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Numerical Stability of Conservation Equation for Bus Travel Time Prediction Using Automatic Vehicle Location Data

机译:使用自动车辆位置数据进行总线行程时间预测的节约方程的数值稳定性

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Travel time is a variable that varies over both time and space. Hence, an ideal formulation should be able to capture its evolution over time and space. A mathematical representation capturing such variations was formulated from first principles, using the concept of conservation of vehicles. The availability of position and speed data obtained from GPS enabled buses provide motivation to rewrite the conservation equation in terms of speed alone. As the number of vehicles is discrete, the speed-based equation was discretized using Godunov scheme and used in the prediction scheme that was based on the Kalman filter. With a limited fleet size having an average headway of 30 min, availability of travel time data at small interval that satisfy the requirement of stability of numerical solution possess a big challenge. To address this issue, a continuous speed fill matrix spatially and temporally was developed with the help of historic data and used in this study. The performance of the proposed Advanced Time-Space Discterization (AdTSD) method was evaluated with real field data and compared with existing approaches. Results show that AdTSD approach was able to perform better than historical average approach with an advantage up to 11%and 5% compared to Base Time Space Discretization (BTSD) approach. Also, from the results it was observed that the maximumdeviation in prediction was in the range of 2–3 min when it is predicted 10 km ahead and the error is close to zerowhen it is predicted a section ahead i.e. when the bus is close to a bus stop, indicating that the prediction accuracy achieved is suitable for real field implementation.
机译:旅行时间是在时间和空间内变化的变量。因此,理想的制剂应该能够随着时间和空间捕获其演变。使用车辆守恒的概念来配制捕获这些变化的数学表示。从GPS启用的总线获得的位置和速度数据的可用性提供了在单独速度方面重写保护方程的动力。随着车辆的数量是离散的,使用Godunov方案离散化基于速度的等式,并用于基于卡尔曼滤波器的预测方案。具有有限的舰队尺寸,具有30分钟的平均进展,小间隔的旅行时间数据的可用性,满足数字解决方案稳定性的要求具有重要挑战。为了解决这个问题,在历史数据的帮助下,在空间和时间上发挥连续速度填充矩阵并在本研究中使用。采用实地数据评估所提出的先进时间空间分离(ADTSD)方法的性能,并与现有方法进行比较。结果表明,与基础时间空间离散化(BTSD)方法相比,ADTSD方法能够比历史平均方法表现优于11%和5%的优势。此外,从结果观察到预测的最大程度在预测10公里之前,预测的最大程度在2-3分钟的范围内,并且误差接近Zerowhen,它预测前方的一部分,即总线接近A巴士站,表明所实现的预测精度适用于真实的现场实现。

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