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Online calibration for microscopic traffic simulation and dynamic multi-step prediction of traffic speed

机译:微观交通模拟的在线标定和交通速度的动态多步预测

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Simulating driving behavior in high accuracy allows short-term prediction of traffic parameters, such as speeds and travel times, which are basic components of Advanced Traveler Information Systems (ATIS). Models with static parameters are often unable to respond to varying traffic conditions and simulate effectively the corresponding driving behavior. It has therefore been widely accepted that the model parameters vary in multiple dimensions, including across individual drivers, but also spatially across the network and temporally. While typically on-line, predictive models are macroscopic or mesoscopic, due to computational and data considerations, nowadays microscopic models are becoming increasingly practical for dynamic applications. In this research, we develop a methodology for online calibration of microscopic traffic simulation models for dynamic multi-step prediction of traffic measures, and apply it to car-following models, one of the key models in microscopic traffic simulation models. The methodology is illustrated using real trajectory data available from an experiment conducted in Naples, using a well established car-following model. The performance of the application with the dynamic model parameters consistently outperforms the corresponding static calibrated model in all cases, and leads to less than 10% error in speed prediction even for ten steps into the future, in all considered data-sets. (C) 2016 Elsevier Ltd. All rights reserved.
机译:以高精度模拟驾驶行为可以对交通参数(例如速度和出行时间)进行短期预测,这是高级旅行者信息系统(ATIS)的基本组成部分。具有静态参数的模型通常无法响应变化的交通状况,无法有效模拟相应的驾驶行为。因此,已经广泛接受的是,模型参数在多个维度上有所变化,包括跨各个驱动程序,也跨网络和时间在空间上变化。尽管预测模型通常是联机的,但由于计算和数据考虑,它们是宏观的或介观的,如今,微观模型对于动态应用正变得越来越实用。在这项研究中,我们开发了一种用于微观交通模拟模型在线校准的方法,用于交通措施的动态多步预测,并将其应用于汽车跟随模型(微观交通模拟模型中的关键模型之一)。使用已建立的汽车跟踪模型,从那不勒斯进行的实验中获得的真实轨迹数据说明了该方法。在所有情况下,具有动态模型参数的应用程序的性能在所有情况下都始终胜过相应的静态校准模型,并且即使在未来十步之内,在速度预测中也将导致小于10%的误差。 (C)2016 Elsevier Ltd.保留所有权利。

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