Forecasting Heating Degree Days for Energy Demand Modeling

Merve Kuru, G. Calis
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引用次数: 2

Abstract

Heating degree day (HDD) is a technical index taking into consideration outdoor temperature and average room temperature to describe the need for the heating energy requirements of buildings. HDD can be used to normalize the energy consumption of buildings with respect to heating since the amount of energy needed to heat a building in a given frequency is directly related to the number of heating degree days in that particular frequency. In order to understand the heating demand of the buildings, it is important to investigate the HDD patterns and to construct forecasting models. This study aims at constructing short-term forecast models by analysing the patterns of the HDD. Within this context, time series analysis was conducted by the monthly HDD data in France between 1974 and 2017. The performance of the models were assessed by the adjusted R value, residual sum of squares, the Akaike Information Criteria (AIC) and the Schwarz Information Criteria (SIC) as well as the analysis of the residuals. As a result, the most suitable model was determined as SARIMA (2,0,1)(1,0,1)12. The results of the study show that there is a potential to integrate time series models of HDD for short term load forecasting. © 2019 The Authors. Published by Budapest University of Technology and Economics & Diamond Congress Ltd. Peer-review under responsibility of the scientific committee of the Creative Construction Conference 2019.
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用于能源需求模型的供热天数预测
采暖度日(HDD)是一个综合考虑室外温度和室内平均温度的技术指标,用来描述建筑对采暖能源需求的需求。硬盘驱动器可以用于规范建筑在供暖方面的能源消耗,因为在给定频率下加热建筑物所需的能源量与该特定频率下的加热度日数直接相关。为了了解建筑的采暖需求,研究HDD模式并建立预测模型是十分重要的。本研究旨在通过分析HDD的模式来构建短期预测模型。在此背景下,对1974年至2017年法国每月HDD数据进行了时间序列分析。通过调整后的R值、残差平方和、Akaike信息准则(AIC)和Schwarz信息准则(SIC)以及残差分析来评价模型的性能。因此,确定最合适的模型为SARIMA(2,0,1)(1,0,1)12。研究结果表明,将HDD的时间序列模型集成到短期负荷预测中是有潜力的。©2019作者。由布达佩斯科技经济大学和钻石大会有限公司出版。由2019创意建设大会科学委员会负责同行评审。
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