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考虑货车因素的高速公路短期交通流风险预测 被引量:8

Short-term Traffic Flow Risk Prediction on Freeways Based on Truck Factors
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摘要 基于G15上海段的交通流数据和交通事故数据,研究货车比例较高且货车事故率较高的高速公路短期交通流风险预测模型.分别选取整体交通流参数、货车交通流参数和综合参数作为特征变量,通过支持向量机进行建模,运用遗传算法对模型参数进行寻优,建立不同时间段、不同风险特征变量的分类模型并对比分析.结果表明事故发生前5~10min的模型预测精度最高.当加入货车因素时,总体的预测精度提高7.1%,事故预测精度提高6.1%,误报率降低4.7%.采用平均影响值法进行货车因素对预测结果的影响程度分析,表明货车因素对于预测模型有较大影响.该研究模型可用来开发交通安全预警系统,为高速公路货车安全管理提供理论依据. Based on the traffic data and crash data collected on G15, a study was made of the short-term traffic flow risk prediction model on freeways with high proportion of trucks and high proportion of truck crashes. The overall traffic flow parameters, the truck traffic flow parameters and the comprehensive parameters were selected as the risk characteristic variables. The support vector machine was adopted for the modeling and genetic algorithm was used to optimize the parameters. Classification models of different time periods, different risk characteristic variables were got and compared. The results show that the model using the data within 5 to 10 minutes before the accident performs the best. When considering truck factors, the overall prediction accuracy improves 7.1% , the crash rate prediction accuracyimproves 6. 1% and the false alarm rate is 4. 7% lower. Finally, the different importance of characteristic variables was obtained through mean impact value. The results show that truck factors have larger effects on the prediction model. The model in this research can be used to develop early warning system of traffic security and provide theoretical basis of truck safety management on freeways.
作者 张兰芳 赵焜
出处 《同济大学学报(自然科学版)》 EI CAS CSCD 北大核心 2018年第2期208-214,共7页 Journal of Tongji University:Natural Science
基金 国家自然科学基金(71671126)
关键词 高速公路 交通安全 货车因素 支持向量机 风险预测模型 freeway traffic safety truck factors supportvector machine risk prediction model
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  • 1Vapnik V.Statistical learning theory[M].New York:1995.
  • 2Chapelle O, Vapnik V, Bousquet O, et al.Choosing Multiple Parameters for Support Machines [J]. Machine Learning,2002,46 (3):131- 159.
  • 3Hsu C W. Chang C C, Lin C J. A practical guide to support vector classification [R]. University of National Taiwan, Department of Computer Science and Information Engineering, 2003:1-12.
  • 4YAN X F, CHEN D Z, HU S X. Chaos-genetic algorithms for optimizing the operating conditions based on RBF-PLS Model[J].Computers and Chemical Engineering,2003,27(12):1393-140d.
  • 5ZHENG Chunhong,JIAO Licheng.Automatic parameters selection for SVM based on GA [C].Proc of the 5th World Congress on Intelligent Control and Automation. Piscataway ,N J: IEEE Press,2004:1869-1872.
  • 6Tsair-Fwu Lee, Ming-Yuan Cho, Chin-Shiuh Shieh, Fu-Min Fang. Particle Swarm Optimization-Based SVM Application: Power Transformers Incipient Fault Syndrome Diagnosis[C]. International Conference on Hybrid Information Technology,2006:468-472.
  • 7Huang Ch L, Wang Ch J. A GA-based feature selection and parameters optimization for support vector machines[J].Expert Systems with Applications,2006,31:231-240.
  • 8Shih-Wei Lin, Kuo-Ching Ying, Shih-Chieh Chen, et al. Particle swarm optimization for parameter determination and feature selection of support vector machines[J]. Expert Systems with Applications,2008(35):1817-1824.
  • 9Vapnik V N 张学工.统计学习理论的本质[M].北京:清华大学出版社,2000..
  • 10张文彤.SPSS11统计分析教程[M].北京:北京希望电子出版社,2002.21-24.

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