Zooming into Berlin: tracking street-scale CO2 emissions based on high-resolution traffic modeling using machine learning

被引:0
|
作者
Anjos, Max [1 ]
Meier, Fred [1 ]
机构
[1] Tech Univ Berlin, Inst Ecol, Chair Climatol, Berlin, Germany
关键词
artificial intelligence; machine learning; carbon accounting; urban climate; COVID-19; CARBON; INVENTORY; CITIES; ROAD;
D O I
10.3389/fenvs.2024.1461656
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Artificial Intelligence (AI) tools based on Machine learning (ML) have demonstrated their potential in modeling climate-related phenomena. However, their application to quantifying greenhouse gas emissions in cities remains under-researched. Here, we introduce a ML-based bottom-up framework to predict hourly CO2 emissions from vehicular traffic at fine spatial resolution (30 x 30 m). Using data-driven algorithms, traffic counts, spatio-temporal features, and meteorological data, our model predicted hourly traffic flow, average speed, and CO2 emissions for passenger cars (PC) and heavy-duty trucks (HDT) at the street scale in Berlin. Even with limited traffic information, the model effectively generalized to new road segments. For PC, the Relative Mean Difference (RMD) was +16% on average. For HDT, RMD was 19% for traffic flow and 2.6% for average speed. We modeled seven years of hourly CO2 emissions from 2015 to 2022 and identified major highways as hotspots for PC emissions, with peak values reaching 1.639 kgCO2 m-2 d-1. We also analyzed the impact of COVID-19 lockdown and individual policy stringency on traffic CO2 emissions. During the lockdown period (March 15 to 1 June 2020), weekend emissions dropped substantially by 25% (-18.3 tCO2 day-1), with stay-at-home requirements, workplace closures, and school closures contributing significantly to this reduction. The continuation of these measures resulted in sustained reductions in traffic flow and CO2 emissions throughout 2020 and 2022. These results highlight the effectiveness of ML models in quantifying vehicle traffic CO2 emissions at a high spatial resolution. Our ML-based bottom-up approach offers a useful tool for urban climate research, especially in areas lacking detailed CO2 emissions data.
引用
收藏
页数:15
相关论文
共 50 条
  • [31] Predicting CO2 Emissions from Traffic Vehicles for Sustainable and Smart Environment Using a Deep Learning Model
    Al-Nefaie, Abdullah H. H.
    Aldhyani, Theyazn H. H.
    SUSTAINABILITY, 2023, 15 (09)
  • [32] Can Machine Learning be Applied to Carbon Emissions Analysis: An Application to the CO2 Emissions Analysis Using Gaussian Process Regression
    Ma, Ning
    Shum, Wai Yan
    Han, Tingting
    Lai, Fujun
    FRONTIERS IN ENERGY RESEARCH, 2021, 9
  • [33] Machine Learning-Based Prediction of Ecosystem-Scale CO2 Flux Measurements
    Uyekawa, Jeffrey
    Leland, John
    Bergl, Darby
    Liu, Yujie
    Richardson, Andrew D.
    Lucas, Benjamin
    LAND, 2025, 14 (01)
  • [34] Plio-Pleistocene climate sensitivity evaluated using high-resolution CO2 records
    M. A. Martínez-Botí
    G. L. Foster
    T. B. Chalk
    E. J. Rohling
    P. F. Sexton
    D. J. Lunt
    R. D. Pancost
    M. P. S. Badger
    D. N. Schmidt
    Nature, 2015, 518 : 49 - 54
  • [35] Plio-Pleistocene climate sensitivity evaluated using high-resolution CO2 records
    Martinez-Boti, M. A.
    Foster, G. L.
    Chalk, T. B.
    Rohling, E. J.
    Sexton, P. F.
    Lunt, D. J.
    Pancost, R. D.
    Badger, M. P. S.
    Schmidt, D. N.
    NATURE, 2015, 518 (7537) : 49 - +
  • [36] The extraction of forest CO2 storage capacity using high-resolution airborne lidar data
    Lee, Sang Jin
    Kim, Jung Rack
    Choi, Yun Soo
    GISCIENCE & REMOTE SENSING, 2013, 50 (02) : 154 - 171
  • [37] HIGH-RESOLUTION LINE BROADENING AND COLLISIONAL STUDIES IN CO2 USING NONLINEAR SPECTROSCOPIC TECHNIQUES
    MEYER, TW
    RHODES, CK
    HAUS, HA
    PHYSICAL REVIEW A, 1975, 12 (05): : 1993 - 2008
  • [38] Deep Reinforcement Learning-Based Traffic Signal Control Using High-Resolution Event-Based Data
    Wang, Song
    Xie, Xu
    Huang, Kedi
    Zeng, Junjie
    Cai, Zimin
    ENTROPY, 2019, 21 (08)
  • [39] Machine learning modeling of the CO2 solubility in ionic liquids by using a-profile descriptors
    Laakso, Juho-Pekka
    Gorji, Ali Ebrahimpoor
    Uusi-Kyyny, Petri
    Alopaeus, Ville
    CHEMICAL ENGINEERING SCIENCE, 2025, 307
  • [40] Fractured Geothermal Reservoir Using CO2 as Geofluid: Numerical Analysis and Machine Learning Modeling
    Gudala, Manojkumar
    Tariq, Zeeshan
    Govindarajan, Suresh Kumar
    Yan, Bicheng
    Sun, Shuyu
    ACS OMEGA, 2024, 9 (07): : 7746 - 7769