An efficiency-enhanced deep learning model for citywide crowd flows prediction

被引:0
作者
Zhongyi Zhai
Peipei Liu
Lingzhong Zhao
Junyan Qian
Bo Cheng
机构
[1] Guilin University of Electronic Technology,Guangxi Key Laboratory of Trusted Software
[2] Beijing University of Posts and Telecommunications,State Key Laboratory of Networking and Switching Technology
来源
International Journal of Machine Learning and Cybernetics | 2021年 / 12卷
关键词
Deep learning; Bernoulli-RBM; Data reconstruction; Bottleneck residual network; Crowd flows prediction;
D O I
暂无
中图分类号
学科分类号
摘要
The crowd flows prediction plays an important role in urban planning management and urban public safety. Accuracy is a challenge for predicting the flow of crowds in a region. On the one hand, crowd flow is influenced by many factors such as holidays and weather. On the other hand, sample data about crowd flows are generally high-dimensional, which not only has a negative impact on the prediction accuracy but also increases computational complexity. In this paper, an efficiency-enhanced model is constructed for predicting citywide crowd flows based on multi-source data using deep learning techniques. Specifically, a data reconstruction mechanism is built with Bernoulli restricted Boltzmann machine (BRBM), for the purpose of reducing the dimension of sample data. A collaborative prediction mechanism is introduced to improve the prediction accuracy of crowd flows, in which a spatio-temporal data oriented prediction model is constructed based on bottleneck residual network that can reduce the effectively computational complexity of model training, and an auxiliary prediction to further optimize the prediction accuracy based on the fully-connected network. The proposed method is evaluated by using two open datasets. The experimental results show that our method can significantly improve the prediction accuracy and reduce the training time of the prediction model, compared with other methods.
引用
收藏
页码:1879 / 1891
页数:12
相关论文
共 35 条
[1]  
Chithaluru P(2020)I-areor: an energy-balanced clustering protocol for implementing green iot in smart cities Sustain Cities Soc 61 102254-17
[2]  
Al-Turjman F(2017)Deep learning for short-term traffic flow prediction Transp Res Part C 79 1-166
[3]  
Kumar M(2018)Predicting citywide crowd flows using deep spatio-temporal residual networks Artif Intell 259 147-1661
[4]  
Stephan T(2016)Deep spatio-temporal residual networks for citywide crowd flows prediction Proc AAI Conf Artif Intell 61 1655-34
[5]  
Polson NG(2019)Deeppf: a deep learning based architecture for metro passenger flow prediction Transp Res Part C 101 18-97
[6]  
Sokolov VO(2019)Hierarchical prediction based on two-level gaussian mixture model clustering for bike-sharing system Knowl-Based Syst 178 84-34
[7]  
Zhang Y(2020)Deep learning architecture for short-term passenger flow forecasting in urban rail transit IEEE TranS Intell Transp Syst 167 105849-456
[8]  
Zheng D(2020)Restricted Boltzmann machine method for dimensionality reduction of large spectroscopic data Spectrochim Acta Part B 1 16-undefined
[9]  
Qi R(2015)Methodologies for cross-domain data fusion: an overview IEEE Trans Big Data 11 494-undefined
[10]  
Li X(2019)Remote sensing image scene classification using cnn-capsnet Remote Sens 37 448-undefined