A Hybrid Approach Variable Selection Algorithm Based on Mutual Information for Data-Driven Industrial Soft-Sensor Applications

Jorge E. Cote-Ballesteros, Victor Hugo Grisales Palacios, Jhon Edisson Rodriguez-Castellanos
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引用次数: 1

Abstract

The development of virtual sensors predicting the desired output requires a careful selection of input variables for model construction. In an industrial environment, datasets contain many instrumentation system measures; however, these variables are often non-relevant or excessive information. This paper proposes a variable selection algorithm based on mutual information examination, redundancy analysis, and variable reduction for soft-sensor modeling. A relevance calculation is performed in the first stage to select important variables using the mutual information criterion. Then, the detection and exclusion of redundant variables are carried out, penalizing undesired variables. Finally, the most relevant variables subset is determined through a wrapper method using Mallowssans' Cp metric to assess the fitting prediction performance. The approach was successfully applied to estimate the ethanol concentration for a distillation column process using an adaptive network-based fuzzy inference system architecture as a non-linear dynamic regression model. A comparative study was performed considering the application of correlation analysis and the method proposed in this study. Simulation results show the effectiveness of the proposed approach in the variable selection providing a reduction in search of suitable models that achieve faster results for developing soft sensors oriented to industrial applications.
数据驱动工业软测量中基于互信息的混合方法变量选择算法
开发预测期望输出的虚拟传感器需要仔细选择模型构建的输入变量。在工业环境中,数据集包含许多仪器系统测量;然而,这些变量往往是不相关的或过多的信息。提出了一种基于互信息检验、冗余分析和变量约简的软测量建模变量选择算法。在第一阶段进行相关性计算,利用互信息准则选择重要变量。然后,进行冗余变量的检测和排除,惩罚不需要的变量。最后,通过使用malallowssans的Cp度量来评估拟合预测性能的包装方法确定最相关的变量子集。该方法采用自适应网络模糊推理系统结构作为非线性动态回归模型,成功地应用于精馏塔过程中乙醇浓度的估计。结合相关分析的应用和本文提出的方法进行了对比研究。仿真结果表明了该方法在变量选择方面的有效性,减少了对合适模型的搜索,为开发面向工业应用的软传感器提供了更快的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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