Freeway work zone traffic state estimation with fault diagnosis

S. Du, S. Razavi
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Abstract

Freeway work zone can cause disruption to local traffic and have adverse impacts on mobility and safety of road users and those who work in the work zone. To ensure an effective traffic management strategy, it is essential to accurately and instantaneously estimate the traffic states at the work zone area. While many traffic state estimation methods are proposed by previous studies, few of them consider the occurrence of freeway sensor faults, which may result in a large deviation in state estimation and potentially lead to an inappropriate traffic management strategy. To overcome the impacts of sensor faults and provide accurate traffic state estimation, this study presents an approach using sensor fault diagnosis for traffic state estimation at freeway work zone area. Considering the capacity drop, the switching mode model with Kalman filter was used to estimate the traffic states. With the analysis of the density residuals generated by traffic sensors and probes, the fault diagnosis can detect the type of sensor faults and reconfigure the estimation model. The proposed system is implemented and evaluated in traffic simulator SUMO under a realistic freeway work zone environment. The results show that the developed system can accurately identify the type of fault in short time. An accurate traffic state estimation is provided and fairly maintained under fault-free and sensor-fault scenarios respectively.
基于故障诊断的高速公路工作区交通状态估计
高速公路工作区域会对当地交通造成干扰,并对道路使用者和在工作区域工作的人员的移动性和安全性产生不利影响。为了确保有效的交通管理策略,准确、即时地估计工作区域内的交通状态是至关重要的。以往的研究提出了许多交通状态估计方法,但很少考虑高速公路传感器故障的发生,这可能导致状态估计偏差较大,并可能导致交通管理策略的不适当。为了克服传感器故障的影响,提供准确的交通状态估计,本研究提出了一种基于传感器故障诊断的高速公路工作区域交通状态估计方法。考虑到容量下降,采用卡尔曼滤波的交换模式模型对交通状态进行估计。通过分析交通传感器和探针产生的密度残差,故障诊断可以检测传感器故障的类型,并重新配置估计模型。该系统在真实的高速公路工作区域环境下,在交通模拟器SUMO中进行了实现和评估。结果表明,该系统能在短时间内准确识别故障类型。在无故障和传感器故障两种情况下,提供了准确的交通状态估计,并保持了较好的状态估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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