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Predicting time-varying, speed-varying dilemma zones using machine learning and continuous vehicle tracking

机译:使用机器学习和连续车辆跟踪预测时变,速度变化的困境区

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This paper proposes an innovative framework of predicting driver behavior under varying dilemma zone conditions using artificial intelligence-based machine learning. The framework utilizes multiple machine learning techniques to process vehicle attribute data (e.g., speed, location, and time-of-arrival) collected at the onset of the yellow indication, and eventually predicts drivers' stop-or-go decision based on the data. A linear SVM was used to extract through vehicles from all approaching vehicles detected from radar sensors. A hierarchical clustering method was utilized to classify different traffic patterns by time-of-day. Finally, driver behavior prediction models were developed using three machine learning techniques (i.e., linear SVM, polynomial SVM, and ANN) widely adopted for binary classification problems. Model validation results showed that all the prediction models perform well with high prediction accuracies. The ANN model, which showed the best performance among the three, was selected to represent dilemma zone boundaries. Results show that the dilemma zone start-and end-points would both locate further from the stop bar with higher approaching speeds. Furthermore, the dilemma zone end-point would be more sensitive to the approaching speed than the start-point is. As a result, the dilemma zone length would become longer with higher approaching speeds. Results also showed that the dilemma zone length and location would vary by time-of-day regardless of the speed of approaching vehicles. The analysis showed that the dilemma zone length would be longer and its location would be much further from the stop bar for vehicles arriving during rush hours, as compared to those arriving during non-rush or nighttime hours. This indicates that drivers' decision location to stop or go (when they are faced with a dilemma zone situation) is distributed farther from the intersection stop bar during rush hours. The proposed method shows an effective way of predicting driver behavior on signalized intersections. It is expected for the transportation agencies to use the method to improve intersection signal operations more effectively and safely.
机译:本文采用了使用基于人工智能的机器学习的不同困境区条件下预测驾驶员行为的创新框架。该框架利用多种机器学习技术来处理在黄色指示的开始时收集的车辆属性数据(例如,速度,位置和到达时间),并最终基于数据预测驱动程序的停止或转接决策。线性SVM用于通过从雷达传感器检测到的所有接近车辆的车辆提取。使用分层聚类方法以在一时时间对不同的流量模式进行分类。最后,使用三种机器学习技术(即线性SVM,多项式SVM和ANN)开发了驾驶员行为预测模型,用于二进制分类问题。模型验证结果表明,所有预测模型都具有高预测精度良好。选择了这三个中最佳性能的ANN模型,以表示困境区边界。结果表明,困境区的起始和端点都将从止动杆上进一步定位,具有更高的接近速度。此外,困境区终点对接近速度比开始点更敏感。结果,困境区长度将变长,速度更高。结果还表明,无论接近车辆的速度如何,困境区长度和位置都会随时间而变化。分析表明,与非匆忙或夜间时间在高峰时段期间到达时,困境区长度将更长,其位置将远离止动杆的止动杆。这表明驱动程序的决定位置停止或转移(当它们面临困境区域时)的分布在高峰时段内的交叉口禁止栏中分布。该方法示出了预测信号交叉口上的驾驶员行为的有效方法。预计运输机构将使用该方法更有效和安全地改善交叉信号操作。

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