相关参考文献
注意:仅列出部分参考文献,下载原文获取全部文献信息。Approach for fault prognosis using recurrent neural network
Qianhui Wu et al.
JOURNAL OF INTELLIGENT MANUFACTURING (2020)
Bike sharing demand prediction using artificial immune system and artificial neural network
Pei-Chann Chang et al.
SOFT COMPUTING (2019)
Utilization-Aware Trip Advisor in Bike-Sharing Systems Based on User Behavior Analysis
Peng Cheng et al.
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING (2019)
Estimating Urban Shared-Bike Trips with Location-Based Social Networking Data
Fan Yang et al.
SUSTAINABILITY (2019)
Dynamic bicycle scheduling problem based on short-term demand prediction
Haitao Xu et al.
APPLIED INTELLIGENCE (2019)
Recent Advances of Generative Adversarial Networks in Computer Vision
Yang-Jie Cao et al.
IEEE ACCESS (2019)
Bicycle, pedestrian, and mixed-mode trail traffic: A performance assessment of demand models
Alireza Ermagun et al.
LANDSCAPE AND URBAN PLANNING (2018)
The station-free sharing bike demand forecasting with a deep learning approach and large-scale datasets
Chengcheng Xu et al.
TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES (2018)
Predicting station-level hourly demand in a large-scale bike sharing network: A graph convolutional neural network approach
Lei Lin et al.
TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES (2018)
Use of Deep Learning to Predict Daily Usage of Bike Sharing Systems
Hong Yang et al.
TRANSPORTATION RESEARCH RECORD (2018)
Investigation on the effects of weather and calendar events on bike-sharing according to the trip patterns of bike rentals of stations
Kyoungok Kim
JOURNAL OF TRANSPORT GEOGRAPHY (2018)
Effects of built environment and weather on bike sharing demand: a station level analysis of commercial bike sharing in Toronto
Wafic El-Assi et al.
TRANSPORTATION (2017)
Moment-based availability prediction for bike-sharing systems
Cheng Feng et al.
PERFORMANCE EVALUATION (2017)
Trends in extreme learning machines: A review
Gao Huang et al.
NEURAL NETWORKS (2015)
Health assessment and life prediction of cutting tools based on support vector regression
T. Benkedjouh et al.
JOURNAL OF INTELLIGENT MANUFACTURING (2015)