Non-Intrusive Appliance Identification with Appliance-Specific Networks

Zhaoyuan Fang, Dongbo Zhao, Chen Chen, Yang Li, Yuting Tian
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引用次数: 15

Abstract

Non-Intrusive Load Monitoring (NILM) is a technique for load identification and energy disaggregation. The problem is usually formulated as a single-channel blind source separation. NILM algorithms aim to identify the operating characteristics of individual appliances from aggregate power measurement. Recent advances in deep learning gave rise to many methods that mostly focus on learning a direct mapping from aggregate measurement to individual appliance power, but these methods often suffer from overfitting and don't generalize well. In this paper, we propose a novel NILM method that leverages advances in both supervised and unsupervised learning techniques. The proposed method consists of three stages: a) a Bayesian non-parametric learning-based approach is used to extract appliance states; b) synthetic minority oversampling technique (SMOTE) is employed to mitigate the heavy imbalance in switching events present in the NILM problem; and c) lightweight long short-term memory (LSTM) networks are employed for status classification for each appliance. We argue that making the differences before and after the switching event as the input to the networks can reduce complexity of network training and makes the proposed method robust to multi-appliance scenarios. Experiments are conducted to demonstrate the effectiveness of the proposed method, achieving better performance when compared to recent methods. Furthermore, an ablation study is conducted to demonstrate the effectiveness of each module of our method.
具有特定于设备的网络的非侵入式设备标识
非侵入式负荷监测(NILM)是一种负荷识别和能量分解技术。该问题通常被表述为单通道盲源分离。NILM算法旨在从总功率测量中识别单个电器的运行特性。深度学习的最新进展产生了许多方法,这些方法主要侧重于学习从总体测量到单个设备功率的直接映射,但这些方法通常存在过拟合的问题,不能很好地泛化。在本文中,我们提出了一种新的NILM方法,该方法利用了监督和无监督学习技术的进步。该方法分为三个阶段:a)采用基于贝叶斯非参数学习的方法提取器具状态;b)采用合成少数派过采样技术(SMOTE)来缓解NILM问题中开关事件的严重不平衡;c)轻量级长短期记忆(LSTM)网络用于每个设备的状态分类。我们认为,将切换事件前后的差异作为网络的输入可以降低网络训练的复杂性,并使所提出的方法对多设备场景具有鲁棒性。实验证明了该方法的有效性,与现有方法相比,取得了更好的性能。此外,还进行了烧蚀研究,以证明我们方法的每个模块的有效性。
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