Selective laser melting (SLM) is one of emerging processes for effective metal additive manufacturing. Due to complex heat exchange and material phase changes, it is challenging to accurately model the SLM dynamics and design robust control of SLM process. In this paper, we first present a data-driven Gaussian process based dynamic model for SLM process and then design a model predictive control to regulate the melt pool size. Physical and process constraints are considered in the controller design. The learning model and control design are tested and validated with high-fidelity finite element simulation. The comparison results with other control design demonstrate the efficacy of the control design.
翻译:选择性激光熔化(SLM)是有效金属添加剂制造的新兴过程之一,由于复杂的热交换和物质阶段的变化,准确模拟可持续土地管理动态并设计对可持续土地管理进程的有力控制具有挑战性,在本文件中,我们首先为可持续土地管理进程提出以数据驱动的高斯进程动态模型,然后设计模型预测控制,以调节熔化池体积;在控制器设计中考虑到物理和工艺限制;学习模型和控制设计经过高不洁的有限要素模拟测试和验证;与其他控制设计进行比较的结果显示控制设计的效力。