Smart Structures and Systems
Volume 32, Number 2, 2023, pages 123-133
DOI: 10.12989/sss.2023.32.2.123
Thermography-based coating thickness estimation for steel structures using model-agnostic meta-learning
Jun Lee, Soonkyu Hwang, Kiyoung Kim and Hoon Sohn
Abstract
This paper proposes a thermography-based coating thickness estimation method for steel structures using modelagnostic meta-learning. In the proposed method, a halogen lamp generates heat energy on the coating surface of a steel structure, and the resulting heat responses are measured using an infrared (IR) camera. The measured heat responses are then analyzed using model-agnostic meta-learning to estimate the coating thickness, which is visualized throughout the inspection surface of the steel structure. Current coating thickness estimation methods rely on point measurement and their inspection area is limited to a single point, whereas the proposed method can inspect a larger area with higher accuracy. In contrast to previous ANNbased methods, which require a large amount of data for training and validation, the proposed method can estimate the coating thickness using only 10- pixel points for each material. In addition, the proposed model has broader applicability than previous methods, allowing it to be applied to various materials after meta-training. The performance of the proposed method was validated using laboratory-scale and field tests with different coating materials; the results demonstrated that the error of the proposed method was less than 5% when estimating coating thicknesses ranging from 40 to 500 μm.
Key Words
coating thickness evaluation; model-agnostic meta-learning; non-destructive test; steel structure; thermography
Address
"(1) Jun Lee, Kiyoung Kim, Hoon Sohn:
Department of Civil Engineering, Korean Advanced Institute for Science and Technology, 291 Daehak-ro, Yuseong-gu, Daejeon 34141, Republic of Korea;
(2) Soonkyu Hwang:
Yield Enhancement Team, Global Infra Technology, Samsung Electronics, Asan 31489, South Korea."