Synchronization-Free Multivariate Statistical Process Control for Online Monitoring of Batch Process Evolution

Rodrigo Rocha de Oliveira, A. de Juan
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Abstract

Synchronization of variable trajectories from batch process data is a delicate operation that can induce artifacts in the definition of multivariate statistical process control (MSPC) models for real-time monitoring of batch processes. The current paper introduces a new synchronization-free approach for online batch MSPC. This approach is based on the use of local MSPC models that cover a normal operating conditions (NOC) trajectory defined from principal component analysis (PCA) modeling of non-synchronized historical batches. The rationale behind is that, although non-synchronized NOC batches are used, an overall NOC trajectory with a consistent evolution pattern can be described, even if batch-to-batch natural delays and differences between process starting and end points exist. Afterwards, the local MSPC models are used to monitor the evolution of new batches and derive the related MSPC chart. During the real-time monitoring of a new batch, this strategy allows testing whether every new observation is following or not the NOC trajectory. For a NOC observation, an additional indication of the batch process progress is provided based on the identification of the local MSPC model that provides the lowest residuals. When an observation deviates from the NOC behavior, contribution plots based on the projection of the observation to the best local MSPC model identified in the last NOC observation are used to diagnose the variables related to the fault. This methodology is illustrated using two real examples of NIR-monitored batch processes: a fluidized bed drying process and a batch distillation of gasoline blends with ethanol.
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批量过程演化在线监测的非同步多元统计过程控制
从批处理数据中同步可变轨迹是一项精细的操作,它可能会在用于实时监控批处理的多元统计过程控制(MSPC)模型的定义中引发伪影。本文介绍了一种新的在线批量MSPC无同步方法。该方法基于本地MSPC模型的使用,该模型涵盖了由非同步历史批次的主成分分析(PCA)建模定义的正常运行条件(NOC)轨迹。背后的理由是,尽管使用了非同步的NOC批次,但可以描述具有一致进化模式的整体NOC轨迹,即使批次间存在自然延迟以及过程起点和终点之间存在差异。然后,使用本地MSPC模型来监测新批次的演变,并导出相关的MSPC图。在对新批次进行实时监测期间,该策略允许测试每个新观测是否遵循NOC轨迹。对于NOC观察,基于提供最低残差的局部MSPC模型的识别,提供批次过程进度的额外指示。当观测偏离NOC行为时,基于观测对上一次NOC观测中确定的最佳局部MSPC模型的投影的贡献图用于诊断与故障相关的变量。该方法通过近红外监测间歇过程的两个实际例子进行了说明:流化床干燥过程和汽油与乙醇混合物的间歇蒸馏。
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