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Nonlinear Soft Sensor Modeling Method Based on Multimode Kernel Partial Least Squares Assisted by Improved KFCM Clustering

机译:改进的KFCM聚类辅助的基于多模核偏最小二乘的非线性软传感器建模方法

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Kernel partial least squares (KPLS) method has gained successful applications in the field of nonlinear soft sensor modeling. However, a single global KPLS model may perform unsatisfactorily in some complicated processes, where there exist multiple nonlinear relationships. To handle this problem, this paper proposes a multimode KPLS based soft sensor modeling method assisted by the improved kernel fuzzy C-means (]CFCM) clustering. The proposed MKPLS method applies the “divide and rule” strategy, which partitions the training data into many clusters and builds the local KPLS model for each cluster. Different to the traditional KFCM clustering method, which divides the process data based on the spatial position similarity, this paper designs an improved KFCM method by concentrating on the functional relationships of the samples. Based on the improved KFCM clustering method, the data with the same nonlinear relationships are clustered together and the corresponding KPLS model is developed. Two case studies including one numerical system and one continuous stirred tank reactor (CSTR) system are used to validate the proposed method, and the results demonstrates the effectiveness of the proposed method.
机译:核偏最小二乘(KPLS)方法已经在非线性软传感器建模领域获得了成功的应用。但是,单个全局KPLS模型在存在多个非线性关系的某些复杂过程中可能无法令人满意地执行。针对这一问题,本文提出了一种基于改进的核模糊C均值聚类的基于多模态KPLS的软传感器建模方法。提出的MKPLS方法应用了“划分和规则”策略,该策略将训练数据划分为多个群集,并为每个群集构建本地KPLS模型。与传统的KFCM聚类方法不同,传统的KFCM聚类方法是根据空间位置相似性对过程数据进行划分,它着眼于样本的功能关系,设计了一种改进的KFCM方法。基于改进的KFCM聚类方法,将具有相同非线性关系的数据聚类在一起,并开发了相应的KPLS模型。通过两个案例研究,包括一个数值系统和一个连续搅拌釜反应器(CSTR)系统,对所提方法进行了验证,结果证明了所提方法的有效性。

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