Fault diagnosis for open-circuit faults in NPC inverter based on
knowledge-driven and data-driven approaches
- URL: http://arxiv.org/abs/2210.17057v1
- Date: Mon, 31 Oct 2022 04:33:53 GMT
- Title: Fault diagnosis for open-circuit faults in NPC inverter based on
knowledge-driven and data-driven approaches
- Authors: Lei Kou, Chuang Liu, Guo-wei Cai, Jia-ning Zhou, Quan-de Yuan, Si-miao
Pang
- Abstract summary: The open-circuit faults diagnosis and location issue of the neutral-point-clamped (NPC) inverters are analysed.
A novel fault diagnosis approach based on knowledge driven and data driven was presented for the open-circuit faults in insulated-gate bipolar transistors (IGBTs) of NPC inverter.
- Score: 2.22076315914821
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this study, the open-circuit faults diagnosis and location issue of the
neutral-point-clamped (NPC) inverters are analysed. A novel fault diagnosis
approach based on knowledge driven and data driven was presented for the
open-circuit faults in insulated-gate bipolar transistors (IGBTs) of NPC
inverter, and Concordia transform (knowledge driven) and random forests (RFs)
technique (data driven) are employed to improve the robustness performance of
the fault diagnosis classifier. First, the fault feature data of AC in either
normal state or open-circuit faults states of NPC inverter are analysed and
extracted. Second, the Concordia transform is used to process the fault
samples, and it has been verified that the slopes of current trajectories are
not affected by different loads in this study, which can help the proposed
method to reduce overdependence on fault data. Moreover, then the transformed
fault samples are adopted to train the RFs fault diagnosis classifier, and the
fault diagnosis results show that the classification accuracy and robustness
performance of the fault diagnosis classifier are improved. Finally, the
diagnosis results of online fault diagnosis experiments show that the proposed
classifier can locate the open-circuit fault of IGBTs in NPC inverter under the
conditions of different loads.
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