4.6 Article

Estimating the thermal insulating performance of multi-component refractory ceramic systems based on a machine learning surrogate model framework

期刊

JOURNAL OF APPLIED PHYSICS
卷 127, 期 21, 页码 -

出版社

AMER INST PHYSICS
DOI: 10.1063/5.0004395

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资金

  1. CAPES Coordination of Superior Level Staff Improvement [001]
  2. CNPq-National Council for Scientific and Technological Development [169129/2017-9]
  3. FAPESP - Sao Paulo Research Foundation [2017/16044-8]
  4. F.I.R.E-Federation for International Refractory Research and Education

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Predicting the insulating thermal behavior of a multi-component refractory ceramic system could be a difficult task, which can be tackled using the finite element (FE) method to solve the partial differential equations of the heat transfer problem, thus calculating the temperature profiles throughout the system in any given period. Nevertheless, using FE can still be very time-consuming when analyzing the thermal performance of insulating systems in some scenarios. This paper proposes a framework based on a machine learning surrogate model to significantly reduce the required computation time for estimating the thermal performance of several multi-component insulating systems. Based on an electric resistance furnace case study, the framework estimated the feasibility and the final temperature of nearly 1.9 x 10 5 insulating candidates' arrangements with reasonable accuracy by simulating only an initial sample of 2.8 % of them via FE. The framework accuracy was evaluated by varying the initial sample size from approximate to 0.9 % to 8 % of total combinations, indicating that 3 %- 5 % is the optimal range in the case study. Finally, the proposed framework was compared to the evolutionary screening procedure, a previously proposed method for selecting insulating materials for furnace linings, from which it was concluded that the machine learning framework provides better control over the number of required FE simulations, provides faster optimization of its hyperparameters, and enables the designers to estimate the thermal performance of the entire search space with small errors on temperature prediction.

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