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Deep Online Hierarchical Unsupervised Learning for Pattern Mining from Utility Usage Data

机译:从实用程序使用数据模式挖掘的深度在线分层无监督学习

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Machine learning approaches for non-intrusive load monitoring (NILM) have focused on supervised algorithms. Unsupervised approaches can be more interesting and of more practical use in real case scenarios. More specifically, they do not require labelled training data to be collected from individual appliances and the algorithm can be deployed to operate on the measured aggregate data directly. In this paper, we propose a fully unsupervised NILM framework based on Deep Belief network (DBN) and online Latent Dirichlet Allocation (LDA). Firstly, the raw signals of the house utilities are fed into DBN to extract low-level generic features in an unsupervised fashion, and then the hierarchical Bayesian model, LDA, learns high-level features that capture the correlations between the low-level ones. Thus, the proposed method (DBN-LDA) harnesses the DBN's ability of learning distributed hierarchies of features to extract sophisticated appliances-specific features without the need of precise human-crafted input representations. The clustering power of the hierarchical Bayesian models helps further summarise the input data by extracting higher-level information representing the residents' energy consumption patterns. Using Deep-Hierarchical models reduces the computational complexity since LDA is not directly applied to the raw data. The computational efficiency is crucial as our application involves massive data from different types of utility usages. Moreover, we develop a novel online inference algorithm to cope with this big data. Another novelty of this work is that the data is a combination of different utilities (e.g., electricity, water and gas) and some sensors measurements. Finally, we propose different methods to evaluate the results and preliminary experiments show that the DBN-LDA is promising to extract useful patterns.
机译:非侵入式负载监测机器学习方法(NILM)都集中在监督算法。无监督的方法可以在真实的情况下,场景更有趣,更实用。从个体器具收集更具体地,它们不需要标记的训练数据和算法可被部署到上所测量的总的数据直接操作。在本文中,我们提出了一种基于坚定信念网络(DBN)和在线隐含狄利克雷分布(LDA)在完全无人监管NILM框架。首先,家公用事业的原始信号被馈送到DBN到提取低级别一般特征以无监督的方式,然后分层贝叶斯模型,LDA,学习高级特征在于捕获低级者之间的相关性。因此,所提出的方法(DBN-LDA)驾DBN的学习功能分布层次来提取复杂的电器所特有的功能,无需精确的人类制作的输入交涉的能力。分层贝叶斯模型的聚类能力,帮助用户通过提取代表居民的能源消费模式更高水平的信息进一步总结输入数据。使用深层次模型降低了计算的复杂性,因为LDA不直接应用到原始数据。因为我们的应用程序涉及不同类型的实用用途的海量数据的计算效率是至关重要的。此外,我们开发了一种新的在线推理算法来应对这个大数据。这项工作的另一个新颖性在于,所述数据是不同的实用程序(例如,电,水和气体)和一些传感器的测量值的组合。最后,我们提出了不同的方法评估结果和初步实验表明,DBN-LDA承诺,将提取有用的模式。

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