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Knowledge discovery by a neuro-fuzzy modeling framework

机译:神经模糊建模框架的知识发现

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In this paper a neuro-fuzzy modeling framework is proposed, which is devoted to discover knowledge from data and represent it in the form of fuzzy rules. The core of the framework is a knowledge extraction procedure that is aimed to identify the structure and the parameters of a fuzzy rule base, through a two-phase learning of a neuro-fuzzy network. In order to obtain reliable and readable knowledge, two further stages are integrated with the knowledge extraction procedure: a pre-processing stage, performing variable selection on the available data to obtain simpler and more reliable fuzzy rules, and a post-processing stage, that granulates outputs of the extracted fuzzy rules so as to provide a validity range of estimated outputs. Moreover, the framework can address complex multi-input multi-output problems. In such case, two distinct modeling strategies can be followed with the opportunity of producing both a single MIMO model or a collection of MISO models. The proposed framework is verified on a real-world case study, involving prediction of chemical composition of ashes produced by combustion processes carried out in thermo-electric generators located in Italy.
机译:本文提出了一种神经模糊建模框架,该框架致力于从数据中发现知识并以模糊规则的形式表示。该框架的核心是知识提取过程,该过程旨在通过神经模糊网络的两阶段学习来识别模糊规则库的结构和参数。为了获得可靠和可读的知识,知识提取过程还集成了另外两个阶段:预处理阶段,对可用数据执行变量选择以获得更简单,更可靠的模糊规则;以及后处理阶段,细化提取的模糊规则的输出,以提供估计输出的有效范围。而且,该框架可以解决复杂的多输入多输出问题。在这种情况下,可以遵循两种不同的建模策略,并有机会生成单个MIMO模型或MISO模型的集合。所提议的框架在一个实际案例研究中得到了验证,该案例研究包括对位于意大利的热电发电机中燃烧过程产生的灰烬的化学成分进行预测。

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