蠕动分选机的课程学习

Mohammed Sharafath Abdul Hameed, Venkata Harshit Koneru, Johannes Poeppelbaum, Andreas Schwung
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引用次数: 0

摘要

本文提出了一种利用课程学习(CL)快速训练强化学习(RL)智能体用于蠕动分拣机(PSM)包裹运输的新方法。PSM是一种使用致动器和柔性薄膜运输包裹的工具,其中RL代理被训练来控制致动器。在之前的一篇论文中,执行器的训练是在PSM的离散元法(DEM)仿真环境中进行的,该环境使用开源的DEM库lightts开发,与真实机器相比,减少了运输任务的训练时间。但训练这名特工仍然需要几天时间。本文的目标是将训练时间减少到小时。为了克服这个问题,我们开发了一个速度更快但保真度较低的python仿真环境(PSE)来模拟PSM的传输任务。我们将其与课程学习方法结合起来,在运输过程中加速对代理人的培训。RL代理在PSE中分为两个步骤进行训练:1。有了固定的目标位置,2。随机的目标位置。此外,我们还使用梯度监控(GM),这是一种梯度正则化方法,它在任务切换时为RL代理的策略更新提供了额外的信任域约束。然后将经过训练的智能体部署在之前没有训练过的DEM环境中进行测试。结果表明,使用CL和PSE训练的RL agent在DEM环境下成功地完成了任务,而性能没有任何损失,而每集只使用了一小部分训练时间(1.87%)。这将允许更快的原型算法在未来的PSM上进行测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Curriculum Learning in Peristaltic Sortation Machine
This paper presents a novel approach to train a Reinforcement Learning (RL) agent faster for transportation of parcels in a Peristaltic Sortation Machine (PSM) using curriculum learning (CL). The PSM was developed as a means to transport parcels using an actuator and a flexible film where a RL agent is trained to control the actuator. In a previous paper, training of the actuator was done on a Discrete Element Method (DEM) simulation environment of the PSM developed using an open-source DEM library called LIGGGHTS, which reduced the training time of the transportation task compared to the real machine. But it still took days to train the agent. The objective of this paper is to reduce the training time to hours. To overcome this problem, we developed a faster but lower fidelity python simulation environment (PSE) capable of simulating the transportation task of PSM. And we used it with a curriculum learning approach to accelerate training the agent in the transportation process. The RL agent is trained in two steps in the PSE: 1. with a fixed set of goal positions, 2. with randomized goal positions. Additionally, we also use Gradient Monitoring (GM), a gradient regularization method, which provides additional trust region constraints in the policy updates of the RL agent when switching between tasks. The agent so trained is then deployed and tested in the DEM environment where the agent has not been trained before. The results obtained show that the RL agent trained using CL and PSE successfully completes the tasks in the DEM environment without any loss in performance, while using only a fraction of the training time (1.87%) per episode. This will allow for faster prototyping of algorithms to be tested on the PSM in future.
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