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Subset fusion based T-S fuzzy modeling for blast furnace gas system in steel industry

机译:钢铁行业高炉煤气系统基于子集融合的T-S模糊建模

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Blast furnace gas (BFG) is regarded as a very important secondary energy in steel industry, and an effective model to describe the status of BFG system is fairly significant to maintain the system balance and stability. However, the high level noises in industrial data and the disturbances in training samples could lead to the overfitting phenomenon. A fuzzy subset fusion combined with a rule reduction method is proposed in this study to simplify the structure of the rule base and enhance the generalization ability of the fuzzy model. In the proposed method, the parameters of membership functions (MFs) are clustered by using a fuzzy c-means (FCM) method for forming the new representative MFs, and the rules reduction and the consequent parameters update are carried out based on the weights of each rule. The experimental analysis by using a number of real industrial data demonstrates that the proposed method can effectively deal with the fuzzy subset overlapping problem and redundant rules so as to improve the generalization ability of the T-S fuzzy model.
机译:高炉煤气(BFG)被认为是钢铁行业中非常重要的二次能源,有效的描述高炉煤气系统状态的模型对于维持系统的平衡和稳定性具有相当重要的意义。但是,工业数据中的高水平噪声和训练样本中的干扰可能会导致过度拟合现象。提出了一种模糊子集融合与规则约简方法相结合的方法,以简化规则库的结构,增强模糊模型的泛化能力。在提出的方法中,隶属函数(MFs)的参数通过使用模糊c均值(FCM)方法进行聚类以形成新的代表性MF,并基于权重进行规则约简和随后的参数更新。每条规则。通过大量实际工业数据的实验分析表明,该方法可以有效地处理模糊子集重叠问题和冗余规则,从而提高了T-S模糊模型的泛化能力。

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