基于负荷分解的公共建筑电能替代潜力评估

Chen Ximing, Zhang Bo, Gan Yeping, Bai Yunlong, Tang Liang, Liang Xiaowei
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引用次数: 0

摘要

公共建筑能耗巨大,但节能潜力不可估量,应用监测其负荷特性来挖掘节能潜力是很有前景的。非侵入式负荷监测与分解作为大数据环境下智能电网配电端的高级应用,可以通过电源端口信息挖掘用户用电行为,但传统算法主要针对家庭用户,存在电力可追溯性差、培训时间长等问题。为此,本文提出了一种基于深度学习和迁移学习的建筑用户负载分解模型。在此负荷分解技术的基础上,提出了一种基于负荷分解技术的比例模型,用于估算电能替代后公共建筑总用电量增量。首先,我们分析了公共建筑用户的能耗场景,并提出了可用于电能替代的电器。基于公共数据集,建立该类电器的负荷分解模型,构建非全电用户的实际用电量与增量替代电量之间的比例关系。然后,根据比例关系和公共建筑中大多数已知用户的实际用电量,估算出电能替代后的总替代电量增量。最后,用实际的天然气使用量来衡量估计的效果。结果表明,仅从公共建筑中抽取少量用电数据成本较低,所得比例关系能较好地估计电力替代带来的区域用电量增量,在电力替代的实施中具有较好的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Potential assessment of electrical energy substitution in public buildings based on load decomposition
Public buildings have huge energy consumption but incalculable energy saving potential, and the application of monitoring their load characteristics to explore energy saving potential is promising. Non-intrusive load monitoring and decomposition, as an advanced application on the distribution side of smart grids in the big data environment, can mine users' electricity consumption behavior through power port information, but traditional algorithms mainly target home users and have problems such as poor power traceability and long training time. For this reason, the paper proposes a load decomposition model based on deep learning and migration learning for building users. Based on this load decomposition technique, a proportional model based on the load decomposition technique is proposed for estimating the total power consumption increment of public buildings after electrical energy replacement. Firstly, we analyze the energy consumption scenarios of public building users and propose the appliances that can be used for electrical energy replacement. A load decomposition model for such appliances is built based on the public data set to construct the proportional relationship between the actual electricity consumption of non-all-electricity users and the incremental amount of electricity replaced. Then, based on the proportional relationship and the actual electricity consumption of the majority of known users in public buildings, the total replacement electricity increment after electric energy substitution is estimated. Finally, the estimated effect was measured using actual natural gas usage. The results show that it is inexpensive to sample only a small amount of electricity data from public buildings, and the obtained proportional relationship can better estimate the regional electricity consumption increment caused by electricity substitution, which has good application value in the implementation of electricity substitution.
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