METcross:跨城市地铁客流短期预测框架

Wenbo Lu, Jinhua Xu, Peikun Li, Ting Wang, Yong Zhang
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引用次数: 0

摘要

地铁运营管理依赖于对未来客流的准确预测。本研究从整合跨城市(包括源城市和目标城市)知识入手,为地铁开发了一个短期客流预测框架(METcross)。首先,我们从数据融合和迁移学习的角度提出了跨城市地铁客流预测建模的基本框架。其次,METcross 框架旨在使用静态和动态协变量作为输入,包括经济和天气,这些协变量有助于描述车站客流特征。在预训练过程中,源城市的数据会训练特征提取和客流预测模型。目标城市的微调包括使用源城市训练好的模型作为初始参数,并融合两个城市的特征嵌入,从而获得客流预测结果。最后,我们在无锡和重庆的地铁网络上测试了基本预测框架和 METcross 框架,以实验分析其功效。结果表明,METcross 框架的性能优于基本框架,与单城市预测模型相比,其平均绝对误差和均方根误差分别降低了 22.35% 和 26.18%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
METcross: A framework for short-term forecasting of cross-city metro passenger flow
Metro operation management relies on accurate predictions of passenger flow in the future. This study begins by integrating cross-city (including source and target city) knowledge and developing a short-term passenger flow prediction framework (METcross) for the metro. Firstly, we propose a basic framework for modeling cross-city metro passenger flow prediction from the perspectives of data fusion and transfer learning. Secondly, METcross framework is designed to use both static and dynamic covariates as inputs, including economy and weather, that help characterize station passenger flow features. This framework consists of two steps: pre-training on the source city and fine-tuning on the target city. During pre-training, data from the source city trains the feature extraction and passenger flow prediction models. Fine-tuning on the target city involves using the source city's trained model as the initial parameter and fusing the feature embeddings of both cities to obtain the passenger flow prediction results. Finally, we tested the basic prediction framework and METcross framework on the metro networks of Wuxi and Chongqing to experimentally analyze their efficacy. Results indicate that the METcross framework performs better than the basic framework and can reduce the Mean Absolute Error and Root Mean Squared Error by 22.35% and 26.18%, respectively, compared to single-city prediction models.
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