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Bridging systems theory and data science: A unifying review of dynamic latent variable analytics and process monitoring

机译:桥接系统理论和数据科学:对动态潜变量分析和过程监控的统一审查

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This paper is concerned with data science and analytics as applied to data from dynamic systems for the purpose of monitoring, prediction, and inference. Collinearity is inevitable in industrial operation data. Therefore, we focus on latent variable methods that achieve dimension reduction and collinearity removal. We present a new dimension reduction expression of state space framework to unify dynamic latent variable analytics for process data, dynamic factor models for econometrics, subspace identification of multivariate dynamic systems, and machine learning algorithms for dynamic feature analysis. We unify or differentiate them in terms of model structure, objectives with constraints, and parsimony of parameterization. The Kalman filter theory in the latent space is used to give a system theory foundation to some empirical treatments in data analytics. We provide a unifying review of the connections among the dynamic latent variable methods, dynamic factor models, subspace identification methods, dynamic feature extractions, and their uses for prediction and process monitoring. Both unsupervised dynamic latent variable analytics and the supervised counterparts are reviewed. Illustrative examples are presented to show the similarities and differences among the analytics in extracting features for prediction and monitoring.
机译:本文涉及应用于动态系统数据的数据科学和分析,以便用于监测,预测和推理。在工业运营数据中共同性是不可避免的。因此,我们专注于实现尺寸减小和相连清除的潜在可变方法。我们展示了一个新的尺寸减少了国家空间框架的表达式,为统一动态潜在可变分析的过程数据,动态因子模型,用于多变量动态系统的多元动态系统的子空间识别和动态特征分析的机器学习算法。我们统一或区分它们的模型结构,具有约束的目标,以及参数化的分析。潜伏空间中的卡尔曼滤波理论用于为数据分析中的一些实证治疗提供系统理论基础。我们提供了对动态潜在可变方法,动态因子模型,子空间识别方法,动态特征提取及其用于预测和过程监控的用途的联系的统一审查。综述了无监督的动态潜变量分析和监督对准。提出了说明性示例以显示用于提取预测和监测的分析中的分析中的相似性和差异。

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