Intelligent manufacturing is becoming increasingly important due to the growing demand for maximizing productivity and flexibility while minimizing waste and lead times. This work investigates automated secondary robotic food packaging solutions that transfer food products from the conveyor belt into containers. A major problem in these solutions is varying product supply which can cause drastic productivity drops. Conventional rule-based approaches, used to address this issue, are often inadequate, leading to violation of the industry's requirements. Reinforcement learning, on the other hand, has the potential of solving this problem by learning responsive and predictive policy, based on experience. However, it is challenging to utilize it in highly complex control schemes. In this paper, we propose a reinforcement learning framework, designed to optimize the conveyor belt speed while minimizing interference with the rest of the control system. When tested on real-world data, the framework exceeds the performance requirements (99.8% packed products) and maintains quality (100% filled boxes). Compared to the existing solution, our proposed framework improves productivity, has smoother control, and reduces computation time.
翻译:智能制造越来越重要,因为对最大化生产力和灵活性以及最小化浪费和交货期的需求不断增长。本研究探讨了自动化二次机器人食品包装解决方案,将食品产品从传送带转移到容器中。这种解决方案的主要问题是产品供应的变化,这可能导致生产率急剧下降。传统的基于规则的方法,用于解决这个问题,通常是不够的,导致违反行业的要求。相比之下,强化学习有潜力通过基于经验的学习响应和预测策略来解决这个问题。然而,将其应用于高度复杂的控制方案是具有挑战性的。在本文中,我们提出了一种强化学习框架,旨在优化传送带速度,同时最小化与其他控制系统的干扰。当在真实数据上进行测试时,该框架超过了绩效要求(99.8%的包装产品)并保持了质量(100%的填充盒)。与现有解决方案相比,我们提出的框架提高了生产率,控制更加平滑,计算时间更短。