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Dual learning-based online ensemble regression approach for adaptive soft sensor modeling of nonlinear time-varying processes

机译:基于双重学习的在线集成回归方法用于非线性时变过程的自适应软传感器建模

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摘要

Soft sensors have been widely used to estimate difficult-to-measure variables in the process industry. However, the nonlinear nature and time-varying behavior of many processes pose significant challenges for accurate quality prediction. Thus a novel adaptive soft sensor, referred to as dual learning-based online ensemble regression (DLOER), is proposed for nonlinear time-varying processes. To deal with process nonlinearity, just-in-time (JIT) learning is used to build local domains and local models simultaneously while statistical hypothesis testing is employed to remove redundant local models. As a result, multiple diverse local models are constructed for characterizing various process states. Then the posterior probabilities of each test sample with respect to different local models are estimated through Bayesian inference and further set as adaptive weights to combine local predictions into a final output. Moreover, DLOER is equipped with incremental local learning and JIT learning for model adaptation, which enables recursive adaptation and online inclusion of local models, respectively. Therefore, process nonlinearity can be well handled under the local learning framework while both gradual and abrupt changes of processes can be efficiently addressed using the dual learning-based adaptation mechanism. The effectiveness of the DLOER approach is demonstrated through a fed-batch penicillin fermentation process. (C) 2016 Elsevier B.V. All rights reserved.
机译:软传感器已被广泛用于估算过程工业中难以测量的变量。但是,许多过程的非线性性质和时变行为对准确的质量预测提出了重大挑战。因此,针对非线性时变过程,提出了一种新型的自适应软传感器,称为基于双重学习的在线集成回归(DLOER)。为了处理过程非线性,使用即时(JIT)学习同时构建局部域和局部模型,而采用统计假设检验来删除冗余局部模型。结果,构建了多种多样的局部模型来表征各种过程状态。然后,通过贝叶斯推断估计每个测试样本相对于不同局部模型的后验概率,并将其进一步设置为自适应权重,以将局部预测合并为最终输出。此外,DLOER配备了增量局部学习和JIT学习以进行模型调整,从而分别实现了递归调整和在线包含局部模型。因此,可以在本地学习框架下很好地处理过程非线性,同时可以使用基于双重学习的适应机制有效地解决过程的逐渐变化和突然变化。 DLOER方法的有效性通过补料分批青霉素发酵过程得到证明。 (C)2016 Elsevier B.V.保留所有权利。

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