Nilavra Pathak, David Lachut, Nirmalya Roy, Nilanjan Banerjee, R. Robucci
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引用次数: 7
摘要
在住宅和商业建筑中,空气泄漏都是一个大问题。它们增加了公用事业费用,并导致过度使用暖通空调(HVAC)系统,这影响了环境,给居民带来了不适。修复建筑物的漏风是一项昂贵而耗时的任务。即使是检测泄漏也需要广泛的专业测试。在本文中,我们提出了一种方法来识别一组泄漏房屋,前提是他们的能源消耗数据可以从住宅智能电表中获取。在第一阶段,我们采用非侵入式负载监测(NILM)技术从几个家庭的总功耗中分解HVAC数据。我们提出了一种循环神经网络和基于去噪自编码器的方法来识别暖通空调的“开”和“关”周期及其总体使用情况。我们使用Dataport数据集中的每小时换气量50 Pa (ACH50)指标,对大约200个家庭的典型暖通空调消耗和任何可能的绝缘和泄漏问题进行分类。我们对不同粒度的智能电表数据(如1分钟、15分钟和1小时)进行了我们提出的NILM分析,以观察其对泄漏房屋分类的影响。我们的研究结果表明,分解可以用来识别住宅空调,在1分钟的粒度,这反过来帮助我们识别潜在的泄漏房屋,准确率为86%。
Non-Intrusive Air Leakage Detection in Residential Homes
Air leakages pose a major problem in both residential and commercial buildings. They increase the utility bill and result in excessive usage of Heating Ventilation and Air Conditioning (HVAC) systems, which impacts the environment and causes discomfort to residents. Repairing air leakages in a building is an expensive and time intensive task. Even detecting the leakages can require extensive professional testing. In this paper, we propose a method to identify the leaky homes from a set, provided their energy consumption data is accessible from residential smart meters. In the first phase, we employ a Non-Intrusive Load Monitoring (NILM) technique to disaggregate the HVAC data from total power consumption for several homes. We propose a recurrent neural network and a denoising autoencoder based approach to identify the 'ON' and 'OFF' cycles of the HVACs and their overall usages. We categorize the typical HVAC consumption of about 200 homes and any probable insulation and leakage problems using the Air Changes per Hour at 50 Pa (ACH50) metric in the Dataport datasets. We perform our proposed NILM analysis on different granularities of smart meter data such as 1 min, 15 mins, and 1 hour to observe its effect on classifying the leaky homes. Our results show that disaggregation can be used to identify the residential air-conditioning, at 1 min granularity which in turn helps us to identify the leaky potential homes, with an accuracy of 86%.