Xiaolei Ma
Xiaolei Ma
Verified email at buaa.edu.cn - Homepage
Title
Cited by
Cited by
Year
Long short-term memory neural network for traffic speed prediction using remote microwave sensor data
X Ma, Z Tao, Y Wang, H Yu, Y Wang
Transportation Research Part C: Emerging Technologies 54, 187-197, 2015
11852015
Learning Traffic as Images: A Deep Convolutional Neural Network for Large-Scale Transportation Network Speed Prediction
X Ma, Z Dai, Z He, J Ma, Y Wang, Y Wang
Sensors 17 (4), 818, 2017
7432017
Mining Smart Card Data for Transit Riders' Travel Patterns
X Ma, YJ Wu, Y Wang, F Chen, J Liu
Transportation Research Part C: Emerging Technologies 36, 1-12, 2013
5512013
Large-scale transportation network congestion evolution prediction using deep learning theory
X Ma, H Yu, Y Wang, Y Wang
PloS one 10 (3), e0119044, 2015
4242015
Spatiotemporal Recurrent Convolutional Networks for Traffic Prediction in Transportation Networks
H Yu, Z Wu, S Wang, Y Wang, X Ma
Sensors 17 (7), 1501, 2017
3322017
Understanding commuting patterns using transit smart card data
X Ma, C Liu, H Wen, Y Wang, YJ Wu
Journal of Transport Geography 58, 135-145, 2017
2422017
Profit distribution in collaborative multiple centers vehicle routing problem
Y Wang, X Ma, Z Li, Y Liu, M Xu, Y Wang
Journal of Cleaner Production 144, 203-219, 2017
1372017
Forecasting short-term subway passenger flow under special events scenarios using multiscale radial basis function networks
Y Li, X Wang, S Sun, X Ma, G Lu
Transportation Research Part C: Emerging Technologies 77, 306-328, 2017
1332017
Prioritizing influential factors for freeway incident clearance time prediction using the gradient boosting decision trees method
X Ma, C Ding, S Luan, Y Wang, Y Wang
IEEE Transactions on Intelligent Transportation Systems 18 (9), 2303-2310, 2017
1172017
A fuzzy-based customer clustering approach with hierarchical structure for logistics network optimization
Y Wang, X Ma, Y Lao, Y Wang
Expert Systems with Applications 41 (2), 521-534, 2014
1152014
Predicting Short-Term Subway Ridership and Prioritizing Its Influential Factors Using Gradient Boosting Decision Trees
C Ding, D Wang, X Ma, H Li
Sustainability 8 (11), 1100, 2016
1092016
Transit smart card data mining for passenger origin information extraction
X Ma, Y Wang, F Chen, J Liu
Journal of Zhejiang University-Science C 13 (10), 750-760, 2012
982012
A geographically and temporally weighted regression model to explore the spatiotemporal influence of built environment on transit ridership
X Ma, J Zhang, C Ding, Y Wang
Computers, Environment and Urban Systems 70, 113-124, 2018
872018
Cooperation and profit allocation in two-echelon logistics joint distribution network optimization
Y Wang, X Ma, M Liu, K Gong, Y Liu, M Xu, Y Wang
Applied Soft Computing 56, 143-157, 2017
812017
Processing commercial global positioning system data to develop a web-based truck performance measures program
X Ma, ED McCormack, Y Wang
Transportation Research Record 2246 (1), 92-100, 2011
792011
Two-echelon location-routing optimization with time windows based on customer clustering
Y Wang, K Assogba, Y Liu, X Ma, M Xu, Y Wang
Expert Systems with Applications 104, 244-260, 2018
772018
Development of a data-driven platform for transit performance measures using smart card and GPS data
X Ma, Y Wang
Journal of Transportation Engineering 140 (12), 04014063, 2014
762014
Two-echelon logistics distribution region partitioning problem based on a hybrid particle swarm optimization–genetic algorithm
Y Wang, X Ma, M Xu, Y Liu, Y Wang
Expert Systems with Applications 42 (12), 5019-5031, 2015
692015
Parallel Architecture of Convolutional Bi-Directional LSTM Neural Networks for Network-Wide Metro Ridership Prediction
X Ma, J Zhang, B Du, C Ding, L Sun
IEEE Transactions on Intelligent Transportation Systems 20 (6), 2278-2288, 2018
672018
Headway-based bus bunching prediction using transit smart card data
H Yu, D Chen, Z Wu, X Ma, Y Wang
Transportation Research Part C: Emerging Technologies 72, 45-59, 2016
642016
The system can't perform the operation now. Try again later.
Articles 1–20