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A Fault Detection Algorithm Based on Artificial Neural Network Threshold Selection in Multi-Terminal DC Grids

Alireza Pourfaraj, Hossein Iman‐Eini, Sattar Bazyar, Saeid Ahmadi, Ehsan Asadi, Marius Langwasser, Marco Liserre

2023IEEE Transactions on Power Delivery29 citationsDOIOpen Access PDF

Abstract

The DC fault is one of the critical challenges in the High Voltage Multi-Terminal Direct Current (HV-MTDC) grid. The fixed value threshold used in some implementations may be affected by different grid conditions and thus causes errors in the fault detection procedure. This article offers a two-stage fault detection algorithm based on the integrated Artificial Neural Network (ANN) and Discrete Wavelet Transform (DWT) theory. The main innovations of the proposed method are: 1) Increasing the reliability of the fault detection operation by solving the fixed value threshold problems; 2) Offering high robustness against the wide range of fault resistances; 3) Providing bus protection capability and 4) Setting relays locally, and avoiding the requirement to high-speed communications links. Also, it offers DC fault detection in a short period of time. The performance of the proposed protection scheme has been ascertained via simulations in the MATLAB/Simulink environment. The results prove the robustness of the proposed method against noise disturbance, high resistance fault, and grid parameters variations.

Topics & Concepts

Robustness (evolution)Fault detection and isolationArtificial neural networkMATLABWavelet transformGridEngineeringComputer scienceControl theory (sociology)Fault (geology)Electronic engineeringAlgorithmWaveletReal-time computingArtificial intelligenceMathematicsControl (management)BiochemistryChemistryGeneGeometryOperating systemGeologySeismologyActuatorHVDC Systems and Fault ProtectionPower Systems Fault DetectionHigh-Voltage Power Transmission Systems
A Fault Detection Algorithm Based on Artificial Neural Network Threshold Selection in Multi-Terminal DC Grids | Litcius