A bearing fault prediction system and method based on multi-source information fusion
A technology of multi-source information fusion and fault prediction, applied in the field of multi-source information fusion bearing fault prediction system, can solve problems such as poor signal quality, complicated service environment of rolling bearings, difficult to capture, identify and extract fault information, and achieve the elimination of dimensionality difference effect
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Embodiment 1
[0034] This embodiment provides a multi-source information fusion bearing fault prediction system, including a multi-source information collection system and a fault prediction system. The multi-source information collection system is used to obtain multi-source state information transmitted to the failure prediction system. The fault prediction system then performs preprocessing analysis on the original signal, and combines the feature fusion method to obtain representative fault features, and realizes accurate prediction of bearing faults through model training.
[0035] Considering that vibration signals and temperature signals are often used to describe the degradation process of bearings, this embodiment takes the collection of bearing temperature and vibration data as an example, so the sensors in this embodiment include vibration sensors and temperature sensors. Of course, in other embodiments, other types of sensors may also be included, depending on specific detection...
Embodiment 2
[0045] This embodiment provides a bearing fault prediction method based on multi-source information fusion, such as Figure 4 As shown, taking the vibration data set and temperature data set extracted from the database as an example, they are used as the model training data set, and the data preprocessing module performs data cleaning, data integration, data specification, and data transformation on the original signal to eliminate the noise in the signal. noise and integrate data from different data sources together to eliminate dimensional differences.
[0046] According to the complexity of the model, select the corresponding time-frequency domain features in the feature extraction module, and then select the appropriate dimensionality reduction method in the feature dimensionality reduction module, such as using the local linear embedding method to reduce the dimension of the training data, thereby reducing the complexity of the algorithm calculation. The feature fusion mo...
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