Advancing Fuzzy Logic: A Hierarchical Fuzzy System Approach

Nurul Hanan Anuar, T. R. Razak, N. Kamis
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Abstract

Fuzzy logic systems (FLS) are widely used in various engineering, medical, and scientific applications for modelling complex and uncertain systems. However, traditional FLS has limitations in handling complex and hierarchical structures due to their lack of scalability and interpretability. This paper proposes an approach to hierarchical fuzzy systems (HFS) that enhances the traditional FLS by providing a hierarchical structure with multiple levels of fuzzy rules. The main contribution of this paper is the proposal of HFS, which improves interpretability, scalability, and accuracy compared to traditional FLS, particularly for real-world applications. However, the question arises, "How can the FLS be converted into the HFS?" In this paper, the approach to HFS architecture will comprise two levels of FLS, where the first level determines the overall behaviour of the system, and the second level refines the output by considering the local behaviour. The proposed approach has been validated through experimental results on a case studies, such as the Iris flower classification. The results demonstrate that HFS provides more efficient and reliable solutions and can be applied to various complex and hierarchical systems in different domains, such as manufacturing, robotics, and decision-making.
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推进模糊逻辑:层次模糊系统方法
模糊逻辑系统(FLS)被广泛应用于各种工程、医疗和科学领域,为复杂和不确定的系统建模。然而,由于缺乏可扩展性和可解释性,传统的模糊逻辑系统在处理复杂的分层结构时存在局限性。本文提出了一种分层模糊系统(HFS)方法,通过提供具有多层次模糊规则的分层结构来增强传统的 FLS。本文的主要贡献在于提出了 HFS,与传统的 FLS 相比,HFS 提高了可解释性、可扩展性和准确性,特别是在实际应用中。然而,问题来了,"如何将 FLS 转换为 HFS?在本文中,HFS 架构方法将包括两级 FLS,其中第一级决定系统的整体行为,第二级通过考虑局部行为来完善输出。本文提出的方法已通过鸢尾花分类等案例研究的实验结果进行了验证。结果表明,HFS 提供了更高效、更可靠的解决方案,可应用于不同领域的各种复杂分层系统,如制造、机器人和决策。
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