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Electric appliance classification based on distributed high resolution current sensing

机译:基于分布式高分辨率电流传感的电器分类

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摘要

Today's solutions to inform residents about their electricity consumption are mostly confined to displaying aggregate readings collected at meter level. A reliable identification of appliances that require disproportionate amounts of energy for their operation is generally unsupported by these systems, or at least requires significant manual configuration efforts. We address this challenge by placing low-cost measurement and actuation units into the mains connection of appliances. The distributed sensors capture the current flow of individual appliances at a sampling rate of 1.6kHz and apply local signal processing to the readings in order to extract characteristic fingerprints. These fingerprints are communicated wirelessly to the evaluation server, thus keeping the required airtime and energy demand of the transmission low. The evaluation server employs machine learning techniques and caters for the actual classification of attached electric appliances based on their fingerprints, enabling the correlation of consumption data and the appliance identity. Our evaluation is based on more than 3,000 current consumption fingerprints, which we have captured for a range of household appliances. The results indicate that a high accuracy is achieved when locally extracted
机译:如今,告知居民其用电量的解决方案主要限于显示在电表级别收集的汇总读数。这些系统通常无法可靠地识别需要大量能量才能运行的设备,或者至少需要大量的手动配置工作。我们通过将低成本的测量和执行单元放入设备的电源连接中来应对这一挑战。分布式传感器以1.6kHz的采样率捕获单个设备的电流,并将本地信号处理应用于读数,以提取特征指纹。这些指纹通过无线方式与评估服务器通信,从而使所需的通话时间和传输的能量需求保持较低。评估服务器采用机器学习技术,并根据其指纹对所连接的电器进行实际分类,从而实现消耗数据与电器标识的关联。我们的评估基于我们为一系列家用电器捕获的3,000多个电流消耗指纹。结果表明,局部提取具有很高的精度。

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