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Dynamic Identification of an Elevated Water Tank Through Digital Video Processing

XIX ANIDIS CONFERENCE, SEISMIC ENGINEERING IN ITALY(2023)

Univ Oxford

Cited 3|Views3
Abstract
Ageing structures and infrastructures need to be monitored to assess their structural health conditions and prioritize interventions to possibly extend their service life. To do this, accelerometers and velocimeters are routinely adopted and are part of a consolidated state-of-the-art procedure. Nonetheless, some difficulties may arise in field applications, related to energy supply, cost, and accessibility of the devices. Moreover, the position of the sensors needs to be decided a priori, with some degree of engineering judgment. Alternative techniques based on computer vision have emerged in the last decade and are becoming more and more popular as they allow to overcome most of the limitations reported above. The main advantages of these approaches rely on the possibility of high-density measurements and a relatively simple acquisition process, for which neither an expensive equipment nor advanced technical skills are mandatorily required. In this paper, a computer vision-based technique is presented, which combines motion magnification and statistical algorithms. It was applied to extract the natural frequencies of a reinforced concrete elevated water tank, vibrating under environmental noise excitation. To this aim, several videos were recorded with a commercial reflex camera and post-processed selecting a representative area, by tracking in time either the variation of the intensity or the motion of a selected number of pixels. Computer vision-based outcomes were validated against the results provided by accelerometers to discuss advantages and limitations of the proposed dynamic identification approach and identify future research challenges in this field.
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Key words
Structural health monitoring,computer-vision-based,motion magnification,natural frequency
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