Concepedia

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Machine learning paradigm for structural health monitoring

315

Citations

73

References

2020

Year

TLDR

Structural health monitoring aims to diagnose and predict damage, but conventional vibration‑based methods struggle due to limited sensor coverage, uncertainties, and environmental coupling. This work proposes a machine‑learning paradigm for structural health diagnosis and prognosis that integrates diverse monitoring data. The authors employ machine‑learning algorithms to mine heterogeneous sensor data, establishing a framework that models structural performance and conditions.

Abstract

Structural health diagnosis and prognosis is the goal of structural health monitoring. Vibration-based structural health monitoring methodology has been extensively investigated. However, the conventional vibration–based methods find it difficult to detect damages of actual structures because of a high incompleteness in the monitoring information (the number of sensors is much fewer with respect to the number of degrees of freedom of a structure), intense uncertainties in the structural conditions and monitoring systems, and coupled effects of damage and environmental actions on modal parameters. It is a truth that the performance and conditions of a structure must be embedded in the monitoring data (vehicles, wind, etc.; acceleration, displacement, cable force, strain, images, videos, etc.). Therefore, there is a need to develop completely novel structural health diagnosis and prognosis methodology based on the various monitoring data. Machine learning provides the advanced mathematical frameworks and algorithms that can help discover and model the performance and conditions of a structure through deep mining of monitoring data. Thus, machine learning takes an opportunity to establish novel machine learning paradigm for structural health diagnosis and prognosis theory termed the machine learning paradigm for structural health monitoring. This article sheds light on principles for machine learning paradigm for structural health monitoring with some examples and reviews the existing challenges and open questions in this field.

References

YearCitations

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