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融合相角特征与ANN的配电网故障智能诊断方法研究

Research on Intelligent Fault Diagnosis Methods for Distribution Networks by Integrating Phase-angle Features and Artificial Neural Networks

  • 摘要: 为提高配电网故障诊断的鲁棒性与准确性,文章提出一种融合电压相角特征与人工神经网络(ANN)的配电网故障智能诊断方法。选取电压相角作为故障诊断关键特征,搭建IEEE 33节点系统和某实际地区58节点配电网模型,进行不同类型故障仿真,分别得到单相接地、两相接地及三相对称短路等多种故障类型下的节点相角数据;构建基于自适应加权损失函数优化的ANN分类模型,以改善故障样本不平衡下的诊断性能。测试结果表明,所提方法具备响应速度快、泛化性能强和抗噪声能力良好的优势,可以为高比例分布式电源接入的复杂配电网故障诊断提供参考,具备良好的工程应用潜力。

     

    Abstract: To enhance the robustness and accuracy of fault diagnosis in distribution networks, this paper proposes an intelligent diagnosis method that integrates voltage phase-angle features with artificial neural networks (ANN). The voltage phase angle is selected as the key feature for fault identification. An IEEE 33-node system and a 58-node distribution network model in an actual area are established. Different types of fault simulations are carried out, and the node phase angle data under various fault types, including single-phase-to-ground, two-phase-to-ground, and three-phase symmetrical short-circuit faults, are obtained. An ANN-based classification model optimized by an adaptive weighted loss function is constructed to improve diagnostic performance under imbalanced fault samples. The test results show that the proposed method exhibits advantages in fast response, strong generalization capability, and robust noise immunity. It can serve as a valuable reference for fault diagnosis in complex distribution networks with a high penetration of distributed energy resources and demonstrates promising engineering application potential.

     

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