Attention Mechanism with Spatial-Temporal Joint Deep Learning Model for the Forecasting of Short-Term Passenger Flow Distribution at the Railway Station

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-03-11 DOI:10.1155/2024/7985408
Zhicheng Dai, Dewei Li, Shiqing Feng
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Abstract

Accurate understanding of passenger flow distribution is crucial for effective station crowd management. However, due to the complexity and randomness of passenger flow and the unclear spatial-temporal correlation between functional areas within the station, predicting the spatiotemporal distribution dynamics of inflow and future short-term distribution trends is challenging. Emerging deep learning models offer valuable insights for accurately predicting passenger flow distribution. Thus, we propose a deep learning architecture, named “ST-Bi-LSTM,” which combines a bidirectional long short-term memory network with a spatial-temporal attention mechanism. Initially, we outline the methodologies of Bi-LSTM, the DeepWalk-based spatial attention mechanism, and the temporal attention mechanism. The spatial attention mechanism is employed to extract station spatial network topology information and enhance the representation of passenger flow characteristics in highly correlated areas during the forecasting process. Simultaneously, the temporal attention Bi-LSTM is utilized for capturing temporal correlations. The architecture comprises four branches dedicated to station real-time video monitoring data, spatial network topology, function area attributes, and train timetables. Subsequently, leveraging in-station CCTV data, passenger travel behavior data, and train timetables, we apply the architecture to the Tianjin West High-Speed Railway Station. We conduct a comparative analysis of the prediction performance and time complexity of the proposed architecture against existing baseline models, demonstrating superior performance and robustness exhibited by the ST-Bi-LSTM model (achieving a reduction in RMSE of over 10%). This study facilitates the transition of station management from passive response to active prediction of station passenger flow dynamics.

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利用时空联合深度学习模型预测火车站短期客流分布的注意力机制
准确了解客流分布对有效管理车站人流至关重要。然而,由于客流的复杂性和随机性,以及车站内各功能区之间的时空相关性不明确,预测客流的时空分布动态和未来短期分布趋势具有挑战性。新兴的深度学习模型为准确预测客流分布提供了宝贵的见解。因此,我们提出了一种名为 "ST-Bi-LSTM "的深度学习架构,它将双向长短期记忆网络与时空注意力机制相结合。首先,我们概述了 Bi-LSTM 的方法、基于 DeepWalk 的空间注意机制和时间注意机制。空间注意机制用于提取车站空间网络拓扑信息,并在预测过程中增强对高度相关区域客流特征的表示。同时,时间注意力 Bi-LSTM 用于捕捉时间相关性。该架构由四个分支组成,分别用于车站实时视频监控数据、空间网络拓扑、功能区属性和列车时刻表。随后,我们利用站内闭路电视数据、乘客出行行为数据和列车时刻表,将该架构应用于天津西高铁站。我们对所提架构与现有基线模型的预测性能和时间复杂性进行了比较分析,结果表明 ST-Bi-LSTM 模型具有卓越的性能和鲁棒性(RMSE 降低了 10%以上)。这项研究有助于车站管理从被动响应向主动预测车站客流动态过渡。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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