Fuzzy rule based systems (FRBSs) is a rule-based system which uses linguistic fuzzy variables as antecedents and consequent to represent the human understandable knowledge. They have been applied to various applications and areas throughout the literature. However, FRBSs suffers from many drawbacks such as uncertainty representation, high number of rules, interpretability loss, high computational time for learning etc. To overcome these issues with FRBSs, there exists many extentions of FRBSs. In this paper, we present an overview and literature review for various types and prominent areas of fuzzy systems (FRBSs) namely genetic fuzzy system (GFS), Hierarchical fuzzy system (HFS), neuro fuzzy system (NFS), evolving fuzzy system (eFS), FRBSs for big data, FRBSs for imbalanced data, interpretability in FRBSs and FRBSs which uses cluster centroids as fuzzy rule, during the years 2010-2021. GFS uses genetic/evolutionary approaches to improve the learning ability of FRBSs, HFS solve the curse of dimensionality for FRBSs, NFS improves approximation ability of FRBSs using neural networks and dynamic systems for streaming data is considered in eFS. FRBSs are seen as good solutions for big data and imbalanced data, in the recent years the interpretability in FRBSs has gained popularity due to high dimensional and big data and rules are initialized with cluster centroids to limit the number of rules in FRBSs. This paper also highlights important contributions, publication statistics and current trends in the field. The paper also addresses several open research areas which need further attention from the FRBSs research community.
翻译:以模糊规则为基础的系统(FRBS)是一个基于规则的系统,它使用语言模糊变量作为预兆,从而代表人类可理解的知识。它们在整个文献中应用到各种应用和领域。然而,FRBS存在许多缺陷,例如不确定性代表、规则数量高、可解释性损失、高计算时间等。为了克服FRBS的这些问题,在2010-2021年期间,FRBS和高计算时间都存在许多范围。在本文中,我们介绍了对各种类型和突出的模糊系统(FRBS)的概览和文献审查,即遗传模糊系统(GFS)的预兆和随后代表人类可理解的知识。HFS的高级模糊系统(HS)、神经模糊系统(NFS)、神经模糊系统(NFS)、变化系统(efzzy)的演变系统(eFRBS)的演变、FRBS数据的解读性规则(FS)的解读性数据领域。在2010-2021年期间,FS的分类中,GFS的分类和数据流数据流数据分析中,对数值的解读中,也关注。