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首页> 外文期刊>IEEE transactions on industrial informatics >Dynamic Spatial-Independent-Component-Analysis-Based Abnormality Localization for Distributed Parameter Systems
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Dynamic Spatial-Independent-Component-Analysis-Based Abnormality Localization for Distributed Parameter Systems

机译:基于动态的空间 - 独立组分分析分布式参数系统的异常定位

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摘要

A novel data-driven approach is proposed to localize the abnormality for distributed parameter systems (DPSs) in this paper. The cross-correlation order of DPSs in the space domain is first obtained by the cumulants-based identification method. Then, a spatial augmented matrix of the spatial-temporal distribution data is formed and a dynamic spatial independent component analysis method is proposed for independent decomposition. The dominant spatial independent components will be extracted and the spatial residuals can be produced for spatial reference statistics. Through the kernel density estimation method, the confidence bounds of these statistics in normal condition (abnormality free) can be established as the spatial references. These unique two references will guarantee the reliable spatial localization of abnormality. Different from model-based methods that rely on an explicit system model of the process, the proposed approach is model free and only uses recorded process data. Experiments on two typical DPSs demonstrate the effectiveness of the proposed approach.
机译:提出了一种新颖的数据驱动方法,本文中的分布式参数系统(DPSS)的异常。通过基于累积剂的识别方法首先获得空间域中DPS的互相关顺序。然后,形成空间 - 时间分布数据的空间增强矩阵,并且提出了用于独立分解的动态空间独立分量分析方法。将提取主要的空间独立组分,并且可以为空间参考统计生产空间残差。通过内核密度估计方法,可以建立正常情况下这些统计数据的置信度(异常无异常)作为空间参考。这些独特的两个参考文献将保证异常的可靠空间定位。与基于模型的方法不同,依赖于该过程的显式系统模型,所提出的方法是自由的模型,只使用录制的过程数据。两种典型DPS的实验表明了所提出的方法的有效性。

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