4.5 Article

An experimental investigation and machine learning-based prediction for seismic performance of steel tubular column filled with recycled aggregate concrete

Journal

REVIEWS ON ADVANCED MATERIALS SCIENCE
Volume 61, Issue 1, Pages 849-872

Publisher

DE GRUYTER POLAND SP Z O O
DOI: 10.1515/rams-2022-0274

Keywords

low-cycle reciprocating loading test; machine learning; recycled concrete-filled steel tube columns; slenderness ratio; seismic performance prediction

Ask authors/readers for more resources

This research presents the design and application of a low-cycle reciprocating loading test on 23 recycled aggregate concrete-filled steel tube columns and 3 ordinary concrete-filled steel tube columns. The study systematically investigates the influence of various parameters on the seismic performance of the specimens. The results show that all the specimens exhibit good hysteresis performance and a similar development trend of skeleton curve. The slenderness ratio has a more significant impact on the seismic index of the specimens compared to the axial compression ratio and the steel pipe wall thickness. Artificial intelligence is also employed to estimate the influence of parameter variation on the seismic performance of concrete columns, showing acceptable accuracy.
This work presents the design and application of a low-cycle reciprocating loading test on 23 recycled aggregate concrete-filled steel tube columns and 3 ordinary concrete-filled steel tube columns. Additionally, a systematic study on the influence of various parameters (e.g., slenderness ratio, axial compression ratio, etc.) was conducted on the seismic performance of the specimens. The results show that all the specimens have good hysteresis performance and a similar development trend of skeleton curve. The influence of slenderness ratio on the seismic index of the specimens is more significant than that of the axial compression ratio and the steel pipe wall thickness. Furthermore, artificial intelligence was applied to estimate the influence of parameter variation on the seismic performance of concrete columns. Specifically, Random Forest with hyperparameters tuned by Firefly Algorithm was chosen. The high correlation coefficients (R) and low root mean square error values from the prediction results showed acceptable accuracy. In addition, sensitivity analysis was applied to rank the influence of the aforementioned input variables on the seismic performance of the specimens. The research results can provide experimental reference for the application of steel tube recycled concrete in earthquake areas.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.5
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available