Eighth International Conference on Electronic Technology and Information Science (ICETIS 2023) 2023
DOI: 10.1117/12.2682417
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Prediction of heat transfer performance of vacuum glass based on extreme gradient boosting algorithm

Abstract: In this paper, a non-stationary detection method based on the artificial intelligence algorithm XGBoost is proposed for the detection of the U-value of the vacuum glass. By analyzing the heat transfer characteristics of vacuum glass and considering the detection efficiency, the features are selected as hot end temperature, ambient temperature, and characteristic temperature change rate. In this paper, the training effect of a model is measured comprehensively by the scores of MAE, MSE, and R2. Three models, KN… Show more

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