A fault diagnosis method for unbalanced hard disk data based on deep learning
A deep learning network and data technology, applied in the field of fault diagnosis of unbalanced hard disk data, can solve problems such as unbalanced data sets, and achieve the effects of high robustness, high application generalization, and improved accuracy
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[0043] Since the hard disk model is specified by the manufacturer, the present invention trains different models according to different models. Capacity_bytes is the capacity of each hard disk, and S.M.A.R.T. numbers are some self-monitoring analysis and reporting techniques, which can represent the characteristics of the hard disk. The hard drive data is distributed in the form of dates, and more importantly, each hard drive has nearly 120 features, and in each feature, the missing values are half of the total. On this basis, the present invention adopts the three-dimensional reconstruction of the original data, and preprocesses the data features with the feature engineering Auto-encoder and the missing value processing method. The present invention adopts the sample division method for extremely unbalanced samples , the processed training set is processed by SMOTE to balance the number of unbalanced samples, and finally a model with higher accuracy is obtained by combining ...
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