Open-circuit fault detection for three-phase inverter based on backpropagation neural network

To realize real-time fault detection in power devices and enhance reliability of inverter circuits, this paper proposes a detection method based on Park’s transform algorithm and neural network. Park’s transform is applied to obtain the three-phase current base wave amplitude as the characteristic variable for fault detection. Faulty switch devices can be located using a backpropagation neural network in combination with simple logic analyses. The simulation results verify the effectiveness and the feasibility of the proposed method.

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