SDRSN-based multi-feature health factor fusion method
A technology of health factors and fusion methods, applied in neural learning methods, testing of mechanical components, testing of machine/structural components, etc.
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specific Embodiment approach 1
[0051] Specific implementation mode one: refer to figure 1 and figure 2 Specifically illustrate this embodiment, a kind of multi-feature health factor fusion method based on SDRSN described in this embodiment, it is characterized in that comprising:
[0052] Step 1: collecting the original vibration signal of the rotating machinery;
[0053] Step 2: Perform smoothing and denoising preprocessing on the original vibration signal of the rotating machinery, and then perform time domain, frequency domain and time-frequency domain feature extraction on the preprocessed original vibration signal of the rotating machinery, and construct the original feature set, Then normalize the signal in the original feature set;
[0054] Step 3: Use the normalized original feature set to filter and construct a sensitive feature set;
[0055] Step 4: Input the sensitive feature set into the SDRSN model for feature fusion training, input the data of the test set into the trained model, and obtai...
specific Embodiment approach 2
[0065] Embodiment 2: This embodiment is a further description of Embodiment 1. The difference between this embodiment and Embodiment 1 is that the final output of the model is expressed as:
[0066] x l+1 =x l +F(x l ,W l )
[0067] where x l Indicates the output feature A, F(x l ,W l ) represents the output feature B.
specific Embodiment approach 3
[0068] Embodiment 3: This embodiment is a further description of Embodiment 2. The difference between this embodiment and Embodiment 2 is that the convolutional layer output features are expressed as:
[0069] the y 1 =∑x*k+b
[0070] Among them, x represents the input feature, k represents the convolution kernel, and b represents the bias.
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