Three-phase PWM rectifiers are adopted extensively in industry because of their excellent properties and potential advantages. However, while the IGBT has an open-circuit fault, the system does not crash suddenly, the performance will be reduced for instance voltages fluctuation and current harmonics. A fault diagnosis method based on deep feedforward network with transient synthetic features is proposed to reduce the dependence on the fault mathematical models in this paper, which mainly uses the transient phase current to train the deep feedforward network classifier. Firstly, the features of fault phase current are analyzed in this paper. Secondly, the historical fault data after feature synthesis is employed to train the deep feedforward network classifier, and the average fault diagnosis accuracy can reach 97.85% for transient synthetic fault data, the classifier trained by the transient synthetic features obtained more than 1% gain in performance compared with original transient features. Finally, the online fault diagnosis experiments show that the method can accurately locate the fault IGBTs, and the final diagnosis result is determined by multiple groups results, which has the ability to increase the accuracy and reliability of the diagnosis results. (c) 2020 ISA. Published by Elsevier Ltd. All rights reserved.
翻译:工业广泛采用三阶段 PWM 校正仪,因为其特性和潜在优势优异。然而,尽管IGBT 具有开路故障,系统不会突然崩溃,性能将降低,例如电压波动和当前调力。基于具有瞬态合成特征的深进化前向网络的缺陷诊断方法建议减少对本文中缺陷数学模型的依赖,主要使用瞬时阶段来训练深进进向网络分类器。首先,本文分析了断层阶段当前的特点。第二,利用地貌合成后的历史缺陷数据来训练深进向前网络分类器,对易变合成缺陷数据的平均误判精确度可达97.85%,即由在性能方面获得超过1%的瞬时空合成特征所训练的分类器。最后,在线误判实验表明,该方法可以准确定位误差IGBT,最后的诊断结果由多个组得出,从而有能力提高诊断结果的准确性和可靠性。 (c) 2020年全美公司出版的ISA。