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A novel feature selection and extraction method for neural network based transfer capability assessment of power systems

机译:基于神经网络的电力系统传输能力评估的特征选择与提取方法

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A new feature selection and extraction method is presented in this paper for the neural network (NN) based available transfer capability assessment in the deregulated power system. The objective of feature selection and extraction is to speed up the NN training process and to achieve a more accurate NN results. The proposed method is known as the SDFT method in which it is a combination of the sensitivity and discrete Fourier transform methods. The sensitivity analysis is first used in selecting the input features and then followed by the discrete Fourier transform (DFT) method for extracting NN input features. The hypothesis set of pre-selected data performed by the sensitivity method only offers no improvement in the NN training performance in such cases where many features are highly correlated. Thus, the DFT method is considered so as to extract the pre-selected data to a set of meaningful extracted data. To illustrate the effectiveness of the proposed method, a comparative study of the SDFT, DFT and sensitivity methods is made so as to investigate the effectiveness of the methods in extracting and selecting the NN features. In this study, the NN based available transfer capability assessment has been performed on the Malaysian power system.
机译:本文提出了一种新的特征选择和提取方法,用于基于神经网络的神经网络在可调节电力系统中的可用传输能力评估。特征选择和提取的目的是加快NN训练过程并获得更准确的NN结果。所提出的方法被称为SDFT方法,其中它是灵敏度和离散傅里叶变换方法的组合。灵敏度分析首先用于选择输入特征,然后是离散傅立叶变换(DFT)方法,用于提取NN输入特征。在许多功能高度相关的情况下,通过灵敏度方法执行的假设数据假设集仅不会改善NN训练性能。因此,考虑使用DFT方法以便将预选数据提取为一组有意义的提取数据。为了说明该方法的有效性,对SDFT,DFT和灵敏度方法进行了比较研究,以研究该方法在提取和选择NN特征中的有效性。在这项研究中,已经在马来西亚电力系统上进行了基于NN的可用传输能力评估。

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