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Fault Diagnosis with Evolving Fuzzy Classifier Based on Clustering Algorithm and Drift Detection

机译:基于聚类算法和漂移检测的进化模糊分类器故障诊断

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摘要

The emergence of complex machinery and equipment in several areas demands efficient fault diagnosis methods. Several fault diagnosis methods based on different theories and approaches have been proposed in the literature. According to the concept of intelligent maintenance, the application of intelligent systems to accomplish fault diagnosis from process historical data has been shown to be a promising approach. In problems involving complex nonstationary dynamic systems, an adaptive fault diagnosis system is required to cope with changes in the monitored process. In order to address fault diagnosis in this scenario, use of the so-called "evolving intelligent systems" is suggested. This paper proposes the application of an evolving fuzzy classifier for fault diagnosis based on a new approach that combines a recursive clustering algorithm and a drift detection method. In this approach, the clustering update depends not only on a similarity measure, but also on the monitoring changes in the input data flow. A merging cluster mechanism was incorporated into the algorithm to enable the removal of redundant clusters. Multivariate Gaussian memberships functions are employed in the fuzzy rules to avoid information loss if there is interaction between variables. The novel approach provides greater robustness to outliers and noise present in data from process sensors. The classifier is evaluated in fault diagnosis of a DC drive system. In the experiments, a DC drive system fault simulator was used to simulate normal operation and several faulty conditions. Outliers and noise were added to the simulated data to evaluate the robustness of the fault diagnosis model.
机译:复杂机械设备在几个领域的出现要求有效的故障诊断方法。文献中提出了几种基于不同理论和方法的故障诊断方法。根据智能维护的概念,应用智能系统从过程历史数据中完成故障诊断已被证明是一种有前途的方法。在涉及复杂的非平稳动态系统的问题中,需要自适应故障诊断系统来应对受监视过程的变化。为了解决这种情况下的故障诊断,建议使用所谓的“不断发展的智能系统”。本文提出了一种基于递归聚类算法和漂移检测方法的进化模糊分类器在故障诊断中的应用。在这种方法中,聚类更新不仅取决于相似性度量,而且取决于输入数据流中的监视更改。一种合并的群集机制被合并到算法中,以能够删除冗余群集。如果变量之间存在交互,则在模糊规则中使用多元高斯隶属度函数来避免信息丢失。新颖的方法为来自过程传感器的数据中存在的异常值和噪声提供了更高的鲁棒性。在直流传动系统的故障诊断中评估分类器。在实验中,使用了直流驱动系统故障模拟器来模拟正常运行和几种故障情况。将异常值和噪声添加到模拟数据中,以评估故障诊断模型的鲁棒性。

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  • 来源
    《Mathematical Problems in Engineering》 |2015年第1期|368190.1-368190.14|共14页
  • 作者单位

    Fac Ciencia & Tecnol Montes Claros, Dept Comp Engn, BR-39400142 Montes Claros, MG, Brazil.;

    Univ Fed Minas Gerais, Dept Elect Engn, BR-31270901 Belo Horizonte, MG, Brazil.;

    Univ Fed Minas Gerais, Dept Elect Engn, BR-31270901 Belo Horizonte, MG, Brazil.;

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