Extreme Gradient Boosting Algorithm based Urban Daily Traffic Index Prediction Model: A Case Study of Beijing, China

Jiancheng Weng, Kai Feng, Yu Fu, Jingjing Wang, Lizeng Mao
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Abstract

The exhaust emissions and frequent traffic incidents caused by traffic congestion have affected the operation and high-quality development of urban transport systems. Monitoring and accurately forecasting of urban traffic operation is a critical task to formulate pertinent strategies to alleviate traffic congestion. Compared with the traditional short-time traffic prediction, this study proposed a machine learning algorithm-based traffic forecasting model for the daily-level peak hour traffic operation status prediction by using abundant historical data of urban Traffic performance index (TPI). The paper also constructed a multi-dimensional influencing factor set to further investigate the relationship between different factors on the quality of road network operation, including day of week, time period, public holiday, car usage restriction policy, special events, etc. Based on long-term historical TPI data, this research proposed a daily dimensional road network TPI prediction model by using an extreme gradient boosting algorithm (XGBoost). The model validation results show that the model prediction accuracy can reach higher than 90%. Compared with other prediction models, including Bayesian Ridge, Linear Regression, ElatsicNet, SVR, the XGBoost model has a better performance, and proves its superiority in massive high-dimensional data set. The daily dimensional prediction model proposed in this paper has an important application value for predicting traffic status and improving the operation quality of urban road networks.
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基于极值梯度增强算法的城市日交通指数预测模型——以北京市为例
交通拥堵导致的尾气排放和交通事故频发,影响了城市交通系统的运行和高质量发展。对城市交通运行状况进行监测和准确预测是制定有针对性的缓解交通拥堵策略的关键。与传统的短时交通预测相比,本研究利用丰富的城市交通绩效指数(TPI)历史数据,提出了一种基于机器学习算法的日级高峰时段交通运行状态预测交通预测模型。本文还构建了多维影响因素集,进一步研究了不同因素对路网运行质量的影响关系,包括星期几、时段、公共假日、限车政策、特殊事件等。基于长期历史TPI数据,利用极限梯度提升算法(XGBoost)提出了日维路网TPI预测模型。模型验证结果表明,该模型的预测精度可达到90%以上。与贝叶斯岭(Bayesian Ridge)、线性回归(Linear Regression)、ElatsicNet、SVR等其他预测模型相比,XGBoost模型具有更好的性能,在海量高维数据集上证明了其优越性。本文提出的日维预测模型对于预测交通状况,提高城市道路网络的运行质量具有重要的应用价值。
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