System Identification and Machine Learning Model Construction for Reinforcement Learning Control Strategies Applied to LENS System

G. G. Jaman, Asa Monson, Kanan Roy Chowdhury, M. Schoen, T. Walters
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Abstract

Identifying and controlling of additive manufacturing processes has the potential to improve part quality during the build process. The melt pool size of direct energy deposition processes has been related to part quality. In this paper, we investigate the use of system identification tools to device closed-loop controllers that are capable of regulating the melt pool size during the build process. Based on the results of linear models, machine learning approaches are investigated with the goal to obtain higher fidelity models, capable of characterizing the nonlinearities existing in such processes. In addition, a reinforcement learning controller is proposed that can accommodate the nonlinear behavior and the initial uncertainty in the model. Experiments with a direct energy deposition setup show improved part geometry using the linear model and controller. Simulation results employing the developed reinforcement learning controller show promise in enhanced control performance.
应用于LENS系统的强化学习控制策略的系统辨识与机器学习模型构建
识别和控制增材制造过程具有在制造过程中提高零件质量的潜力。直接能量沉积工艺的熔池大小直接关系到零件的质量。在本文中,我们研究了使用系统识别工具来装置闭环控制器,该控制器能够在构建过程中调节熔池大小。基于线性模型的结果,研究机器学习方法的目标是获得更高保真度的模型,能够表征这些过程中存在的非线性。此外,还提出了一种能够适应模型非线性行为和初始不确定性的强化学习控制器。在直接能量沉积装置上的实验表明,使用线性模型和控制器可以改善零件的几何形状。仿真结果表明,采用所开发的强化学习控制器可以提高控制性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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