The ambient temperature is a critical factor affecting the deformation of long-span bridges, due to its seasonal fluctuations. Although there exist various sensor technologies and measurement techniques to extract the actual structural response in terms of the displacement field, this is a demanding task in long-term monitoring. To address this challenge, data prediction looks as the best solution. In this paper, the thermal-induced response of two long-span bridges are forecasted with a regression tree ensemble method in conjunction with a Bayesian hyperparameter optimization, adopted to tune the proposed regressor. Results testify that the offered method is reliable when there is a linear correlation between the temperature and the induced structural deformation, hence in terms of the thermally-induced displacement field.
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Regression Tree Ensemble to Forecast the Thermally-induced Response of Long-Span Bridges
Published:
15 November 2023
by MDPI
in 10th International Electronic Conference on Sensors and Applications
session Sensor Networks, IoT and Structural Health Monitoring
Abstract:
Keywords: Long-span bridges; supervised learning; regression tree ensemble; temperature effects; remote sensing