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Real-Time Freeway Traffic State Estimation and Incident Detection based on Extended Kalman Filter: An Overview

机译:基于扩展卡尔曼滤波器的高速公路实时交通状态估计和事件检测:概述

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摘要

Recent advance in real-time freeway traffic state estimation is reviewed in this paper, with a particular focus on a general approach to traffic state estimation based on joint state and parameter estimation and another focus on the estimation performance in large-scale field applications. A mathematical model is first presented, including a validated macroscopic traffic flow model and a measurement model. The traffic state estimator is designed on the basis of extended Kalman filtering. The estimator's performance in tracking capability and automatic incident detection is then carefully examined via real-data tests or field applications, under various conditions involving large-scale networks, sparse measurements, infrastructure heterogeneity, changes of environmental conditions, traffic incidents, detector faults, and measurement inaccuracy. The paper is closed with discussions and conclusions.
机译:本文回顾了实时高速公路交通状态估计的最新进展,特别着重于基于联合状态和参数估计的交通状态估计的通用方法,并着重于大规模现场应用中的估计性能。首先介绍一个数学模型,包括一个经过验证的宏观交通流模型和一个测量模型。交通状态估计器是在扩展卡尔曼滤波的基础上设计的。然后,在涉及大规模网络,稀疏测量,基础设施异质性,环境条件变化,交通事件,检测器故障和各种情况的各种条件下,通过真实数据测试或现场应用程序仔细检查估计器在跟踪能力和自动事件检测方面的性能。测量误差。本文以讨论和结论作为结尾。

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