Journal Article10.1080/07373937.2023.2222472
An adaptive optimization method toward batch-wise variable set point of outlet moisture content for the tobacco drying process
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Abstract: Abstract The tobacco drying process in the cigarette production has an important effect on the final product quality. Therefore, the intelligent control methods have been widely investigated to ensure the stability of tobacco’s outlet moisture content. The existing work mostly uses a relatively fixed set point of the outlet moisture content for different tobacco batches, which can lead to unforeseen product quality after several processes following the drying process and inaccessible amount of dehydration for the rotary dryer. Some tobacco moisture prediction methods have been studied recently while the relationship with the intelligent control methods remain largely unexplored. To deal with these issues, a novel method is proposed in this paper to identify the optimal set point of the drying outlet moisture content for each tobacco batch. An encoder-decoder model is first developed to forecast the post-drying moisture trajectory. Then, an adaptive filter with specially designed mechanisms and a confidence interval of the dehydration level are constructed to obtain the design constraints. Based on all above, a constrained optimization problem is formulated and solved by the genetic algorithm. Extensive experiments on 895 tobacco batches from a large cigarette factory are carried out, which involves both algorithmic evaluation and field test. It turns out that the proposed method achieves the superior performance and leads to an improvement of the product quality in real production.
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Citations
A novel spatio-temporal attention-based bidirectional LSTM model for moisture content prediction in drying process
Lei Zhang,Guofeng Ren,DU Jinsong,Shanlian Li,Yinhua Li,Dayong Xu +5 more
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Implementation and optimization of intelligent monitoring technology in tobacco leaf outbound process
Hua Gan
- 16 Jul 2025
TL;DR: An intelligent monitoring system using deep learning and big data analysis was implemented to enhance tobacco leaf grade recognition and anomaly detection, achieving 99.1% image recognition accuracy, 150% processing efficiency increase, and 55% labor cost reduction.
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