Prediction of Energy Consumption of an Administrative Building using Machine Learning and Statistical Methods

Q3 Engineering Open Civil Engineering Journal Pub Date : 2023-05-01 DOI:10.28991/cej-2023-09-05-01
Meryem El Alaoui, Laila Ouazzani Chahidi, Mohammed Rougui, Abdeghafour Lamrani, A. Mechaqrane
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引用次数: 1

Abstract

Energy management is now essential in light of the current energy issues, particularly in the building industry, which accounts for a sizable amount of global energy use. Predicting energy consumption is of great interest in developing an effective energy management strategy. This study aims to prove the outperformance of machine learning models over SARIMA models in predicting heating energy usage in an administrative building in Chefchaouen City, Morocco. It also highlights the effectiveness of SARIMA models in predicting energy with limited data size in the training phase. The prediction is carried out using machine learning (artificial neural networks, bagging trees, boosting trees, and support vector machines) and statistical methods (14 SARIMA models). To build the models, external temperature, internal temperature, solar radiation, and the factor of time are selected as model inputs. Building energy simulation is conducted in the TRNSYS environment to generate a database for the training and validation of the models. The models' performances are compared based on three statistical indicators: normalized root mean square error (nRMSE), mean average error (MAE), and correlation coefficient (R). The results show that all studied models have good accuracy, with a correlation coefficient of 0.90 < R < 0.97. The artificial neural network outperforms all other models (R=0.97, nRMSE=12.60%, MAE= 0.19 kWh). Although machine learning methods, in general terms, seemingly outperform statistical methods, it is worth noting that SARIMA models reached good prediction accuracy without requiring too much data in the training phase. Doi: 10.28991/CEJ-2023-09-05-01 Full Text: PDF
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基于机器学习和统计方法的行政大楼能耗预测
鉴于目前的能源问题,特别是在占全球能源使用量相当大的建筑行业,能源管理现在是必不可少的。预测能源消耗对于制定有效的能源管理战略具有重要意义。本研究旨在证明机器学习模型在预测摩洛哥舍夫沙万市一座行政大楼的供暖能源使用方面优于SARIMA模型。它还强调了SARIMA模型在训练阶段有限数据量下预测能量的有效性。预测使用机器学习(人工神经网络、套袋树、提升树和支持向量机)和统计方法(14个SARIMA模型)进行。为了建立模型,选择外部温度、内部温度、太阳辐射和时间因子作为模型输入。在TRNSYS环境中进行建筑能耗仿真,生成用于模型训练和验证的数据库。通过归一化均方根误差(nRMSE)、平均误差(MAE)和相关系数(R)三个统计指标对模型的性能进行比较,结果表明,所研究的模型均具有较好的准确性,相关系数为0.90 < R < 0.97。人工神经网络优于所有其他模型(R=0.97, nRMSE=12.60%, MAE= 0.19 kWh)。虽然总的来说,机器学习方法似乎优于统计方法,但值得注意的是,SARIMA模型在训练阶段不需要太多数据的情况下达到了很好的预测精度。Doi: 10.28991/CEJ-2023-09-05-01全文:PDF
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来源期刊
Open Civil Engineering Journal
Open Civil Engineering Journal Engineering-Civil and Structural Engineering
CiteScore
1.90
自引率
0.00%
发文量
17
期刊介绍: The Open Civil Engineering Journal is an Open Access online journal which publishes research, reviews/mini-reviews, letter articles and guest edited single topic issues in all areas of civil engineering. The Open Civil Engineering Journal, a peer-reviewed journal, is an important and reliable source of current information on developments in civil engineering. The topics covered in the journal include (but not limited to) concrete structures, construction materials, structural mechanics, soil mechanics, foundation engineering, offshore geotechnics, water resources, hydraulics, horology, coastal engineering, river engineering, ocean modeling, fluid-solid-structure interactions, offshore engineering, marine structures, constructional management and other civil engineering relevant areas.
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