A Combined Gabor Transform-EKNN based Protection Scheme for AC-HVDC Transmission Line with DFIG Wind Turbine

R. Prakash, Ebha Koley
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Abstract

This paper presents an efficient protection scheme based on Gabor transform (GT) and ensemble of k-nearest neighbor (EKNN) algorithm for fault classification/identification in Hybrid AC-HVDC network integrated with the wind turbine. At the relay point, the technique initiates with the acquisition of time domain current and voltage signals, followed by frequency domain processing. The raw voltage and current signal are fed to the GT-based feature extractor and the standard deviation (SD) of the Gabor feature is further used for training of the EKNN classifier/detector. Three different EKNN classifier modules have been developed to perform the protection tasks. The proposed method's effectiveness has been tested for a a wide range of fault scenarios with varying fault parameters. The validation results show that combining GT with KNN can effectively distinguish between defective and healthy line, thereby achieving excellent performance for fault detection and classification in both AC and HVDC systems.
一种基于Gabor变压器- eknn的带DFIG风电交流直流输电线路联合保护方案
本文提出了一种基于Gabor变换(GT)和k近邻集成(EKNN)算法的高效保护方案,用于与风力发电机组相结合的交直流混合电网故障分类/识别。在继电器点,该技术首先采集时域电流和电压信号,然后进行频域处理。将原始电压和电流信号馈送到基于gt的特征提取器中,并利用Gabor特征的标准差(SD)进一步训练EKNN分类器/检测器。已经开发了三种不同的EKNN分类器模块来执行保护任务。该方法的有效性已在具有不同故障参数的大范围故障场景中得到验证。验证结果表明,将GT与KNN相结合,可以有效地区分故障线和健康线,从而在交流和高压直流系统中都取得了良好的故障检测和分类性能。
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