Dataset for SCF Prediction in CFST T- and K-Joints Using ANN

Published: 16 July 2025| Version 1 | DOI: 10.17632/rp7vm5627z.1
Contributors:
Saurabh Bajracharya, Shozo Nakamura, Takafumi Nishikawa

Description

This dataset comprises numerical investigation data for Concrete-Filled Steel Tube (CFST) T- and K-joints, sourced from studies by Zheng et al. (2018) and Zheng et al. (2019). The dataset includes key geometric and material parameters influencing the Stress Concentration Factor (SCF). Additionally, a sample Python script implementing an Artificial Neural Network (ANN) model is provided to predict the SCF at the Brace Saddle (BS) of a CFST T-joint subjected to compressive loading in the brace. This dataset is useful for researchers conducting numerical and machine learning-based studies on SCF behavior in CFST joints. Keywords Concrete Filled Steel Tubular K joints, Concrete Filled Steel Tubular T joint , Stress Concentration Factor, Finite Element Analysis, Artificial Neural Network, Multiple Regression Analysis

Files

Institutions

Nagasaki Daigaku

Categories

Structural Engineering, Structural Behavior

Licence