4.1 Article

Dynamic Line Scan Thermography Parameter Design via Gaussian Process Emulation

Journal

ALGORITHMS
Volume 15, Issue 4, Pages -

Publisher

MDPI
DOI: 10.3390/a15040102

Keywords

active thermography; parameter design; emulation; Gaussian process

Funding

  1. Research Foundation-Flanders [1SC0819N]
  2. University of Antwerp [BOF FFB200259, 42339]

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We propose using a Gaussian process to emulate a simulator for determining the valid parameters in a dynamic line scan thermography setup. This method offers higher efficiency and reliability compared to traditional labor- and time-intensive optimization processes and software simulations.
We address the challenge of determining a valid set of parameters for a dynamic line scan thermography setup. Traditionally, this optimization process is labor- and time-intensive work, even for an expert skilled in the art. Nowadays, simulations in software can reduce some of that burden. However, when faced with many parameters to optimize, all of which cover a large range of values, this is still a time-consuming endeavor. A large number of simulations are needed to adequately capture the underlying physical reality. We propose to emulate the simulator by means of a Gaussian process. This statistical model serves as a surrogate for the simulations. To some extent, this can be thought of as a model of the model. Once trained on a relative low amount of data points, this surrogate model can be queried to answer various engineering design questions. Moreover, the underlying model, a Gaussian process, is stochastic in nature. This allows for uncertainty quantification in the outcomes of the queried model, which plays an important role in decision making or risk assessment. We provide several real-world examples that demonstrate the usefulness of this method.

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