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Super-Resolution Reconstruction of Interval Energy Data

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arxiv 2010.12678 v1 pith:GEAQXELB submitted 2020-10-23 eess.SP cs.AI

Super-Resolution Reconstruction of Interval Energy Data

classification eess.SP cs.AI
keywords dataintervalenergylow-resolutionmanymuchreconstructionsuper-resolution
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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High-resolution data are desired in many data-driven applications; however, in many cases only data whose resolution is lower than expected are available due to various reasons. It is then a challenge how to obtain as much useful information as possible from the low-resolution data. In this paper, we target interval energy data collected by Advanced Metering Infrastructure (AMI), and propose a Super-Resolution Reconstruction (SRR) approach to upsample low-resolution (hourly) interval data into higher-resolution (15-minute) data using deep learning. Our preliminary results show that the proposed SRR approaches can achieve much improved performance compared to the baseline model.

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