期刊文献+

基于人工神经网络的电网谐波检测系统设计 被引量:3

The Harmonics Detection System Based on ANN
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摘要 电网谐波含量是衡量电能质量的重要指标,对谐波的检测具有很高的经济和社会效益。综述了目前常用的谐波检测原理和方法,同时指出其优缺点,展望了谐波检测的发展方向,成功开发出基于AT91 RM9200的嵌入式计算机主板,并得到成功应用。 Harmonics in power system is the primary standard in the electricity equality, harmonics measurement is high benefited for economics and society. The theory and methods for harmonics measurement is summarized, the disadvantage and excellence for each method is pointed out, the heading direction is prospected and an IC system successfully is designed.
作者 李庆华
出处 《电气应用》 北大核心 2008年第13期26-29,共4页 Electrotechnical Application
关键词 电网谐波 检测方法 人工神经网络 硬件系统开发 harmonics detection measurement method artificial neural network IC systems development
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共引文献294

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