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Criteria for linguistic improvement of precise fuzzy models by ortliogonail transforms. Application to ART based models

机译:Ortliogonail变换的精确模糊模型语言改善的标准。应用于艺术模型

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The aim of this paper is focused on fuzzy models and simplification-interpretability ideas to generate simpler and more interpretable models in accordance with fuzzy logic. These concepts are not very common in (precise) fuzzy modeling methods, which are the most common approach in technical fields. Here, orthogonal transforms are considered for achieving this aim, defining a criteria set to guide the choice of an adequate rule set for the simplification procedure. Data-driven fuzzy modeling generates models with a good accuracy but other aspects about the fuzzy logic, such as compactness or interpretability, are not considered, so these models can contain an excessive number of rules, introducing redundancy, incoherence or extra fuzzy sets. In this context, the simplification-improvement procedure is carried out to try to keep most of the advantages of the original model (accuracy) while improving other aspects with poor performance: compactness, distiguishability, etc. In this way, a two step methodology is used: first, a (precise or linguistic) fuzzy algorithm for modeling is used, taking advantage of any well-known algorithm, then rule based models generated by them are improved using the criteria based on the orthogonal transforms proposed in this paper. The proposal is applied to fuzzy models generated by FasArt (Fuzzy Adaptive System ART based), this has the common drawbacks of precise fuzzy modeling. Two case-studies are considered: a DC motor and the Box-Jenkins gas furnace. For each case, two models have been generated with different complexities and fuzzy natures, then the simplification process based on orthogonal transformation is carried out by the criteria proposed, evaluating each criterion and obtaining simpler and more interpretable but sufficiently accurate fuzzy models. Here Mamdani fuzzy systems have been taken into account.
机译:本文的目的主要集中在模糊模型和简化解释性思想,以根据模糊逻辑产生更简单和更具可解释的模型。这些概念在(精确)模糊建模方法中不是很常见,这是技术领域中最常见的方法。这里,考虑实现正交变换以实现此目的,定义设置的标准,以指导用于简化过程的适当规则集的选择。数据驱动的模糊建模生成具有良好精度的模型,但不考虑关于模糊逻辑的其他方面,例如紧凑性或可解释性,因此这些模型可以包含过多的规则,引入冗余,不连结或额外的模糊集。在这种情况下,进行简化改进程序,以试图保持原始模型(精度)的大部分优势,同时改善性能差的其他方面:紧凑,易感性等,以这种方式,两步方法是使用:首先,使用用于建模的(精确或语言)模糊算法,利用任何众所周知的算法,然后使用基于本文提出的正交变换的标准来改进由它们产生的规则基于规则的模型。该提案应用于Fasart(模糊自适应系统艺术)生成的模糊模型,这具有精确的模糊建模的共同缺点。考虑了两项案例研究:DC电机和箱子 - Jenkins燃气炉。对于每种情况,已经产生了两种模型,具有不同的复杂性和模糊自然,然后通过所提出的标准来执行基于正交变换的简化过程,评估每个标准并获得更简单,更简单但足够的准确的模糊模型。这里已经考虑了Mamdani模糊系统。

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