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Incipient Fault Detection for Multiphase Batch Processes With Limited Batches

机译:批次受限的多阶段批量过程的早期故障检测

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Sufficient batches are in general, required for fault detection of batch processes. However, sometimes, it is difficult and may be impractical to conduct multiple cycles and wait until enough batches are available. Without batch-wise normalization step, the nonstationary cannot be efficiently removed by time-wise normalization. The mean values of the nonstationary variables are still time varying and the interval of fault-free data is very wide in each phase. Therefore, the incipient fault, which has a small magnitude including early changing and the slow developing, may be buried by nonstationary trends resulting in low fault detection rate. To address the above issue, a two-layer fault detection method is proposed to detect the incipient fault for multiphase batch processes with limited batches. First, a concurrent variable separation strategy is proposed to distinguish nonstationary variables from stationary variables for multiple batches in each phase. Second, a two-layer fault detection model is constructed to detect the incipient fault. Cointegration analysis-based fault detection model is built to investigate the relationship between nonstationary variables, which can effectively distinguish the incipient fault from the normal trend of the nonstationary variables. Principal component analysis is adopted to describe the correlation of stationary variables. Afterward, a total fault detection model is constructed to monitor the relation between nonstationary variables and stationary variables. To illustrate the feasibility and effectiveness, the proposed algorithm is applied to two multiphase batch processes including fed-batch penicillin fermentation process and semiconductor etch process.
机译:通常,批处理过程的故障检测需要足够的批处理。但是,有时很难进行多个循环并等到有足够的批次后才是不切实际的。如果没有分批标准化步骤,则不能通过按时标准化来有效地去除非平稳状态。非平稳变量的平均值仍随时间变化,并且每个阶段的无故障数据间隔非常大。因此,包括早期变化和缓慢发展在内的小规模初期断裂可能被非平稳趋势所掩盖,从而导致较低的故障检测率。为了解决上述问题,提出了一种两层故障检测方法,以检测批数有限的多相批处理的初期故障。首先,提出了并行变量分离策略,以区分每个阶段中多个批次的非平稳变量与平稳变量。其次,构建了两层故障检测模型来检测初期故障。建立基于协整分析的故障检测模型,研究非平稳变量之间的关系,可以有效地将初发故障与非平稳变量的正态趋势区分开。采用主成分分析来描述平稳变量的相关性。之后,构建一个总故障检测模型来监视非平稳变量和平稳变量之间的关系。为了说明可行性和有效性,将所提出的算法应用于分批补料青霉素发酵工艺和半导体刻蚀工艺这两个多阶段分批工艺。

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