论文标题

新经营的城市铁路运输站的基于元学习的短期乘客流量预测

Meta-learning Based Short-Term Passenger Flow Prediction for Newly-Operated Urban Rail Transit Stations

论文作者

Han, Kuo, Zhang, Jinlei, Zhu, Chunqi, Yang, Lixing, Huang, Xiaoyu, Li, Songsong

论文摘要

城市铁路运输站的准确短期乘客流量预测对于合理分配资源,缓解拥塞并降低运营风险有很大的好处。但是,与数据丰富的电台相比,新运营的电台的乘客流量预测受乘客流量数据量的限制,这将降低预测准确性并增加站点管理和操作的难度。因此,有限的数据是一个紧迫的问题。现有的乘客流预测方法通常取决于足够的数据,这可能不适合新运营的站点。因此,我们提出了一种名为META长短期内存网络(META-LSTM)的元学习方法,以预测新运行的站点中的乘客流量。 META-LSTM是构建一个框架,该框架通过从多个数据丰富的站点学习乘客流量特性,然后通过参数初始化将学习参数应用于数据量表站,从而将长期短期存储网络(LSTM)的概括能力提高到各种乘客流动特性。 Meta-LSTM应用于中国杭州和北京的Nanning的地铁网络。三个现实世界地铁网络上的实验证明了我们提出的元LSTM对几个竞争基线模型的有效性。结果还表明,我们提出的元LSTM具有良好的概括能力,可以为各种乘客流动特征提供良好的概括能力,这可以为乘客流量预测的参考提供有限的数据。

Accurate short-term passenger flow prediction in urban rail transit stations has great benefits for reasonably allocating resources, easing congestion, and reducing operational risks. However, compared with data-rich stations, the passenger flow prediction in newly-operated stations is limited by passenger flow data volume, which would reduce the prediction accuracy and increase the difficulty for station management and operation. Hence, how accurately predicting passenger flow in newly-operated stations with limited data is an urgent problem to be solved. Existing passenger flow prediction approaches generally depend on sufficient data, which might be unsuitable for newly-operated stations. Therefore, we propose a meta-learning method named Meta Long Short-Term Memory Network (Meta-LSTM) to predict the passenger flow in newly-operated stations. The Meta-LSTM is to construct a framework that increases the generalization ability of long short-term memory network (LSTM) to various passenger flow characteristics by learning passenger flow characteristics from multiple data-rich stations and then applying the learned parameter to data-scarce stations by parameter initialization. The Meta-LSTM is applied to the subway network of Nanning, Hangzhou, and Beijing, China. The experiments on three real-world subway networks demonstrate the effectiveness of our proposed Meta-LSTM over several competitive baseline models. Results also show that our proposed Meta-LSTM has a good generalization ability to various passenger flow characteristics, which can provide a reference for passenger flow prediction in the stations with limited data.

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