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A non-linear programming-based similarity reasoning scheme for modelling of monotonicity-preserving multi-input fuzzy inference systems

机译:基于非线性规划的相似性推理方案,用于保持单调性的多输入模糊推理系统建模

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In this paper, the zero-order Sugeno Fuzzy Inference System (FIS) that preserves the monotonicity property is studied. The sufficient conditions for the zero-order Sugeno FIS model to satisfy the monotonicity property are exploited as a set of useful governing equations to facilitate the FIS modelling process. The sufficient conditions suggest a fuzzy partition (at the rule antecedent part) and a monotonically-ordered rule base (at the rule consequent part) that can preserve the monotonicity property. The investigation focuses on the use of two Similarity Reasoning (SR)-based methods, i.e., Analogical Reasoning (AR) and Fuzzy Rule Interpolation (FRI), to deduce each conclusion separately. It is shown that AR and FRI may not be a direct solution to modelling of a multi-input FIS model that fulfils the monotonicity property, owing to the difficulty in getting a set of monotonically-ordered conclusions. As such, a Non-Linear Programming (NLP)-based SR scheme for constructing a monotonicity-preserving multi-input FIS model is proposed. In the proposed scheme, AR or FRI is first used to predict the rule conclusion of each observation. Then, a search algorithm is adopted to look for a set of consequents with minimized root means square errors as compared with the predicted conclusions. A constraint imposed by the sufficient conditions is also included in the search process. Applicability of the proposed scheme to undertaking fuzzy Failure Mode and Effect Analysis (FMEA) tasks is demonstrated. The results indicate that the proposed NLP-based SR scheme is useful for preserving the monotonicity property for building a multi-input FIS model with an incomplete rule base.
机译:本文研究了保留单调性的零阶Sugeno模糊推理系统(FIS)。零阶Sugeno FIS模型满足单调性的充分条件被用作一组有用的控制方程式,以促进FIS建模过程。充分的条件表明可以保留单调性的模糊分区(在规则前部分)和单调有序的规则库(在规则后继部分)。该调查着重于使用两种基于相似性推理(SR)的方法(即类比推理(AR)和模糊规则插值(FRI))来分别推断每个结论。结果表明,由于难以获得一组单调有序的结论,AR和FRI可能不是满足单调性的多输入FIS模型建模的直接解决方案。因此,提出了一种基于非线性规划(NLP)的SR方案,该方案用于构造保持单调性的多输入FIS模型。在提出的方案中,AR或FRI首先用于预测每个观测值的规则结论。然后,采用搜索算法来寻找与预测结论相比具有最小均方根误差的结果集。由充分条件施加的约束也包括在搜索过程中。证明了该方案在进行模糊失效模式和后果分析(FMEA)任务中的适用性。结果表明,所提出的基于NLP的SR方案对于保留单调性,以建立具有不完整规则库的多输入FIS模型是有用的。

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