A hybrid decision tree and new frequency filtering S-transform for simultaneous power signal disturbance pattern recognition

R. Bisoi, P. Dash, P. Nayak
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引用次数: 2

Abstract

This paper presents a new approach for detection and classification of various power signal disturbances, which constitute an important aspect of power quality assessment. A frequency filtering fast S-transform algorithm is developed with different types of frequency scaling, bandpass filtering and interpolation techniques to reduce the computational cost. The new time-frequency transform based on dyadic scaling has been used for the extraction of relevant features from the power quality disturbance signals. The extracted features are then passed through a decision tree based classifier for the identification of the disturbance patterns. Various simultaneous power signal disturbances have been simulated to prove the efficiency of the technique. The simulation results show superior performance of the new frequency filtering S-transform while classifying overlapping disturbance patterns. Because of the frequency filtering dyadic S-transform algorithm and a relatively simpler classifier methodology, this technique can be used for real time localization, detection, and classification of various power quality events.
基于混合决策树和新型频率滤波s变换的电力信号干扰模式识别
本文提出了一种检测和分类各种电能信号干扰的新方法,这是电能质量评估的一个重要方面。利用不同的频率缩放、带通滤波和插值技术,提出了一种频率滤波快速s变换算法,以降低计算成本。提出了一种新的基于二进标度的时频变换,用于提取电能质量扰动信号的相关特征。然后将提取的特征通过基于决策树的分类器进行干扰模式的识别。仿真结果证明了该方法的有效性。仿真结果表明,新型频率滤波s变换在对重叠干扰模式进行分类时具有优异的性能。由于频率滤波二进s变换算法和相对简单的分类器方法,该技术可用于各种电能质量事件的实时定位、检测和分类。
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