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A Data-Driven Modeling Method of Virtual Synchronous Generator Based on LSTM Neural Network

Jiangbin Tian, Guohui Zeng, Jinbin Zhao, Xiangchen Zhu, Zhenhua Zhang

2023IEEE Transactions on Industrial Informatics29 citationsDOI

Abstract

The virtual synchronous generator (VSG) exhibits high-dimensional complexity, necessitating a tradeoff between accuracy and complexity when constructing small-signal models. To address this issue, this article proposes a data-driven modeling approach based on long short-term memory (LSTM) neural networks. The focus is on mapping relationships between electrical quantities, considering the influence of irrational factors on model accuracy. A detailed data-driven modeling approach for VSG is proposed and verified in this article. Due to the time-series correlation in the electrical data generated during VSG operation, the LSTM algorithm, known for its excellent time-series prediction capabilities, is chosen to construct the VSG data-driven model. Several complex VSG application scenarios are used to validate the effectiveness and accuracy of the proposed modeling approach. In conclusion, the LSTM-based VSG data-driven modeling outperforms small-signal models and recurrent neural network data-driven models in terms of accuracy and stability.

Topics & Concepts

Computer scienceArtificial neural networkData modelingStability (learning theory)Artificial intelligenceGenerator (circuit theory)SIGNAL (programming language)Time seriesRecurrent neural networkConstruct (python library)Data miningFocus (optics)Machine learningAlgorithmPower (physics)DatabaseProgramming languageOpticsPhysicsQuantum mechanicsMicrogrid Control and OptimizationPower System Optimization and StabilityEnergy Load and Power Forecasting
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