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Fuzzy Forecast Modeling for Gas Furnace Based on Fuzzy Sets and Rough Sets Theory

机译:基于模糊集和粗糙集理论的煤气炉模糊预测建模。

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摘要

This paper describes a new approach to generate optimal fuzzy forecast model for Box and Jenkins' gas furnace from its Input/ Output data (I/O data) by fuzzy set theory and rough set theory (RST). Generally, the nonlinear mapping relations of I/O data can be expressed by fuzzy set theory and fuzzy logic, which are proven to be a nonlinear universal function approximator. One of the most distinguished features of RST is that it can directly extract knowledge from large amount of data without any transcendental knowledge. The fuzzy forecast model determination mainly includes 3 steps: firstly, express I/O data in fuzzy decision table. Secondly, quantitatively determine the best structure of the fuzzy forecast model by RST. The third step is to get optimal fuzzy rules from fuzzy decision table by RST reduction algorithm. Experimental results have shown the new algorithm is simple and intuitive. It is another successful application of RST in fuzzy identification.
机译:本文介绍了一种利用模糊集理论和粗糙集理论(RST)从Box和Jenkins燃气炉的输入/输出数据(I / O数据)生成最佳模糊预测模型的新方法。通常,I / O数据的非线性映射关系可以用模糊集理论和模糊逻辑表示,这被证明是非线性通用函数逼近器。 RST最显着的特征之一是它可以直接从大量数据中提取知识,而无需任何先验知识。模糊预测模型的确定主要包括三个步骤:首先,在模糊决策表中表达I / O数据。其次,通过RST定量确定模糊预测模型的最佳结构。第三步是通过RST约简算法从模糊决策表中获得最优模糊规则。实验结果表明,该新算法简单直观。这是RST在模糊识别中的另一个成功应用。

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