基于多域特征融合的电能质量扰动识别方法

C. Lifen, Zhu Ke, S. Guoping
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引用次数: 0

摘要

电能质量扰动辨识是电能质量研究的重要内容。然而,噪声、干扰之间的干扰以及特征提取方法的影响可能导致从不同干扰中提取的特征边缘模糊,从而影响干扰识别的准确性。在此基础上,提出了一种基于多域特征融合的图像识别方法。首先利用不同域的混合特征对神经网络进行初步训练,然后结合每个域的输入特征,根据隐层神经元保留前后交叉熵的变化确定隐层神经元在相应域的动作概率。最后,利用DS证据理论,将不同域内未知扰动的识别结果转化为独立证据,得出最终结果。该算法减少了单域特征误差对识别精度的影响,对噪声具有较强的鲁棒性和稳定性。
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Power quality disturbance identification method based on multi-domain feature fusion
Power quality disturbance identification is vital for power quality study. However, noise, interference between disturbances and the effect of feature extraction method may lead to edge blurring of features extracted from different disturbances, thus affecting the accurate of disturbance recognition. Thence, the paper proposes a recognition method based on multi-domain feature fusion. Firstly, the neural network is trained preliminarily by mixed features of different domains, and then with the input characteristics of each domain, the action probability of hidden layer neurons in corresponding domain is determined according to the changes of cross-entropy before and after retention of the hidden layer neurons. Finally, work out the final results by the DS evidence theory, in which the independent evidence is transformed from identification results of unknown disturbances in different domains. The algorithm reduces the influence of errors in characteristics of a single domain on the identification accuracy, and is robust to noise and stable.
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