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Online local learning based adaptive soft sensor and its application to an industrial fed-batch chlortetracycline fermentation process

机译:基于在线本地学习的自适应软传感器及其在工业补料金霉素发酵工艺中的应用

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摘要

This work presents a new method for adaptive soft sensor development by further exploiting just-in-time modeling framework. In the presented method, referred to as online local learning based adaptive soft sensor (OLLASS), the samples used for local modeling are selected based on the mutual information (MI) weighted or neighbor sample based similarity measure. Then, two adaptive methods, namely self-validation and neighbor-validation, are developed to adaptively select the optimal local modeling size for scenarios without and with the neighbor output information, respectively. Further, a real-time performance improvement strategy is used to enhance the online modeling efficiency. Moreover, an online dual updating strategy is proposed to activate infrequent local model updating and model output offset updating in turn, which allows significantly reducing the online computational load by avoiding unnecessary local model reconstruction while at the same time maintaining high estimation accuracy by performing offset compensation. A maximal similarity replacement rule using MI weighted similarity measure is used for database updating. The superiority of the proposed OLLASS method over traditional soft sensors in terms of the estimation accuracy, adaptive capability and real-time performance is demonstrated through an industrial fed-batch chlortetracycline fermentation process. (C) 2015 Elsevier B.V. All rights reserved.
机译:这项工作通过进一步利用实时建模框架,提出了一种用于自适应软传感器开发的新方法。在提出的方法中,称为在线基于局部学习的自适应软传感器(OLLASS),基于互信息(MI)加权或基于邻域样本的相似性度量来选择用于局部建模的样本。然后,开发了两种自适应方法,即自验证和邻居验证,分别针对没有和具有邻居输出信息的情况自适应地选择最佳局部建模大小。此外,实时性能改进策略用于提高在线建模效率。此外,提出了一种在线双重更新策略来依次激活不频繁的局部模型更新和模型输出偏移量更新,这可以通过避免不必要的局部模型重建来显着减少在线计算量,同时通过执行偏移量补偿来保持较高的估计精度。使用MI加权相似性度量的最大相似性替换规则用于数据库更新。通过工业补料金霉素发酵工艺,证明了所提出的OLLASS方法相对于传统软传感器在估计精度,自适应能力和实时性能方面的优越性。 (C)2015 Elsevier B.V.保留所有权利。

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