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NEURO-FUZZY MODELING WITH A NEW HYBRID LEARNING ALGORITHM

机译:一种新的混合学习算法的神经模糊建模

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In this paper, a neuro-fuzzy modeling approach with a new hybrid-learning algorithm (NF-HLA) is presented. The NF-HLA is built using a feed forward neural network functionally equivalent to a Takagi-Sugeno fuzzy system. At the premise part of the NF-HLA, the parameters of the membership functions are adjusted with the use of the Levenberg-Marquardt algorithm instead of the backpropagation (BP) learning adopted by many existing methods. The consequent parameters are obtained using the least squares estimates algorithm. The NF-HLA is employed in a static function approximation and in nonlinear system identification. Simulation results demonstrate that a compact and high-performance neuro-fuzzy system can be constructed. Comprehensive comparisons with other approaches show that the proposed approach is superior in terms of learning efficiency and performance.
机译:本文提出了一种具有新的混合学习算法(NF-HLA)的神经模糊建模方法。 NF-HLA采用馈电前向神经网络构建,该馈电神经网络等同于Takagi-Sugeno模糊系统。在NF-HLA的前提部分,使用Levenberg-Marquardt算法调整成员函数的参数,而不是许多现有方法采用的BackProjagation(BP)学习。因此,使用最小二乘估计算法获得了结果的参数。 NF-HLA用于静态函数近似和非线性系统识别。仿真结果表明,可以构建紧凑且高性能的神经模糊系统。与其他方法的综合比较表明,该方法在学习效率和性能方面优越。

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