1. A separate modelling approach for short-term bus passenger flow prediction based on behavioural patterns: A hybrid decision tree method.
- Author
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Li, Peng, Wu, Weitiao, and Pei, Xiangjing
- Subjects
- *
DECISION trees , *BUS occupants , *RECURRENT neural networks , *BUSES , *BUS transportation - Abstract
Accurate short-term passenger flow prediction plays an important role in transit planning and operation. Existing research is mostly based on a joint modelling approach in which transit demand is predicted in an aggregated manner taking the overall passenger flow as input. A critical problem for the joint modelling approach is that the complexity of passenger flow composition and the distinct behavioural response to influential factors are missing out. To address this challenge, this paper proposes a separate modelling approach for passenger flow prediction based on behavioural patterns. To this end, we develop a novel hybrid decision tree (HDT) model coupled with a decision tree model and time series model. The upper layer is a decision tree model, in which the dataset is divided according to passenger types and influential factors, while the lower layer is the time series model achieved by the recurrent neural network. Particularly, this research first undertakes passenger classification using smartcard data through cluster analysis, from which the correlation between the classified passenger flow and influential factors is obtained. The proposed method is tested in a real-life bus route in Guangzhou, China. We also investigate the impact of passenger classification schemes and the minimum amount of data contained by leaf nodes on the performance of the HDT model. Based on this, we recommend the best classification scheme and the optimal value of the minimum amount of data contained by leaf nodes. Comparisons show that our method outperforms other traditional methods in terms of both prediction accuracy and stability. In addition, our method could also provide the prediction of passenger flow composition, which provides more references for customized bus service design. • A novel hybrid decision trees combining the advantages of machine learning model and time series method. • Our method can handle big data by capturing correlations between the external and internal factors. • As opposed to joint modelling, our method is able to predict passenger flow composition. • The prediction outcome is quite outstanding with MAPE of as low as 5%. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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