首页> 外文会议>IEEE Information Technology, Networking, Electronic and Automation Control Conference >Short-Term Metro Passenger Flow Prediction Based on Random Forest and LSTM
【24h】

Short-Term Metro Passenger Flow Prediction Based on Random Forest and LSTM

机译:基于随机森林和LSTM的地铁短期客流预测

获取原文

摘要

Rapid and accurate short-term passenger flow prediction plays an important and far-reaching role in passenger flow control and early warning. In fact, the short-term passenger flow presents the characteristics of non-linearity and randomness. Traditional machine learning algorithms can hardly meet current predictions. In this paper, the random forest(RF) is used to calculate the feature importance to filter the extracted features and remove the redundant features, and we apply the Long Short-Term Memory network(LSTM) algorithm model to predict the short-term passenger flow of the metro. First, we calculate the out-of-bag(OOB) error of the features by RF based on the characteristics of bootstrap sampling and regression tree, and calculate OOB error again after adding noise. According to the two OOB errors, the feature importance can be obtained through related formulas, and some features can be filtered. RF can effectively reduce redundant features to participate in calculation and improve operating efficiency. Second, we apply the LSTM model to predict passenger flow every 10 minutes for each station and use the important features selected by RF as the model inputs. LSTM has an excellent effect in dealing with problems that are highly related to time series, and it is very suitable for prediction on time series issues. The proposed model is evaluated with real metro card data, the prediction performance compares to single RF, LSTM, and other algorithm models. The experiment results show that the accuracy of the RF combined LSTM model algorithm is better than that of other existing models such as RF and LSTM model. It shows good prediction accuracy and has far-reaching significance in the field of passenger flow prediction.
机译:快速准确的短期客流预测在客流控制和预警中起着重要而深远的作用。实际上,短期客流具有非线性和随机性的特征。传统的机器学习算法几乎无法满足当前的预测。本文利用随机森林(RF)来计算特征的重要性,以过滤提取的特征并去除冗余特征,并应用长短期记忆网络(LSTM)算法模型来预测短期乘客地铁流量。首先,我们基于自举采样和回归树的特征,通过RF计算特征的袋外误差(OOB),并在添加噪声后再次计算OOB误差。根据这两个OOB误差,可以通过相关公式获得特征重要性,并对某些特征进行过滤。 RF可以有效减少冗余功能以参与计算并提高运行效率。其次,我们应用LSTM模型来预测每个车站每10分钟的乘客流量,并使用RF选择的重要功能作为模型输入。 LSTM在处理与时间序列高度相关的问题方面具有出色的效果,并且非常适合对时间序列问题进行预测。所提出的模型使用实际的地铁卡数据进行评估,其预测性能可与单个RF,LSTM和其他算法模型进行比较。实验结果表明,RF组合LSTM模型算法的精度优于其他现有模型,如RF和LSTM模型。它具有良好的预测精度,在客流预测领域具有深远的意义。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号