Fault Diagnosis Based on Attention Collaborative LSTM Networks for NPC Three-Level Inverters

To address the problem that it is difficult to extract fault features for neutral point clamped (NPC) three-level inverters under non-stationary conditions. This paper proposes a multi-information feature fusion diagnosis method based on attention collaborative stacked long short-term memory (ASLSTM) neural networks. First, parallel structural stacked LSTM networks are constructed, which are used to automatically extract features from multi-source time-series data. Then, the attention mechanism is applied to weight these features adaptively. Finally, the fault is identified by features that integrate multiple sources of information. In addition, the quantum particle swarm optimization (QPSO) algorithm is used to intelligently tune the hyperparameters of ASLSTM to improve the reasonableness of hyperparameter selection for the diagnostic model. The simulation results of the fault diagnosis of the NPC three-level inverter circuit show that the proposed method is able to extract high-discriminative features from raw data, and has better diagnostic results under various conditions compared with other schemes.