Open-circuit Fault Detection and Location in MMCs with Multivariate Gaussian Distribution

Wenshuo Xing, Heya Yang, Jing Sheng, Xiaofei Chang, Wuhua Li, Xiangning He
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引用次数: 4

Abstract

Open-circuit fault of sub-module (SM) attracts more attention with the increasing applications of modular multilevel converter (MMC). To diagnose the SM open-circuit fault in MMC, this paper proposes a fault detection and location (FDL) method based on machine learning (ML). According to the open-circuit fault characteristics, the SM capacitor voltages are selected as the key indicator for anomaly detection model. A method of time-domain feature extraction from voltages is then introduced to construct the dataset for the model. After trained with the samples, the model based on multivariate Gaussian distribution can realize FDL by making predictions for anomaly detection and tracing back the predicted faulty SM. The proposed method can locate the faulty SM accurately without extra sensors or mathematical model of circuit. The results on a simulation of 21-level three-phase MMC present that the anomaly detection model achieves high FDL accuracy as well as low false alarm rate.
多变量高斯分布mmc的开路故障检测与定位
随着模块化多电平变换器的应用越来越广泛,子模块的开路故障越来越受到人们的关注。为了诊断MMC中的SM开路故障,提出了一种基于机器学习的故障检测与定位方法。根据开路故障特征,选取SM电容电压作为异常检测模型的关键指标。然后引入电压时域特征提取方法构建模型数据集。基于多元高斯分布的模型经过样本训练后,可以通过对异常检测进行预测,并对预测的故障SM进行回溯,从而实现FDL。该方法不需要额外的传感器,也不需要建立电路的数学模型,可以准确地定位出故障的SM。对21级三相MMC的仿真结果表明,该异常检测模型具有较高的FDL精度和较低的虚警率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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