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Office Appliances Identification and Monitoring using Deep Leaning based Energy Disaggregation for Smart Buildings

机译:使用基于深度学习的智能建筑能源分解对办公设备进行识别和监控

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Analysis of electrical energy metering profiles has experienced a substantial increase of research activity in recent years. This smart metering is a tool for monitoring energy usage and users’ behaviors as a pre-requisite for substantial energy savings. Instead of having a sensor at each appliance, non-Intrusive Load Monitoring (NILM) provides a cheaper solution by disaggregating the load data from a single meter using digital signal processing. Different algorithms have been successfully applied to a variety of load scenarios. Load data for small office appliances is available in the BLOND data set (Building-Level Office eNvironment Dataset) such as laptops, computer monitors, etc. The potential energy saving of each small appliance cannot be neglected, particularly in large companies/institutesIn this paper, a recurrent neural network (RNN) with long-short term memory (LSTM) is designed, trained, and validated for NILM on small power office equipment provided in the BLOND data set. A comparison to combinatorial optimization and factorial hidden Markov models using five metrics for performance testing shows good results for the proposed RNN.
机译:近年来,电能计量曲线的分析已经历了大量的研究活动。这种智能计量是监视能源使用和用户行为的工具,是节省大量能源的先决条件。非侵入式负载监控(NILM)不需要在每个设备上都配备传感器,而是通过使用数字信号处理从单个仪表中分解负载数据来提供一种更便宜的解决方案。不同的算法已成功应用于各种负载方案。小型办公设备的负载数据可在BLOND数据集(建筑级办公环境数据集)中获得,例如笔记本电脑,计算机显示器等。每个小型设备的节能潜力都不能忽略,特别是在大型公司/机构中。 ,具有长期短期记忆(LSTM)的递归神经网络(RNN)在BLOND数据集中提供的小型电力办公设备上针对NILM进行了设计,培训和验证。与使用五个度量进行性能测试的组合优化和阶乘隐式马尔可夫模型的比较显示了所提出的RNN的良好结果。

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