Traffic & Transportation Engineering

Travel Carbon Emission Prediction Model Based on Resident Attribute Data

  • SU Yuejiang ,
  • WEN Huiying ,
  • YUAN Minxian ,
  • WU Dexin ,
  • ZHOU Lulu ,
  • QI Weiwei
Expand
  • 1.School of Civil Engineering and Transportation,South China University of Technology,Guangzhou 510640,Guangdong,China
    2.Guangzhou Transport Research Institute Co. Ltd. ,Guangzhou 510635,Guangdong,China
    3.Guangzhou International Engineering Consulting Co. ,Ltd. ,Guangzhou 510600,Guangdong,China
苏跃江(1983—),男,博士生,正高级工程师,主要从事交通大数据和公共交通研究。E-mail: 250234329@qq.com

Received date: 2023-05-26

  Online published: 2024-03-13

Supported by

the National Natural Science Foundation of China(52072131);the Natural Science Foundation of Guangdong Province(2023A1515011322)

Abstract

It is an important basis for precise formulation of transportation emission reduction measures to accurately analyze the importance of factors influencing residents’ travel mode and the sensitivity of carbon emissions. According to the comprehensive analysis of the influencing factors such as family attributes, personal attributes, travel attributes and environmental attributes of the residents’ travel survey, the prediction model of residents’ travel mode was constructed based on LightGBM (Light Gradient Boosting Machine) and verified. Combined with the travel activity level, the carbon emission coefficient of various energy types, the standard coal coefficient and other parameters, the travel carbon emission prediction model based on the resident attribute data was constructed. Finally, taking Guangzhou as an example, the carbon emission intensity and total amount of residents’ travel mode were predicted, and importance of factors influencing travel mode and sensitivity was analyzed.The results indicate that the carbon emission prediction model constructed based on the attribute data of residents can more accurately predict the carbon emission of various modes of travel, better analyze the importance and sensitivity of the influencing factors of carbon emission, and comprehensively reveal the relationship between travel behavior, travel mode and travel carbon emission. Among them, the distance between the start and the end and the nearest bus station or the distance from the nearest subway station, the cost of self-driving and travel distance are important factors affecting the choice of residents’ travel mode. The competitiveness of subway travel increases significantly with the decrease of distance when the distance between the starting and the end point and the nearest subway station drops by 55%. In the area with high density of bus stops, the distance between the start and the nearest bus station is not sensitive to residents’ travel mode choice. It is the turning point of the residents’ travel mode and carbon emission when the carbon emission cost increases by 400%. After passing the turning point, the car travel mode is difficult to transfer. The carbon emissions fell the fastest, with a maximum reduction of 90.4% when the reduction in travel distance was within 90%.

Cite this article

SU Yuejiang , WEN Huiying , YUAN Minxian , WU Dexin , ZHOU Lulu , QI Weiwei . Travel Carbon Emission Prediction Model Based on Resident Attribute Data[J]. Journal of South China University of Technology(Natural Science), 2024 , 52(8) : 23 -33 . DOI: 10.12141/j.issn.1000-565X.230355

References

1 欧阳斌,凤振华,李忠奎,等 .交通运输能耗与碳排放测算评价方法及应用——以江苏省为例[J].软科学201529(1):139-144.
  OUYANG Bin, FENG Zhen-hua, LI Zhong-kui,et al .Calculation and evaluation methodology of transport energy consumption and carbon emission:the case of Jiangsu province[J].Soft Science201529(1):139-144.
2 喻洁,达亚彬,欧阳斌 .基于LMDI分解方法的中国交通运输行业碳排放变化分析[J].中国公路学报201528(10):112-119.
  YU Jie, Ya-bin DA, OUYANG Bin .Analysis of carbon emission changes in china’s transportation industry based on LMDI decomposition method[J].China Journal of Highway and Transport201528(10):112-119.
3 郭胜 .城市交通系统碳排放评估体系与评价方法研究[D].合肥:合肥工业大学,2014.
4 张秀媛,杨新苗,闫琰 .城市交通能耗和碳排放统计测算方法研究[J].中国软科学2014(6):142-150.
  ZHANG Xiu-yuan, YANG Xin-miao, YAN Yan .Statistical estimation method for energy consumption and carbon emissions by urban transport[J].China Soft Science Magazine2014(6):142-150.
5 宁晓菊,张金萍,秦耀辰,等 .郑州城市居民交通碳排放的时空特征[J].资源科学201436(5):1021-1028.
  NING Xiaoju, ZHANG Jinping, QIN Yaochen,et al .Spatial and temporal characteristics of carbon emissions from urban resident travel in Zhengzhou[J].Resources Science magazine201436(5):1021-1028.
6 孙健,张颖,薛睿,等 .基于移动监测的城市道路交通碳排放形成机理——以上海市为例[J].中国公路学报201730(5):122-131.
  SUN Jian, ZHANG Ying, XUE Rui,et al .Formation mechanism of urban traffic carbon emissions based on mobile monitoring:case study of shanghai[J].China Journal of Highway and Transport201730(5):122-131.
7 张清,陶小马,杨鹏 .居民出行方式选择与客运交通低碳化研究[J].中国人口·资源与环境201323(6):21-28.
  ZHANG Qing, TAO Xiao-ma, YANG Peng .Research on residents travel choice and Low-carbon Transport[J].China Population Resources and Environment201323(6):21-28.
8 胡严艺,蒲政,王沛 .基于Logit模型的碳排放收费对居民出行方式选择的研究[J].交通运输工程与信息学报201816(4):57-62.
  HU Yanyi, PU Zheng, WANG Pei .Study on the impacts of traffic carbon emission pricing on resident trip behavior using logit model[J].Journal of Transportation Engineering and Information201816(4):57-62.
9 黄经南,王存颂,陈舒怡,等 .城市家庭成员出行特征与碳排放研究——以武汉市为例[J].规划师201531(S2):209-215.
  HUANG Jingnan, WANG Cunsong, CHEN Shuyi,et al .Commuting features of urban household members and carbon emission:a case study of Wuhan city[J].Planners201531(S2):209-215.
10 马静,柴彦威,刘志林 .基于居民出行行为的北京市交通碳排放影响机理[J].地理学报201166(8):1023-1032.
  MA Jing, CHAI Yanwei, LIU Zhilin .The mechanism of CO2 emissions from urban transport based on individuals’ travel behavior in Beijing[J].Acta Geographica Sinica201166(8):1023-1032.
11 柴彦威,肖作鹏,刘志林 .居民家庭日常出行碳排放的发生机制与调控策略——以北京市为例[J].地理研究201231(2):334-344.
  CHAI Yanwei, XIAO Zuopeng, LIU Zhilin .Low-carbon optimization strategies based on CO2 emission mechanism of household daily travels:a case study of Beijing[J].Geographical Research201231(2):334-344.
12 杨文越,曹小曙 .居住自选择视角下的广州出行碳排放影响机理[J].地理学报201873(2):346-361.
  YANG Wenyue, CAO Xiaoshu .The influence mechanism of travel-related CO2 emissions from the perspective of residential self-selection:a case study of Guangzhou[J].Acta Geographica Sinica201873(2):346-361.
13 HICKMAN R, ASHIRU O, BANISTER D .Transport and climate change:simulating the options for carbon reduction in London.Transport Policy201017(2):110-125.
14 杨文越,曹小曙 .多尺度交通出行碳排放影响因素研究进展[J].地理科学进展201938(11):1814-1828.
  YANG Wenyue, CAO Xiaoshu .Progress of research on influencing factors of CO2 emissions from multi-scale transport[J].Progress in Geography201938(11):1814-1828.
15 苏跃江,温惠英,袁敏贤,等 .基于集成学习和居民属性数据的出行方式预测模型[J].交通运输系统工程与信息202323(3):153-160.
  SU Yuejiang, WEN Huiying, YUAN Min-xian,et al .Travel mode prediction model based on ensemble learning and resident attribute data[J].Journal of Transportation Systems Engineering and Information Technology202323(3):153-160.
16 广州市交通运输研究院有限公司 .广州市交通领域碳达峰路径研究[R].广州:广州市交通运输研究院有限公司,2022.
17 SHAPLEYL S, SHUBIK M .A method for evaluating the distribution of power in a committee system[J].American Political Science Review195448(3):787-792.
18 LUNDBERG S M, LEE S I .A unified approach to interpreting model predictions[J].Advances in Neural Information Processing Systems201710(1):30-40.
Outlines

/