A hierarchical fuzzy approach for adaptation of pre-given parameters in an interval type-2 TSK fuzzy neural structure

Shirin Fartash Toloue, M. Akbarzadeh-T.
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Abstract

In self-evolving type-2 fuzzy neural structures, there are several pre-given parameters that are conventionally defined before the runtime by using trial-and-error. This approach is very time-consuming and does not guarantee that the selected values are the most appropriate ones for ensuring high convergence speed. To overcome these drawbacks, here a hierarchical fuzzy controller is proposed. The proposed hierarchical controller helps to increase precision since it dynamically adjusts pre-given parameters online by considering the error changes. Moreover, the proposed structure helps to reduce complexity and avoid “curse of dimensionality” which is a common phenomenon when the number of input variables to the fuzzy system is large. Hence, this structure is suitable for type-2 fuzzy neural systems which usually have several pre-given parameters to be adjusted. The proposed hierarchical fuzzy controller is applied to an interval type-2 TSK fuzzy neural network and the performance is investigated by comparing the results with trial-and-error approach in two different applications of identification and control. The simulation results indicate that the proposed method can effectively cover the drawbacks of trial-and-error approach while it enhances the precision of the system.
区间2型TSK模糊神经结构中预给定参数的层次模糊自适应方法
在自进化的2型模糊神经结构中,有几个预先给定的参数,这些参数通常是在运行前通过试错法定义的。这种方法非常耗时,并且不能保证所选值是保证高收敛速度的最合适值。为了克服这些缺点,本文提出了一种层次模糊控制器。该控制器通过考虑误差变化,在线动态调整预先给定的参数,有助于提高精度。此外,本文提出的结构有助于降低复杂性,避免模糊系统输入变量数量较大时常见的“维数诅咒”现象。因此,这种结构适用于通常有几个预先给定的参数需要调整的2型模糊神经系统。将所提出的层次模糊控制器应用于区间2型TSK模糊神经网络,并在两种不同的识别和控制应用中,通过比较试错法的结果,研究了层次模糊控制器的性能。仿真结果表明,该方法有效地弥补了试错法的不足,提高了系统的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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