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Covariance-based locally weighted partial least squares for high-performance adaptive modeling

机译:基于协方差的局部加权偏最小二乘用于高性能自适应建模

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Locally weighted partial least squares (LW-PLS) is one of Just-in-Time (JIT) modeling methods; PLS is used to build a local linear regression model every time when output variables need to be estimated. The prediction accuracy of local models strongly depends on the definition of similarity between a newly obtained sample and past samples stored in a database. To calculate the similarity, the Euclidean distance and the Mahalanobis distance have been widely used, but they do not take account of the relationship between input and output variables. This fact limits the achievable performance of LW-PLS and other locally weight regression methods. Thus, in the present work, covariance-based locally weighted PLS (CbLW-PLS) is proposed by integrating LW-PLS and a new similarity index based on the covariance between input and output variables. CbLW-PLS was applied to two industrial problems: soft-sensor design for estimating unreacted NaOH concentration in an alkali washing tower in a petrochemical process, and process analytical technology (PAT) for estimating concentration of a residual drug substance in a pharmaceutical process. The proposed similarity index was compared with six conventional indexes based on distances, correlations, or regression coefficients. The results have demonstrated that CbLW-PLS achieved the best prediction performance of all in both case studies. (C) 2015 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY license license (http://creativecommons.org/licenses/by/4.0/).
机译:局部加权偏最小二乘(LW-PLS)是即时(JIT)建模方法之一;每当需要估计输出变量时,PLS用于构建局部线性回归模型。局部模型的预测准确性很大程度上取决于新获得的样本与数据库中存储的过去样本之间的相似性定义。为了计算相似度,已广泛使用了欧几里得距离和马氏距离,但它们没有考虑输入变量和输出变量之间的关系。这个事实限制了LW-PLS和其他局部权重回归方法的可实现性能。因此,在当前工作中,通过将LW-PLS和基于输入和输出变量之间的协方差的新相似度指数相集成,提出了基于协方差的局部加权PLS(CbLW-PLS)。 CbLW-PLS被应用于两个工业问题:软传感器设计,用于估算石化工艺中碱洗塔中未反应的NaOH浓度;工艺分析技术(PAT),用于估算制药工艺中残留药物的浓度。根据距离,相关性或回归系数,将拟议的相似性指标与六个常规指标进行了比较。结果表明,在两个案例研究中,CbLW-PLS均达到了最佳的预测性能。 (C)2015作者。由Elsevier B.V.发布。这是CC BY许可证许可下的开放获取文章(http://creativecommons.org/licenses/by/4.0/)。

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