Trip Purposes of Automobile Users Inference Using Multi-day Traffic Monitoring Data
U491.1+22; Determining trip purpose is an important link to explore travel rules.In this paper,we take automobile users in urban areas as the research object,combine unsupervised learning and supervised learning methods to analyze their travel characteristics,and focus on the classification and pred...
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Veröffentlicht in: | 哈尔滨工业大学学报(英文版) 2023, Vol.30 (5), p.1-11 |
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Sprache: | eng |
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Zusammenfassung: | U491.1+22; Determining trip purpose is an important link to explore travel rules.In this paper,we take automobile users in urban areas as the research object,combine unsupervised learning and supervised learning methods to analyze their travel characteristics,and focus on the classification and prediction of automobile users'trip purposes.However,previous studies on trip purposes mainly focused on questionnaires and GPS data,which cannot well reflect the characteristics of automobile travel.In order to avoid the multi-day behavior variability and unobservable heterogeneity of individual characteristics ignored in traditional traffic questionnaires,traffic monitoring data from the Northern District of Qingdao are used,and the K-means clustering method is applied to estimate the trip purposes of automobile users.Then,Adaptive Boosting(AdaBoost)and Random Forest(RF)methods are used to classify and predict trip purposes.Finally,the result shows:(1)the purpose of automobile users can be mainly divided into four clusters,which include Commuting trips,Flexible life demand travel in daytime,Evening entertainment and leisure shopping,and Taxi-based trips for the first three types of purposes,respectively;(2)the Random Forest method performs significantly better than AdaBoost in trip purpose prediction for higher accuracy;(3)the average prediction accuracy of Random Forest under hyper-parameters optimization reaches 96.25%,which proves the feasibility and rationality of the above clustering results. |
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ISSN: | 1005-9113 |
DOI: | 10.11916/j.issn.1005-9113.2022099 |