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首页> 外文期刊>IEEE Transactions on Industrial Electronics >Intelligent Neural Network-Based Fast Power System Harmonic Detection
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Intelligent Neural Network-Based Fast Power System Harmonic Detection

机译:基于智能神经网络的快速电力系统谐波检测

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摘要

Nowadays, harmonic distortion in power systems is attracting significant attention. Traditional technical tools for harmonic distortion analysis using either fast Fourier transform or discrete Fourier transform are, however, susceptible to the presence of noise in the distorted signals. Harmonic detection by using Fourier transformation also requires input data for more than one cycle of the current waveform and requires time for the analysis in the next coming cycle. In this paper, an alternative method using neural network algorithm has achieved satisfactory results for fast and precise harmonic detection in noisy environments by providing only 1/2 cycle sampled values of distorted waveforms to neural network. Sensitivity considerations are conducted to determine the key factors affecting the performance efficiency of the proposed model to reach the lowest errors of testing patterns
机译:如今,电力系统中的谐波失真引起了广泛的关注。但是,使用快速傅立叶变换或离散傅立叶变换进行谐波失真分析的传统技术工具容易受到失真信号中噪声的影响。使用傅立叶变换进行谐波检测还需要输入电流波形的多个周期的数据,并需要时间进行下一个周期的分析。在本文中,通过仅向神经网络提供失真波形的1/2周期采样值,使用神经网络算法的另一种方法在嘈杂环境中进行快速,精确的谐波检测已获得令人满意的结果。进行敏感性考虑,以确定影响所提出模型的性能效率的关键因素,以使测试模式的误差降至最低

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