Abstract
To accurately analyze the fluctuation range of time-varying differences in metro-to-bus transfer passenger flows, the application of a probabilistic interval prediction model is proposed to predict transfer passenger flows. First, bus and metro data are processed and matched by association to construct the basis for public transport trip chain extraction. Second, a reasonable matching threshold method to discriminate the transfer relationship is used to extract the public transport trip chain, and the basic characteristics of the trip based on the trip chain are analyzed to obtain the metro-to-bus transfer passenger flow. Third, to address the problem of low accuracy of point prediction, the Deep AR model is proposed to conduct interval prediction, where the input is the interchange passenger flow, the output is the predicted median and interval of passenger flow, and the prediction scenarios are weekday, non-workday, and weekday morning and evening peaks. Fourth, to reduce the prediction error, a combined particle swarm optimization (PSO)-DeepAR model is constructed using the PSO to optimize the DeepAR model. Finally, data from the Beijing Xizhimen subway station are used for validation, and results show that the PSO-DeepAR model has high prediction accuracy, with a 90% confidence interval coverage of up to 93.6%.
Translated title of the contribution | 基于出行链特征的地铁换乘公交客流概率区间预测 |
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Original language | English |
Pages (from-to) | 408-417 |
Number of pages | 10 |
Journal | Journal of Southeast University (English Edition) |
Volume | 38 |
Issue number | 4 |
DOIs | |
Publication status | Published - Dec 2022 |
Externally published | Yes |
Keywords
- deep learning
- metro-to-bus transfer passenger flow
- probabilistic interval prediction
- trip chain
- urban traffic