4.5 Article

A robot arm digital twin utilising reinforcement learning

期刊

COMPUTERS & GRAPHICS-UK
卷 95, 期 -, 页码 106-114

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.cag.2021.01.011

关键词

Robot arm; Reinforcement learning; Artificial intelligence; Digital twin

资金

  1. NVIDIA Corporation

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The implementation of Artificial Intelligence in various industry contexts has led to the emergence of the fourth industrial revolution, also known as Industry 4.0, offering significant benefits to businesses and stakeholders. Robot arms, commonly used in manufacturing and industrial processes, require proper training through AI to be effectively utilized. The use of a Digital Twin is one approach to support AI training, but challenges exist in collecting data and applying trained AI policies for successful task completion.
For many industry contexts, the implementation of Artificial Intelligence (AI) has contributed to what has become known as the fourth industrial revolution or Industry 4.0 and creates an opportunity to deliver significant benefit to both businesses and their stakeholders. Robot arms are one of the most common devices utilised in manufacturing and industrial processes, used for a wide variety of automation tasks on, for example, a factory floor but the effective use of these devices requires AI to be appropriately trained. One approach to support AI training of these devices is the use of a Digital Twin. There are, however, a number of challenges that exist within this domain, in particular, success depends upon the ability to collect data of what are considered as observations within the environment and the application of one or many trained AI policies to the task that is to be completed. This project presents a case-study of creating and training a Robot Arm Digital Twin as an approach for AI training in a virtual space and applying this simulation learning within physical space. A virtual space, created using Unity (a contemporary Game Engine), incorporating a virtual robot arm was linked to a physical space, being a 3D printed replica of the virtual space and robot arm. These linked environments were applied to solve a task and provide training for an AI model. The contribution of this work is to provide guidance on training protocols for a digital twin together with details of the necessary architecture to support effective simulation in a virtual space through the use of Tensorflow and hyperparameter tuning. It provides an approach to addressing the mapping of learning in the virtual domain to the physical robot twin. (c) 2021 Elsevier Ltd. All rights reserved.

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