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A modified gradient-based neuro-fuzzy learning algorithm and its convergence

机译:改进的基于梯度的神经模糊学习算法及其收敛性

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摘要

Neuro-fuzzy approach is known to provide an adaptive method to generate or tune fuzzy rules for fuzzy systems. In this paper, a modified gradient-based neuro-fuzzy learning algorithm is proposed for zero-order Takagi-Sugeno inference systems. This modified algorithm, compared with conventional gradient-based neuro-fuzzy learning algorithm, reduces the cost of calculating the gradient of the error function and improves the learning efficiency. Some weak and strong convergence results for this algorithm are proved, indicating that the gradient of the error function goes to zero and the fuzzy parameter sequence goes to a fixed value, respectively. A constant learning rate is used. Some conditions for the constant learning rate to guarantee the convergence are specified. Numerical examples are provided to support the theoretical findings.
机译:已知神经模糊方法提供了一种自适应方法来为模糊系统生成或调整模糊规则。本文针对零阶Takagi-Sugeno推理系统,提出了一种改进的基于梯度的神经模糊学习算法。与传统的基于梯度的神经模糊学习算法相比,该改进算法减少了计算误差函数的梯度的成本,并提高了学习效率。证明了该算法的一些弱和强收敛结果,表明误差函数的梯度分别为零,模糊参数序列为固定值。使用恒定的学习率。规定了恒定学习率以保证收敛的一些条件。提供了数值示例来支持理论发现。

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