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An interactively recurrent functional neural fuzzy network with fuzzy differential evolution and its applications

机译:具有微分进化的交互式递归泛函神经模糊网络及其应用

摘要

In this paper, an interactively recurrent functional neural fuzzy network (IRFNFN) with fuzzy differential evolution (FDE) learning method was proposed for solving the control and the prediction problems. The traditional differential evolution (DE) method easily gets trapped in a local optimum during the learning process, but the proposed fuzzy differential evolution algorithm can overcome this shortcoming. Through the information sharing of nodes in the interactive layer, the proposed IRFNFN can effectively reduce the number of required rule nodes and improve the overall performance of the network. Finally, the IRFNFN model and associated FDE learning algorithm were applied to the control system of the water bath temperature and the forecast of the sunspot number. The experimental results demonstrate the effectiveness of the proposed method.
机译:为了解决控制和预测问题,提出了一种具有模糊差分进化(FDE)学习方法的交互式递归泛函神经模糊网络(IRFNFN)。在学习过程中,传统的差分进化(DE)方法很容易陷入局部最优状态,但是所提出的模糊差分进化算法可以克服这一缺点。通过交互层中节点的信息共享,所提出的IRFNFN可以有效减少所需规则节点的数量,并提高网络的整体性能。最后,将IRFNFN模型和相关的FDE学习算法应用于水浴温度控制和太阳黑子数预测。实验结果证明了该方法的有效性。

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