Generating building-level heat demand time series by combining occupancy simulations and thermal modeling

IF 5.4 Q2 ENERGY & FUELS
Simon Malacek , José Portela , Yannick Werner , Sonja Wogrin
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Abstract

Despite various efforts, decarbonizing the heating sector remains a significant challenge. To tackle it by smart planning, the availability of highly resolved heating demand data is key. Several existing models provide heating demand only for specific applications. Typically, they either offer time series for a larger area or annual demand data on a building level, but not both simultaneously. Additionally, the diversity in heating demand across different buildings is often not considered. To address these limitations, this paper presents a novel method for generating temporally resolved heat demand time series at the building level using publicly available data. The approach integrates a thermal building model with stochastic occupancy simulations that account for variability in user behavior. As a result, the tool serves as a cost-effective resource for cross-sectoral energy system planning and policy development, particularly with a focus on the heating sector. The obtained data can be used to assess the impact of renovation and retrofitting strategies, or to analyze district heating expansion. To illustrate the potential applications of this approach, we conducted a case study in Puertollano (Spain), where we prepared a dataset of heating demand with hourly resolution for each of 9,298 residential buildings. This data was then used to compare two different pathways for the thermal renovation of these buildings. By relying on publicly available data, this method can be adapted and applied to various European regions, offering broad usability in energy system optimization and analysis of decarbonization strategies.

Abstract Image

结合使用模拟和热建模,生成建筑层热需求时间序列
尽管做出了各种努力,但供暖部门的脱碳仍然是一项重大挑战。要通过智能规划解决这一问题,获得高分辨率的供暖需求数据是关键。现有的几种型号仅为特定应用提供加热需求。通常,它们要么提供更大区域的时间序列,要么提供建筑层面的年度需求数据,但不能同时提供这两种数据。此外,不同建筑之间采暖需求的多样性往往没有被考虑。为了解决这些限制,本文提出了一种利用公开数据在建筑水平上生成时间解决的热需求时间序列的新方法。该方法将热建筑模型与考虑用户行为可变性的随机占用模拟相结合。因此,该工具是跨部门能源系统规划和政策制定的成本效益资源,特别是以供热部门为重点。获得的数据可用于评估改造和改造策略的影响,或分析区域供热扩张。为了说明这种方法的潜在应用,我们在Puertollano(西班牙)进行了一个案例研究,在那里我们准备了9,298座住宅建筑的每小时供暖需求数据集。这些数据随后被用于比较这些建筑热改造的两种不同途径。该方法依赖于公开可用的数据,可适用于欧洲各地区,在能源系统优化和脱碳战略分析方面具有广泛的可用性。
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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来源期刊
Smart Energy
Smart Energy Engineering-Mechanical Engineering
CiteScore
9.20
自引率
0.00%
发文量
29
审稿时长
73 days
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