Prediction of insulation performance of vacuum glass based on cascade forest model

Xin Fang, Yanggang Hu, Lei Wang
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Abstract

In this paper, a new method is proposed for the intelligent prediction of the thermal insulation performance of vacuum glass, i.e., the use of cascade forest algorithm to detect the heat transfer coefficient (U-value) of vacuum glass. By constructing different intelligent algorithm models, random forest, extreme random forest and cascade forest algorithms are used. By evaluating the proposed method using mean absolute error (MAE), mean square error (MSE) and R-squared value, the cascade forest was evaluated with values of 0.0401, 0.0035 and 0.9896, respectively, and the predicted value curve was very close to the true value curve, so it was concluded that the cascade forest algorithm was superior to the random forest and extreme random forest algorithms in predicting the heat transfer coefficient of vacuum glass. In order to avoid the risk of overfitting, k-fold cross-validation was also added to each random forest in the cascade forest during the training process, and the accuracy of the cross-validated data was improved by 1% as shown by the data. It is known from the experimental results that the algorithm with cascade forest gives a new idea for the work of fast detection of heat transfer characteristics of vacuum glass based on small samples.
基于层叠森林模型的真空玻璃隔热性能预测
本文提出了一种真空玻璃隔热性能智能预测的新方法,即利用级联森林算法检测真空玻璃的传热系数(u值)。通过构建不同的智能算法模型,采用了随机森林、极端随机森林和级联森林算法。通过平均绝对误差(MAE)、均方误差(MSE)和r平方值对所提出的方法进行评价,得到的级联森林评价值分别为0.0401、0.0035和0.9896,预测值曲线与真实值曲线非常接近,表明级联森林算法在预测真空玻璃换热系数方面优于随机森林和极端随机森林算法。为了避免过拟合的风险,在训练过程中还对级联森林中的每个随机森林进行了k倍交叉验证,交叉验证后的数据准确率提高了1%,如数据所示。实验结果表明,该算法为基于小样本的真空玻璃传热特性快速检测工作提供了新的思路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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