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Enhanced Fuzzy Single Layer Perceptron

机译:增强的模糊单层Perceptron

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In this paper, a method of improving the learning time and convergence rate is proposed to exploit the advantages of artificial neural networks and fuzzy theory to neuron structure. This method is applied to the XOR problem, n bit parity problem, which is used as the benchmark in neural network structure, and recognition of digit image in the vehicle plate image for practical image recognition. As a result of experiments, it does not always guarantee the convergence. However, the network was improved the learning time and has the high convergence rate. The proposed network can be extended to an arbitrary layer. Though a single layer structure is considered, the proposed method has a capability of high speed during the learning process and rapid processing on huge patterns.
机译:本文提出了一种提高学习时间和收敛速度的方法,以利用人工神经网络和模糊理论对神经元结构的优点。该方法应用于XOR问题,N位奇偶校验问题,其用作神经网络结构中的基准,以及用于实际图像识别的车辆板图像中的数字图像的基准。由于实验,它并不总是保证收敛。但是,网络改善了学习时间并具有高收敛速度。所提出的网络可以扩展到任意层。尽管考虑了单层结构,所提出的方法在学习过程中具有高速的能力,并且在巨大模式上快速处理。

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