论文标题

使用基于深Q网络的多代理增强学习对纺织制造过程的多目标优化

Multi-Objective Optimization of the Textile Manufacturing Process Using Deep-Q-Network Based Multi-Agent Reinforcement Learning

论文作者

He, Zhenglei, Tran, Kim Phuc, Thomassey, Sebastien, Zeng, Xianyi, Xu, Jie, Yi, Changhai

论文摘要

纺织品制造过程的多目标优化是一个越来越多的挑战,因为纺织行业发展涉及的复杂性日益增长。尽管已经报道了某些成功的应用,但在该领域中经常讨论智能技术的使用,但传统方法未能与高度和人类干预一起工作。在此论文中,本文提出了一个多代理增强学习(MARL)框架,以将优化过程转换为随机游戏,并引入了深层Q-Networks算法来训练多个代理。随机游戏中采用了一种实用的选择机制,在每个状态下( - 绿化政策),以避免多重均衡的中断并实现优化过程中相关的平衡最佳解决方案。案例研究结果反映出,提出的MAL系统可以实现纺织臭氧过程的最佳解决方案,并且其性能比传统方法更好。

Multi-objective optimization of the textile manufacturing process is an increasing challenge because of the growing complexity involved in the development of the textile industry. The use of intelligent techniques has been often discussed in this domain, although a significant improvement from certain successful applications has been reported, the traditional methods failed to work with high-as well as human intervention. Upon which, this paper proposed a multi-agent reinforcement learning (MARL) framework to transform the optimization process into a stochastic game and introduced the deep Q-networks algorithm to train the multiple agents. A utilitarian selection mechanism was employed in the stochastic game, which (-greedy policy) in each state to avoid the interruption of multiple equilibria and achieve the correlated equilibrium optimal solutions of the optimizing process. The case study result reflects that the proposed MARL system is possible to achieve the optimal solutions for the textile ozonation process and it performs better than the traditional approaches.

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