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Bike sharing usage prediction with deep learning: a survey
by
Jiang, Weiwei
in
Artificial Intelligence
/ Artificial neural networks
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Deep learning
/ Format
/ Image Processing and Computer Vision
/ Inventory management
/ Machine learning
/ Neural networks
/ Probability and Statistics in Computer Science
/ Recurrent neural networks
/ Review
2022
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Bike sharing usage prediction with deep learning: a survey
by
Jiang, Weiwei
in
Artificial Intelligence
/ Artificial neural networks
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Deep learning
/ Format
/ Image Processing and Computer Vision
/ Inventory management
/ Machine learning
/ Neural networks
/ Probability and Statistics in Computer Science
/ Recurrent neural networks
/ Review
2022
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Do you wish to request the book?
Bike sharing usage prediction with deep learning: a survey
by
Jiang, Weiwei
in
Artificial Intelligence
/ Artificial neural networks
/ Computational Biology/Bioinformatics
/ Computational Science and Engineering
/ Computer Science
/ Data Mining and Knowledge Discovery
/ Deep learning
/ Format
/ Image Processing and Computer Vision
/ Inventory management
/ Machine learning
/ Neural networks
/ Probability and Statistics in Computer Science
/ Recurrent neural networks
/ Review
2022
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Bike sharing usage prediction with deep learning: a survey
Journal Article
Bike sharing usage prediction with deep learning: a survey
2022
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Overview
As a representative of shared mobility, bike sharing has become a green and convenient way to travel in cities in recent years. Bike usage prediction becomes more important for supporting efficient operation and management in bike share systems as the basis of inventory management and bike rebalancing. The essential of usage prediction in bike sharing systems is to model the spatial interactions of nearby stations, the temporal dependence of demands, and the impacts of environmental and societal factors. Deep learning has shown a great advantage of making a precise prediction for bike sharing usage. Recurrent neural networks capture the temporal dependence with the memory cell and gate mechanisms. Convolutional neural networks and graph neural networks learn spatial interactions of nearby stations with local convolutional operations defined for the grid-format and graph-format inputs respectively. In this survey, the latest studies about bike sharing usage prediction with deep learning are reviewed, with a classification for the prediction problems and models. Different applications based on bike usage prediction are discussed, both within and beyond bike share systems. Some research directions are pointed out to encourage future research. To the best of our knowledge, this paper is the first comprehensive survey that focuses on bike sharing usage prediction with deep learning techniques.
Publisher
Springer London,Springer Nature B.V
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