通过计算设计环境中的分布式无模型深度强化学习实现机器人自主增材制造。

Construction robotics Pub Date : 2022-01-01 Epub Date: 2022-05-23 DOI:10.1007/s41693-022-00069-0
Benjamin Felbrich, Tim Schork, Achim Menges
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引用次数: 4

摘要

目前,在计算设计和机器人制造(CDRF)以及机器人中的深度强化学习(DRL)的研究社区中,正在对建筑规模的自主机器人增材制造的目标进行部分研究。本研究总结了这两个研究领域的相关技术现状,并阐述了如何将它们各自的成就结合起来,在建筑、工程和施工(AEC)行业实现机器人施工的更高自主性。提出了一种用于代理训练和任务执行的分布式控制和通信基础设施,该基础设施利用了将两个领域的工具、标准和算法相结合的潜力。它面向工业CDRF应用。使用该框架,在两个案例研究中,使用两种无模型DRL算法(TD3,SAC)训练机器人代理自主规划和构建结构:机器人块堆叠和传感器自适应3D打印。第一个案例研究旨在证明DRL训练的计算设计环境的普遍适用性以及所用算法的比较学习成功率。案例研究二强调了我们的设置在刀具路径规划、几何状态重建、制造约束和动作评估方面的优势,这些都是通过参数建模例程进行训练和执行过程的一部分。该研究得益于基于卷积自动编码器(CAE)和符号距离场(SDF)的高效几何压缩、CAD中的实时物理模拟、行业级硬件控制以及通过几何脚本的独特动作互补。大多数开发的代码都是开源的。补充信息:在线版本包含补充材料,可访问10.1007/s41693-022-00069-0。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Autonomous robotic additive manufacturing through distributed model-free deep reinforcement learning in computational design environments.

Autonomous robotic additive manufacturing through distributed model-free deep reinforcement learning in computational design environments.

Autonomous robotic additive manufacturing through distributed model-free deep reinforcement learning in computational design environments.

Autonomous robotic additive manufacturing through distributed model-free deep reinforcement learning in computational design environments.

The objective of autonomous robotic additive manufacturing for construction in the architectural scale is currently being investigated in parts both within the research communities of computational design and robotic fabrication (CDRF) and deep reinforcement learning (DRL) in robotics. The presented study summarizes the relevant state of the art in both research areas and lays out how their respective accomplishments can be combined to achieve higher degrees of autonomy in robotic construction within the Architecture, Engineering and Construction (AEC) industry. A distributed control and communication infrastructure for agent training and task execution is presented, that leverages the potentials of combining tools, standards and algorithms of both fields. It is geared towards industrial CDRF applications. Using this framework, a robotic agent is trained to autonomously plan and build structures using two model-free DRL algorithms (TD3, SAC) in two case studies: robotic block stacking and sensor-adaptive 3D printing. The first case study serves to demonstrate the general applicability of computational design environments for DRL training and the comparative learning success of the utilized algorithms. Case study two highlights the benefit of our setup in terms of tool path planning, geometric state reconstruction, the incorporation of fabrication constraints and action evaluation as part of the training and execution process through parametric modeling routines. The study benefits from highly efficient geometry compression based on convolutional autoencoders (CAE) and signed distance fields (SDF), real-time physics simulation in CAD, industry-grade hardware control and distinct action complementation through geometric scripting. Most of the developed code is provided open source.

Supplementary information: The online version contains supplementary material available at 10.1007/s41693-022-00069-0.

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