基于密度峰值聚类和即时学习的批处理多阶段多模式监控

Saite Fan, Feifan Shen, Zhihuan Song
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引用次数: 0

摘要

本文提出了一种基于密度峰值聚类(DPC)和实时学习(JITL)的数据驱动框架,用于处理批处理过程的多阶段、多模式监控问题。为了处理批数据的批间变化和非高斯分布,首先将DPC用于相位和模式的分类和识别。由于相同相位和模式下的输出轨迹多种多样,JITL将提取相似轨迹作为一种高级细分策略,以获得具有相似输出轨迹的子数据集。因此,针对某一子模式下的每一个子阶段,建立与质量相关的局部模型,以实现精确的建模和监测方案。最后,引入贝叶斯融合作为集成策略来确定故障条件的最终概率。为了进行性能评价,给出了一个数值算例和模拟的补料分批青霉素发酵过程。监测结果表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiphase and Multimode Monitoring of Batch Processes Based on Density Peak Clustering and Just-in-time Learning
In this paper, a data-driven framework base on density peak clustering (DPC) and just-in-time learning (JITL) is developed to handle with multiphase and multimode monitoring problem of batch processes. To deal with batch-to-batch variations and non-Gaussian distributions of batch data, DPC is firstly used for phase and mode classification and identification. Due to the variety of output trajectories in the same phase and mode, JITL is used to extract similar trajectories as an advanced subdivision strategy to obtain sub-datasets with similar output trajectories. Thus, for each sub-phase in a certain sub-mode, local quality-relevant models are established to achieve an accurate modeling and monitoring scheme. Finally, Bayesian fusion is introduced as the ensemble strategy to determine the final probability of faulty conditions. For performance evaluation, a numerical example and a simulated fed-batch penicillin fermentation process are provided. The monitoring results show the effectiveness of the proposed method.
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