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Traffic Incident Clearance Time Prediction and Influencing Factor Analysis Using Extreme Gradient Boosting Model

机译:交通事件清除时间预测和极端梯度升压模型的影响因子分析

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Accurate prediction and reliable significant factor analysis of incident clearance time are two main objects of traffic incident management (TIM) system, as it could help to relieve traffic congestion caused by traffic incidents. This study applies the extreme gradient boosting machine algorithm (XGBoost) to predict incident clearance time on freeway and analyze the significant factors of clearance time. The XGBoost integrates the superiority of statistical and machine learning methods, which can flexibly deal with the nonlinear data in high-dimensional space and quantify the relative importance of the explanatory variables. The data collected from the Washington Incident Tracking System in 2011 are used in this research. To investigate the potential philosophy hidden in data, K-means is chosen to cluster the data into two clusters. The XGBoost is built for each cluster. Bayesian optimization is used to optimize the parameters of XGBoost, and the MAPE is considered as the predictive indicator to evaluate the prediction performance. A comparative study confirms that the XGBoost outperforms other models. In addition, response time, AADT (annual average daily traffic), incident type, and lane closure type are identified as the significant explanatory variables for clearance time.
机译:事件清除时间的准确预测和可靠的显着因素分析是交通事故管理(TIM)系统的两个主要对象,因为它可以有助于缓解流量事件造成的交通拥堵。本研究适用于极端梯度升压机算法(XGBoost),以预测高速公路上的事件清除时间,并分析清关时间的重要因素。 XGBoost集成了统计和机器学习方法的优越性,这可以灵活地处理高维空间中的非线性数据,并量化解释变量的相对重要性。 2011年从华盛顿事件跟踪系统收集的数据用于本研究。为了调查隐藏在数据中的潜在理念,选择K-Means将数据集聚到两个集群中。为每个群集构建XGBoost。贝叶斯优化用于优化XGBoost的参数,MAPE被认为是评估预测性能的预测指标。比较研究证实,XGBoost优于其他模型。此外,响应时间,AADT(年平均每日流量),入射型和车道闭合类型被识别为清除时间的显着解释变量。

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