עקוב אחר
Yuxin He
Yuxin He
עוד שמותHe Yuxin, He Y, Y He
Shenzhen Technology University
כתובת אימייל מאומתת בדומיין sztu.edu.cn
כותרת
צוטט על ידי
צוטט על ידי
שנה
Multi-graph convolutional-recurrent neural network (MGC-RNN) for short-term forecasting of transit passenger flow
Y He, L Li, X Zhu, KL Tsui
IEEE Transactions on Intelligent Transportation Systems 23 (10), 18155-18174, 2022
402022
Time-dependent pricing for high-speed railway in China based on revenue management
J Qin, Y Zeng, X Yang, Y He, X Wu, W Qu
Sustainability 11 (16), 4272, 2019
292019
An adapted geographically weighted LASSO (Ada-GWL) model for predicting subway ridership
Y He, Y Zhao, KL Tsui
Transportation 48 (3), 1185-1216, 2021
272021
Quantitative efficiency evaluation method for transportation networks
J Qin, Y He, L Ni
Sustainability 6 (12), 8364-8378, 2014
232014
Characterizing the connectivity of railway networks
Z Xu, Q Zhang, D Chen, Y He
IEEE Transactions on Intelligent Transportation Systems 21 (4), 1491-1502, 2019
212019
Geographically modeling and understanding factors influencing transit ridership: an empirical study of Shenzhen metro
Y He, Y Zhao, KL Tsui
Applied Sciences 9 (20), 4217, 2019
202019
Short-term forecasting of origin-destination matrix in transit system via a deep learning approach
Y He, Y Zhao, KL Tsui
Transportmetrica A: Transport Science 19 (2), 2033348, 2023
162023
Modeling and analyzing modeling and analyzing impact factors of metro station ridership: An approach based on a general estimating equation factors influencing metro station …
Y He, Y Zhao, KL Tsui
IEEE Intelligent Transportation Systems Magazine 12 (4), 195-207, 2020
112020
An analysis of factors influencing metro station ridership: Insights from Taipei metro
Y He, Y Zhao, KL Tsui
2018 21st International Conference on Intelligent Transportation Systems …, 2018
112018
A clustering refinement approach for revealing urban spatial structure from smart card data
L Tang, Y Zhao, KL Tsui, Y He, L Pan
Applied Sciences 10 (16), 5606, 2020
102020
Exploring influencing factors on transit ridership from a local perspective
Y He, Y Zhao, KL Tsui
Smart and Resilient Transportation 1 (1), 2-16, 2019
102019
Comparative analysis of quantitative efficiency evaluation methods for transportation networks
Y He, J Qin, J Hong
Plos one 12 (4), e0175526, 2017
102017
GC-LSTM: A deep spatiotemporal model for passenger flow forecasting of high-speed rail network
Y He, Y Zhao, H Wang, KL Tsui
2020 IEEE 23rd International Conference on Intelligent Transportation …, 2020
92020
Network-level optimization method for road network maintenance programming based on network efficiency
L Zhang, J Qin, Y He, Y Ye, L Ni
Journal of Central South University 22 (12), 4882-4889, 2015
92015
Dynamic evolution analysis of metro network connectivity and bottleneck identification: From the perspective of individual cognition
Y He, Z Xu, Y Zhao, KL Tsui
IEEE Access 7, 2042-2052, 2018
82018
Forecasting nationwide passenger flows at city-level via a spatiotemporal deep learning approach
Y He, Y Zhao, Q Luo, KL Tsui
Physica A: Statistical Mechanics and its Applications 589, 126603, 2022
72022
Short-term nationwide airport throughput prediction with graph attention recurrent neural network
X Zhu, Y Lin, Y He, KL Tsui, PW Chan, L Li
Frontiers in Artificial Intelligence 5, 884485, 2022
42022
Nowcasting influenza‐like illness (ILI) via a deep learning approach using google search data: An empirical study on Taiwan ILI
Y He, Y Zhao, Y Chen, HY Yuan, KL Tsui
International Journal of Intelligent Systems 37 (3), 2648-2674, 2022
32022
Modeling and analyzing spatiotemporal factors influencing metro station ridership in Taipei: An approach based on general estimating equation
Y He, Y Zhao, KL Tsui
arXiv preprint arXiv:1904.01280, 1-8, 2019
22019
Spatiotemporal Path Inference Model for Urban Rail Transit Passengers based on Travel Time Data
ZZ Qin Luo, Bin Lin, Yitong Lyu, Yuxin He, Xiaochun Zhang
IET Intelligent Transport Systems, 1-20, 2023
1*2023
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מאמרים 1–20