://dx.doi.org/10.3390/toxics11060526 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Park, Shin-Young
Yoon, Dan-Ki
Park, Si-Hyun
Jeon, Jung-In
Lee, Jung-Mi
Yang, Won-Ho
Cho, Yong-Sung
Kwon, Jaymin
Lee, Cheol-Min
Proposal of a Methodology for Prediction of Indoor PM(2.5) Concentration Using Sensor-Based Residential Environments Monitoring Data and Time-Divided Multiple Linear Regression Model
title Proposal of a Methodology for Prediction of Indoor PM(2.5) Concentration Using Sensor-Based Residential Environments Monitoring Data and Time-Divided Multiple Linear Regression Model
title_full Proposal of a Methodology for Prediction of Indoor PM(2.5) Concentration Using Sensor-Based Residential Environments Monitoring Data and Time-Divided Multiple Linear Regression Model
title_fullStr Proposal of a Methodology for Prediction of Indoor PM(2.5) Concentration Using Sensor-Based Residential Environments Monitoring Data and Time-Divided Multiple Linear Regression Model
title_full_unstemmed Proposal of a Methodology for Prediction of Indoor PM(2.5) Concentration Using Sensor-Based Residential Environments Monitoring Data and Time-Divided Multiple Linear Regression Model
title_short Proposal of a Methodology for Prediction of Indoor PM(2.5) Concentration Using Sensor-Based Residential Environments Monitoring Data and Time-Divided Multiple Linear Regression Model
title_sort proposal of a methodology for prediction of indoor pm(2.5) concentration using sensor-based residential environments monitoring data and time-divided multiple linear regression model
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10304647/
https://www.ncbi.nlm.nih.gov/pubmed/37368626
http://dx.doi.org/10.3390/toxics11060526
work_keys_str_mv AT parkshinyoung proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel
AT yoondanki proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel
AT parksihyun proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel
AT jeonjungin proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel
AT leejungmi proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel
AT yangwonho proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel
AT choyongsung proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel
AT kwonjaymin proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel
AT leecheolmin proposalofamethodologyforpredictionofindoorpm25concentrationusingsensorbasedresidentialenvironmentsmonitoringdataandtimedividedmultiplelinearregressionmodel