On the Detection and Quantification of Nonlinearity via Statistics of the Gradients of a Black-Box Model
G. Tsialiamanis, C.R. Farrar

TL;DR
This paper introduces a neural network-based method to detect and quantify structural nonlinearity by analyzing the distribution of gradients, which can indicate damage or nonlinear behavior in structures.
Contribution
It proposes a novel approach using neural network gradient statistics to identify and measure nonlinearity in structures from experimental data.
Findings
Gradient distribution becomes more spread in nonlinear cases.
Higher standard deviation indicates increased nonlinearity.
Method successfully distinguishes linear from nonlinear structural behavior.
Abstract
Detection and identification of nonlinearity is a task of high importance for structural dynamics. Detecting nonlinearity in a structure, which has been designed to operate in its linear region, might indicate the existence of damage. Therefore, it is important, even for safety reasons, to detect when a structure exhibits nonlinear behaviour. In the current work, a method to detect nonlinearity is proposed, based on the distribution of the gradients of a data-driven model, which is fitted on data acquired from the structure of interest. The data-driven model herein is a neural network. The selection of such a type of model was done in order to not allow the user to decide how linear or nonlinear the model shall be, but to let the training algorithm of the neural network shape the level of nonlinearity according to the training data. The neural network is trained to predict the…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Fault Detection and Control Systems · Control Systems and Identification
MethodsTest
