Localization of Impacts on Thin-Walled Structures by Recurrent Neural Networks: End-to-end Learning from Real-World Data
Alexander Humer, Lukas Grasboeck, Ayech Benjeddou

TL;DR
This paper presents an end-to-end recurrent neural network approach using real-world experimental data to accurately localize impacts on thin-walled structures, overcoming challenges posed by dispersive Lamb waves and data limitations.
Contribution
It introduces a novel RNN-based method trained on physical impact data for impact localization on shell-like structures, reducing reliance on synthetic data.
Findings
High localization accuracy achieved with real-world data
Effective use of GRUs for long sequence processing
Automation with robotic impact testing enhances data collection
Abstract
Today, machine learning is ubiquitous, and structural health monitoring (SHM) is no exception. Specifically, we address the problem of impact localization on shell-like structures, where knowledge of impact locations aids in assessing structural integrity. Impacts on thin-walled structures excite Lamb waves, which can be measured with piezoelectric sensors. Their dispersive characteristics make it difficult to detect and localize impacts by conventional methods. In the present contribution, we explore the localization of impacts using neural networks. In particular, we propose to use recurrent neural networks (RNNs) to estimate impact positions end-to-end, i.e., directly from sequential sensor data. We deal with comparatively long sequences of thousands of samples, since high sampling rate are needed to accurately capture elastic waves. For this reason, the proposed approach builds upon…
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Taxonomy
TopicsUltrasonics and Acoustic Wave Propagation · Structural Health Monitoring Techniques · Model Reduction and Neural Networks
