基于自组织多项式网络的变压器早期故障诊断智能决策支持

Hong-Tzer Yang, Yann-Chang Huang
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引用次数: 68

摘要

为了为电力变压器故障诊断提供智能决策支持,提出并实现了一种新的自组织多项式网络(sopn)建模技术。该技术启发式地将建模问题表述为具有多层简单低阶多项式功能节点的分层体系结构。该网络处理变压器溶解气体含量与故障条件之间的数值、复杂和不确定关系。利用台湾电力(Taipower)系统变压器的实际数值诊断记录,通过一系列实验验证了所提出的方法。与传统的溶解气体分析(DGA)和人工神经网络(ANNs)分类方法的结果相比,该方法在开发诊断系统和识别实际变压器故障案例方面都具有明显的优势。
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Intelligent decision support for diagnosis of incipient transformer faults using self-organizing polynomial networks
To serve as an intelligent decision support for power transformer fault diagnosis, a new self-organizing polynomial networks (SOPNs) modeling technique is proposed and implemented in this paper. The technique heuristically formulates the modeling problem into a hierarchical architecture with several layers of functional nodes of simple low-order polynomials. The networks handle the numerical, complicated, and uncertain relationships of dissolved gas contents of the transformers to fault conditions. Verification of the proposed approach has been accomplished through a number of experiments using practical numerical diagnostic records of the transformers of Taiwan power (Taipower) systems. In comparison to the results obtained from the conventional dissolved gas analysis (DGA) and the artificial neural networks (ANNs) classification methods, the proposed method has been shown to possess far superior performances both in developing the diagnosis system and in identifying the practical transformer fault cases.
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