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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Visual dynamic model based on self-organizing maps for supervision and fault detection in industrial processes
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Visual dynamic model based on self-organizing maps for supervision and fault detection in industrial processes

机译:基于自组织映射的视觉动态模型用于工业过程的监督和故障检测

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摘要

Visual data mining techniques have experienced a growing interest for processing and interpretation of the large amounts of multidimensional data available in current industrial processes. One of the approaches to visualize data is based on self-organizing maps (SOM), which define a projection of the input space onto a 2D or 3D space that can be used to obtain visual representations. Although these techniques have been usually applied to visualize static relations among the process variables, they have proven to be very useful to display dynamic features of the processes. In this work, an approach based on the SOM to model the dynamics of multivariable processes is presented. The proposed method identifies the process conditions (clusters) and the probabilities of transition among them, using the trajectory followed by the input data on the 2D visualization space. Furthermore, a new method of residual computation for fault detection and identification that uses the dynamic information provided by the model of transitions is proposed. The proposed method for modeling and fault identification has been applied to supervise a real industrial plant and the results are included.
机译:视觉数据挖掘技术对于处理和解释当前工业过程中可用的大量多维数据的兴趣日益增长。可视化数据的方法之一是基于自组织映射(SOM),该映射定义了输入空间在2D或3D空间上的投影,该投影可用于获取视觉表示。尽管通常将这些技术应用于可视化过程变量之间的静态关系,但事实证明它们对显示过程的动态特征非常有用。在这项工作中,提出了一种基于SOM的多变量过程动力学建模方法。所提出的方法使用轨迹和2D可视化空间上的输入数据来识别过程条件(集群)以及它们之间过渡的可能性。此外,提出了一种新的用于故障检测和识别的残差计算方法,该方法利用了过渡模型提供的动态信息。所提出的建模和故障识别方法已应用于实际工厂的监督中,结果也包括在内。

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  • 作者单位

    Institute de Automatica y Fabrication, Universidad de Leon, Escuela de Ingenierias - Campus Universitario de Vegazana, Leon 24071, Spain;

    Institute de Automatica y Fabrication, Universidad de Leon, Escuela de Ingenierias - Campus Universitario de Vegazana, Leon 24071, Spain;

    Institute de Automatica y Fabrication, Universidad de Leon, Escuela de Ingenierias - Campus Universitario de Vegazana, Leon 24071, Spain;

    Institute de Automatica y Fabrication, Universidad de Leon, Escuela de Ingenierias - Campus Universitario de Vegazana, Leon 24071, Spain;

    Departamento de Ingenieria Electrica, Electronica de Computadores y Sistemas, Universidad de Oviedo, Edificio Departamental 2 - Campus de Viesques, Gijon 33204, Spain;

    Departamento de Ingenieria Electrica, Electronica de Computadores y Sistemas, Universidad de Oviedo, Edificio Departamental 2 - Campus de Viesques, Gijon 33204, Spain;

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  • 正文语种 eng
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  • 关键词

    self-organizing maps; trajectory analysis; clustering; visual data mining; process dynamics; process supervision;

    机译:自组织地图;轨迹分析;集群可视数据挖掘;过程动力学;过程监督;

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