Background
Type: Article

A new collection of compressed damage indices for multi-damage detection of cold formed steel shear walls based on neural network ensembles

Journal: Canadian Journal of Civil Engineering (03151468)Year: 11 October 2016Volume: 43Issue: Pages: 1034 - 1043
Zahedi Tajrishi F. Mirza Goltabar Roshan A.Zeynalian Dastjerdi M.a Vaseghi Amiri J.
GreenDOI:10.1139/cjce-2015-0417Language: English

Abstract

This study presents a methodology that utilizes a new combination of two compressed damage indices as input data of an artificial neural network (ANN) ensemble to detect multi-damages in the braces of cold formed steel shear walls. To identify an efficient input data for ANN, first, three main groups of damage indices are considered: modal parameter-based damage indices; frequency response functions (FRFs)-based damage indices and time series-based damage indices. Furthermore, principal component analysis (PCA) technique is applied to reduce the dimensions of FRFs and time series-based input pattern. By a sensitivity study, two suitable damage indices of PCA-compressed time series data and PCA-compressed FRFs are identified and then combined to produce a new efficient input data for a hierarchy of ANN ensembles. The numerical results show that the ANN ensemble-based damage detection approach with the proposed collection of two damage indices is effective and reliable. © 2016, Canadian Science Publishing. All rights reserved.