School of Traffic and Transportation Engineering, Central South University, Changsha, Hunan, China.
Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, Shenzhen, Guangdong, China.
PLoS One. 2018 Aug 27;13(8):e0202707. doi: 10.1371/journal.pone.0202707. eCollection 2018.
Passenger flow prediction is important for the operation, management, efficiency, and reliability of urban rail transit (subway) system. Here, we employ the large-scale subway smartcard data of Shenzhen, a major city of China, to predict dynamical passenger flows in the subway network. Four classical predictive models: historical average model, multilayer perceptron neural network model, support vector regression model, and gradient boosted regression trees model, were analyzed. Ordinary and anomalous traffic conditions were identified for each subway station by using the density-based spatial clustering of applications with noise (DBSCAN) algorithm. The prediction accuracy of each predictive model was analyzed under ordinary and anomalous traffic conditions to explore the high-performance condition (ordinary traffic condition or anomalous traffic condition) of different predictive models. In addition, we studied how long in advance that passenger flows can be accurately predicted by each predictive model. Our finding highlights the importance of selecting proper models to improve the accuracy of passenger flow prediction, and that inherent patterns of passenger flows are more prominently influencing the accuracy of prediction.
客流量预测对于城市轨道交通(地铁)系统的运营、管理、效率和可靠性非常重要。在这里,我们利用中国大城市深圳的大规模地铁智能卡数据来预测地铁网络中的动态客流量。分析了四种经典预测模型:历史平均模型、多层感知机神经网络模型、支持向量回归模型和梯度提升回归树模型。使用基于密度的带有噪声的应用空间聚类(DBSCAN)算法识别每个地铁站的普通和异常交通状况。分析了每个预测模型在普通和异常交通条件下的预测精度,以探索不同预测模型的高性能条件(普通交通条件或异常交通条件)。此外,我们研究了每个预测模型可以提前多长时间准确预测客流量。我们的发现强调了选择合适的模型来提高客流量预测精度的重要性,并且客流量的固有模式更显著地影响预测的准确性。