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Dynamic process monitoring based on orthogonal dynamic inner neighborhood preserving embedding model

机译:基于正交动态内部邻域保留嵌入模型的动态过程监控

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摘要

A novel dynamic data modeling algorithm named orthogonal dynamic inner neighborhood preserving embedding (ODiNPE) is proposed for dynamic process monitoring. The formulation of the ODiNPE algorithm attempts to optimize a dual objective, which integrates together the maximization of the auto-covariance of the latent factors and the minimization of reconstruction error from the neighborhood, while an orthogonal constraint on the projecting directions is also satisfied. Therefore, the proposed algorithm is expected to extract highly auto-correlated dynamic latent factors with intrinsic neighborhood information embedded. The application of the ODiNPE in dynamic process monitoring has demonstrated its effectiveness and superiority over other state-of-art dynamic process monitoring approaches.
机译:提出了一种名为Orthogonal动态内部邻域保留嵌入(ODINPE)的新型动态数据建模算法,用于动态过程监控。 ODINPE算法的制定尝试优化双目标,这集成了潜在因子的自我协方差的最大化以及来自邻域的重建误差的最小化,而突出方向上的正交约束也是满足的。 因此,预计该算法预计将提取具有嵌入的内部邻域信息的高度自动相关的动态潜在因子。 ODINPE在动态过程监测中的应用证明了其对其他最先进的动态过程监测方法的有效性和优越性。

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