Aiming at the problem of data fluctuation in multi-process production, a Soft Update Dueling Double Deep Q-learning (SU-D3QN) network combined with soft update strategy is proposed. Based on this, a time series combination forecasting model SU-D3QN-G is proposed. Firstly, based on production data, Gate Recurrent Unit (GRU) is used for prediction. Secondly, based on the model, SU-D3QN algorithm is used to learn and add bias to it, and the prediction results of GRU are corrected, so that the prediction value of each time node fits in the direction of reducing the absolute error. Thirdly, experiments were carried out on the dataset of a company. The data sets of four indicators, namely, the outlet temperature of drying silk, the loose moisture return water, the outlet temperature of feeding leaves and the inlet water of leaf silk warming and humidification, are selected, and more than 1000 real production data are divided into training set, inspection set and test set according to the ratio of 6:2:2. The experimental results show that the SU-D3QN-G combined time series prediction model has a great improvement compared with GRU, LSTM and ARIMA, and the MSE index is reduced by 0.846-23.930%, 5.132-36.920% and 10.606-70.714%, respectively. The RMSE index is reduced by 0.605-10.118%, 2.484-14.542% and 5.314-30.659%. The MAE index is reduced by 3.078-15.678%, 7.94-15.974% and 6.860-49.820%. The MAPE index is reduced by 3.098-15.700%, 7.98-16.395% and 7.143-50.000%.
Research on time series prediction of multi-process based on deep learning.
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作者:Zheng Huali, Cao Yu, Sun Dong, Wang Mingjun, Yan Binglong, Ye Chunming
| 期刊: | Scientific Reports | 影响因子: | 3.900 |
| 时间: | 2024 | 起止号: | 2024 Feb 14; 14(1):3739 |
| doi: | 10.1038/s41598-024-53762-1 | ||
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