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Real-time crash prediction on urban expressways: identification of key variables and a hybrid support vector machine model

机译:城市高速公路的实时碰撞预测:关键变量的识别和混合支持向量机模型

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摘要

The traffic safety on expressways is crucial for the efficient operation of the expressway system, and there is a close relationship between traffic states and crashes on expressways, and the occurrence of crashes may be influenced by the interaction of different combinations of traffic states upstream and downstream of the crash location. Based on the crash data and the corresponding traffic flow detector data collected on expressways in Shanghai, this study proposes a hybrid model combining a support vector machine (SVM) model with a k-means clustering algorithm to predict the likelihood of crashes. The random forest (RF) model is employed to select the important and significant variables for model construction from the data of the traffic flow 5-10 min before the crash occurred. Then, the cross-validation and transferability of different models (SVM model without variable selection, SVM model with variable selection, and hybrid SVM model with variable selection) are determined using 577 crashes and 5794 matched non-crash events. The results show that the crash prediction model along with the four most important variables selected using the RF model can obtain a satisfactory prediction performance for crashes. With the combination of the clustering algorithm and SVM model, the accuracy of the crash prediction model can be as high as 78.0%. Moreover, the results of the transferability of the three different models imply that the variable selection and clustering algorithm both have an advantage for crash prediction.
机译:高速公路上的交通安全对于高速公路系统的高效运行至关重要,交通状态与高速公路上的撞车事故之间有着密切的关系,并且撞车事故的发生可能受到上游和下游交通状态的不同组合的相互作用的影响。崩溃位置的位置。基于上海的高速公路事故数据和相应的交通流量检测器数据,本研究提出了一种混合模型,将支持向量机(SVM)模型与k-means聚类算法相结合,以预测事故的可能性。随机森林(RF)模型用于从碰撞发生前5-10分钟的交通流数据中选择重要和重要变量,以进行模型构建。然后,使用577个崩溃事件和5794个匹配的非崩溃事件来确定不同模型(不带变量选择的SVM模型,带变量选择的SVM模型以及带变量选择的混合SVM模型)的交叉验证和可传递性。结果表明,碰撞预测模型以及使用RF模型选择的四个最重要的变量可以获得令人满意的碰撞预测性能。结合聚类算法和SVM模型,碰撞预测模型的准确性可以高达78.0%。此外,三种不同模型的可传递性结果表明,变量选择和聚类算法均具有崩溃预测的优势。

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