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Hauptverfasser: Xie, Renyou, Yin, Xin, Li, Chaojie, Chen, Guo, Liu, Nian, Zhao, Bo, Dong, Zhaoyang
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2405.06999
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author Xie, Renyou
Yin, Xin
Li, Chaojie
Chen, Guo
Liu, Nian
Zhao, Bo
Dong, Zhaoyang
author_facet Xie, Renyou
Yin, Xin
Li, Chaojie
Chen, Guo
Liu, Nian
Zhao, Bo
Dong, Zhaoyang
contents Distribution system state estimation (DSSE) plays a crucial role in the real-time monitoring, control, and operation of distribution networks. Besides intensive computational requirements, conventional DSSE methods need high-quality measurements to obtain accurate states, whereas missing values often occur due to sensor failures or communication delays. To address these challenging issues, a forecast-then-estimate framework of edge learning is proposed for DSSE, leveraging large language models (LLMs) to forecast missing measurements and provide pseudo-measurements. Firstly, natural language-based prompts and measurement sequences are integrated by the proposed LLM to learn patterns from historical data and provide accurate forecasting results. Secondly, a convolutional layer-based neural network model is introduced to improve the robustness of state estimation under missing measurement. Thirdly, to alleviate the overfitting of the deep learning-based DSSE, it is reformulated as a multi-task learning framework containing shared and task-specific layers. The uncertainty weighting algorithm is applied to find the optimal weights to balance different tasks. The numerical simulation on the Simbench case is used to demonstrate the effectiveness of the proposed forecast-then-estimate framework.
format Preprint
id arxiv_https___arxiv_org_abs_2405_06999
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Large Language Model-aided Edge Learning in Distribution System State Estimation
Xie, Renyou
Yin, Xin
Li, Chaojie
Chen, Guo
Liu, Nian
Zhao, Bo
Dong, Zhaoyang
Systems and Control
Distribution system state estimation (DSSE) plays a crucial role in the real-time monitoring, control, and operation of distribution networks. Besides intensive computational requirements, conventional DSSE methods need high-quality measurements to obtain accurate states, whereas missing values often occur due to sensor failures or communication delays. To address these challenging issues, a forecast-then-estimate framework of edge learning is proposed for DSSE, leveraging large language models (LLMs) to forecast missing measurements and provide pseudo-measurements. Firstly, natural language-based prompts and measurement sequences are integrated by the proposed LLM to learn patterns from historical data and provide accurate forecasting results. Secondly, a convolutional layer-based neural network model is introduced to improve the robustness of state estimation under missing measurement. Thirdly, to alleviate the overfitting of the deep learning-based DSSE, it is reformulated as a multi-task learning framework containing shared and task-specific layers. The uncertainty weighting algorithm is applied to find the optimal weights to balance different tasks. The numerical simulation on the Simbench case is used to demonstrate the effectiveness of the proposed forecast-then-estimate framework.
title Large Language Model-aided Edge Learning in Distribution System State Estimation
topic Systems and Control
url https://arxiv.org/abs/2405.06999