首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >An adaptive framework to enhance microscopic traffic modelling: an online neuro-fuzzy approach
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An adaptive framework to enhance microscopic traffic modelling: an online neuro-fuzzy approach

机译:增强微观交通建模的自适应框架:在线神经模糊方法

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Because of various environmental factors (e.g. road type and traffic congestion) and the involvement of human action (e.g. drowsiness and consciousness level), the time-variant nature of the car-following process necessitates the use of adaptive modelling approaches. In contrast with the existing car-following models with a fixed structure, this paper proposes an adaptive framework based on an online local linear neuro-fuzzy model, supported by a recursive singular spectrum analysis signal-processing technique, to model the time-variant car-following behaviour in a microscopic traffic flow. The online local linear neuro-fuzzy model is initially trained by a set of offline data and then is adapted to the car-following data by means of an adaptive weighted least-squares technique. Furthermore, the recursive singular spectrum analysis technique is employed to decompose the traffic data in an online manner and then to remove useless components (e.g. the measurement noise) to produce well-behaved data. The proposed synergistic approach is applied to real-world car-following data, collected at the Hollywood freeway section of the US 101 Highway. The empirical results demonstrate that the developed approach successfully describes the car-following behaviour while conventional offline models fail in the case of large variations in the traffic data or congestion in the traffic flow.
机译:由于各种环境因素(例如道路类型和交通拥堵)以及人类行为的介入(例如睡意和意识水平),汽车跟踪过程的时变性使得必须使用自适应建模方法。与现有的具有固定结构的汽车跟随模型相反,本文提出了一种基于在线局部线性神经模糊模型的自适应框架,并以递归奇异频谱分析信号处理技术为支持,对时变汽车进行建模。微观交通流中的以下行为。在线局部线性神经模糊模型首先由一组脱机数据训练,然后通过自适应加权最小二乘技术适应汽车跟踪数据。此外,采用递归奇异频谱分析技术以在线方式分解交通数据,然后去除无用的分量(例如测量噪声)以产生行为良好的数据。拟议的协同方法适用于在美国101高速公路好莱坞高速公路部分收集的真实世界的汽车跟踪数据。实证结果表明,所开发的方法成功地描述了跟车行为,而常规的离线模型在交通数据的巨大变化或交通拥堵的情况下失败了。

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