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A novel training method based on variable structure systems approach for interval type-2 fuzzy neural networks

机译:一种基于变结构系统的区间二型模糊神经网络训练方法

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Type-2 fuzzy logic systems have been applied in various control problems because of their abilities to model uncertainties in a more effective way than type-1 fuzzy logic systems. In this paper, a novel learning algorithm is proposed to train type-2 fuzzy neural networks. In the approach, instead of trying to minimize an error function, the weights of the network are tuned by the proposed algorithm in a way that the error is enforced to satisfy a stable equation. The parameter update rules are derived and the convergence of the weights is proved by Lyapunov stability method. To illustrate the applicability and the efficacy of the proposed method, the control problem of Duffing oscillator with uncertainties and disturbances is studied. The simulation studies indicate that the type-2 fuzzy structure with the proposed learning algorithm result in a better performance than its type-1 fuzzy counterpart.
机译:由于类型2模糊逻辑系统具有比类型1模糊逻辑系统更有效的方式对不确定性进行建模的能力,因此已应用于各种控制问题。本文提出了一种新颖的学习算法来训练2型模糊神经网络。在该方法中,不是试图使误差函数最小化,而是通过所提出的算法来调整网络的权重,以使误差被强制满足稳定方程。推导了参数更新规则,并通过Lyapunov稳定性方法证明了权重的收敛性。为了说明该方法的适用性和有效性,研究了具有不确定性和干扰性的Duffing振荡器的控制问题。仿真研究表明,带有学习算法的2型模糊结构比1型模糊结构具有更好的性能。

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