A Dataset Oversampling Method for Circuit Breaker Imbalance Monitoring
A monitoring data and oversampling technology, applied in the field of machine learning, can solve the problem of unbalanced monitoring data categories, and achieve the effect of supplementing effective classification information, increasing the number of samples, and avoiding bias.
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[0102] Collect the circuit breaker imbalance monitoring dataset. The vibration signal during the closing process of the circuit breaker is used as the monitoring signal, and the vibration signals in different states are collected to form an unbalanced data set S={xi,yi}, where x i is the sample data, y i for x i the corresponding status category. Specifically, 60 groups of vibration signals under normal conditions were collected, and 30 groups of vibration signals were collected under the fatigue of closing spring (fault 1), the loosening of base screws (fault 2), and the fatigue of opening spring (fault 3). An imbalanced dataset with a class imbalance ratio of 2:1 is established. Extract the piecewise energy entropy of the vibration signal, the characteristics are as attached Figure 5 shown.
[0103] The normal and fault states are sorted in descending order by their number of samples. The reordered state sequence is, normal state, fault 1, fault 2, fault 3. The norma...
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