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A distributed PCA-TSS based soft sensor for raw meal fineness in VRM system

机译:基于分布式PCA-TSS的软传感器,用于VRM系统中的生粉细度

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摘要

Vertical roller mill (VRM) is an increasingly popular comminution equipment in cement plants. Raw meal fineness at the outlet of VRM is one of the most important indicators to measure product quality. A soft sensing model developed for powder fineness in real-time could assist operators to monitor the comminution process online. However, due to frequent fluctuation of raw material properties, intrinsic nonlinearity of the process and changeable operation conditions, the data present a multimodal characteristic. Therefore, this paper proposes an indicator to measure the similarity between variables, that is, the shortest distance between nodes in the constructed weighted network. By combining the Girvan Newman (GN) algorithm, the nodes in the variable network are divided into multiple groups, and based on this, the distributed PCA (DPCA) similarity is adopted for time series segmentation (TSS). Compared with traditional similarities between samples (distance, density, etc.), the similarity between time series focuses more on the dynamic characteristics of variables. And the implementation of DPCA similarity is equivalent to increasing the sparse characteristics of principal components, which is beneficial for enhancing the generalization of the model. Support vector regression (SVR) models along with a support vector machine (SVM) based classifier are built to obtain final predictions of the powder fineness. Effectiveness of the proposed method is verified by actual industrial data. It has a root mean square error (RMSE) index of 0.3451 on the test set, which is much smaller than that of the multi-modal soft sensor based on either clustering approaches (0.6524) or PCA similarity based TSS method (0.4282).
机译:立式辊磨机(VRM)是水泥厂中越来越流行的粉碎设备。 VRM出口处的生粉细度是衡量产品质量的最重要指标之一。为粉末细度实时开发的软感测模型可以帮助操作员在线监控粉碎过程。但是,由于原材料性能的频繁波动,过程的固有非线性和可变的操作条件,数据呈现出多峰特性。因此,本文提出了一种指标来衡量变量之间的相似性,即构造的加权网络中节点之间的最短距离。通过结合Girvan Newman(GN)算法,将可变网络中的节点分为多个组,并在此基础上,将分布式PCA(DPCA)相似度用于时间序列分段(TSS)。与样本之间的传统相似性(距离,密度等)相比,时间序列之间的相似性更多地关注变量的动态特性。 DPCA相似度的实现等同于增加主成分的稀疏特征,这有利于增强模型的泛化性。建立支持向量回归(SVR)模型以及基于支持向量机(SVM)的分类器,以获得粉末细度的最终预测。实际工业数据验证了该方法的有效性。它在测试集上的均方根误差(RMSE)指数为0.3451,比基于聚类方法(0.6524)或基于PCA相似性的TSS方法(0.4282)的多模式软传感器的均方根误差小得多。

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