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Monotonicity preserving SIRMs-connected fuzzy inference systems with a new monotonicity index: Learning and tuning

机译:具有新的单调性指数的,保持SIRMs连接的单调性模糊推理系统:学习和调整

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Recent research on Single Input Rule Modules (SIRMs)-connected fuzzy inference system (FIS) focuses on its monotonicity property fulfillment. The aim of this paper is to propose an alternative approach for modeling of monotonicity-preserving SIRMs-connected FIS. A new monotonicity index (MI) for approximating the monotonicity property fulfillment of an SIRMs-connected FIS is proposed. A hybrid of Harmony Search (HS), SIRMs-connected FIS, and the new MI is investigated. A proposed data-driven monotonicity-preserving SIRMs-connected FIS model with HS is then presented. The use of MI for tuning of an SIRMs-connected FIS is demonstrated too.
机译:连接单输入规则模块(SIRM)的模糊推理系统(FIS)的最新研究集中于其单调性的实现。本文的目的是提出一种替代方法,用于保持单调性的SIRM连接的FIS建模。提出了一种新的单调性指数(MI),用于近似连接SIRM的FIS的单调性。研究了和谐搜索(HS),连接SIRM的FIS和新的MI的混合体。然后,提出了一种带有HS的数据驱动的保持单调性的SIRM连接的FIS模型。还演示了如何使用MI来调整与SIRM连接的FIS。

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