低频公用事业应用的住宅用电负荷分解

Guanchen Zhang, Gary Wang, H. Farhangi, A. Palizban
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引用次数: 14

摘要

最近的负载分解方法利用了人工智能技术,并且需要低采样频率。从实用的角度来看,由于隐私问题,无法获得用于训练的侵入性数据,并且采样频率可能太低而无法识别有意义的签名。本文提出了一种在不知道特定房屋/公寓中有哪些电器的情况下,对真实和无功能量进行1小时频率分解的算法。该算法特别考虑了效用约束。建立了加拿大BC省典型家电类型数据库。根据卑诗水电一年来的智能电表数据,首先通过可能性最大化和能耗匹配来推断特定房屋/公寓中最可能使用的电器。然后利用基于设备依赖规则的整数多目标遗传算法实现解聚。结果表明,尽管存在较高的不确定性,但超过50%的能源消耗可以被随机分解为房屋/公寓。
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Residential electric load disaggregation for low-frequency utility applications
Recent load disaggregation approaches take advantage of artificial intelligent techniques and require low sampling frequency. From utility perspective, intrusive data for training are not available due to privacy and the sampling frequency may be too low to recognize meaningful signatures. This paper proposes a 1-hour frequency disaggregation algorithm for real and reactive energy without knowing what appliances are in a specific house/apartment. The proposed algorithm is particularly developed concerning utility's constraints. A database of typical types of appliances in BC, Canada is built. Based on BC Hydro's smart meter data over a year, the most probable appliances in a specific house/apartment are firstly inferred through likelihood maximization and energy consumption matching. The disaggregation is then implemented by an integer multi-objective Genetic Algorithm tuned by appliance dependence rules. The results show that despite of high uncertainty, more than 50% of energy consumption could be disaggregated for random houses/apartments.
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