Bayesian Network Model for the Prediction of Traffic Incident Duration
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摘要: 交通事件是引发道路交通拥堵的主要因素之一,通过实时交通诱导等手段可以降低其对交通运行造成的影响,而及时准确地预测事件持续时间则是实现有效管控的前提条件.基于 MIT 打分函数,融合自上而下的网络生长规则,引入蚁群算法寻找最优网络结构,即以 S-ACOB 算法为核心搭建最优贝叶斯网络模型.增加了节点随机选择机制及局部结构概率选择模式,降低局部最优结果生成概率,确保贝叶斯网络的健壮性.通过实例验证及对比分析,针对观测节点属性完备和缺失的情况,网络模型预测精度分别为76.97%和93.23%,平均预测精度可达87.82%,证明该模型可以有效地预测交通事件持续时间.Abstract: Traffic incident is one of the main factors that lead to traffic congestions.Through controlling methods such as real-time traffic guidance,its impacts on traffic operation can be reduced.Accurately prediction of traffic conges-tion duration is a prerequisite for effective traffic control.Based on MIT scoring functions,an S-ACOB algorithm as the core of the Bayesian network model is developed.The networks are generated from top to bottom with an ant colony algo-rithm searching for the optimal network structure.To increase the robustness of the proposed Bayesian network,a ran-dom selection mechanism for the nodes and a partial probabilistic selection model for the local structure are introduced. Through an empirical study and comparative analyses,the average precision is up to 87.82%,which is superior to the al-ternatives reported in the previous research.regarding those nods with the complete and incomplete node properties,the accuracy of the network prediction model is up to 76.97% and 93.23%.The results show that this model can effectively predict the duration of traffic congestions.
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