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ProfileSR-GAN: A GAN Based Super-Resolution Method for Generating High-Resolution Load Profiles

This paper presents a novel two-stage load profile super-resolution (LPSR) framework, ProfileSR-GAN, to upsample the low-resolution load profiles (LRLPs) to high- resolution load profiles (HRLPs). Here, the LPSR problem is formulated as a Maximum-a-Posteriori problem. In the first-stage, a GAN-based...

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Published in:IEEE transactions on smart grid 2022-03, Vol.13 (4)
Main Authors: Song, Lidong, Li, Yiyan, Lu, Ning
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Lu, Ning
description This paper presents a novel two-stage load profile super-resolution (LPSR) framework, ProfileSR-GAN, to upsample the low-resolution load profiles (LRLPs) to high- resolution load profiles (HRLPs). Here, the LPSR problem is formulated as a Maximum-a-Posteriori problem. In the first-stage, a GAN-based model is adopted to restore high-frequency components from the LRLPs. To reflect the load-weather dependency, aside from the LRLPs, the weather data is added as an input to the GAN-based model. In the second-stage, a polishing network guided by outline loss and switching loss is novelly introduced to remove the unrealistic power fluctuations in the generated HRLPs and improve the point-to-point matching accuracy. To evaluate the realisticness of the generated HRLPs, a new set of load shape evaluation metrics is developed. Simulation results show that: i) ProfileSR-GAN outperforms the state-of-the- art methods in all shape-based metrics and can achieve comparable performance with those methods in point-to-point matching accuracy, and ii) after applying ProfileSR-GAN to convert LRLPs to HRLPs, the performance of a downstream task, non-intrusive load monitoring, can be significantly improved. This demonstrates that ProfileSR-GAN is an effective new mechanism for restoring high-frequency components in downsampled time- series data sets and improves the performance of downstream tasks that require HR load profiles as inputs.
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subjects ENGINEERING
Generative adversarial networks
load profile generation
machine learning
non-intrusive load monitoring
super-resolution
synthetic data
title ProfileSR-GAN: A GAN Based Super-Resolution Method for Generating High-Resolution Load Profiles
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