Patch load resistance of longitudinally stiffened webs: Modeling via support vector machines
Abstract
Steel girders are the structural members often used for passing long spans. Mostly being subjected to patch loading,
or concentrated loading, steel girders are likely to face sudden deformation or damage e.g., web breathing. Horizontal or vertical
stiffeners are employed to overcome this phenomenon. This study aims at assessing the feasibility of a machine learning method,
namely the support vector machines (SVM) in predicting the patch loading resistance of longitudinally stiffened webs. A
database consisting of 162 test data is utilized to develop SVM models and the model with best performance is selected for
further inspection. Existing formulations proposed by other researchers are also investigated for comparison. BS5400 and other
existing models (model I, model II and model III) appear to yield underestimated predictions with a large scatter; i.e., mean
experimental-to-predicted ratios of 1.517, 1.092, 1.155 and 1.256, respectively; whereas the selected SVM model has high
prediction accuracy with significantly less scatter. Robust nature and accurate predictions of SVM confirms its feasibility of
potential use in solving complex engineering problems.