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  4. Active collaborative sensing for energy breakdown
 
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Active collaborative sensing for energy breakdown

Source
International Conference on Information and Knowledge Management Proceedings
Date Issued
2019-11-03
Author(s)
Jia, Yiling
Batra, Nipun  
Wang, Hongning
Whitehouse, Kamin
DOI
10.1145/3357384.3357929
Abstract
Residential homes constitute roughly one-fourth of the total energy usage worldwide. Providing appliance-level energy breakdown has been shown to induce positive behavioral changes that can reduce energy consumption by 15%. Existing approaches for energy breakdown either require hardware installation in every target home or demand a large set of energy sensor data available for model training. However, very few homes in the world have installed sub-meters (sensors measuring individual appliance energy); and the cost of retrofitting a home with extensive sub-metering eats into the funds available for energy saving retrofits. As a result, strategically deploying sensing hardware to maximize the reconstruction accuracy of sub-metered readings in non-instrumented homes while minimizing deployment costs becomes necessary and promising. In this work, we develop an active learning solution based on low-rank tensor completion for energy breakdown. We propose to actively deploy energy sensors to appliances from selected homes, with a goal to improve the prediction accuracy of the completed tensor with minimum sensor deployment cost. We empirically evaluate our approach on the largest public energy dataset collected in Austin, Texas, USA, from 2013 to 2017. The results show that our approach gives better performance with fixed number of sensors installed, when compared to the state-of-the-art, which is also proven by our theoretical analysis.
Publication link
https://dl.acm.org/doi/pdf/10.1145/3357384.3357929
URI
https://d8.irins.org/handle/IITG2025/23144
Subjects
Active learning | Energy breakdown | Tensor completion
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