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Blade imbalanced fault diagnosis for marine current turbine based on sparse autoencoder and softmax regression

机译:基于稀疏自动编码器和softmax回归的船用水轮机叶片不平衡故障诊断

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Because of the abundance of seston under the sea, the attachment on the blade of the marine current turbine (MCT) would cause imbalanced fault. In order to detect the imbalanced fault as soon as possible, an imbalanced fault characteristics analysis method is applied based on image processing. A diagnosis method combining the modified sparse autoencoder (SA) and softmax regression (SR) is applied to process images and detect the imbalanced fault on the blade of MCT. The modified SA is used to extract the features and SR is used to classify them. The data of images are used to monitor whether the blade is attached by benthos and its corresponding degree of imbalance. Experiments show that the applied diagnosis method can achieve higher accuracy in the application of diagnosis of blade imbalanced fault compared with the traditional PCA feature extraction algorithm.
机译:由于海底有大量的塞斯顿,船用电流涡轮机(MCT)叶片上的附件会引起不平衡故障。为了尽快发现不平衡故障,提出了一种基于图像处理的不平衡故障特征分析方法。将改进的稀疏自动编码器(SA)和softmax回归(SR)相结合的诊断方法用于处理图像并检测MCT刀片上的不平衡故障。修改后的SA用于提取特征,而SR用于对其进行分类。图像数据用于监视叶片是否被底托附着及其相应的不平衡度。实验表明,与传统的PCA特征提取算法相比,所应用的诊断方法在叶片不平衡故障诊断中的应用具有更高的准确性。

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