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Dynamic Bus Arrival Time Prediction: A temporal difference learning approach

机译:动态公交车到站时间预测:时间差异学习方法

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Public transport buses suffer travel time uncertainties owing to diverse factors such as dwell times at bus stops, signals, seasonal variations and fluctuating travel demands etc. Traffic in the developing world in particular is afflicted by additional factors like lack of lane discipline, diverse modes of transport and excess vehicles. The bus travel time prediction problem on account of these factors continues to remain a demanding problem especially in developing countries. The current work proposes a method to address bus travel time prediction in real-time. The central idea of our method is to recast the dynamic prediction problem as a value-function prediction problem under a suitably constructed Markov reward process (MRP). Once recast as an MRP, we explore a family of value-function predictors using temporal-difference (TD) learning for bus prediction. Existing approaches build supervised models either by (a)training based on travel time targets only between successive bus-stops while keeping the no. of models linear in the number of bus-stops OR (b)training a single model which predicts between any two bus-stops while ignoring the huge variation in the travel-time targets during training. Our TD-based approach attempts to strike an optimal balance between the above two class of approaches by training with travel-time targets between any two bus-stops while keeping the number of models (approximately) linear in the number of bus-stops. It also keeps a check on the variation in the travel-time targets. Our extensive experimental results vindicate the efficacy of the proposed method. The method exhibits comparable or superior prediction performance on mid-length and long-length routes compared to the state-of-the art.
机译:由于公交车站的停留时间,信号,季节性变化和出行需求波动等多种因素,公共交通公交车的出行时间不确定性。特别是在发展中国家,交通问题还受到缺乏车道纪律,交通方式多样化等其他因素的困扰。运输和多余的车辆。由于这些因素,公共汽车行驶时间预测问题仍然是一个严峻的问题,尤其是在发展中国家。当前的工作提出了一种实时解决公交车行驶时间预测的方法。我们方法的中心思想是在适当构造的马尔可夫奖励过程(MRP)下将动态预测问题重铸为价值函数预测问题。改写为MRP后,我们将使用时差(TD)学习进行公交车预测,探索一系列价值函数预测器。现有方法通过(a)仅基于连续公交站点之间的行驶时间目标进行训练,同时保持否来建立监督模型。公交车站数量呈线性关系的模型;或(b)训练一个可以预测任意两个公交车站之间距离的模型,而忽略了训练过程中行驶时间目标的巨大差异。我们的基于TD的方法试图通过训练任意两个公交车站之间的行驶时间目标,同时使模型数量(大致)与公交车站数量保持线性关系,从而在上述两种方法之间达到最佳平衡。它还会检查行驶时间目标的变化。我们广泛的实验结果证明了该方法的有效性。与现有技术相比,该方法在中长途路线上具有可比或更高的预测性能。

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