Study and Application on Dynamic Modeling Method based on SVM and Sliding Time Window Techniques

Cuimei Bo, Zhiquan Wang, Shi Zhang, Aijing Lu
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引用次数: 4

Abstract

The paper introduced a kind of dynamic modeling method based on support vector machine and sliding time window techniques. Aiming at the composition-estimated problem of the azeotropic distillation column, an appropriate industry soft sensor model was built by support vector machine based on least square (LS-SVM). The sliding time window techniques were used to update modeling database. For improving estimate precision, the industry model was corrected on-line by the error between analyzed value and estimated value and was updated automatically by the dynamic modeling database. The industry model was successfully applied to the butadiene distillation equipment to estimate the water content of the azeotropic column. The results of research show that the LS-SVM soft sensor modeling method based on the sliding window is an effect method of the soft sensor modeling method
基于支持向量机和滑动时间窗技术的动态建模方法研究与应用
介绍了一种基于支持向量机和滑动时间窗技术的动态建模方法。针对共沸精馏塔的成分估计问题,采用基于最小二乘法的支持向量机(LS-SVM)建立了合适的工业软测量模型。采用滑动时间窗技术更新建模数据库。为了提高估计精度,利用分析值与估计值之间的误差对工业模型进行在线校正,并通过动态建模数据库自动更新工业模型。将工业模型成功地应用于丁二烯精馏装置中,对共沸塔的含水量进行了估算。研究结果表明,基于滑动窗口的LS-SVM软测量建模方法是软测量建模方法的一种有效方法
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