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Main Authors: Zhang, Xiaojuan, Jiang, Tianyu, Zong, Haoxiang, Zhang, Chen, Li, Chendan, Molinas, Marta
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.14187
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author Zhang, Xiaojuan
Jiang, Tianyu
Zong, Haoxiang
Zhang, Chen
Li, Chendan
Molinas, Marta
author_facet Zhang, Xiaojuan
Jiang, Tianyu
Zong, Haoxiang
Zhang, Chen
Li, Chendan
Molinas, Marta
contents The impedance network (IN) model is gaining popularity in the oscillation analysis of wind farms. However, the construction of such an IN model requires impedance curves of each wind turbine under their respective operating conditions, making its online application difficult due to the transmission of numerous high-density impedance curves. To address this issue, this paper proposes an AI-based impedance encoding-decoding method to facilitate the online construction of IN model. First, an impedance encoder is trained to compress impedance curves by setting the number of neurons much smaller than that of frequency points. Then, the compressed data of each turbine are uploaded to the wind farm and an impedance decoder is trained to reconstruct original impedance curves. At last, based on the nodal admittance matrix (NAM) method, the IN model of the wind farm can be obtained. The proposed method is validated via model training and real-time simulations, demonstrating that the encoded impedance vectors enable fast transmission and accurate reconstruction of the original impedance curves.
format Preprint
id arxiv_https___arxiv_org_abs_2507_14187
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AI-Based Impedance Encoding-Decoding Method for Online Impedance Network Construction of Wind Farms
Zhang, Xiaojuan
Jiang, Tianyu
Zong, Haoxiang
Zhang, Chen
Li, Chendan
Molinas, Marta
Signal Processing
Artificial Intelligence
The impedance network (IN) model is gaining popularity in the oscillation analysis of wind farms. However, the construction of such an IN model requires impedance curves of each wind turbine under their respective operating conditions, making its online application difficult due to the transmission of numerous high-density impedance curves. To address this issue, this paper proposes an AI-based impedance encoding-decoding method to facilitate the online construction of IN model. First, an impedance encoder is trained to compress impedance curves by setting the number of neurons much smaller than that of frequency points. Then, the compressed data of each turbine are uploaded to the wind farm and an impedance decoder is trained to reconstruct original impedance curves. At last, based on the nodal admittance matrix (NAM) method, the IN model of the wind farm can be obtained. The proposed method is validated via model training and real-time simulations, demonstrating that the encoded impedance vectors enable fast transmission and accurate reconstruction of the original impedance curves.
title AI-Based Impedance Encoding-Decoding Method for Online Impedance Network Construction of Wind Farms
topic Signal Processing
Artificial Intelligence
url https://arxiv.org/abs/2507.14187