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Towards Sparse Rule Base Generation for Fuzzy Rule Interpolation

机译:面向模糊规则插值的稀疏规则库生成

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摘要

Fuzzy inference systems have been successfully applied to many real-world applications. Traditional fuzzy inference systems are only applicable to problems with dense rule bases by which the entire input domain is fully covered, whilst fuzzy rule interpolation (FRI) is also able to work with sparse rule bases that may not cover certain observations. Thanks to their abilities to work with fewer rules, FRI approaches have also been utilised to reduce system complexity by removing those rules which can be approximated by their neighbouring ones for complex fuzzy models. A number of important fuzzy rule base generation approaches have been proposed in the literature, but the majority of these only target dense rule bases for traditional fuzzy inference systems. This paper proposes a novel sparse fuzzy rule base generation method to support FRI. The approach first identifies important rules that cannot be accurately approximated by their neighbouring ones to initialise the rule base. Then the raw rule base is optimised by fine tuning the membership functions of the fuzzy sets. Experimentation is conducted to demonstrate the working principles of the proposed system, with results comparable to those of traditional methods.
机译:模糊推理系统已成功应用于许多实际应用中。传统的模糊推理系统仅适用于具有密集规则库的问题,通过该问题可以完全覆盖整个输入域,而模糊规则插值(FRI)也可以使用稀疏规则库,这些规则库可能无法涵盖某些观察结果。由于它们可以使用较少的规则,因此FRI方法也已通过减少复杂的模糊模型可以消除的规则来降低系统复杂性。文献中已经提出了许多重要的模糊规则库生成方法,但是大多数方法仅针对传统模糊推理系统的密集规则库。提出了一种新的支持FRI的稀疏模糊规则库生成方法。该方法首先识别重要规则,而这些规则不能被其相邻规则精确地近似以初始化规则库。然后通过微调模糊集的隶属函数来优化原始规则库。进行实验以证明所提出系统的工作原理,其结果可与传统方法相媲美。

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