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Prediction-Based Eco-Approach and Departure at Signalized Intersections With Speed Forecasting on Preceding Vehicles

机译:基于预测的生态方法和信号交叉口发车及先前车辆的速度预测

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摘要

Using connected vehicle technology, a number of eco-approach and departure (EAD) strategies have been designed to guide vehicles through signalized intersections in an ecofriendly way. Most of the existing EAD applications have been developed and tested in traffic-free scenarios or in a fully connected environment, where the presence and behavior of all surrounding vehicles are detectable. In this paper, we describe a prediction-based EAD strategy that can he applied toward more realistic scenarios, where the surrounding vehicles can be either a connected or non-connected. Unlike highway scenarios, predicting speed trajectories along signalized corridors is much more challenging due to disturbances from signals, traffic queues, and pedestrians. Based on vehicle activity data available via inter-vehicle communication or onboard sensing (e.g., by radar), we evaluate three state-of-the-art nonlinear regression models to perform short-term speed forecasting of the preceding vehicle. It turns out radial basis function neural network outperformed both Gaussian process and multi-layer perceptron network in terms of prediction accuracy and computational efficiency. Using signal phase and timing information and the predicted state of the preceding vehicle, our prediction-based EAD algorithm achieved better fuel economy and emissions reduction in urban traffic and queues at intersections. Results from the numerical simulation using the next generation simulation data set show that the proposed prediction-based EAD system achieve 4.0% energy savings and 4.0% - 41.7% pollutant emission reduction compared with a conventional car following strategy. Prediction-based EAD saves 1.9% energy and reduces criteria pollutant emissions by 1.9% - 33.4% compared with an existing EAD algorithm without prediction in urban traffic.
机译:通过使用互联车辆技术,设计了多种生态逼近和驶离(EAD)策略,以环保方式引导车辆通过信号交叉口。大多数现有的EAD应用程序都是在无交通情况或完全连接的环境中开发和测试的,在该环境中可以检测到所有周围车辆的存在和行为。在本文中,我们描述了一种基于预测的EAD策略,该策略可以应用于更现实的场景,其中周围的车辆可以是连接的或不连接的。与高速公路场景不同,由于信号,交通队列和行人的干扰,预测信号走廊的速度轨迹更具挑战性。基于可通过车辆间通信或车载感应(例如通过雷达)获得的车辆活动数据,我们评估了三个最新的非线性回归模型,以对前一辆车辆进行短期速度预测。事实证明,径向基函数神经网络在预测精度和计算效率方面均胜过高斯过程和多层感知器网络。利用信号相位和时间信息以及先前车辆的预测状态,我们基于预测的EAD算法可在城市交通和交叉路口的队列中实现更好的燃油经济性和排放减少。使用下一代模拟数据集进行的数值模拟结果表明,与传统的汽车跟踪策略相比,所提出的基于预测的EAD系统可实现4.0%的能源节省和4.0%-41.7%的污染物排放量减少。与没有城市交通预测的现有EAD算法相比,基于预测的EAD可以节省1.9%的能源并减少1.9%-33.4%的标准污染物排放。

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