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Fault detection for Nonstationary Process with Decomposition and Analytics of Gaussian and Non-Gaussian Subspaces

机译:高斯和非高斯子空间分解与分析的非持久性过程的故障检测

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Process monitoring is a challenging task for modern industrial processes which are commonly nonstationary in nature, revealing typical non-Gaussian characteristics. Nowadays, data-driven based fault detection methods have drawn increasing attention, most of which work under an assumption that the process is subject to Gaussian distribution. But in practice, the underlying non-Gaussian characteristics may be typical in the complex process, which cannot be properly enclosed by a statistical model with a close confidence region and thus may be insensitive to fault detection. Hence, it is necessary to explore and separate the underlying Gaussian and non-Gaussian distributions in fine-grain. In this work, a Gaussian and non-Gaussian subspace decomposition method is proposed by designing a variant of stationary subspace analysis (VSSA) for nonstationary process monitoring. First, the whole time-wise nonstationary process can be neatly converted to condition-wise slices. Then, a Monte Carlo sampling based VSSA technique is designed to separate Gaussian and non-Gaussian subspaces from each other, which focuses on analyzing sample distribution rather than time series properties. Here the Gaussian subspace, which is readily characterized by a statistical model, is used for revealing similar condition slices and affiliate them into the same condition mode. And two monitoring statistics are developed to explore the Gaussian and non-Gaussian distribution structures, thus providing fine-grained distribution analytics and promoting monitoring performance. The feasibility and performance of the proposed method are demonstrated on a real thermal power plant process.
机译:流程监测是一种具有挑战性的任务,适用于自然界普遍不稳定的现代工业过程,揭示了典型的非高斯特征。如今,基于数据驱动的故障检测方法越来越升高,其中大多数在假设该过程受高斯分布的假设下工作。但在实践中,在复杂过程中可以典型的潜在的非高斯特征,其不能被具有紧密置信区的统计模型适当地包围,因此可能对故障检测不敏感。因此,有必要在细粒度中探索和分离潜在的高斯和非高斯分布。在这项工作中,通过设计静止子空间分析(VSSA)的变体来提出高斯和非高斯子空间分解方法,用于非持久性过程监控。首先,整个时间明智的非营养过程可以整齐地转化为条件明智的切片。然后,设计了一种基于Monte Carlo采样的VSSA技术,用于彼此分离高斯和非高斯子空间,该子空间侧重于分析样品分布而不是时间序列属性。这里,通过统计模型容易地表征的高斯子空间用于揭示类似的条件切片并将它们联接到相同的条件模式。并开发了两个监测统计数据以探索高斯和非高斯分布结构,从而提供细粒度的分布分析和促进监测性能。所提出的方法的可行性和性能在真正的热电厂过程中进行了证明。

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