Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/95113
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Title: Multi-rate data fusion for dynamic displacement measurement of beam-like supertall structures using acceleration and strain sensors
Authors: Zhu, H
Gao, K
Xia, Y 
Gao, F
Weng, S
Sun, Y
Hu, Q
Issue Date: Mar-2020
Source: Structural health monitoring, Mar. 2020, v. 19, no. 2, p. 520-536
Abstract: Accurate measurement of dynamic displacement is important for the structural health monitoring and safety assessment of supertall structures. However, the displacement of a supertall structure is difficult to be accurately measured using the conventional methods because they are either inaccurate or inconvenient to be set up in practice. This study provides an accurate and economical method to measure dynamic displacement of supertall structures accurately by fusing acceleration and strain data, which are generally available in the structural health monitoring system. Dynamic displacement is first derived from the measured longitudinal strains based on geometric deformation without requiring mode shapes. An optimization technique is utilized to optimize the deployment of strain sensors for achieving more accurate strain-derived displacement. The strain-derived displacement is then combined with measured acceleration via a multi-rate Kalman filtering approach. Applications to a numerical supertall structure and a laboratory cantilever beam verify that the proposed method accurately estimates displacement including both high-frequency and pseudo-static components, under different noise cases and sampling rates. A full-scale field test on the 600 m-high Canton Tower is implemented to validate the applicability of the proposed method to real supertall structures. Error analysis demonstrates that the data fusion displacement is more accurate than the global position system-measured displacement in the time and frequency domains.
Keywords: Data fusion
Dynamic displacement
Geometric deformation
Multi-rate Kalman filtering
Structural health monitoring
Supertall structure
Publisher: SAGE Publications
Journal: Structural health monitoring 
ISSN: 1475-9217
EISSN: 1741-3168
DOI: 10.1177/1475921719857043
Rights: This is the accepted version of the publication Zhu, H., Gao, K., Xia, Y., Gao, F., Weng, S., Sun, Y., & Hu, Q. (2020). Multi-rate data fusion for dynamic displacement measurement of beam-like supertall structures using acceleration and strain sensors. Structural Health Monitoring, 19(2), 520–536. Copyright © The Author(s) 2019. DOI: 10.1177/1475921719857043
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