An Adaptive Thermal Finite Element Simulation of Direct Energy Deposition With Reinforcement Learning: A Conceptual Framework

João Sousa, R. Darabi, A. Reis, Marco Parente, L. Reis, J. C. de Sá
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Abstract

During the last decades, metal additive manufacturing (AM) technology has transitioned from rapid prototyping application to industrial adoption owing to its flexibility in product design, tooling, and process planning. Thus, understanding the behavior, interaction, and influence of the involved processing parameters on the overall AM production system in order to obtain high-quality parts and stabilized manufacturing process is crucial. Despite many advantages of the AM technologies, difficulties arise due to modelling the complex nature of the process-structure-property relations, which prevents its wide utilization in various industrial sectors. It is known that many of the most important defects in direct energy deposition (DED) are associated with the volume and timescales of the evolving melt pool. Thus, the development of methodologies for monitoring, and controlling the melt pool is critical. In this study, an adaptive numerical transient solution is developed, which is fed from the set of experiments for single-track scanning of super-alloy Inconel 625 on the hot-tempered steel type 42CrMo4. An established exponential formula based on the response surface methodology (RSM) that quantifies the influence of process parameters and geometries of deposited layers from experiments are considered to activate the volume fraction of passive elements in the finite element discretization. By resorting to the FORTRAN language framework capabilities, commercial finite element method software ABAQUS has been steered in order to control unfavorable defects induced by localized rapid heating and cooling, and unstable volume of the melt pool. A thermodynamic consistent phase-field model is coupled with a transient thermal simulation to track the material history. A Lagrangian description for the spatial and time discretization is used. The goal is to present a closed-loop approach to track the melt pool morphology and temperature to a reference deposition volume profile which is established based on deep reinforcement learning (RL) architecture aiming to avoid instabilities, defects and anomalies by controlling the laser power density adaptability. Despite the small number of iterations during RL model training, the agent was able to learn the desired behaviour and two different reward functions were evaluated. This approach allows us to show the possibility of using RL with openAI Gym for process control and its interconnection with ABAQUS framework to train a model first in a simulation environment, and thus take advantage of RL capabilities without creating waste or machine time in real-world.
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基于强化学习的直接能量沉积自适应热有限元模拟:一个概念框架
在过去的几十年里,金属增材制造(AM)技术由于其在产品设计、工具和工艺规划方面的灵活性,已经从快速原型应用过渡到工业应用。因此,为了获得高质量的零件和稳定的制造过程,了解所涉及的加工参数对整个增材制造系统的行为、相互作用和影响至关重要。尽管增材制造技术有许多优点,但由于对过程-结构-性能关系的复杂性质进行建模而出现困难,这阻碍了其在各个工业部门的广泛应用。众所周知,直接能量沉积(DED)中许多最重要的缺陷都与熔融池的体积和时间尺度有关。因此,开发监测和控制熔池的方法至关重要。基于高温合金Inconel 625在42CrMo4热回火钢上的单道扫描实验,提出了一种自适应瞬态数值解。建立了基于响应面法(RSM)的指数公式,该公式量化了工艺参数和实验沉积层几何形状的影响,以激活有限元离散中被动元件的体积分数。利用FORTRAN语言框架功能,对商业有限元方法软件ABAQUS进行了控制,以控制由局部快速加热和冷却以及熔池体积不稳定引起的不利缺陷。热力学一致相场模型与瞬态热模拟相结合来跟踪材料的历史。使用拉格朗日描述空间和时间离散化。目标是提出一种基于深度强化学习(RL)架构的闭环方法来跟踪熔池形态和温度到参考沉积体积曲线,旨在通过控制激光功率密度适应性来避免不稳定、缺陷和异常。尽管在强化学习模型训练过程中迭代次数很少,但智能体能够学习到期望的行为,并评估了两种不同的奖励函数。这种方法允许我们展示使用RL与openAI Gym进行过程控制的可能性,以及它与ABAQUS框架的互连,首先在仿真环境中训练模型,从而利用RL功能,而不会在现实世界中产生浪费或机器时间。
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