Influence of Weather Conditions on the Intercity Travel Mode Choice: A Case of Xi’an

To explore the influence of weather conditions on the choice of the intercity travel mode of travelers, four modes of traveler transportation were studied in Xi'an, China, in March 2019: airplane, high-speed rail, conventional train, and express bus. The individual characteristics of travelers...

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Main Authors: Xiaowei Li, Qiangqiang Ma, Wenbo Wang, Baojie Wang
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2021/9969322
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spelling doaj-34169e478a904c3cac76662fcada1bac2021-09-06T00:01:31ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52732021-01-01202110.1155/2021/9969322Influence of Weather Conditions on the Intercity Travel Mode Choice: A Case of Xi’anXiaowei Li0Qiangqiang Ma1Wenbo Wang2Baojie Wang3School of Civil EngineeringSchool of Civil EngineeringCCCC First Highway Consultants Co. LtdSchool of Transportation EngineeringTo explore the influence of weather conditions on the choice of the intercity travel mode of travelers, four modes of traveler transportation were studied in Xi'an, China, in March 2019: airplane, high-speed rail, conventional train, and express bus. The individual characteristics of travelers and intercity travel activity data were obtained, and they were matched with the weather characteristics at the departure time of the travelers. The Bayesian multinomial logit regression was employed to explore the relationship between the travel mode choice and weather characteristics. The results showed that temperature, relative humidity, rainfall, wind, air quality index, and visibility had significant effects on the travel mode selection of travelers, and the addition of these variables could improve the model’s predictive performance. The research results can provide a scientific decision basis for traveler flow transfer and the prediction of traffic modes choice due to the effects of climate change.http://dx.doi.org/10.1155/2021/9969322
collection DOAJ
language English
format Article
sources DOAJ
author Xiaowei Li
Qiangqiang Ma
Wenbo Wang
Baojie Wang
spellingShingle Xiaowei Li
Qiangqiang Ma
Wenbo Wang
Baojie Wang
Influence of Weather Conditions on the Intercity Travel Mode Choice: A Case of Xi’an
Computational Intelligence and Neuroscience
author_facet Xiaowei Li
Qiangqiang Ma
Wenbo Wang
Baojie Wang
author_sort Xiaowei Li
title Influence of Weather Conditions on the Intercity Travel Mode Choice: A Case of Xi’an
title_short Influence of Weather Conditions on the Intercity Travel Mode Choice: A Case of Xi’an
title_full Influence of Weather Conditions on the Intercity Travel Mode Choice: A Case of Xi’an
title_fullStr Influence of Weather Conditions on the Intercity Travel Mode Choice: A Case of Xi’an
title_full_unstemmed Influence of Weather Conditions on the Intercity Travel Mode Choice: A Case of Xi’an
title_sort influence of weather conditions on the intercity travel mode choice: a case of xi’an
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5273
publishDate 2021-01-01
description To explore the influence of weather conditions on the choice of the intercity travel mode of travelers, four modes of traveler transportation were studied in Xi'an, China, in March 2019: airplane, high-speed rail, conventional train, and express bus. The individual characteristics of travelers and intercity travel activity data were obtained, and they were matched with the weather characteristics at the departure time of the travelers. The Bayesian multinomial logit regression was employed to explore the relationship between the travel mode choice and weather characteristics. The results showed that temperature, relative humidity, rainfall, wind, air quality index, and visibility had significant effects on the travel mode selection of travelers, and the addition of these variables could improve the model’s predictive performance. The research results can provide a scientific decision basis for traveler flow transfer and the prediction of traffic modes choice due to the effects of climate change.
url http://dx.doi.org/10.1155/2021/9969322
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AT qiangqiangma influenceofweatherconditionsontheintercitytravelmodechoiceacaseofxian
AT wenbowang influenceofweatherconditionsontheintercitytravelmodechoiceacaseofxian
AT baojiewang influenceofweatherconditionsontheintercitytravelmodechoiceacaseofxian
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