Additive manufacturing of metal parts involves phase transformations and high temperature gradients which lead to uneven thermal expansion and contraction, and, consequently, distortion of the fabricated components. The distortion has a great influence on the structural performance and dimensional accuracy, e.g., for assembly. It is therefore of critical importance to model, predict and, ultimately, reduce distortion. In this paper, we present a computational framework for fabrication sequence optimization to minimize distortion in multi-axis additive manufacturing (e.g., robotic wire arc additive manufacturing), in which the fabrication sequence is not limited to planar layers only. We encode the fabrication sequence by a continuous pseudo-time field, and optimize it using gradient-based numerical optimization. To demonstrate this framework, we adopt a computationally tractable yet reasonably accurate model to mimic the material shrinkage in metal additive manufacturing and thus to predict the distortion of the fabricated components. Numerical studies show that optimized curved layers can reduce distortion by orders of magnitude as compared to their planar counterparts.
翻译:金属元件的添加制造涉及阶段变换和高温梯度,导致热膨胀和收缩不平衡,因此,合成元件的变异。扭曲对结构性能和尺寸精度(例如组装)有很大影响。因此,模型、预测和最终减少扭曲至关重要。在本文件中,我们提出了一个制造序列优化的计算框架,以尽量减少多轴添加剂制造(例如机器人电线弧添加剂制造)的扭曲,其中制造序列不仅限于平面层。我们用一个连续的假时间字段对制造序列进行编码,并使用基于梯度的数字优化优化加以优化。为了展示这一框架,我们采用了一个可计算但合理准确的模型,以模拟金属添加剂制造中的物质缩缩缩,从而预测合成元件的扭曲。数字研究显示,优化的曲线层可以比其平面对等体减少数量级的扭曲。