Prediction of heat transfer performance of vacuum glass based on extreme gradient boosting algorithm

Feiyu Jia, Yanggang Hu, Lei Wang
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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, KNN, GBDT, and XGBoost, are used to train the dataset and compare the prediction results. After the comparison, XGBoost has the best prediction effect. Finally, the fitted model is validated by 5*2 nested cross-loop, and the analysis results show that the fitted model has better stability, which greatly enhances the credibility of the model. After a series of experiments, it is known that the small sample of non-stationary method and multiple interference problems can all be solved by XGBoost algorithm with certain stability, which can provide ideas for further industrialized testing.
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基于极值梯度提升算法的真空玻璃传热性能预测
本文提出了一种基于人工智能算法XGBoost的真空玻璃u值的非平稳检测方法。通过分析真空玻璃的传热特性,并考虑检测效率,选择热端温度、环境温度和特征温度变化率为特征。在本文中,模型的训练效果是通过MAE、MSE和R2的得分来综合衡量的。使用KNN、GBDT和XGBoost三种模型来训练数据集并比较预测结果。经过比较,XGBoost的预测效果最好。最后,通过5*2嵌套交叉环对拟合模型进行验证,分析结果表明,拟合模型具有较好的稳定性,大大提高了模型的可信度。经过一系列实验可知,非平稳方法的小样本问题和多重干扰问题都可以用XGBoost算法解决,且具有一定的稳定性,为进一步的工业化测试提供思路。
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