Charles E. Via, Jr. Department of Civil and Environmental Engineering, Center for Sustainable Mobility, Virginia Tech Transportation Institute, Virginia Tech, Blacksburg, VA 24061, USA.
Department of Computers Engineering and Systems, Engineering Faculty, Mansoura University, Mansoura, Dakahlia 35516, Egypt.
Sensors (Basel). 2019 Oct 7;19(19):4325. doi: 10.3390/s19194325.
This paper presents a novel model for estimating the number of vehicles along signalized approaches. The proposed estimation algorithm utilizes the adaptive Kalman filter (AKF) to produce reliable traffic vehicle count estimates, considering real-time estimates of the system noise characteristics. The AKF utilizes only real-time probe vehicle data. The AKF is demonstrated to outperform the traditional Kalman filter, reducing the prediction error by up to 29%. In addition, the paper introduces a novel approach that combines the AKF with a neural network (AKFNN) to enhance the vehicle count estimates, where the neural network is employed to estimate the probe vehicles' market penetration rate. Results indicate that the accuracy of vehicle count estimates is significantly improved using the AKFNN approach (by up to 26%) over the AKF. Moreover, the paper investigates the sensitivity of the proposed AKF model to the initial conditions, such as the initial estimate of vehicle counts, initial mean estimate of the state system, and the initial covariance of the state estimate. The results demonstrate that the AKF is sensitive to the initial conditions. More accurate estimates could be achieved if the initial conditions are appropriately selected. In conclusion, the proposed AKF is more accurate than the traditional Kalman filter. Finally, the AKFNN approach is more accurate than the AKF and the traditional Kalman filter since the AKFNN uses more accurate values of the probe vehicle market penetration rate.
本文提出了一种新的模型,用于估计信号交叉口的车辆数。所提出的估计算法利用自适应卡尔曼滤波器(AKF)来产生可靠的交通车辆计数估计值,同时考虑到系统噪声特性的实时估计值。AKF 仅利用实时探测车数据。结果表明,AKF 可将预测误差降低多达 29%,优于传统的卡尔曼滤波器。此外,本文还引入了一种新的方法,即结合 AKF 和神经网络(AKFNN)来增强车辆计数估计值,其中神经网络用于估计探测车的市场渗透率。结果表明,与 AKF 相比,AKFNN 方法(最多提高 26%)可显著提高车辆计数估计的准确性。此外,本文还研究了所提出的 AKF 模型对初始条件(如车辆计数的初始估计值、状态系统的初始均值估计值和状态估计的初始协方差)的敏感性。结果表明,AKF 对初始条件很敏感。如果适当选择初始条件,则可以获得更准确的估计值。总之,与传统的卡尔曼滤波器相比,所提出的 AKF 更准确。最后,由于 AKFNN 使用更准确的探测车市场渗透率值,因此 AKFNN 方法比 AKF 和传统的卡尔曼滤波器更准确。