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Intelligent Control of the Complex Technology Process Based on Adaptive Pattern Clustering and Feature Map

机译:基于自适应模式聚类和特征图的复杂技术过程智能控制

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A kind of fuzzy neural networks (FNNs) based on adaptive pattern clustering and feature map (APCFM) is proposed to improve the property of the large delay and time varying of the sintering process. By using the density clustering and learning vector quantization (LVQ), the sintering process is divided automatically into subclasses which have similar clustering center and labeled fitting number. Then these labeled subclass samples are taken into fuzzy neural network (FNN) to be trained; this network is used to solve the prediction problem of the burning through point (BTP). Using the 707 groups of actual training process data and the FNN to train APCFM algorithm, experiments prove that the system has stronger robustness and wide generality in clustering analysis and feature extraction.
机译:提出了一种基于自适应模式聚类和特征图(APCFM)的模糊神经网络(FNN),以提高烧结过程的大延时和时变特性。通过使用密度聚类和学习矢量量化(LVQ),将烧结过程自动分为具有相似聚类中心和标记拟合数的子类。然后将这些标记的子类样本放入模糊神经网络(FNN)中进行训练;该网络用于解决烧穿点(BTP)的预测问题。实验使用707组实际训练过程数据和FNN训练APCFM算法,实验证明该系统在聚类分析和特征提取中具有较强的鲁棒性和广泛的通用性。

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