In the pile-free bicycle sharing scheme, the parking place and time of the bicycle are arbitrary. The distribution of the pile does not constrain the origin and destination of the journey. The travel demand of the user can be derived from the use of the shared bicycle. The goal of this article is to predict the probability of transition for a shared bicycle user destination based on a deep learning algorithm and a large amount of trajectory data. This study combines eXtreme Gradient Boosting (XGBoost) algorithm, stacked Restricted Boltzmann Machines (RBM), support vector regression (SVR), Differential Evolution (DE) algorithm, and Gray Wolf Optimization (GWO) algorithm. In an experimental case, the destinations of the cycling trips and the ...
Trabajo presentado en: R-Evolucionando el transporte, XIV Congreso de Ingeniería del Transporte (CIT...
We have applied a machine learning approach to both implement and assess new services for the users ...
We have applied a machine learning approach to both implement and assess new services for the users ...
© 2019 Jian Jiang et al. Bike-sharing is a new low-carbon and environment-friendly mode of public tr...
https://doi.org/10.1177/03611981188013542018PDFJournal ArticleTRB18-03033Bicycle travelBicyclesMachi...
In this paper, we will use deep neural networks for predicting the bike sharing usage based on previ...
In this paper, we will use deep neural networks for predicting the bike sharing usage based on previ...
Bike-sharing is a new low-carbon and environment-friendly mode of public transport based on the “sha...
Bike-sharing systems are widely operated in many cities as green transportation means to solve the l...
Advanced models, based on artificial intelligence and machine learning, are used here to analyze a b...
Advanced models, based on artificial intelligence and machine learning, are used here to analyze a b...
This paper proposes an accurate short-term prediction model of bike-sharing demand with the hybrid T...
Bike-Sharing Systems (BSSs) have rapidly grown in popularity worldwide in recent years. The driving ...
Shared transport is an economical and sustainable mode of urban mobility. It occupies very importan...
Bike-sharing systems (BSS) are a means of smart transportation with the benefit of a positive impact...
Trabajo presentado en: R-Evolucionando el transporte, XIV Congreso de Ingeniería del Transporte (CIT...
We have applied a machine learning approach to both implement and assess new services for the users ...
We have applied a machine learning approach to both implement and assess new services for the users ...
© 2019 Jian Jiang et al. Bike-sharing is a new low-carbon and environment-friendly mode of public tr...
https://doi.org/10.1177/03611981188013542018PDFJournal ArticleTRB18-03033Bicycle travelBicyclesMachi...
In this paper, we will use deep neural networks for predicting the bike sharing usage based on previ...
In this paper, we will use deep neural networks for predicting the bike sharing usage based on previ...
Bike-sharing is a new low-carbon and environment-friendly mode of public transport based on the “sha...
Bike-sharing systems are widely operated in many cities as green transportation means to solve the l...
Advanced models, based on artificial intelligence and machine learning, are used here to analyze a b...
Advanced models, based on artificial intelligence and machine learning, are used here to analyze a b...
This paper proposes an accurate short-term prediction model of bike-sharing demand with the hybrid T...
Bike-Sharing Systems (BSSs) have rapidly grown in popularity worldwide in recent years. The driving ...
Shared transport is an economical and sustainable mode of urban mobility. It occupies very importan...
Bike-sharing systems (BSS) are a means of smart transportation with the benefit of a positive impact...
Trabajo presentado en: R-Evolucionando el transporte, XIV Congreso de Ingeniería del Transporte (CIT...
We have applied a machine learning approach to both implement and assess new services for the users ...
We have applied a machine learning approach to both implement and assess new services for the users ...