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HVAC load Disaggregation using Low-resolution Smart Meter Data

机译:使用低分辨率智能电表数据进行HVAC负载分解

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Traditional non-intrusive load monitoring (NILM) methods are effective for load disaggregation using high resolution smart meter data collected by power quality meters. However, smart meter data collected and stored by utilities are normally 15-, 30- or 60-minute in granularity, making most NILM methods ineffective. This paper presents a novel sequential energy disaggregation (SED) algorithm for extracting heating, ventilation, and air conditioning (HVAC) energy consumptions from residential and small commercial building loads using 30 min smart meter data. Large, infrequently-used loads are first detected and removed from the total building energy consumption. Then, base energy consumption curves, defined as the energy consumption without heating and cooling loads, are identified using the mild-day method. After that, the heating and cooling loads are extracted using an average value subtracting method. Simulation results with real data show that the proposed SED method is computationally efficient, simple to implement and robust in performance across different types of buildings.
机译:传统的非侵入式负载监控(NILM)方法可有效利用电能质量表收集的高分辨率智能电表数据进行负载分解。但是,公用事业公司收集和存储的智能电表数据的粒度通常为15分钟,30分钟或60分钟,这使大多数NILM方法无效。本文提出了一种新颖的顺序能量分解(SED)算法,该算法使用30分钟的智能电表数据从住宅和小型商业建筑负荷中提取供暖,通风和空调(HVAC)的能耗。首先检测到不经常使用的大负载,并将其从建筑总能耗中删除。然后,使用温和方法确定基本能耗曲线,该曲线定义为没有加热和冷却负荷的能耗。之后,使用平均值减法提取加热负荷和冷却负荷。真实数据的仿真结果表明,所提出的SED方法具有计算效率高,易于实现且在不同类型建筑物之间性能稳定的优点。

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