4.7 Article

Identification of moving loads based on the information fusion of weigh-in-motion system and multiple camera machine vision

Journal

MEASUREMENT
Volume 144, Issue -, Pages 155-166

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.measurement.2019.05.042

Keywords

Bridge; Moving load identification; Weight-in-motion system; Video monitoring system; Machine vision; Information fusion

Funding

  1. National key R&D Program of China [2017YFF0205605]
  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'

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Accurately identifying moving loads is of significance for the health monitoring of bridges. However, since the existing identification techniques can only realize load identification in one direction or for part of bridges, it is still a challenge to simultaneously identify transverse and longitudinal loads on the full deck of bridge. This paper proposed an information-fusion-based method for the load identification to be applied to bridges of different lengths. In this method, the pavement-based weigh-in-motion system (WIMs) laid out at the beginning of the bridge is used to obtain the weight of vehicles captured by cameras. The videos of traffic flow acquired by multiple cameras arranged along the bridge are employed to calculate the vehicle's trajectory and location. The weight and location data are matched when the vehicle in the video crosses the piezoelectric sensor of WIMs for the same time as the WIMs records a weight information. Further, since the vehicles are equivalent to concentrated loads, values and locations of all moving loads on the whole bridge are identified in real time. The reliability and accuracy of the proposed approach is verified by multi-view 3D simulation video data and the field data from a ramp bridge. (C) 2019 Elsevier Ltd. All rights reserved.

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