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Super Model-Based Techniques for Batch Performance Monitoring

机译:基于超级模型的批量性能监控技术

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By combining mechanistic and empirical-based models, a process performance monitoring representation of a dynamic, non-linear process can be developed with the model-plant mismatch forming the basis of the monitoring scheme. In practice, the mechanistic model will not be perfect and therefore the residuals will contain structure. A modified model-based approach, Super Model-Based PCA (SMBPCA), is proposed which incorporates an additional residual modelling stage to remove structure from the residuals. The approach is evaluated on a simulation of a batch process using a number of residual modelling techniques including Partial Least Squares (PLS), dynamic PLS, ARX and dynamic Canonical Correlation Analysis (CCA). The out-of-control average run lengths for these techniques show that the SMBPCA approach gives improved process monitoring and fault detection compared to standard multivariate techniques.
机译:通过组合机械和经验基础的模型,可以通过形成监测方案的基础的模型 - 植物失配,通过形成动态,非线性过程的过程性能监测表示。在实践中,机械模型不会完美,因此残留物将包含结构。提出了一种改进的基于模型的基于模型的PCA(SMBPCA),其包括额外的残余建模阶段,以从残留物中去除结构。使用包括局部最小二乘(PLS),动态PLS,ARX和动态规范相关分析(CCA)的多种残差建模技术对批处理的模拟进行评估。这些技术的控制平均运行长度表明,与标准多变量技术相比,SMBPCA方法可提高过程监测和故障检测。

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