School of Transportation, Southeast University, Nanjing 211189, China.
Jiangsu Key Laboratory of Urban ITS, Nanjing 211189, China.
Sensors (Basel). 2020 Jun 23;20(12):3555. doi: 10.3390/s20123555.
The metro system plays an important role in urban public transit, and the passenger flow forecasting is fundamental to assisting operators establishing an intelligent transport system (ITS). The forecasting results can provide necessary information for travelling decision of travelers and metro operations of managers. In order to investigate the inner characteristics of passenger flow and make a more accurate prediction with less training time, a novel model (i.e., SSA-AWELM), a combination of singular spectrum analysis (SSA) and AdaBoost-weighted extreme learning machine (AWELM), is proposed in this paper. SSA is developed to decompose the original data into three components of trend, periodicity, and residue. AWELM is developed to forecast each component desperately. The three predicted results are summed as the final outcomes. In the experiments, the dataset is collected from the automatic fare collection (AFC) system of Hangzhou metro in China. We extracted three weeks of passenger flow to carry out multistep prediction tests and a comparison analysis. The results indicate that the proposed SSA-AWELM model can reduce both predicted errors and training time. In particular, compared with the prevalent deep-learning model long short-term memory (LSTM) neural network, SSA-AWELM has reduced the testing errors by 22% and saved time by 84%, on average. It demonstrates that SSA-AWELM is a promising approach for passenger flow forecasting.
地铁系统在城市公共交通中起着重要作用,而客流量预测对于协助运营商建立智能交通系统(ITS)至关重要。预测结果可为旅客出行决策和管理人员的地铁运营提供必要的信息。为了研究客流量的内在特征,并以更少的训练时间做出更准确的预测,本文提出了一种新的模型(即 SSA-AWELM),它将奇异谱分析(SSA)和 AdaBoost 加权极限学习机(AWELM)相结合。SSA 用于将原始数据分解为趋势、周期性和残差三个分量。AWELM 用于分别对每个分量进行预测。三个预测结果加起来作为最终结果。在实验中,数据集是从中国杭州地铁的自动售检票(AFC)系统中收集的。我们提取了三周的客流量进行多步预测测试和对比分析。结果表明,所提出的 SSA-AWELM 模型可以降低预测误差和训练时间。与流行的深度学习模型长短期记忆(LSTM)神经网络相比,SSA-AWELM 平均将测试误差降低了 22%,节省了 84%的时间。这表明 SSA-AWELM 是一种很有前途的客流量预测方法。