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A Modified Fuzzy Min-Max Neural Network and Its Application to Fault Classification

机译:改进的模糊最小-最大神经网络及其在故障分类中的应用

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摘要

The Fuzzy Min-Max (FMM) network is a supervised neural network classifier that forms hyperbox fuzzy sets for learning and classification. In this paper, we propose modifications to FMM in an attempt to improve its classification performance in situations when large hyperboxes are formed by the network. To achieve the goal, the Euclidean distance is computed after network training. We also propose to employ both the membership value of the hyperbox fuzzy sets and the Euclidean distance for classification. To assess the effectiveness of the modified FMM network, benchmark pattern classification problems are first used, and the results from different methods are compared. In addition, a fault classification problem with real sensor measurements collected from a power generation plant is used to evaluate the applicability of the modified FMM network. The results obtained are analyzed and explained, and implications of the modified FMM network in real environments are discussed.
机译:Fuzzy Min-Max(FMM)网络是一种监督型神经网络分类器,可形成用于学习和分类的超框模糊集。在本文中,我们提出了对FMM的修改,以尝试在网络形成大型超级框的情况下提高其分类性能。为了实现该目标,在网络训练之后计算欧几里德距离。我们还建议采用超框模糊集的隶属度值和欧氏距离进行分类。为了评估改进的FMM网络的有效性,首先使用基准模式分类问题,然后比较不同方法的结果。另外,从发电厂收集的具有实际传感器测量值的故障分类问题用于评估修改后的FMM网络的适用性。分析和解释了获得的结果,并讨论了改进的FMM网络在实际环境中的含义。

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