Origin and destination forecasting on dockless shared bicycle in a hybrid deep-learning algorithms

Nowadays, the dockless shared bicycle has a positive influence on people’s travel, thus it is useful to analyze the spatio-temporal features of shared bike. Due to the limitations of CNN or LSTM, the spatial correlation and time dependence is inferior to capture. In this paper, a combination of CNN and LSTM named CLTFP in deep learning model is applied to predict the travel distance and OD distribution of shared bicycles under different conditions of time and space. Experiments show that CLTFP has better performance to capture spatiotemporal correlations.

[1]  Bo Zeng,et al.  A multi-pattern deep fusion model for short-term bus passenger flow forecasting , 2017, Appl. Soft Comput..

[2]  Esther Anaya,et al.  Chapter 11 Private Interventions in a Public Service: An Analysis of Public Bicycle Schemes , 2012 .

[3]  Bernardo Nugroho Yahya,et al.  Overall Bike Effectiveness as a Sustainability Metric for Bike Sharing Systems , 2017 .

[4]  Yoshua Bengio,et al.  Extracting and composing robust features with denoising autoencoders , 2008, ICML '08.

[5]  Yunpeng Wang,et al.  Long short-term memory neural network for traffic speed prediction using remote microwave sensor data , 2015 .

[6]  Mu-Chen Chen,et al.  Forecasting the short-term metro passenger flow with empirical mode decomposition and neural networks , 2012 .

[7]  Kevin J. Krizek,et al.  Assessing Options to Enhance Bicycle and Transit Integration , 2011 .

[8]  Xiqun Chen,et al.  Short-Term Forecasting of Passenger Demand under On-Demand Ride Services: A Spatio-Temporal Deep Learning Approach , 2017, ArXiv.

[9]  Yunchao Wei,et al.  Deep Learning with S-Shaped Rectified Linear Activation Units , 2015, AAAI.

[10]  Shing Chung Josh Wong,et al.  Equlibrium of Bilateral Taxi-Customer Searching and Meeting on Networks , 2010 .

[11]  Jiming Chen,et al.  Data-Driven Utilization-Aware Trip Advisor for Bike-Sharing Systems , 2017, 2017 IEEE International Conference on Data Mining (ICDM).

[12]  Hai Yang,et al.  Equilibrium properties of taxi markets with search frictions , 2011 .

[13]  Antonio Sánchez-Braza,et al.  Managing a smart bicycle system when demand outstrips supply: the case of the university community in Seville , 2013 .

[14]  Jing Wang,et al.  A multi-phase QFD-based hybrid fuzzy MCDM approach for performance evaluation: A case of smart bike-sharing programs in Changsha , 2018 .

[15]  Geoffrey E. Hinton,et al.  Reducing the Dimensionality of Data with Neural Networks , 2006, Science.

[16]  Wei Chen,et al.  A deep learning approach on short-term spatiotemporal distribution forecasting of dockless bike-sharing system , 2018, Neural Computing and Applications.

[17]  Wenhao Huang,et al.  Deep Architecture for Traffic Flow Prediction: Deep Belief Networks With Multitask Learning , 2014, IEEE Transactions on Intelligent Transportation Systems.

[18]  Nicholas G. Polson,et al.  Deep Learning Predictors for Traffic Flows , 2016 .

[19]  Elliot K. Fishman,et al.  Bikeshare: A Review of Recent Literature , 2016 .

[20]  Yunpeng Wang,et al.  Large-Scale Transportation Network Congestion Evolution Prediction Using Deep Learning Theory , 2015, PloS one.

[21]  Xiaohu Zhang,et al.  Understanding the usage of dockless bike sharing in Singapore , 2018 .

[22]  Zhenliang Ma,et al.  Predicting short-term bus passenger demand using a pattern hybrid approach , 2014 .

[23]  Robert Cervero,et al.  Bike-and-Ride: Build It and They Will Come , 2013 .

[24]  S. Shaheen Introduction Shared-Use Vehicle Services for Sustainable Transportation: Carsharing, Bikesharing, and Personal Vehicle Sharing across the Globe , 2013 .