Generating Time-Series Data Using Generative Adversarial Networks for Mobility Demand Prediction

被引:4
作者
Chatterjee, Subhajit [1 ]
Byun, Yung-Cheol [2 ]
机构
[1] Jeju Natl Univ, Dept Comp Engn, Jeju Si 63243, South Korea
[2] Jeju Natl Univ, Inst Informat Sci & Technol, Dept Comp Engn, Major Elect Engn, Jeju 63243, South Korea
来源
CMC-COMPUTERS MATERIALS & CONTINUA | 2023年 / 74卷 / 03期
关键词
Machine learning; generative adversarial networks; electric vehicle; time-series; TGAN; WGAN-GP; blend model; demand prediction; regression; RANDOM FOREST;
D O I
10.32604/cmc.2023.032843
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The increasing penetration rate of electric kickboard vehicles has been popularized and promoted primarily because of its clean and efficient features. Electric kickboards are gradually growing in popularity in tourist and education-centric localities. In the upcoming arrival of electric kickboard vehicles, deploying a customer rental service is essential. Due to its free-floating nature, the shared electric kickboard is a common and practical means of transportation. Relocation plans for shared electric kickboards are required to increase the quality of service, and forecasting demand for their use in a specific region is crucial. Predicting demand accurately with small data is troublesome. Extensive data is necessary for training machine learning algorithms for effective prediction. Data generation is a method for expanding the amount of data that will be further accessible for training. In this work, we proposed a model that takes time-series customers' electric kickboard demand data as input, pre-processes it, and generates synthetic data according to the original data distribution using generative adversarial networks (GAN). The electric kickboard mobility demand prediction error was reduced when we combined synthetic data with the original data. We proposed Tabular-GAN-Modified-WGAN-GP for generating synthetic data for better prediction results. We modified The Wasserstein GAN-gradient penalty (GP) with the RMSprop optimizer and then employed Spectral Nor-malization (SN) to improve training stability and faster convergence. Finally, we applied a regression-based blending ensemble technique that can help us to improve performance of demand prediction. We used various evaluation crite-ria and visual representations to compare our proposed model's performance. Synthetic data generated by our suggested GAN model is also evaluated. The TGAN-Modified-WGAN-GP model mitigates the overfitting and mode collapse problem, and it also converges faster than previous GAN models for synthetic data creation. The presented model's performance is compared to existing ensemble and baseline models. The experimental findings imply that combining synthetic and actual data can significantly reduce prediction error rates in the mean absolute percentage error (MAPE) of 4.476 and increase prediction accuracy.
引用
收藏
页码:5507 / 5525
页数:19
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