Benchmarking performance of machine-learning methods for building energy demand modelling

IF 1.5 4区 工程技术 Q3 ENGINEERING, CIVIL Proceedings of the Institution of Civil Engineers-Engineering Sustainability Pub Date : 2022-08-25 DOI:10.1680/jensu.21.00101
Merve Kuru Erdem, Onur Sariçiçek, G. Calis
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引用次数: 1

Abstract

The relevance, relative importance and co-linearity of input parameters to the results of building energy demand forecasts were investigated. Two calendar years of historical data including weather variables and days of week were used. The study also aimed to assess the performance of multiple-linear-regression, support-vector-machine and artificial-neural-network models for predicting daily heating, ventilation and air-conditioning energy consumption of a commercial building in France. Mean absolute error, root mean square error and coefficient of variation of root-mean squared error were selected as the performance criteria. The results showed that the best performance was achieved via the artificial-neural-network model according to all performance measures. In addition, the other two models were not able to meet the predicting requirements for energy consumption in a building since their coefficient-of-variation-o-root-mean-squared error values were not below 30%. The results also indicated that there was multiple co-linearity between the number of degree days and outdoor temperature. Furthermore, the most significant parameter on daily energy consumption was found to be the number of degree days, followed by global radiation, sunshine rate and the day of the week, respectively.
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建筑能源需求建模的机器学习方法的基准性能
研究了输入参数对建筑能源需求预测结果的相关性、相对重要性和共线性。使用了两个日历年的历史数据,包括天气变量和星期数。该研究还旨在评估多元线性回归、支持向量机和人工神经网络模型的性能,以预测法国一座商业建筑的每日供暖、通风和空调能耗。选择平均绝对误差、均方根误差和均方根误差变异系数作为性能标准。结果表明,在所有性能指标中,人工神经网络模型的性能最好。另外,另外两种模型的变异系数-均方根误差值均不低于30%,不能满足建筑物能耗的预测要求。结果还表明,日数与室外温度存在多重共线性关系。对日能源消耗影响最显著的参数是度日数,其次是总辐射量、日照率和星期数。
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来源期刊
CiteScore
3.70
自引率
16.70%
发文量
44
审稿时长
>12 weeks
期刊介绍: Engineering Sustainability provides a forum for sharing the latest thinking from research and practice, and increasingly is presenting the ''how to'' of engineering a resilient future. The journal features refereed papers and shorter articles relating to the pursuit and implementation of sustainability principles through engineering planning, design and application. The tensions between and integration of social, economic and environmental considerations within such schemes are of particular relevance. Methodologies for assessing sustainability, policy issues, education and corporate responsibility will also be included. The aims will be met primarily by providing papers and briefing notes (including case histories and best practice guidance) of use to decision-makers, practitioners, researchers and students.
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