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Blind source separation and feature extraction in concurrent control charts pattern recognition: Novel analyses and a comparison of different methods

机译:并发控制图模式识别中的盲源分离和特征提取:新颖分析和不同方法的比较

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摘要

Control charts are among the main tools in statistical process control (SPC) and have been extensively used for monitoring industrial processes. Currently, besides the single control charts, there is an interest in the concurrent ones. These graphics are characterized by the simultaneous presence of two or more single control charts. As a consequence, the individual patterns may be mixed, hindering the identification of a non-random pattern acting in the process; this phenomenon is refered as concurrent charts. In view of this problem, our first goal is to investigate the importance of an efficient separation step for pattern recognition. Then, we compare the efficiency of different Blind Source Separation (BSS) methods in the task of unmixing concurrent control charts. Furthermore, these BSS methods are combined with shape and statistical features in order to verify the performance of each one in pattern classification. In additional, the robustness of the better approach is tested in scenarios where there are different non-randomness levels and in cases with imbalanced dataset provided to the classifier. After simulating different patterns and applying several separation methods, the results have shown that the recognition rate is widely influenced by the separation and feature extraction steps and that the selection of efficient separation methods is fundamental to achieve high classification rates.
机译:控制图是统计过程控制(SPC)的主要工具之一,已被广泛用于监视工业过程。当前,除了单个控制图之外,还对并行控制图感兴趣。这些图形的特征​​是同时存在两个或多个单个控制图。结果,可能会混合各个模式,从而阻碍了对过程中起作用的非随机模式的识别;这种现象称为并发图表。鉴于此问题,我们的首要目标是研究有效分离步骤对模式识别的重要性。然后,我们在分解并发控制图的任务中比较了不同盲源分离(BSS)方法的效率。此外,这些BSS方法与形状和统计特征相结合,以验证每个模式在样式分类中的性能。另外,在存在不同非随机性级别的情况下,以及在为分类器提供不平衡数据集的情况下,测试了更好方法的鲁棒性。在模拟不同的模式并应用了几种分离方法后,结果表明识别率受分离和特征提取步骤的广泛影响,而有效分离方法的选择对于实现高分类率至关重要。

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