应用强化学习实现非结构化生产环境的自动化

Sanjay Nambiar, A. Wiberg, M. Tarkian
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引用次数: 0

摘要

实施机器学习(ML)来改进产品和生产开发流程为制造业带来了重大机遇。ML具有校准模型的能力,具有相当大的适应性和高精度。这种能力特别适用于传统的生产自动化过于昂贵的应用,例如,对于生产环境不确定且非结构化的大规模定制情况。为了应对生产系统和工作环境的多样性,可以在产品和生产开发过程的初始阶段使用强化学习(RL)与轻量级游戏引擎相结合。然而,有许多挑战,例如在虚拟环境中收集观察结果,虚拟环境可以与物理环境进行类似的交互。这个项目的重点是建立RL方法,在不同的环境中执行寻路和碰撞检测。以汽车工业的人工装配评价方法为例,目前人工装配评价方法需要进行数字化研究。对于这种情况,人体模型被训练在不同的环境中执行拾取和放置操作,从而在早期设计阶段自动化装配验证过程。下一个应用是移动机器人的寻径,包括一个铰接臂来执行拾取和放置操作。使用经典方法设置此应用程序的成本很高,因此RL也为该任务启用了自动化方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automation of unstructured production environment by applying reinforcement learning
Implementation of Machine Learning (ML) to improve product and production development processes poses a significant opportunity for manufacturing industries. ML has the capability to calibrate models with considerable adaptability and high accuracy. This capability is specifically promising for applications where classical production automation is too expensive, e.g., for mass customization cases where the production environment is uncertain and unstructured. To cope with the diversity in production systems and working environments, Reinforcement Learning (RL) in combination with lightweight game engines can be used from initial stages of a product and production development process. However, there are multiple challenges such as collecting observations in a virtual environment which can interact similar to a physical environment. This project focuses on setting up RL methodologies to perform path-finding and collision detection in varying environments. One case study is human assembly evaluation method in the automobile industry which is currently manual intensive to investigate digitally. For this case, a mannequin is trained to perform pick and place operations in varying environments and thus automating assembly validation process in early design phases. The next application is path-finding of mobile robots including an articulated arm to perform pick and place operations. This application is expensive to setup with classical methods and thus RL enables an automated approach for this task as well.
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