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Decompositional Rule Extraction from Artificial Neural Networks and Application in Analysis of Transformers

机译:人工神经网络分解规则提取及其在变压器分析中的应用

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The artificial neural networks represent efficient computational models that are widely used to solve problems of difficult solution in Artificial Intelligence. The greatest difficulty associated with the use of Artificial Neural Networks (ANN) is in obtaining knowledge about its behavior, because of that ANNs are also considered as black-box methods. This paper presents a brief history of methods of extraction of knowledge, and in detail a method of interpreting the behavior of an artificial neural network by establishing a relation of equality between certain classes of neural networks and systems based on fuzzy rules, with modifications that allow the acquisition of rules coherent with the domain of the variables of the problem. An example of application is used to illustrate the method, considering the identification of incipient faults in transformers by using data from gas dissolved in transformer oil.
机译:人工神经网络代表了有效的计算模型,该模型被广泛用于解决人工智能中难以解决的问题。与使用人工神经网络(ANN)相关的最大困难是获得有关其行为的知识,因为该人工神经网络也被视为黑盒方法。本文介绍了知识提取方法的简要历史,并详细介绍了一种通过基于模糊规则建立某些类的神经网络和系统之间的相等关系来解释人工神经网络行为的方法,并对其进行了如下修改:与问题变量域相一致的规则的获取。通过一个应用示例来说明该方法,其中考虑了通过使用溶解在变压器油中的气体数据来确定变压器中的早期故障。

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