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Title: Short-term origin-destination demand prediction in urban rail transit systems : a channel-wise attentive split-convolutional neural network method
Authors: Zhang, J
Che, H
Chen, F
Ma, W 
He, Z
Issue Date: Mar-2021
Source: Transportation research. Part C, Emerging technologies, Mar. 2021, v. 124, 102928
Abstract: Short-term origin–destination (OD) flow prediction in urban rail transit (URT) plays a crucial role in smart and real-time URT operation and management. Different from other short-term traffic forecasting methods, the short-term OD flow prediction possesses three unique characteristics: (1) data availability: real-time OD flow is not available during the prediction; (2) data dimensionality: the dimension of the OD flow is much higher than the cardinality of transportation networks; (3) data sparsity: URT OD flow is spatiotemporally sparse. There is a great need to develop novel OD flow forecasting method that explicitly considers the unique characteristics of the URT system. To this end, a channel-wise attentive split–convolutional neural network (CAS-CNN) is proposed. The proposed model consists of many novel components such as the channel-wise attention mechanism and split CNN. In particular, an inflow/outflow-gated mechanism is innovatively introduced to address the data availability issue. We further originally propose a masked loss function to solve the data dimensionality and data sparsity issues. The model interpretability is also discussed in detail. The CAS–CNN model is tested on two large-scale real-world datasets from Beijing Subway, and it outperforms the rest of benchmarking methods. The proposed model contributes to the development of short-term OD flow prediction, and it also lays the foundations of real-time URT operation and management.
Keywords: Channel-wise attention
Deep learning
Short-term origin-destination prediction
Split CNN
Urban rail transit
Publisher: Pergamon Press
Journal: Transportation research. Part C, Emerging technologies 
ISSN: 0968-090X
DOI: 10.1016/j.trc.2020.102928
Rights: © 2020 Elsevier Ltd. All rights reserved.
© 2020. This manuscript version is made available under the CC-BY-NC-ND 4.0 license http://creativecommons.org/licenses/by-nc-nd/4.0/.
The following publication Zhang, J., Che, H., Chen, F., Ma, W., & He, Z. (2021). Short-term origin-destination demand prediction in urban rail transit systems: A channel-wise attentive split-convolutional neural network method. Transportation Research Part C: Emerging Technologies, 124, 102928 is available at https://dx.doi.org/10.1016/j.trc.2020.102928.
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