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Power Quality Disturbance Detection Using Artificial Intelligence: A Hardware Approach

机译:使用人工智能的电能质量扰动检测:一种硬件方法

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摘要

Identification and classification of voltage and current disturbances in power systems is an important task in power system monitoring and protection. Most power quality disturbances are non-stationary and transitory and the detection and classification have proved to be very demanding. New intelligent system technologies using wavelet transform, expert systems and artificial neural networks provide some unique advantages regarding fault analysis. This paper presents new approach aimed at automating the analysis of power quality disturbances including sag, swell, transient, fluctuation, interruption and normal waveform. The approach focuses on the application of discrete wavelet transform technique to extract features from disturbance waveforms and their classification using a powerful combination of neural network and fuzzy logic. The system is modelled using VHDL followed by extensive testing and simulation to verify the correct functionality of the system. Then, the design is synthesized to APEX EP20K200EBC652-1X FPGA, tested and validated. Comparisons, verification and analysis made from the results obtained from the application of this system on software-generated and utility sampled disturbance signals validate the utility of this approach and achieved a classification accuracy of 98.17%.
机译:电力系统中电压和电流干扰的识别和分类是电力系统监视和保护的重要任务。多数电能质量扰动都是非平稳的和短暂的,事实证明对检测和分类的要求很高。使用小波变换,专家系统和人工神经网络的新智能系统技术在故障分析方面提供了一些独特的优势。本文提出了一种旨在自动化分析电能质量扰动的新方法,包括下垂,骤升,瞬变,波动,中断和正态波形。该方法侧重于应用离散小波变换技术,利用神经网络和模糊逻辑的强大组合从干扰波形及其分类中提取特征。使用VHDL对系统进行建模,然后进行大量测试和仿真,以验证系统的正确功能。然后,将设计综合到APEX EP20K200EBC652-1X FPGA,进行测试和验证。通过将本系统应用到软件生成的和实用采样的干扰信号上所获得的结果进行比较,验证和分析,验证了该方法的实用性,并且分类精度达到98.17%。

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