基于自适应小波网络的电力信号分类

D. K. Bebarta, A. K. Rout, B. Biswal, M. Biswal
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引用次数: 2

摘要

提出了一种基于自适应小波的非平稳电力信号分类新方法。提出了一种基于自适应小波网络(AWN)的非平稳电力信号干扰分类模型。小波网络是由小波层和自适应概率网络组成的两个子网络的组合。该网络具有对不同类型的信号自动调整学习周期的能力,使误差最小化。AWN模型特别适用于具有时变非平稳功率信号的自适应环境。实验结果表明,该模型分类准确,学习机制快速自适应,处理时间快,对各种非平稳电力信号的分类总体有效。将自适应小波网络(AWN)与概率神经网络(PNN)的分类结果进行了比较。
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Power signal classification using Adaptive Wavelet Network
A new approach to classification of non-stationary power signals based on adaptive wavelet has been considered. This paper proposes a model for non-stationary power signal disturbance classification using adaptive wavelet networks (AWN). A AWN is a combination of two sub-networks consisting of a wavelet layer and adaptive probabilistic network. The AWN has the capability of automatic adjustment of learning cycles for different classes of signals, for minimizing error. AWN models are specifically suitable for application in adaptive environments with time varying non-stationary power signals. The test results showed accurate classification, fast and adaptive learning mechanism, fast processing time and overall model effectiveness in classifying various non-stationary power signals. The classification result of the AWN (Adaptive Wavelet Network) has been compared with that of the Probabilistic Neural Network (PNN).
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