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IPIGN:一种面向分布式能源系统的可解释物理信息图网络多任务级联故障诊断方法

IPIGN: An Interpretable Physics-Informed Graph Network Multitask Cascading Failure Diagnosis Method for Distributed Energy Systems

作者 Jilong Ma · Xuguang Hu · Tianfeng Chu · Hongyan Zhao · Dazhong Ma
期刊 IEEE Transactions on Industrial Electronics
出版日期 2026年1月
卷/期 第 73 卷 第 5 期
技术分类 智能化与AI应用
技术标签 故障诊断 深度学习 图神经网络 智能运维
相关度评分 ★★★★★ 5.0 / 5.0
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中文摘要

针对分布式能源系统中级联故障导致的非故障支路误跳闸、分布式电源脱网等问题,本文提出可解释物理信息图网络(IPIGN)多任务诊断方法,融合多通道自掩码、跳跃式邻域感知与物理机制引导的特征解耦,实现故障检测、定位、选相与源识别,并经实测与半实物平台验证。

English Abstract

Cascading failure such as false tripping of nonfaulty branches and distributed generators forced off-grid in distributed energy systems, which significantly complicates originating fault diagnosis base on feeder terminal unit (FTU). To address this issue, an interpretable physics-informed graph network (IPIGN) multitask cascading failure diagnosis method is proposed for distributed energy systems. First, a multichannel self-masking mechanism is proposed to solve the problem of originating fault being hidden due to the superposition of multiple features, reconstructing the fault feature through spatial attenuation characteristic in the spectral domain. Second, a leapfrog neighborhood awareness strategy is proposed to solve the problem of incorrect diagnosis caused by similarity of local node features, performing topological local to global differentiated feature aggregation. Further, an interpretable multitask fault diagnosis framework is proposed to ensure the transparency of the cascading failure diagnosis process, which supervises the feature decoupling through the physical mechanism. IPIGN overcomes the limitations of cascading failure features that are complex to parse, while enabling the detection, location, phase selection and identification of originating fault. Finally, the validity of the proposed method is verified by actual field failures and a semiphysical hardware platform.
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SunView 深度解读

该方法高度契合阳光电源iSolarCloud智能运维平台对光伏电站及光储系统(如PowerTitan、ST系列PCS、组串式逆变器)的级联故障实时诊断需求。其可解释性增强运维透明度,支持故障根因追溯;多任务输出可直接对接PCS保护逻辑与逆变器告警模块,提升系统可靠性。建议在iSolarCloud 3.0中集成IPIGN模型,优先部署于大型地面光伏电站与工商业光储项目,强化故障预警与自动处置能力。