论文标题
转移学习以跨模式需求预测自行车共享和公共交通
Transfer learning for cross-modal demand prediction of bike-share and public transit
论文作者
论文摘要
城市运输系统是多种运输模式的结合,并且存在这些模式之间的相互依赖性。这意味着可以将不同旅行模式的旅行需求相关联,因为一种模式可能会收到对另一种模式的需求或创造需求,更不用说由于整个网络的一般需求流程模式而导致不同需求时间序列之间的自然相关性。可以期望通过移动性作为一项服务,跨模式的连锁反应变得更加普遍。因此,通过跨模式传播需求数据,可以获得更好的需求预测。为此,这项研究探讨了各种机器学习模型,并转移了跨模式需求预测的学习策略。自行车共享,地铁和出租车的旅行数据作为车站级别的乘客流处理,然后在Nanjing和芝加哥的大规模案例研究中测试了拟议的预测方法。结果表明,带有转移学习的预测模型的性能优于单峰预测模型。此外,堆叠的长期短期记忆模型在跨模式需求预测中表现特别出色。这些结果验证了我们合并的方法对现有基准的预测改进,并证明了多个城市中跨模式需求预测的良好可传递性。
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.