TY - JOUR
T1 - Daily estimation of NO2 concentrations using digital tachograph data
AU - Joo, Yoohyung
AU - Joo, Minsoo
AU - Nguyen, Minh Hieu
AU - Hong, Jiwan
AU - Kim, Changsoo
AU - Wong, Man Sing
AU - Heo, Joon
N1 - Publisher Copyright:
© The Author(s), under exclusive licence to Springer Nature Switzerland AG 2024.
PY - 2024/11
Y1 - 2024/11
N2 - Traffic information is crucial for estimating NO2 concentrations, but it is static and limited in predicting constantly changing NO2 levels. To overcome these challenges, this study utilized real-time spatial big data to capture both the spatial and temporal fluctuations in traffic. Digital tachograph (DTG) data, sourced from digital devices in all commercial vehicles, are employed to construct a DTG land use regression (LUR) model, and its performance is compared with that of a non-DTG-LUR model. The DTG-LUR model exhibits superior performance, with an explanatory power of 0.46, in contrast to the 0.36 of the non-DTG model. This significant improvement stems from the spatially and temporally dynamic DTG variables such as cargo traffic. This study introduces a novel approach for incorporating DTG data in correlating with NO2 concentrations. It underscores the advantage of DTG data in predicting daily NO2 fluctuations at a precise 200-m grid, which is not feasible with conventional data. The findings of the study highlight the immense potential of spatial big data for fine-grained analyses, which could enable hourly predictions of air pollution.
AB - Traffic information is crucial for estimating NO2 concentrations, but it is static and limited in predicting constantly changing NO2 levels. To overcome these challenges, this study utilized real-time spatial big data to capture both the spatial and temporal fluctuations in traffic. Digital tachograph (DTG) data, sourced from digital devices in all commercial vehicles, are employed to construct a DTG land use regression (LUR) model, and its performance is compared with that of a non-DTG-LUR model. The DTG-LUR model exhibits superior performance, with an explanatory power of 0.46, in contrast to the 0.36 of the non-DTG model. This significant improvement stems from the spatially and temporally dynamic DTG variables such as cargo traffic. This study introduces a novel approach for incorporating DTG data in correlating with NO2 concentrations. It underscores the advantage of DTG data in predicting daily NO2 fluctuations at a precise 200-m grid, which is not feasible with conventional data. The findings of the study highlight the immense potential of spatial big data for fine-grained analyses, which could enable hourly predictions of air pollution.
KW - DTG data
KW - Daily estimation
KW - Land use regression (LUR)
KW - NO concentrations
KW - Spatial–temporal variation
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U2 - 10.1007/s10661-024-13190-0
DO - 10.1007/s10661-024-13190-0
M3 - Article
C2 - 39465475
AN - SCOPUS:85207990438
SN - 0167-6369
VL - 196
JO - Environmental Monitoring and Assessment
JF - Environmental Monitoring and Assessment
IS - 11
M1 - 1109
ER -