Passenger Flow Forecast of Rail Station Based on Multi-Source Data and Long Short Term Memory Network

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Abstract

The existing rail station passenger flow prediction models are inefficient, due to that most of them use single-source data to predict. In this paper, a novel method is proposed based on multi-layer LSTM, which integrates multi-source traffic data and multi-techniques (including feature selection based on Spearman correlation and time feature clustering), to improve the performance of predicting passenger flow. The experimental results show that the multi-source data and the techniques integrated in the model are helpful, and the proposed method obtains a higher prediction accuracy which outperforms other methods (e.g. SARIMA, SVR and BP network) greatly.

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Zhang, Z., Wang, C., Gao, Y., Chen, Y., & Chen, J. (2020). Passenger Flow Forecast of Rail Station Based on Multi-Source Data and Long Short Term Memory Network. IEEE Access, 8, 28475–28483. https://doi.org/10.1109/ACCESS.2020.2971771

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