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Classification of Power Quality Disturbances using Hilbert Huang Transform and a Multilayer Perceptron Neural Network Model

机译:使用希尔伯特·黄(Hilbert Huang)变换和多层感知器神经网络模型对电能质量扰动进行分类

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Disturbances in power quality have increased due to the use of electronic equipment, causing deviations in current and voltage waveforms, which can cause many failures and damage to equipment used in different demand points. Therefore, an efficient disturbance detection method is required in order to provide relevant information regarding its ocurrence. However, there are many difficulties detecting disturbances throughout traditional data extraction methods. These methods have not been able to perform the detection process with the efficiency, speed and accuracy required for this type of work, due to the non-stationary and non-linear behavior of these disturbances. In this study, the Hilbert-Huang Transform and the Multilayer Perceptron Neural Network model are implemented in order to detect and classify disturbances in power quality. Eight common types of disturbances were analyzed based on the parameters stated in the IEEE 1159 standard. By means of instantaneous frequencies and intrinsic mode functions of each disturbance, the neural network is trained for the classification of these disturbances. The implemented method reached a precision percentage of 94.6, demonstrating the versatility and great potential that this method provides when detecting disturbances in power quality.
机译:由于使用电子设备,电能质量的干扰增加了,导致电流和电压波形出现偏差,这可能会导致许多故障并损坏在不同需求点使用的设备。因此,需要一种有效的干扰检测方法,以提供有关其发生的相关信息。但是,在整个传统数据提取方法中检测干扰存在许多困难。由于这些干扰的非平稳和非线性行为,这些方法无法以这种类型的工作所需的效率,速度和准确性来执行检测过程。在这项研究中,Hilbert-Huang变换和多层感知器神经网络模型的实现是为了检测和分类电能质量中的干扰。根据IEEE 1159标准中规定的参数,分析了八种常见的干扰类型。通过每个干扰的瞬时频率和固有模式函数,可以训练神经网络对这些干扰进行分类。所实现的方法达到了94.6的精度百分比,证明了该方法的多功能性和检测电能质量扰动时提供的巨大潜力。

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