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Auteurs principaux: Zhang, Ying, Wang, Yihao, Zhang, Yuanshuo, Larson, Eric, Shi, Di, Sui, Fanping
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2511.06583
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author Zhang, Ying
Wang, Yihao
Zhang, Yuanshuo
Larson, Eric
Shi, Di
Sui, Fanping
author_facet Zhang, Ying
Wang, Yihao
Zhang, Yuanshuo
Larson, Eric
Shi, Di
Sui, Fanping
contents Traditional statistical optimization-based state estimation (DSSE) algorithms rely on detailed grid parameters and mathematical assumptions of all possible uncertainties. Furthermore, random data missing due to communication failures, congestion, and cyberattacks, makes these methods easily infeasible. Inspired by recent advances in digital twins (DTs), this paper proposes an interactive attention-based DSSE model for robust grid monitoring by integrating three core components: physical entities, virtual modeling, and data fusion. To enable robustness against various data missing in heterogeneous measurements, we first propose physics-informed data augmentation and transfer. Moreover, a state-of-the-art attention-based spatiotemporal feature learning is proposed, followed by a novel cross-interaction feature fusion for robust voltage estimation. A case study in a real-world unbalanced 84-bus distribution system with raw data validates the accuracy and robustness of the proposed DT model in estimating voltage states, with random locational, arbitrary ratios (up to 40% of total measurements) of data missing.
format Preprint
id arxiv_https___arxiv_org_abs_2511_06583
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle On the Potential of Digital Twins for Distribution System State Estimation with Randomly Missing Data in Heterogeneous Measurements
Zhang, Ying
Wang, Yihao
Zhang, Yuanshuo
Larson, Eric
Shi, Di
Sui, Fanping
Systems and Control
Traditional statistical optimization-based state estimation (DSSE) algorithms rely on detailed grid parameters and mathematical assumptions of all possible uncertainties. Furthermore, random data missing due to communication failures, congestion, and cyberattacks, makes these methods easily infeasible. Inspired by recent advances in digital twins (DTs), this paper proposes an interactive attention-based DSSE model for robust grid monitoring by integrating three core components: physical entities, virtual modeling, and data fusion. To enable robustness against various data missing in heterogeneous measurements, we first propose physics-informed data augmentation and transfer. Moreover, a state-of-the-art attention-based spatiotemporal feature learning is proposed, followed by a novel cross-interaction feature fusion for robust voltage estimation. A case study in a real-world unbalanced 84-bus distribution system with raw data validates the accuracy and robustness of the proposed DT model in estimating voltage states, with random locational, arbitrary ratios (up to 40% of total measurements) of data missing.
title On the Potential of Digital Twins for Distribution System State Estimation with Randomly Missing Data in Heterogeneous Measurements
topic Systems and Control
url https://arxiv.org/abs/2511.06583