2019
DOI: 10.3390/s19132869
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Bus Travel Time Prediction Model Based on Profile Similarity

Abstract: In road-based mass transit systems, travel time is a key factor in providing quality of service. This article proposes a method of predicting travel time for this type of transport system. This method estimates travel time by taking into account its historical behaviour, represented by historical profiles, and the current behaviour recorded on the public transport vehicle for which the prediction is to be made. The model uses the k-medoids clustering algorithm to obtain historical travel time profiles. A relev… Show more

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Cited by 26 publications
(15 citation statements)
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References 20 publications
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“…In that study, achieving reasonable prediction required a multi-stage process that starts with identification of similar patterns and similar bus route segments before making any prediction. Similarly, Cristobal et al [29] relied on travel time profile similarity to achieve reasonable short term bus travel time prediction. The study introduced a model that first performs clustering to identify similar patterns before reasonable short term travel time predictions can be made using neural networks and SVM.…”
Section: Methodsmentioning
confidence: 99%
“…In that study, achieving reasonable prediction required a multi-stage process that starts with identification of similar patterns and similar bus route segments before making any prediction. Similarly, Cristobal et al [29] relied on travel time profile similarity to achieve reasonable short term bus travel time prediction. The study introduced a model that first performs clustering to identify similar patterns before reasonable short term travel time predictions can be made using neural networks and SVM.…”
Section: Methodsmentioning
confidence: 99%
“…J.Amita [43] predicted the actual running status of public transport according to the artificial neural network model. According to the historical behavior and current behavior of public transport, T.Cristobal [44] combined with k-medoids clustering algorithm to predict the running state of public transport.…”
Section: Related Workmentioning
confidence: 99%
“…The details and results of this study were presented in [22] where TT behaviour was analysed throughout 2015. We now present the data obtained by the proposed framework that made this study possible.…”
Section: Use Casementioning
confidence: 99%