论文标题
使用具有瞬态合成特征的随机森林技术的三相PWM整流器的故障诊断的数据驱动设计
Data-driven design of fault diagnosis for three-phase PWM rectifier using random forests technique with transient synthetic features
论文作者
论文摘要
当在绝缘的双极晶体管(IGBT)中发生开路故障时,通常可以保持三相脉冲宽度调制(PWM)整流器,这将导致系统不稳定且不安全。针对这个问题,基于具有瞬态合成特征的随机森林,提出了一种数据驱动的在线故障诊断方法,以在本研究中及时有效地定位IGBTS的开路故障。首先,通过分析三相PWM整流器中IGBT的开路故障特征,发现故障特征的发生与故障位置和时间有关,并且故障特征并不总是随着故障的出现而立即出现。其次,比较和评估不同数据驱动的故障诊断方法,随机森林算法的性能优于支持向量机或人工神经网络的算法。同时,通过瞬态合成特征训练的故障诊断分类器的准确性高于原始特征训练的诊断。同样,通过乘法特征训练的随机森林故障诊断分类器是最好的诊断准确性,可以达到98.32%。最后,进行了在线故障诊断实验,结果证明了该方法的有效性,该方法可以准确地定位IGBT中的开路故障,同时确保系统安全性。
A three-phase pulse-width modulation (PWM) rectifier can usually maintain operation when open-circuit faults occur in insulated-gate bipolar transistors (IGBTs), which will lead the system to be unstable and unsafe. Aiming at this problem, based on random forests with transient synthetic features, a data-driven online fault diagnosis method is proposed to locate the open-circuit faults of IGBTs timely and effectively in this study. Firstly, by analysing the open-circuit fault features of IGBTs in the three-phase PWM rectifier, it is found that the occurrence of the fault features is related to the fault location and time, and the fault features do not always appear immediately with the occurrence of the fault. Secondly, different data-driven fault diagnosis methods are compared and evaluated, the performance of random forests algorithm is better than that of support vector machine or artificial neural networks. Meanwhile, the accuracy of fault diagnosis classifier trained by transient synthetic features is higher than that trained by original features. Also, the random forests fault diagnosis classifier trained by multiplicative features is the best with fault diagnosis accuracy can reach 98.32%. Finally, the online fault diagnosis experiments are carried out and the results demonstrate the effectiveness of the proposed method, which can accurately locate the open-circuit faults in IGBTs while ensuring system safety.