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首页> 外文期刊>ETEP-European Transactions on Electrical Power >Classification of power quality disturbances using dual strong tracking filters and rule‐based extreme learning machine
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Classification of power quality disturbances using dual strong tracking filters and rule‐based extreme learning machine

机译:使用双重强跟踪滤波器和基于规则的极限学习机对电能质量扰动进行分类

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摘要

The classification of single and simultaneous power quality disturbances (PQDs) has become an issue of concern in the power system field. This paper proposes a novel approach based on dual strong tracking filters (STFs) and the rule-based extreme learning machine (ELM) for detecting and classifying single and simultaneous PQDs. Dual STFs are a hybrid structure of a low-order STF and high-order STF. The fading factor of the low-order STF is used to detect sudden changes in PQDs; the fundamental amplitude variation is tracked by the high-order STF. Six distinctive features extracted from the dual STFs serve as the input to the ELM classifier for PQD classification. The rule-based ELM technique, which is equipped with certain decision rules, can improve the ELM classification accuracy when the number of hidden nodes is insufficient. In consideration of special structures of matrices, the real-time computation of the proposed method can be realized. A PQD dataset is generated in MATLAB for simulation experiments; the results show that 20 types of PQDs, including single and simultaneous disturbances, can be accurately classified under the different levels of noise via the proposed method. The method is also tested on a real recorded waveform to verify its effectiveness in PQD classification.
机译:单一和同时发生的电能质量扰动(PQD)的分类已成为电力系统领域关注的问题。本文提出了一种基于双重强跟踪滤波器(STF)和基于规则的极限学习机(ELM)的新颖方法,用于检测和分类单个和同时的PQD。双STF是低阶STF和高阶STF的混合结构。低阶STF的衰落因子用于检测PQD的突然变化。基本幅度变化由高阶STF跟踪。从双STF中提取的六个独特特征用作ELM分类器的输入,用于PQD分类。当隐藏节点数量不足时,基于规则的ELM技术具有一定的决策规则,可以提高ELM分类的准确性。考虑到矩阵的特殊结构,可以实现该方法的实时计算。在MATLAB中生成了一个PQD数据集用于仿真实验;结果表明,通过所提方法,可以在不同噪声水平下准确地分类出20种类型的PQD,包括单个和同时的干扰。该方法还在真实记录的波形上进行了测试,以验证其在PQD分类中的有效性。

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