An improved transfer learning approach based on geodesic flow kernel for multiphase batch process soft sensor modeling

Jikun Zhu, Weili Xiong
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Abstract

For multiphase batch process, the characteristics of process data under various batches differ. Consequently, the soft sensor model built for a particular working condition is inapplicable to other working conditions. Besides, each batch can be divided into several phases whose characteristics are probably different. To address the above problems, a soft sensor model based on phase division and transfer learning strategy is proposed. First, transfer learning strategy is adopted to construct a soft sensor model applicable to various working conditions. Specifically, geodesic flow kernel based on linear local tangent space alignment (LLTSA-GFK) algorithm is designed. By projecting process data to the common manifold subspace, the distribution difference of data between various batches is reduced and the performance of the soft sensor model is enhanced. In addition, sequence-based fuzzy clustering and just-in-time learning (JITL) are adopted to solve the multistage characteristic for batch process. The root-mean-square error ( RMSE), coefficient of determination [Formula: see text], and mean absolute error ( MAE) are adopted to compare the conventional soft sensing approach (i.e., partial least-square regression based on JITL, support vector regression, and back propagation neural network) with the proposed approach. The superiority of the proposed model is verified by a fed-batch penicillin fermentation process.
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基于大地流核的改进迁移学习法,用于多相批处理软传感器建模
对于多相批处理过程,不同批次下的过程数据特征各不相同。因此,针对特定工况建立的软传感器模型不适用于其他工况。此外,每个批次可分为几个阶段,而这些阶段的特征可能各不相同。针对上述问题,我们提出了一种基于阶段划分和迁移学习策略的软传感器模型。首先,采用迁移学习策略构建适用于各种工况的软传感器模型。具体来说,设计了基于线性局部切空间配准的大地流核(LLTSA-GFK)算法。通过将过程数据投影到公共流形子空间,减少了不同批次数据的分布差异,提高了软传感器模型的性能。此外,还采用了基于序列的模糊聚类和及时学习(JITL)来解决批量过程的多阶段特征。采用均方根误差(RMSE)、判定系数[公式:见正文]和平均绝对误差(MAE)来比较传统软传感方法(即基于 JITL 的偏最小二乘法回归、支持向量回归和反向传播神经网络)和所提出的方法。拟议模型的优越性通过喂料批次青霉素发酵过程得到了验证。
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