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Comparison between Partial Least Squares Regression and Support Vector Machine for Freeway Incident Detection

机译:偏最小二乘回归与高速公路事件检测的支持向量机比较

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This paper presents the development of automatic incident detection (AID) models based on the partial least squares regression (PLSR), and compare it with support vector machine classifier which has exhibited good performance for freeway incident detection. The performance of AID algorithms is evaluated using the common criteria of detection rate, false alarm rate, and mean time to detection. Moreover, the curve of receiver operating characteristic (ROC) is also used to compare the detection performance. Simulated traffic data and real data collected at the I-880 Freeway in California were used in these experiments. Traffic flow parameters, such as volume, speed, occupancy and time headway both at upstream and downstream, and derived data generated from basic traffic flow parameters are used to build the PLSR model and SVM models. Several experiments using the original data or derived data have been performed to make comparisons between PLSR and SVM. The problem resulted from imbalance data and its influence on detection performance is also discussed. The test results have demonstrated that the PLSR has great potential to detect incident.
机译:本文介绍了基于部分最小二乘回归(PLSR)的自动事件检测(AID)模型的开发,并将其与支持向量机分类器进行比较,这对高速公路事件检测具有良好的性能。使用常规检测率,误报率和平均检测时间评估辅助算法的性能。此外,接收器操作特性(ROC)的曲线还用于比较检测性能。在这些实验中使用了在加利福尼亚州I-880高速公路上收集的模拟交通数据和真实数据。交通流参数,如上游和下游的音量,速度,占用和时间头,以及从基本流量流量参数生成的派生数据都用于构建PLSR模型和SVM型号。已经执行了使用原始数据或导出数据的几个实验,以便在PLSR和SVM之间进行比较。还讨论了不平衡数据导致的问题及其对检测性能的影响。测试结果表明,PLSR有可能检测到事件的潜力。

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