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Interactive multiple model ensemble Kalman filter for traffic estimation and incident detection

机译:交互式多模型集合Kalman滤波器进行流量估计和事件检测

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This paper studies the problem of real-time traffic estimation and incident detection by posing it as a hybrid state estimation problem. An interactive multiple model ensemble Kalman filter is proposed to solve the sequential estimation problem, and to accommodate the switching dynamics and nonlinearity of the traffic incident model. The effectiveness of the proposed algorithm is evaluated through numerical experiments using a perturbed traffic model as the true model. The supporting source code is available for download at https://github.com/Lab-Work/IMM_EnKF_Traffic_Estimation_Incident_Detection.
机译:本文通过将其视为混合状态估计问题来研究实时交通估计和事件检测问题。建议一个交互式多模型集合Kalman滤波器来解决顺序估计问题,并适应交通事故模型的切换动态和非线性。通过使用扰动的交通模型作为真实模型的数值实验来评估所提出的算法的有效性。支持源代码可用于在https://github.com/lab-work/imm_enkf_traffic_estimation_incident_detection下载。

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