MEED: An Unsupervised Multi-Environment Event Detector for Non-Intrusive Load Monitoring

Daniel Jorde, M. Kahl, H. Jacobsen
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引用次数: 5

Abstract

The accurate detection of transitions between appliance states in electrical signals is the fundamental step that numerous energy conserving applications, such as Non-Intrusive Load Monitoring, rely on. So far, domain experts define rules and patterns to detect changes of appliance states and to extract detailed consumption information of individual appliances subsequently. Such event detectors are specifically designed for certain environments and need to be tediously adapted for new ones, as they require in-depth expert knowledge of the environment. To overcome this limitation, we propose a new unsupervised, multi-environment event detector, called MEED, that is based on a bidirectional recurrent denoising autoencoder. The performance of MEED is evaluated by comparing it to two state-of-the-art algorithms on two publicly available datasets from different environments. The results show that MEED improves the current state of the art and outperforms the reference algorithms on a residential (BLUED) and an office environment (BLOND) dataset while being trained and used fully unsupervised in the heterogeneous environments.
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用于非侵入式负载监控的无监督多环境事件检测器
在电信号中准确检测电器状态之间的转换是许多节能应用(如非侵入式负载监测)所依赖的基本步骤。到目前为止,领域专家定义了规则和模式来检测设备状态的变化,并随后提取单个设备的详细消费信息。此类事件检测器是专门为某些环境设计的,需要进行繁琐的调整以适应新的环境,因为它们需要对环境有深入的专业知识。为了克服这一限制,我们提出了一种新的无监督多环境事件检测器,称为MEED,它基于双向循环去噪自编码器。通过将MEED与来自不同环境的两个公开可用数据集上的两种最先进的算法进行比较,评估了MEED的性能。结果表明,MEED改进了当前的技术水平,在住宅(BLUED)和办公环境(BLOND)数据集上优于参考算法,同时在异构环境中进行训练和完全无监督地使用。
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