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Batch process fault detection and identification based on discriminant global preserving kernel slow feature analysis

机译:批处理故障检测与识别基于判别全球保留内核慢速特征分析

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摘要

As an attractive nonlinear dynamic data analysis tool, global preserving kernel slow feature analysis (GKSFA) has achieved great success in extracting the high nonlinearity and inherently time-varying dynamics of batch process. However, GKSFA is an unsupervised feature extraction method and lacks the ability to utilize batch process class label information, which may not offer the most effective means for dealing with batch process monitoring. To overcome this problem, we propose a novel batch process monitoring method based on the modified GKSFA, referred to as discriminant global preserving kernel slow feature analysis (DGKSFA), by closely integrating discriminant analysis and GKSFA. The proposed DGKSFA method can extract discriminant feature of batch process as well as preserve global and local geometrical structure information of observed data. For the purpose of fault detection, a monitoring statistic is constructed based on the distance between the optimal kernel feature vectors of test data and normal data. To tackle the challenging issue of nonlinear fault variable identification, a new nonlinear contribution plot method is also developed to help identifying the fault variable after a fault is detected, which is derived from the idea of variable pseudo-sample trajectory projection in DGKSFA nonlinear biplot. Simulation results conducted on a numerical nonlinear dynamic system and the benchmark fed-batch penicillin fermentation process demonstrate that the proposed process monitoring and fault diagnosis approach can effectively detect fault and distinguish fault variables from normal variables.
机译:作为一个有吸引力的非线性动态数据分析工具,全球保存核心慢特征分析(GKSFA)在提取批处理过程的高非线性和固有的时变动力学方面取得了巨大成功。然而,GKSFA是一个无人监督的特征提取方法,缺乏利用批处理类标签信息的能力,这可能不会为处理批处理监测提供最有效的手段。为了克服这个问题,我们通过紧密地整合判别分析和GKSFA,提出了一种基于修改的GKSFA的新型批处理过程监测方法,称为判别全球保留内核慢速特征分析(DGKSFA)。所提出的DGKSFA方法可以提取批处理过程的判别特征,以及保留观察到的数据的全局和局部几何结构信息。出于故障检测的目的,基于测试数据和正常数据的最佳内核特征向量之间的距离构建监视统计。为了解决非线性故障变量识别的具有挑战性问题,还开发了一种新的非线性贡献绘图方法,以帮助检测到故障后识别故障变量,这是从DGKSFA非线性双点中的可变伪样轨迹投影的思想导出。在数值非线性动态系统和基准喂养批量发酵过程中进行的仿真结果表明,所提出的过程监测和故障诊断方法可以有效地检测故障并区分从正常变量的故障变量。

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