LGMar 3, 2022

On generating parametrised structural data using conditional generative adversarial networks

arXiv:2203.01641v12 citationsh-index: 42
Originality Synthesis-oriented
AI Analysis

This work addresses data scarcity in structural health monitoring, enabling more accurate models for engineers, though it is incremental as it applies an existing cGAN method to a new domain-specific context.

The paper tackles the problem of insufficient or missing structural health monitoring data under varying environmental conditions by using a conditional GAN to generate artificial structural data for specific temperature and humidity values, achieving satisfactory accuracy across a continuous range.

A powerful approach, and one of the most common ones in structural health monitoring (SHM), is to use data-driven models to make predictions and inferences about structures and their condition. Such methods almost exclusively rely on the quality of the data. Within the SHM discipline, data do not always suffice to build models with satisfactory accuracy for given tasks. Even worse, data may be completely missing from one's dataset, regarding the behaviour of a structure under different environmental conditions. In the current work, with a view to confronting such issues, the generation of artificial data using a variation of the generative adversarial network (GAN) algorithm, is used. The aforementioned variation is that of the conditional GAN or cGAN. The algorithm is not only used to generate artificial data, but also to learn transformations of manifolds according to some known parameters. Assuming that the structure's response is represented by points in a manifold, part of the space will be formed due to variations in external conditions affecting the structure. This idea proves efficient in SHM, as it is exploited to generate structural data for specific values of environmental coefficients. The scheme is applied here on a simulated structure which operates under different temperature and humidity conditions. The cGAN is trained on data for some discrete values of the temperature within some range, and is able to generate data for every temperature in this range with satisfactory accuracy. The novelty, compared to classic regression in similar problems, is that the cGAN allows unknown environmental parameters to affect the structure and can generate whole manifolds of data for every value of the known parameters, while the unknown ones vary within the generated manifolds.

Foundations

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