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Real-Time Freeway Traffic State Estimation Based on Extended Kalman Filter: A Case Study

机译:基于扩展卡尔曼滤波的高速公路实时交通状态估计:一个案例研究

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This paper presents a case study of real-time traffic state estimation. The adopted general approach to the design of universal traffic state estimators for freeway stretches is based on stochastic macroscopic traffic flow modeling and extended Kalman filtering, which are outlined in the paper. The reported investigations were conducted by use of eight-hour traffic measurement data collected from a freeway stretch of 4.1 km close to Munich, Germany. Some key issues are carefully investigated, including the tracking capability of the designed traffic state estimator, significance of the online model parameter estimation, sensitivity of the estimator to the initial values of the estimated model parameters as well as to the related noise standard deviation values, and the capability of the estimator to handle biased flow measurements. The achieved results are quite satisfactory.
机译:本文以实时交通状态估计为例。本文概述了基于随机宏观交通流建模和扩展卡尔曼滤波的高速公路通行通用交通状态估计器设计通用方法。所报告的调查是利用从德国慕尼黑附近4.1公里的一条高速公路沿线收集的八小时交通量测数据进行的。仔细研究了一些关键问题,包括设计的交通状态估算器的跟踪能力,在线模型参数估算的重要性,估算器对估算的模型参数的初始值以及相关噪声标准偏差值的敏感性,以及估算器处理偏流测量的能力。取得的成绩是令人满意的。

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