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首页> 外文期刊>Optical memory & neural networks >The Neuro-Fuzzy Network Synthesis and Simplification on Precedents in Problems of Diagnosis and Pattern Recognition
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The Neuro-Fuzzy Network Synthesis and Simplification on Precedents in Problems of Diagnosis and Pattern Recognition

机译:诊断与模式识别问题先例的神经模糊网络综合与简化

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摘要

The problem of increasing of the quality, of the automation level and the synthesis rate of neuro-fuzzy network (NFN) has been solved in the paper. The method of neuro-fuzzy network synthesis and simplification on precedents has been firstly proposed. It is based on the using of the feature space pseudo-clustering, on the automatic formation of fuzzy terms and rules, on the automatic NFN structure and parameter synthesis by the training set, and on the reducing of N FN structural and parametric complexity by simplifying the rules and reducing the number of redundant terms. This can increase the speed of NFN construction, enhance its properties and generalize interpretability. The proposed method has been implemented in the developed software and was used for the practical problem solving of technical diagnosis.
机译:解决了神经模糊网络(NFN)的质量,自动化水平和综合速率的提高问题。首先提出了神经模糊网络综合和简化先例的方法。它基于使用特征空间伪聚类,基于模糊项和规则的自动形成,基于训练集的自动NFN结构和参数合成以及通过简化来减少N FN结构和参数复杂度的基础规则,减少冗余条款的数量。这可以提高NFN构建的速度,增强其性能并推广可解释性。所提出的方法已经在开发的软件中实现,并用于解决技术诊断的实际问题。

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