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A Model-Based Reinforcement Learning and Correction Framework for Process Control of Robotic Wire Arc Additive Manufacturing

机译:机器人电弧增材制造过程控制的基于模型的强化学习与修正框架

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Robotic Wire Arc Additive Manufacturing (WAAM) utilizes a robot arm as a motion system to build 3D metallic objects by depositing weld beads one above the other in a layer by layer fashion. A key part of this approach is the process study and control of Multi-Layer Multi-Bead (MLMB) deposition, which is very sensitive to process parameters and prone to error stacking. Despite its importance, it has been receiving less attention than its single bead counterpart in literature, probably due to the higher experimental overhead and complexity of modeling. To address these challenges, this paper proposes an integrated learning-correction framework, adapted from Model-Based Reinforcement Learning, to iteratively learn the direct effect of process parameters on MLMB print while simultaneously correct for any inter-layer geometric digression such that the final output is still satisfactory. The advantage is that this learning architecture can be used in conjunction with actual parts printing (hence, in-situ study), thus minimizing the required training time and material wastage. The proposed learning framework is implemented on an actual robotic WAAM system and experimentally evaluated.
机译:机器人电弧电弧增材制造(WAAM)利用机器人手臂作为运动系统,通过逐层一层一层地在另一层之上沉积焊道来构建3D金属物体。这种方法的关键部分是对多层多珠(MLMB)沉积的过程研究和控制,它对过程参数非常敏感,并且容易出现错误堆积。尽管它很重要,但与文献中的单个珠子相比,它受到的关注较少,这可能是由于更高的实验开销和建模的复杂性所致。为了应对这些挑战,本文提出了一个基于模型强化学习的集成学习校正框架,以迭代地学习工艺参数对MLMB打印的直接影响,同时校正任何层间几何分布,从而最终输出还是令人满意的。优势在于,该学习体系结构可以与实际零件打印(因此,就地研究)结合使用,从而最大程度地减少了所需的培训时间和材料浪费。所提出的学习框架是在实际的机器人WAAM系统上实施的,并进行了实验评估。

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