Human-Machine Cooperation Based Adaptive Scheduling for a Smart Shop Floor

Dongyuan Wang, F. Qiao, Junkai Wang, Juan Liu, Weichang Kong
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引用次数: 1

Abstract

With the increasing demand of personalized products and the application of emerging technologies, substantial unexpected events appears in smart factories. Machine learning based adaptive scheduling shows significant appeal in smart shop floors, yet still has limitations in accommodating unexpected events. This paper presents a novel framework of HCPS (Human Cyber Physical System) based on the conventional CPS. A human-machine cooperative mechanism is proposed to coordinate task allocation between human and machine. Meanwhile, in order to integrate human intelligence and machine intelligence within scheduling decision making, a novel human-machine cooperative approach for adaptive scheduling is put forward. In the process of online scheduling, human operators adjust the deviation of production indicators on the basis of current condition. Subsequently, an enhanced fuzzy inference system combining with human intelligence is designed to obtain optimal dispatching rules, in which parameters are reduced by a K-means algorithm and optimized by a PSO algorithm. Finally, a case study is performed on the Minifab model. The simulation results validate the superiority of the proposed framework and approaches, and show good potential in efficiency and stability.
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基于人机协作的智能车间自适应调度
随着个性化产品需求的增加和新兴技术的应用,智能工厂中出现了大量的突发事件。基于机器学习的自适应调度在智能车间中显示出巨大的吸引力,但在适应意外事件方面仍然存在局限性。本文在传统网络物理系统的基础上,提出了一种新的网络物理系统框架。提出了一种人机协作机制来协调人与机器之间的任务分配。同时,为了在调度决策中融合人智能和机器智能,提出了一种新的人机协作自适应调度方法。在在线调度过程中,人工操作员根据当前状况调整生产指标的偏差。随后,结合人类智能设计了一个增强的模糊推理系统来获得最优调度规则,其中参数采用K-means算法约简,并采用粒子群算法进行优化。最后,对Minifab模型进行了实例研究。仿真结果验证了所提框架和方法的优越性,并在效率和稳定性方面显示出良好的潜力。
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