Aiming at the error accumulation in the traditional iterative training of process quality prediction models
a prediction model combining temporal attention mechanism
long and short term time series network
improved complete ensemble EMD
random forest (TAM-LSTNet-CEEMDAN-RF) error correction was proposed. Firstly
by introducing mutual information and stacking sparse autoencoder
the effective features are screened from process data
and the effective dimensions are constructed. Then
TAM-LSTNet model was used to mine the complex correlation between the effective dimension and the process time series data
get the first predicted value and subtracted from the test value to calculate the error sequence. The error sequence was corrected by using CEEMDAN-RF model to obtain the second predicted value. Finally
the two predicted values are added to obtain the predicted value of the quality index. The results show that the fitting degree of the coupling model is 0.036 and 0.029 higher than that of TAM-LSTM model and TAM-LSTNet-RF model
respectively
which verifies the effectiveness and applicability of the present method. The error correction model can accurately predict the production quality of the process.