集成深度学习在建筑能耗预测中的应用

Z. Lee, Yun Lin, Zhong-Yuan Chen, Zhang Yang, Wei-Guo Fang, Chen-Hsin Lee
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引用次数: 2

摘要

建筑消耗能源并产生大量二氧化碳。尽管经济取得了进步,但这种排放上升的趋势仍在继续。对建筑能源消耗的研究有助于确定建筑能源效率和制定节能策略。此外,它还有助于预测未来建筑能耗的趋势。建筑能耗研究已成为实现碳中和的关键问题之一。因此,我们提出了一种集成深度学习方法来预测建筑能耗。该算法采用集成体系结构,提高了深度学习对建筑能耗降低误差预测的有效性。此外,使用负相关学习(NCL),所有样本的学习都得到了改善。来自美国供暖和空调工程师协会(ASHERE)的数据集用于比较几种方法,包括所提出的算法、深度学习、决策树和线性回归。结果表明,该算法增强和减小了均方根误差(RMSE)的预测。在所比较的方法中,该算法的均方根误差最低。所提出的集成深度学习算法优于其他方法。
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Ensemble Deep Learning Applied to Predict Building Energy Consumption
Buildings use energy and produce carbon dioxide considerably. Despite progress in economics, this trend of rising emissions continues. Research on building energy consumption allows for determining building energy efficiency and developing energy-saving strategies. Additionally, it helps to forecast trends in future building energy consumption. The research on building energy consumption has emerged as one of the critical issues for achieving carbon neutrality. Therefore, we propose an ensemble deep learning applied to predict building energy consumption. The proposed algorithm employs ensemble architecture to improve deep learning's effectiveness in predicting error of the reduction in building energy consumption. Furthermore, with negative correlation learning (NCL), learning across all samples is improved. The dataset from the American Society of Heating and Air-Conditioning Engineers (ASHERE) is used to compare several approaches, including the proposed algorithm, deep learning, decision trees, and linear regression. The results demonstrate that the proposed algorithm enhances and lessens the prediction of the root mean squared error (RMSE). Among the approaches compared, the proposed algorithm has the lowest RMSE. The proposed ensemble deep learning algorithm outperforms the other approaches compared.
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