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PUMPNET: a deep learning approach to pump operation detection

机译:PUMPNET:泵运行检测的深度学习方法

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Non-urgent high energy-consuming residential appliances, such as pool pumps, may significantly affect the peak to average ratio (PAR) of energy demand in smart grids. Effective load monitoring is an important step to provide efficient demand response (DR) to PAR. In this paper, we focus on pool pump analytics and present a deep learning framework, PUMPNET, to identify the pool pump operation patterns from power consumption data. Different from conventional time-series based Non-intrusive Load Monitoring (NILM) methods, our approach transfers the time-series data into image-like (date-time matrix) data. Then a U-shaped fully convolutional neural network is developed to detect and segment the image-like data in pixel level for operation detection. Our approach identify whether pool pumps operate given thirty-minute interval aggregated active power consumption data in kilowatt-hours only. Furthermore, the PUMPNET algorithm could identify pool pump operation status with high accuracy in the low-frequency sampling scenario for thousands of household, compared to traditional NILM algorithms which process high sampling rate data and can only apply to limited number of households. Experiments on real-world data validate the promising results of the proposed PUMPNET model.
机译:池泵等非紧急高耗能的住宅设备可能会显着影响智能电网中能源需求的峰值达到平均比率(PAR)。有效的负荷监测是提供有效需求响应(DR)到PAR的重要步骤。在本文中,我们专注于池泵分析并呈现深度学习框架,泵网,从功耗数据识别池泵操作模式。与基于传统的基于时间序列的非侵入式负载监控(NILM)方法不同,我们的方法将时间序列数据转换为图像状(日期时矩阵)数据。然后开发U形完全卷积神经网络以检测和分割以像素水平以用于操作检测的图像样数据。我们的方法识别池泵是否在千瓦时30分钟间隔聚合的有源功耗数据中操作。此外,与传统的尼尔姆算法相比,泵网算法可以识别高精度,以高精度采样场景,以达到数千家的流程,而传统的尼尔姆算法,该算法加工高采样率数据,只适用于有限数量的家庭。实际数据的实验验证了所提出的泵网模型的有希望的结果。

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