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Double-Level Locally Weighted Extreme Learning Machine for Soft Sensor Modeling of Complex Nonlinear Industrial Processes

机译:复杂非线性工业过程软传感器建模双层本地加权极限极限基础

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摘要

In order to provide the stable and reliable prediction of key quality variables for industrial processes with complicated nonlinear characteristic, this paper proposes a Double-level Locally Weighted Extreme Learning Machine (DLWELM) based soft sensor modeling method. Firstly, a just-in-time learning based extreme learning machine framework (JITELM) is designed for adaptive nonlinear soft sensor modeling. Then, one double-level similarity measure methodology is presented with considering both the variable importance and the sample distance. At the first level, the mutual information between different input variables and output variable is computed for evaluating the importance of the input variables, which results in the variable weight coefficients. Furthermore, the variable-weighted sample distances are obtained at the second level, which are utilized to build the similarity measure for the relevant samples searching. Lastly, with the relevant samples as the modeling dataset, the locally weighted ELM (LWELM) model is developed, which assigns different weights to the training samples according to their double-level similarity values. Three cases including one numerical system, the industrial debutanizer column plant and the industrial polypropylene production process, are used to test the methods and the results demonstrate that the proposed DLWELM method has higher prediction precision compared to the basic ELM methods.
机译:为了提供具有复杂非线性特性的工业过程的关键质量变量的稳定可靠预测,本文提出了一种双层本地加权的极限极限机(DLWelM)的软传感器建模方法。首先,基于即时学习的基于学习的极限机械框架(JITELM)专为自适应非线性软传感器建模而设计。然后,考虑到可变重要性和样本距离,提出了一种双层相似度测量方法。在第一级别,计算不同输入变量和输出变量之间的互信息,用于评估输入变量的重要性,这导致可变权重系数。此外,在第二级获得可变加权样本距离,其用于构建相关样本搜索的相似度量。最后,通过相关的样本作为建模数据集,开发了本地加权的ELM(LWELM)模型,其根据其双级相似度值为训练样本分配不同的权重。三种案例包括一个数值系统,工业脱丹化器柱植物和产业聚丙烯生产过程,用于测试方法,结果表明,与基本ELM方法相比,所提出的DLWelM方法具有更高的预测精度。

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