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Analysis of the Noise Reduction Property of Type-2 Fuzzy Logic Systems Using a Novel Type-2 Membership Function

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TLDR
The proposed type-2 fuzzy neuro structure is tested on different input-output data sets, and it is shown that the T2FLS with the proposed novel membership function has better noise reduction property when compared to the type-1 counterparts.
Abstract
In this paper, the noise reduction property of type-2 fuzzy logic (FL) systems (FLSs) (T2FLSs) that use a novel type-2 fuzzy membership function is studied. The proposed type-2 membership function has certain values on both ends of the support and the kernel and some uncertain values for the other values of the support. The parameter tuning rules of a T2FLS that uses such a membership function are derived using the gradient descend learning algorithm. There exist a number of papers in the literature that claim that the performance of T2FLSs is better than type-1 FLSs under noisy conditions, and the claim is tried to be justified by simulation studies only for some specific systems. In this paper, a simpler T2FLS is considered with the novel membership function proposed in which the effect of input noise in the rule base is shown numerically in a general way. The proposed type-2 fuzzy neuro structure is tested on different input-output data sets, and it is shown that the T2FLS with the proposed novel membership function has better noise reduction property when compared to the type-1 counterparts.

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Citations
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Journal ArticleDOI

Control Design for Interval Type-2 Fuzzy Systems Under Imperfect Premise Matching

TL;DR: An IT2 Takagi-Sugeno (T-S) fuzzy model is employed to represent the dynamics of nonlinear systems of which the parameter uncertainties are captured by IT2 membership functions characterized by the lower and upper membership functions.
Journal ArticleDOI

Type-2 Fuzzy Logic Trajectory Tracking Control of Quadrotor VTOL Aircraft With Elliptic Membership Functions

TL;DR: In this paper, the authors compared and contrasted type-1 and type-2 fuzzy neural networks (T2FNNs) for the trajectory tracking problem of quadrotor VTOL aircraft in terms of their tracking accuracy and control efforts.
Journal ArticleDOI

A TSK-Type-Based Self-Evolving Compensatory Interval Type-2 Fuzzy Neural Network (TSCIT2FNN) and Its Applications

TL;DR: This paper proposes a Takagi-Sugeno-Kang (TSK)-type-based self-evolving compensatory interval type-2 fuzzy neural network (FNN) (TSCIT2FNN), which produces smaller root-mean-square errors and converges more quickly in system modeling and noise cancellation problems.
Journal ArticleDOI

Multiobjective Evolution of Fuzzy Rough Neural Network via Distributed Parallelism for Stock Prediction

TL;DR: Modifications to the existing models of fuzzy rough neural network are proposed and a powerful evolutionary framework for fuzzyrough neural networks is developed by inheriting the merits of both the merits and the objectives of prediction precision and network simplicity are considered.
Journal ArticleDOI

Simplified Interval Type-2 Fuzzy Neural Networks

TL;DR: A simple interval type-2 FNN, which uses intervaltype-2 fuzzy sets in the premise and the Takagi-Sugeno-Kang type in the consequent of the fuzzy rule, which yields fewer test errors and less computational complexity than other type-1 fuzzy systems.
References
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Journal ArticleDOI

Oscillation and Chaos in Physiological Control Systems

TL;DR: First-order nonlinear differential-delay equations describing physiological control systems displaying a broad diversity of dynamical behavior including limit cycle oscillations, with a variety of wave forms, and apparently aperiodic or "chaotic" solutions are studied.
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Type-2 fuzzy sets made simple

TL;DR: Establishing a small set of terms that let us easily communicate about type-2 fuzzy sets and also let us define such sets very precisely, and presenting a new representation for type- 2 fuzzy sets, and using this new representation to derive formulas for union, intersection and complement of type-1 fuzzy sets without having to use the Extension Principle.
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Interval type-2 fuzzy logic systems: theory and design

TL;DR: An efficient and simplified method to compute the input and antecedent operations for interval type-2 FLSs: one that is based on a general inference formula for them is proposed.
Journal ArticleDOI

On fuzzy modeling using fuzzy neural networks with the back-propagation algorithm

TL;DR: A fuzzy modeling method using fuzzy neural networks with the backpropagation algorithm is presented that can identify the fuzzy model of a nonlinear system automatically.
Journal ArticleDOI

Diagonal recurrent neural networks for dynamic systems control

TL;DR: Convergence theorems for the adaptive backpropagation algorithms are developed for both DRNI and DRNC and an approach that uses adaptive learning rates is developed by introducing a Lyapunov function.
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