Abstract

In the last decade, the interest in machine learning (ML) has grown significantly within the structural health monitoring (SHM) community. Traditional supervised ML approaches for detecting faults assume that the training and test data come from similar distributions. However, real-world applications, where an ML model is trained, for example, on numerical simulation data and tested on experimental data, are deemed to fail in detecting the damage. The deterioration in the prediction performance is mainly related to the fact that the numerical and experimental data are collected under different conditions and they do not share the same underlying features. This paper proposes a domain adaptation approach for ML-based damage detection and localization problems where the classifier has access to the labeled training (source) and unlabeled test (target) data, but the source and target domains are statistically different. The proposed domain adaptation method seeks to form a feature space that is capable of representing both source and target domains by implementing a domain-adversarial neural network. This neural network uses H-divergence criteria to minimize the discrepancy between the source and target domain in a latent feature space. To evaluate the performance, we present two case studies where we design a neural network model for classifying the health condition of a variety of systems. The effectiveness of the domain adaptation is shown by computing the classification accuracy of the unlabeled target data with and without domain adaptation. Furthermore, the performance gain of the domain adaptation over a well-known transfer knowledge approach called Transfer Component Analysis is also demonstrated. Overall, the results demonstrate that the domain adaption is a valid approach for damage detection applications where access to labeled experimental data is limited.

Highlights

  • United States (US) has one of the most sophisticated infrastructures in the world (World Bank, 2019)

  • The case studies examined in this paper show that Domain Adversarial Neural Network (DANN) improves the prediction accuracy of supervised damage detection and localization algorithms

  • joint distribution adaptation (JDA) produces 100% accuracy for source data, and it is donated as N/A

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Summary

Introduction

United States (US) has one of the most sophisticated infrastructures in the world (World Bank, 2019). According to a recent study conducted by the American Society of Civil Engineers (ASCE), the US infrastructure is aging and. The condition of infrastructure for other modern societies is under stress (Zachariadis, 2018). Acting proactively when a critical infrastructure requires care and preventing catastrophic damages call for novel and innovative approaches

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