情态动词
需求预测
计算机科学
公共交通
可转让性
需求模式
相互依存
模式(计算机接口)
预测建模
学习迁移
传输(计算)
服务(商务)
需求管理
运输工程
人工智能
机器学习
运筹学
工程类
经济
高分子化学
法学
政治学
宏观经济学
操作系统
化学
经济
罗伊特
并行计算
作者
Mingzhuang Hua,Francisco C. Pereira,Yu Jiang,Xuewu Chen
出处
期刊:Cornell University - arXiv
日期:2022-01-01
被引量:3
标识
DOI:10.48550/arxiv.2203.09279
摘要
The urban transportation system is a combination of multiple transport modes, and the interdependencies across those modes exist. This means that the travel demand across different travel modes could be correlated as one mode may receive demand from or create demand for another mode, not to mention natural correlations between different demand time series due to general demand flow patterns across the network. It is expectable that cross-modal ripple effects become more prevalent, with Mobility as a Service. Therefore, by propagating demand data across modes, a better demand prediction could be obtained. To this end, this study explores various machine learning models and transfer learning strategies for cross-modal demand prediction. The trip data of bike-share, metro, and taxi are processed as the station-level passenger flows, and then the proposed prediction method is tested in the large-scale case studies of Nanjing and Chicago. The results suggest that prediction models with transfer learning perform better than unimodal prediction models. Furthermore, stacked Long Short-Term Memory model performs particularly well in cross-modal demand prediction. These results verify our combined method's forecasting improvement over existing benchmarks and demonstrate the good transferability for cross-modal demand prediction in multiple cities.
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