On the Feasibility of Generic Deep Disaggregation for Single-Load Extraction
Recently, and with the growing development of big energy datasets, data-driven learning techniques began to represent a potential solution to the energy disaggregation problem outperforming engineered and hand-crafted models. However, most proposed deep disaggregation models are load-dependent in th...
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Zusammenfassung: | Recently, and with the growing development of big energy datasets,
data-driven learning techniques began to represent a potential solution to the
energy disaggregation problem outperforming engineered and hand-crafted models.
However, most proposed deep disaggregation models are load-dependent in the
sense that either expert knowledge or a hyper-parameter optimization stage is
required prior to training and deployment (normally for each load category)
even upon acquisition and cleansing of aggregate and sub-metered data. In this
paper, we present a feasibility study on the development of a generic
disaggregation model based on data-driven learning. Specifically, we present a
generic deep disaggregation model capable of achieving state-of-art performance
in load monitoring for a variety of load categories. The developed model is
evaluated on the publicly available UK-DALE dataset with a moderately low
sampling frequency and various domestic loads. |
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DOI: | 10.48550/arxiv.1802.02139 |