Type-2 fuzzy logic applications designed for active parameter adaptation in metaheuristic algorithm for fuzzy fault-tolerant controller

H. Patel, V. Shah
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引用次数: 5

Abstract

PurposeIn recent times, fuzzy logic is gaining more and more attention, and this is because of the capability of understanding the functioning of the system as per human knowledge-based system. The main contribution of the work is dynamically adapting the important parameters throughout the execution of the flower pollination algorithm (FPA) using concepts of fuzzy logic. By adapting the main parameters of the metaheuristics, the performance and accuracy of the metaheuristic have been improving in a varied range of applications.Design/methodology/approachThe fuzzy logic-based parameter adaptation in the FPA is proposed. In addition, type-2 fuzzy logic is used to design fuzzy inference system for dynamic parameter adaptation in metaheuristics, which can help in eliminating uncertainty and hence offers an attractive improvement in dynamic parameter adaption in metaheuristic method, and, in reality, the effectiveness of the interval type-2 fuzzy inference system (IT2 FIS) has shown to provide improved results as matched to type-1 fuzzy inference system (T1 FIS) in some latest work.FindingsOne case study is considered for testing the proposed approach in a fault tolerant control problem without faults and with partial loss of effectiveness of main actuator fault with abrupt and incipient nature. For comparison between the type-1 fuzzy FPA and interval type-2 fuzzy FPA is presented using statistical analysis which validates the advantages of the interval type-2 fuzzy FPA. The statistical Z-test is presented for comparison of efficiency between two fuzzy variants of the FPA optimization method.Originality/valueThe main contribution of the work is a dynamical adaptation of the important parameters throughout the execution of the flower pollination optimization algorithm using concepts of type-2 fuzzy logic. By adapting the main parameters of the metaheuristics, the performance and accuracy of the metaheuristic have been improving in a varied range of applications.
在模糊容错控制器的元启发式算法中设计了主动参数自适应的二类模糊逻辑应用
近年来,模糊逻辑越来越受到人们的关注,这是因为模糊逻辑能够按照人类基于知识的系统来理解系统的功能。该工作的主要贡献是利用模糊逻辑的概念在整个授粉算法(FPA)的执行过程中动态地适应重要参数。通过调整元启发式算法的主要参数,在各种应用中,元启发式算法的性能和精度都得到了提高。提出了一种基于模糊逻辑的FPA参数自适应方法。此外,利用2型模糊逻辑设计元启发式动态参数自适应模糊推理系统,有助于消除不确定性,从而为元启发式方法的动态参数自适应提供了一个有吸引力的改进,并且在现实中,在一些最新工作中,区间2型模糊推理系统(IT2 FIS)的有效性已经显示出与1型模糊推理系统(T1 FIS)相匹配的改进结果。研究结果考虑了一个案例研究,以测试所提出的方法在无故障和部分失效的容错控制问题的主执行器故障具有突发性和初期性质。通过统计分析,对区间2型模糊FPA和1型模糊FPA进行了比较,验证了区间2型模糊FPA的优越性。采用统计z检验比较了FPA优化方法的两种模糊变量的效率。这项工作的主要贡献是利用2型模糊逻辑的概念在整个授粉优化算法的执行过程中对重要参数进行动态适应。通过调整元启发式算法的主要参数,在各种应用中,元启发式算法的性能和精度都得到了提高。
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