基于深度学习的注塑机注射速度预测控制

IF 2 4区 工程技术 Q3 ENGINEERING, CHEMICAL Advances in Polymer Technology Pub Date : 2022-11-15 DOI:10.1155/2022/7662264
Zhigang Ren, Yao Li, Zongze Wu, Shengli Xie
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引用次数: 2

摘要

快速可靠的注塑机优化控制对于注塑制品的有效生产至关重要,尤其是在嵌入式设备计算机资源有限的情况下。本文研究了一个典型IMM中出现的最优跟踪注入速度控制问题。基于模拟经典模型预测控制规则的深度学习(DL)方法,开发了一种计算资源较少的实时混合智能控制方法来处理注射速度的跟踪控制。该方法利用门控递归单元神经网络来学习和预测传统模型预测控制器产生的最优时间序列控制过程数据。通过仿真结果说明了这种方法相对于传统优化方法的优点,结果表明,基于DL的收敛控制器可以有效地避免IMM控制过程中的复杂计算,在一定程度上满足更强的鲁棒性和抗环境不确定性的要求,并且可以以更小的内存占用和更快的计算时间在嵌入式硬件中更有效、更方便地实现。
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Deep Learning-Based Predictive Control of Injection Velocity in Injection Molding Machines
Rapid and reliable optimal control of injection molding machines (IMMs) is critical for the effective production of injection-molded goods, especially in the situation of restricted computer resources of embedded equipment in IMMs. In this paper, an optimal tracking injection velocity control problem arising in a typical IMM is studied. An effective hybrid intelligent control approach with less computing resources for real-time implementation based on the deep learning (DL) method to mimic the classical model predictive control rule is developed to deal with the tracking control of the injection speed. The proposed method utilizes the gated recurrent unit neural network to learn and predict the optimal time series control process data produced by the traditional model predictive controller. The benefits of this approach over the conventional optimization method are illustrated through simulation results, which show that the convergent DL-based controller can effectively avoid the complex calculation in the control process of IMMs and meet the requirements of more robustness and resist environmental uncertainty to a certain level and can be potentially implemented in embedded hardware much more efficiently and conveniently with a smaller memory footprint and faster computation time.
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来源期刊
Advances in Polymer Technology
Advances in Polymer Technology 工程技术-高分子科学
CiteScore
5.50
自引率
0.00%
发文量
70
审稿时长
9 months
期刊介绍: Advances in Polymer Technology publishes articles reporting important developments in polymeric materials, their manufacture and processing, and polymer product design, as well as those considering the economic and environmental impacts of polymer technology. The journal primarily caters to researchers, technologists, engineers, consultants, and production personnel.
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