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Genetic Programming Based Polynomial Networks Model for Insulation Fault Diagnosis of Power Transformers

机译:基于基于遗传编程的多项式网络电力变压器绝缘故障诊断模型

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A Genetic Programming based Polynomial Networks Model (GPPNM) is presented in this paper to promote the diagnostic performance of incipient insulation fault of power transformers. Other than conventional hierarchical architecture to build polynomial networks, the proposed GPPNM constructs it using tree-like structure of Genetic Programming (GP). By means of flexible selection of low-order polynomial functions and feature variables in each node of structure, the polynomial networks is evolving in the global search space by generations to capture the complex and numerical knowledge relationships between dissolved gases and fault types. The proposed model has been applied on the actual fault records and compared with conventional method, artificial neural networks method and self-organizing polynomial networks (SOPN) method. The numeric test testifies that the GPPNM requires less prior knowledge in the process of construction of diagnosis model and has better performance than other methods.
机译:本文提出了一种基于遗传编程的多项式网络模型(GPPNM),以促进电力变压器初期绝缘故障的诊断性能。除传统的分层体系结构之外,构建多项式网络,所提出的GPPNM使用树状遗传编程(GP)的树状结构构建它。通过灵活的每个节点中的低阶多项式函数和特征变量选择,多项式网络在全球搜索空间中的发展,以捕获溶解气体和故障类型之间的复杂和数值知识关系。所提出的模型已应用于实际故障记录,并与传统方法,人工神经网络方法和自组织多项式网络(SOPN)方法进行比较。数字测试证明了GPPNM在诊断模型的构建过程中需要更少的先验知识,并且具有比其他方法更好的性能。

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