← 返回
系统并网技术 深度学习 机器学习 故障诊断 强化学习 ★ 4.0

训练集再利用:一种基于相似样本的电力系统主导失稳模式识别物理可信框架

Reapplication of Training Set: A Physically Reliable Framework for Power Systems Dominant Instability Mode Identification Using Similar Samples

作者 Yutian Lan · Shanyang Wei · Wei Yao · Yurun Zhang · Yuxin Yang · Jinyu Wen
期刊 IEEE Transactions on Power Systems
出版日期 2025年8月
卷/期 第 41 卷 第 1 期
技术分类 系统并网技术
技术标签 深度学习 机器学习 故障诊断 强化学习
相关度评分 ★★★★ 4.0 / 5.0
关键词
语言:

中文摘要

本文提出一种物理可信的主导失稳模式(DIM)识别框架,通过增强模型噪声鲁棒性与相似样本聚类能力,并结合两阶段可解释算法(固定半径KNN+知识嵌入Fréchet距离),提升预测准确性与物理可靠性。在36节点和2131节点系统验证有效。

English Abstract

Accurate and physically reliable identification of the dominant instability mode (DIM) is crucial for ensuring secure and stable power system operation. Data-driven models, particularly deep learning (DL), have achieved significant progress in addressing this challenge. However, the “black-box” nature of DL limits interpretability, leading to unreliable outcomes that conflict with the stringent reliability requirements of power systems. To solve this, a novel DIM identification framework is proposed to improve accuracy and reliability by re-applying training set samples. First, a training method is proposed to enhance the noise robustness and ability to cluster similar samples of the DIM model, achieving high-accuracy DIM identification. Furthermore, a two-stage interpretability algorithm is developed. In Stage 1, a fixed-radius k-nearest neighbor (KNN) algorithm matches the low-dimensional features of the DIM model for the target sample to find similar samples. In Stage 2, the knowledge-embedded Fréchet distance analyzes the differences between the target sample and similar training samples, using the physical discriminative logic of the most similar sample to guide predictions and assess reliability. The effectiveness of the proposed framework is validated on the CEPRI 36-bus power system and the Northeast China Power System (2131 buses), demonstrating improvements in both DIM prediction accuracy and physical reliability.
S

SunView 深度解读

该框架可增强阳光电源iSolarCloud智能运维平台对大型光储电站并网稳定性的实时判别能力,尤其适用于PowerTitan、ST系列PCS在构网型(GFM)运行下的暂态失稳预警。建议将Stage-2物理判据模块嵌入iSolarCloud故障根因分析引擎,提升对弱电网/高比例新能源场景下电压/频率耦合失稳的可解释告警能力,支撑组串式逆变器与储能系统的协同稳定控制策略优化。