4.7 Article

Intelligent Simulation Method of Bridge Traffic Flow Load Combining Machine Vision and Weigh-in-Motion Monitoring

期刊

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITS.2022.3140276

关键词

Bridges; Load modeling; Length measurement; Data models; Position measurement; Machine vision; Axles; Traffic flow load; machine vision monitoring system; deep learning; weigh-in-motion system; Intelligent Driver Model

资金

  1. National Nature Science Foundation of China [51878490]
  2. Shanghai Urban Construction Design Research Institute Project Bridge Safe Operation Big Data Acquisition Technology and Structure Monitoring System Research
  3. Ministry of Transport Construction Science and Technology Project Medium-Small Span Bridge Structure Network Level Safety Monitoring and Evaluation
  4. Fundamental Research Funds for the Central Universities Intelligent Diagnosis of Transportation Infrastructure Structures [22120210439]
  5. China Scholarship Council (CSC) [202006260246]

向作者/读者索取更多资源

This paper proposes a TFL monitoring system that integrates the functions of machine vision and weigh-in-motion system. Using deep learning methods, the system accurately detects vehicles and wheels in videos and extracts key parameters for TFL modelling. The proposed method achieves accurate TFL simulation with lower measurement error and higher time measurement resolution compared to existing methods, and has great potential for engineering applications.
Random traffic flow load (TFL) simulation is an important analysis method for bridge design and safety assessment, and accurate TFL modelling is a prerequisite for high-quality simulation. The existing TFL modelling methods almost all rely on the load data monitored by the weigh-in-motion system (WIM system). However, the WIM system has natural defects such as unsatisfactory measurement accuracy at low speed and the inability to measure vehicle lengths and transverse positions in the lane, limiting the improvement of TFL simulation accuracy. Regarding this, a TFL monitoring system that integrates the functions of machine vision and WIM system is developed in this paper. In this system, a deep learning method is applied, for the accurate detection of vehicles and wheels in the video, and the extraction of key parameters for TFL modelling based on detection results. According to the long-term monitoring value, statistical distributions of key parameters are determined, and then an intelligent TFL model is derived from the Intelligent Driver Model (IDM), considering the car-following behavior of vehicles. Correspondingly, this paper further suggests a TFL simulation method and achieves an accurate TFL simulation. A cable-stayed bridge is taken as an example to verify the feasibility of the method. The results show that, compared to the modelling and simulation methods that only rely on the WIM system, the proposed method not only reduces the measurement error of vehicle dimensions by nearly 4 times, but also performs higher resolution in time measurement. The proposed method effectively overcomes the shortcomings of existing schemes and has good application potential in engineering.

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