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A Data-Driven Method for IGBT Open-Circuit Fault Diagnosis Based on Hybrid Ensemble Learning and Sliding-Window Classification

机译:基于混合集合学习和滑动窗口分类的IGBT开路故障诊断数据驱动方法

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摘要

In this article, a novel data-driven method is proposed for open-circuit fault diagnosis of insulated gate bipolar transistor used in three-phase pulsewidth modulation converter. Based on the sampled three-phase current signals, fast Fourier transform and ReliefF algorithm are used to select most correlated features. Then, based on two randomized learning technologies named extreme learning machine and random vector functional link network, a hybrid ensemble learning scheme is proposed for extracting mapping relationship between fault modes and the selected features. Furthermore, in order to achieve an accurate and fast diagnostic performance, a sliding-window classification framework is designed. Finally, parameters in the diagnostic model are optimized by a multiobjective optimization programming model to achieve optimal balance between diagnosis accuracy and speed. At offline testing stage, the overall average diagnostic accuracy can be as high as 99% with the diagnostic time of around one-cycle sampling time. Furthermore, real-time experiments verify its effectiveness and reliability under different operation conditions.
机译:在本文中,提出了一种新的数据驱动方法,用于三相脉冲调制转换器中使用的绝缘栅双极晶体管的开路断路故障诊断。基于采样的三相电流信号,快速傅里叶变换和重型算法用于选择大多数相关特征。然后,基于名为极端学习机和随机向量功能链路网络的两个随机学习技术,提出了一种混合集合学习方案,用于提取故障模式和所选特征之间的映射关系。此外,为了实现准确快速的诊断性能,设计了一种滑动窗口分类框架。最后,通过多目标优化编程模型优化了诊断模型中的参数,以在诊断精度和速度之间实现最佳平衡。在离线测试阶段,总平均诊断精度可以高达99%,静止一个周期采样时间诊断时间。此外,实时实验在不同的操作条件下验证其有效性和可靠性。

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