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A Lane-based Predictive Model of Downstream Arrival Rates in a Queue Estimation Model Using a Long Short-Term Memory Network

机译:使用长短期记忆网络的队列估计模型中基于下游通道的到达率预测模型

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In this study, we develop a mathematical framework to predict cycle-based queued vehicles at each individual lane using a deep learning method – the long short-term memory (LSTM) network. The key challenges are to decide the existence of residual queued vehicles at the end of each cycle, and to predict the lane-based downstream arrivals to calculate vertical queue lengths at individual lanes using an integrated deep learning method. The primary contribution of the proposed method is to enhance the predictive accuracy of lane-based queue lengths in the future cycles using the historical queuing patterns. A major advantage of implementing an integrated deep learning process compared to the previously Kalman-filter-based queue estimation approach (Lee et al., 2015) is that there is no need to calibrate the co-variance matrix and tune the gain values (parameters) of the estimator. In the simulation results, the proposed method perform better in only straight movements and a shared lane with left turning movements.
机译:在这项研究中,我们开发了一个数学框架,以使用深度学习方法-长短期记忆(LSTM)网络来预测每个单独车道上基于周期的排队车辆。关键的挑战是确定每个循环结束时是否存在剩余排队的车辆,并预测基于车道的下游到达,以使用集成的深度学习方法来计算各个车道的垂直排队长度。所提出的方法的主要贡献是使用历史排队模式来提高未来周期中基于车道的队列长度的预测准确性。与以前的基于Kalman滤波器的队列估计方法相比,实施集成深度学习过程的主要优势(Lee等人,2015)是无需校准协方差矩阵和调整增益值(参数)。在仿真结果中,提出的方法仅在直线运动和左转弯的共享车道上表现更好。

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