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Multi-model adaptive soft sensor modeling method using local learning and online support vector regression for nonlinear time-variant batch processes

机译:基于局部学习和在线支持向量回归的非线性模型的多模型自适应软传感器建模方法

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摘要

Batch processes are often characterized by inherent nonlinearity, multiplicity of operating phases, and batch-to-batch variations, which poses great challenges for accurate and reliable online prediction of soft sensor. Especially, the soft sensor built with old data may encounter performance deterioration clue to a failure of capturing the time-variant behaviors of batch processes, thus adaptive strategies are necessary. Unfortunately, conventional adaptive soft sensors cannot efficiently account for the within-batch as well as between-batch time-variant changes in batch process characteristics, which results in poor prediction accuracy. Therefore, a novel multi-model adaptive soft sensor modeling method is proposed based on the local learning framework and online support vector regression (OSVR) for nonlinear time-variant batch processes. First, a batch process is identified with a set of local domains and then the localized OSVR models are built for all isolated domains. Further, the estimation for a query data is obtained by adaptively combining multiple local models that perform best on the similar samples to the query point. The proposed multi-model OSVR (MOSVR) method provides four types of adaptation strategies: (i) adaptive combination based on Bayesian ensemble learning; (ii) online offset compensation; (iii) incremental updating of local models; and (iv) database updating. The effectiveness of the MOSVR approach and its superiority over traditional adaptive soft sensors in dealing with the within-batch and between-batch shifting dynamics is demonstrated through a simulated fed-batch penicillin fermentation process as well as an industrial fed-batch chlortetracycline fermentation process.(C) 2015 Elsevier Ltd. All rights reserved
机译:批处理过程通常以固有的非线性,操作阶段的多样性以及批间差异为特征,这对于软传感器的准确可靠的在线预测提出了巨大的挑战。尤其是,使用旧数据构建的软传感器可能会遇到性能下降的线索,这可能是由于无法捕获批处理过程的时变行为,因此,必须采用自适应策略。不幸的是,常规的自适应软传感器不能有效地解决批处理过程特性中的批内以及批间时变变化,这导致较差的预测精度。因此,提出了一种基于局部学习框架和在线支持向量回归(OSVR)的非线性时变批处理过程的多模型自适应软传感器建模方法。首先,使用一组本地域标识批处理过程,然后为所有隔离的域构建本地化的OSVR模型。此外,通过自适应地组合在对查询点的相似样本上表现最佳的多个局部模型来获得对查询数据的估计。提出的多模型OSVR(MOSVR)方法提供了四种类型的适应策略:(i)基于贝叶斯集成学习的自适应组合; (ii)在线抵消补偿; (iii)逐步更新本地模型; (iv)数据库更新。通过模拟补料青霉素发酵过程以及工业补料金霉素发酵过程,证明了MOSVR方法的有效性及其在处理批内和批间转移动力学方面优于传统的自适应软传感器的优势。 (C)2015 Elsevier Ltd.保留所有权利

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