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A Deep Learning approach for Energy Disaggregation considering Embedded Devices

机译:考虑嵌入式设备的能量分解深度学习方法

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Energy-saving becomes an increasingly important point since the demand for energy increases, and the resources for production are limited. One way to help consumers to save is by providing them with more transparency on how they are consuming. Energy disaggregation seeks to distinguish the electrical energy consumption of distinct devices connected to a single channel, in a non-intrusive way from a single measuring point. Deep learning is very promising in this field since they present better results when compared to previous models such as the Factorial Hidden Markov Model and Graph Signal Processing. In this work, we propose a deep learning approach for energy disaggregation, focusing on its performance for embedded devices. Thus, we evaluate the scalability of our proposal for disaggregating multiple appliances considering an embedded device. The results show that our proposal is well-suited for this application and better than previous works.
机译:由于对能源的需求增加,并且生产资源受到限制,因此节能成为越来越重要的一点。帮助消费者节省开支的一种方法是,为消费者提供更加透明的消费方式。能量分解旨在以非侵入性的方式从单个测量点区分连接到单个通道的不同设备的电能消耗。深度学习在该领域非常有前途,因为与以前的模型(例如阶乘隐马尔可夫模型和图信号处理)相比,它们提供了更好的结果。在这项工作中,我们提出了一种用于能量分解的深度学习方法,重点是针对嵌入式设备的性能。因此,我们评估了考虑嵌入式设备的多种设备分解建议的可扩展性。结果表明,我们的建议非常适合此应用,并且比以前的作品更好。

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