An intelligent moisture prediction method for tobacco drying process using a multi-hierarchical convolutional neural network

IF 2.7 3区 工程技术 Q3 ENGINEERING, CHEMICAL
LI-JUAN Mu, Suhuan Bi, Shusong Yu, Xiuyan Liu, Xiangqian Ding
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引用次数: 6

Abstract

Abstract The moisture content of tobacco, as an important characteristic which should be kept at a desired level to maintain consistent product quality in drying process, is difficult to perform the direct measurement and anomaly detection due to its large delay in actual process. Therefore, an intelligent real-time detection method is an urgent and challenging task in ensuring the product quality. This paper proposes a time-domain raw data conversion method along with a novel deep learning architecture called multi-hierarchical convolutional neural network (MHCNN) for moisture prediction, in which the proposed architecture automatically learns multi-hierarchical features from transformed image-like data and simultaneously performs online prediction. Experiments are conducted on the real production data from the cigarette factory and the presented model performs well on overall testing dataset. Specifically, the MAE, RMSE and R 2 of normal production batch can reach to 0.0131, 0.0244, and 0.9721 respectively, which are far superior to the estimation of experience and other alternatives. It demonstrates that the proposed online prediction strategy can simultaneously perform multi-hierarchical feature extraction and moisture online prediction with high precise to eliminate the detection delay for process optimization and control.
基于多层卷积神经网络的烟草干燥过程水分智能预测方法
摘要烟草水分含量作为一个重要的特性,在干燥过程中应保持在期望的水平,以保持产品质量的一致性,但由于其在实际过程中的延迟很大,很难进行直接测量和异常检测。因此,在保证产品质量方面,一种智能的实时检测方法是一项紧迫而富有挑战性的任务。本文提出了一种时域原始数据转换方法,以及一种新的深度学习架构,称为多层次卷积神经网络(MHCNN),用于湿度预测。在该架构中,该架构从转换后的类图像数据中自动学习多层次特征,并同时执行在线预测。在卷烟厂的实际生产数据上进行了实验,所提出的模型在整个测试数据集上表现良好。具体而言,正常生产批次的MAE、RMSE和R2分别可达0.0131、0.0244和0.9721,远优于经验和其他替代品的估计。结果表明,所提出的在线预测策略可以同时进行多层次特征提取和水分在线预测,具有较高的精度,消除了过程优化和控制的检测延迟。
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来源期刊
Drying Technology
Drying Technology 工程技术-工程:化工
CiteScore
7.40
自引率
15.20%
发文量
133
审稿时长
2 months
期刊介绍: Drying Technology explores the science and technology, and the engineering aspects of drying, dewatering, and related topics. Articles in this multi-disciplinary journal cover the following themes: -Fundamental and applied aspects of dryers in diverse industrial sectors- Mathematical modeling of drying and dryers- Computer modeling of transport processes in multi-phase systems- Material science aspects of drying- Transport phenomena in porous media- Design, scale-up, control and off-design analysis of dryers- Energy, environmental, safety and techno-economic aspects- Quality parameters in drying operations- Pre- and post-drying operations- Novel drying technologies. This peer-reviewed journal provides an archival reference for scientists, engineers, and technologists in all industrial sectors and academia concerned with any aspect of thermal or nonthermal dehydration and allied operations.
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