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Petri type 2 fuzzy neural networks approximator for adaptive control of uncertain non-linear systems

机译:不确定非线性系统的自适应控制的Petri 2型模糊神经网络逼近器

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In this study, the authors developed a novel universal approximator by the integration of Petri networks into type 2 fuzzy neural networks (T2FNN). T2FNN involve large number of rules, which result in heavy computational burden and great computation time. By incorporating Petri layers to optimise the number of rules; these two drawbacks could be very well overcome. Moreover, a new inference type 2 fuzzy system was developed to reduce the time consumed in the iterative K-M inference procedure, and to increase the approximation accuracy. The proposed inference engine is based on the use of an adaptive modulation of the upper and the lower outputs. The Petri type 2 fuzzy neural networks (PT2FNN) approximator was used to approximate the adaptive control for uncertain single-input single-output non-linear system. The stability of the closed-loop system was proven and demonstrated using the Lyaponov approach. Comparative studies of the proposed PT2FNN approximator with type 1 fuzzy neural network and T2FNN were performed. The performances of PT2FNN over the two types of the fuzzy system were shown on the inverted pendulum system.
机译:在这项研究中,作者通过将Petri网络集成到2型模糊神经网络(T2FNN)中,开发了一种新颖的通用逼近器。 T2FNN涉及大量规则,从而导致沉重的计算负担和大量的计算时间。通过合并陪替氏层以优化规则数量;这两个缺点可以很好地克服。此外,开发了一种新的推理类型2模糊系统,以减少迭代K-M推理过程中消耗的时间,并提高近似精度。所提出的推理引擎是基于对上部和下部输出的自适应调制的使用。使用Petri类型2模糊神经网络(PT2FNN)逼近器来对不确定的单输入单输出非线性系统进行自适应控制。使用Lyaponov方法证明并证明了闭环系统的稳定性。对所提出的带有1型模糊神经网络的PT2FNN逼近器和T2FNN进行了比较研究。在倒立摆系统上显示了PT2FNN在两种类型的模糊系统上的性能。

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