非归一化补偿混合模糊神经网络

H. Seker, D. H. Evans
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引用次数: 2

摘要

模糊神经网络已被证明优于传统的多层反向传播神经网络(BPNN)。然而,如何提高模糊神经网络的学习速度,如何优化模糊规则模型的隶属函数,使其收敛到局部最小值,仍然是一个重要的问题。此外,在更快地学习和优化的同时,使用更少的内存和需要更少的CPU时间是很重要的。在本文中,为了克服这些问题,我们提出了将模糊c均值聚类作为模糊推理引擎、模糊逻辑和反向传播学习算法的非归一化补偿混合模糊神经网络(non-normalised CFBPNN)。结果表明,该算法克服了这些问题,并取得了很高的性能。在异或问题、非线性函数学习和模式分类等方面对该算法进行了测试,并与归一化CFBPNN和BPNN进行了比较,验证了算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-normalised compensatory hybrid fuzzy neural networks
Fuzzy neural networks have been shown to be superior to conventional multilayered backpropagation neural networks (BPNN). However, it is still an important problem to make fuzzy neural networks learn faster and to optimise membership functions of fuzzy rule based models to converge to a local minimum. Moreover, while learning faster and optimising, it is important to use less memory and to need less CPU time. In this paper, to overcome these problems, we propose non-normalised compensatory hybrid fuzzy neural networks (non-normalised CFBPNN) incorporating fuzzy c-means clustering as a fuzzy inference engine, fuzzy logic and backpropagation learning algorithms. The results have shown that the proposed algorithm overcomes these problems, and yields a very high performance. This algorithm was tested on the XOR problem, nonlinear function learning and pattern classification, and compared with normalised CFBPNN and BPNN to verify the algorithm.
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