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Electrical Appliance Classification using Deep Convolutional Neural Networks on High Frequency Current Measurements

机译:使用深度卷积神经网络进行高频电流测量的电器分类

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Monitoring the energy demand of appliances can raise consumer awareness and therefore reduce energy consumption. Using a single-point measurement of mains energy consumption can keep costs and hardware complexity to a minimum. This data stream of raw voltage and current measurements can be used in machine learning tasks to extract information. We apply Deep Convolutional Neural Networks on an electrical appliance classification task, using raw high frequency start up events from two datasets. We further present Data Augmentation techniques to improve the model performance and evaluate different data normalization techniques. We achieve a perfect classification on WHITED and a Fl-Score of 0.69 on PLAID.
机译:监视设备的能源需求可以提高消费者的意识,从而减少能源消耗。对电源能耗进行单点测量可以将成本和硬件复杂性降至最低。原始电压和电流测量的数据流可用于机器学习任务中以提取信息。我们使用来自两个数据集的原始高频启动事件将深度卷积神经网络应用于电器分类任务。我们进一步介绍了数据增强技术,以改善模型性能并评估不同的数据规范化技术。我们在WHITED上实现了完美的分类,在PLAID上实现了0.69的Fl得分。

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