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Short-term passenger flow prediction under passenger flow control using a dynamic radial basis function network

机译:使用动态径向基函数网络的客流控制下的短期客流预测

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Short-term passenger flow prediction and passenger flow control are essential for managing congestion in metros. This paper proposes a new dynamic radial basis function (RBF) neural network to forecast outbound passenger volumes and improve passenger flow control. First, we adopt a train timetable to model passenger flow propagation and identify potential stations that substantially impact the outbound volumes of the target stations. As a result, we incorporate inbound volume, outbound volume, and the train timetable to avoid overfitting. Second, passenger flow control is considered to improve the prediction accuracy by adding passenger flow control coefficients to our model, which then attempts to specify the true influence of these potential stations during crowded times. Finally, we construct a dynamic input radial basis function neural network whose performance is illustrated by the following three scenarios: large passenger flow under passenger flow control during morning peak hours, evening peak hours under passenger flow control, and normal passenger flow without passenger flow control. Compared with the backpropagation neural network, the wavelet support vector machine and the K-nearest neighbor, the proposed method achieves the best prediction performance at a half-hour prediction time lag. The proposed method can also identify crucial stations and time periods 30 min in advance, which contributes when considering proactive passenger flow control to alleviate congestion during peak hours in metro networks. (C) 2019 Elsevier B.V. All rights reserved.
机译:短期客流预测和乘客流量控制对于管理Metros拥塞至关重要。本文提出了一种新的动态径向基函数(RBF)神经网络,以预测出站乘客卷并改善客流控制。首先,我们采用火车时间表来模拟乘客流量传播,并识别基本上影响目标站的出站体积的潜在站。因此,我们包含入站卷,出站卷以及列车时间表,以避免过度装备。其次,考虑乘客流量控制通过向我们的模型添加乘客流量控制系数来提高预测精度,然后尝试在拥挤时指定这些潜在电台的真正影响。最后,我们构建了一种动态输入径向基函数神经网络,其性能由以下三种情况说明:在早晨峰值小时内的客流控制下的大型客流,乘客流量控制下的晚间高峰时段,以及普通客流没有乘客流量控制。与BackPropagation神经网络相比,小波支持向量机和K最近邻居,所提出的方法在半小时预测时间滞后实现了最佳预测性能。所提出的方法还可以预先识别30分钟的关键站和时间段,这有助于考虑主动乘客控制在地铁网络中缓解在高峰时段内的拥堵。 (c)2019年Elsevier B.V.保留所有权利。

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