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The use of first principles model for evaluation of adaptive soft sensor for multicomponent distillation unit

机译:用于评估多组分蒸馏装置的自适应软传感器的第一种原理模型

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Traditionally, soft sensors are developed based on measurement data only, but here we consider an adaptive soft sensor that uses data generated from a fitted, first principles model of the distillation columns. The contribution of the paper is a procedure for moving window soft sensor design that incorporates a priori knowledge, which is especially suitable when the training sample is small and contains measurement errors. In addition, we propose a continuous adaptation of all model parameters based on new data, instead of the usual procedure of only updating the bias. The accuracy of the predicted product quality is investigated by calculating the coefficient of determination and root mean squared error for the test sample. Several approaches were considered, and we found that a constrained optimization approach was superior. The constraints on the model parameters of soft sensors are derived from a fitted, rigorous distillation unit model. The improved estimator quality resulted in the successful industrial application of advanced process control systems. (C) 2019 Institution of Chemical Engineers. Published by Elsevier B.V. All rights reserved.
机译:传统上,仅基于测量数据开发的软传感器,但这里我们考虑使用从蒸馏塔的装配的第一个原理模型产生的数据的自适应软传感器。纸张的贡献是移动窗口软传感器设计的程序,该设计包含了先验知识,当训练样本很小并且包含测量误差时特别合适。此外,我们提出了基于新数据的所有模型参数的持续调整,而不是仅更新偏差的通常过程。通过计算测试样品的测定系数和均方平方误差来研究预测产品质量的准确性。考虑了几种方法,我们发现受限制的优化方法优越。软传感器模型参数的约束来自拟合的严格蒸馏单元模型。提高估计质量导致了先进过程控制系统的成功产业应用。 (c)2019化学工程师机构。 elsevier b.v出版。保留所有权利。

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