基于分解-重组方法的大型单户建筑小时电力需求数据生成

Q1 Engineering Energy and Built Environment Pub Date : 2023-08-01 DOI:10.1016/j.enbenv.2022.02.011
Mengjie Han , Fatemeh Johari , Pei Huang , Xingxing Zhang
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引用次数: 3

摘要

家庭用电需求对当地电网运行、能源储存和建筑物能源性能有重大影响。地区或城市每小时的需求数据有助于利益相关者从细粒度的时间尺度上了解需求模式,并为能源管理提供有力的证据。然而,这类数据的收集、处理和集成通常既昂贵又耗时。基于智能电表数据的决策必须处理整个过程中的隐私和安全挑战。由于保密性问题或系统故障而导致的数据不完整会进一步增加建模和优化的难度。此外,使用历史数据进行预测的方法在很大程度上取决于数据质量、当地建筑环境和动态因素。考虑到这些挑战,本文提出了一种将时间序列数据分解并重组为合成数据的统计方法来生成大型单户建筑的小时电力需求数据。提出的方法使用公共数据来捕捉季节性和残差的分布,这些残差符合统计特征。采用参考建筑为研究建筑提供了经验参数设置和验证。在瑞典的一个城市,仅使用年总需求提出了一个说明性的案例,以部署所提出的方法。结果表明,该方法能较好地模拟现实,与实际数据具有较高的相似度。11个测试月份中,最佳月份的月平均误差为15.9%,最佳月份误差在10%以下。研究区内不合理的合成值不超过0.6%。
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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Generating hourly electricity demand data for large-scale single-family buildings by a decomposition-recombination method

Household electricity demand has substantial impacts on local grid operation, energy storage and the energy performance of buildings. Hourly demand data at district or urban level helps stakeholders understand the demand patterns from a granular time scale and provides robust evidence in energy management. However, such type of data is often expensive and time-consuming to collect, process and integrate. Decisions built upon smart meter data have to deal with challenges of privacy and security in the whole process. Incomplete data due to confidentiality concerns or system failure can further increase the difficulty of modeling and optimization. In addition, methods using historical data to make predictions can largely vary depending on data quality, local building environment, and dynamic factors. Considering these challenges, this paper proposes a statistical method to generate hourly electricity demand data for large-scale single-family buildings by decomposing time series data and recombining them into synthetics. The proposed method used public data to capture seasonality and the distribution of residuals that fulfill statistical characteristics. A reference building was used to provide empirical parameter settings and validations for the studied buildings. An illustrative case in a city of Sweden using only annual total demand was presented for deploying the proposed method. The results showed that the proposed method can mimic reality well and represent a high level of similarity to the real data. The average monthly error for the best month reached 15.9% and the best one was below 10% among 11 tested months. Less than 0.6% improper synthetic values were found in the studied region.

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来源期刊
Energy and Built Environment
Energy and Built Environment Engineering-Building and Construction
CiteScore
15.90
自引率
0.00%
发文量
104
审稿时长
49 days
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