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引用次数: 1
摘要
一种准确可靠的地铁客流预测方法,为运营商的决策提供了更有价值的参考,特别是在降低能耗和控制潜在风险方面。然而,由于大型赛事(如运动会、音乐会或城市马拉松)的非重复性和不一致性,预测大型赛事下的客流已经成为一项非常具有挑战性的任务。本文提出了一种从网站中提取事件相关信息的方法,并构建了一个多步骤的车站级客流预测模型DeepSPE (Deep Learning for Subway passenger flow Forecasting under Events)。在北京地铁实际数据集上的实验证明了该模型的优越性和网站数据在事件下地铁客流预测中的有效性。
Multi-Step Subway Passenger Flow Prediction under Large Events Using Website Data
: An accurate and reliable forecasting method of the subway passenger flow provides the operators with more valuable reference to make decisions, especially in reducing energy consumption and controlling potential risks. However, due to the non-recurrence and inconsistency of large events (such as sports games, concerts or urban marathons), predicting passenger flow under large events has become a very challenging task. This paper proposes a method for extracting event-related information from websites and constructing a multi-step station-level passenger flow prediction model called DeepSPE (Deep Learning for Subway Passenger Flow Forecasting under Events). Experiments on the actual data set of the Beijing subway prove the superiority of the model and the effectiveness of website data in subway passenger flow forecasting under events.
期刊介绍:
The journal TEHNIČKI VJESNIK - TECHNICAL GAZETTE publishes scientific and professional papers in the area of technical sciences (mostly from mechanical, electrical and civil engineering, and also from their boundary areas).
All articles have undergone peer review and upon acceptance are permanently free of all restrictions on access, for everyone to read and download.
For all articles authors will be asked to pay a publication fee prior to the article appearing in the journal. However, this fee only to be paid after the article has been positively reviewed and accepted for publishing. All details can be seen at http://www.tehnicki-vjesnik.com/web/public/page
First year of publication: 1994
Frequency (annually): 6