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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Real-time simulation for long paths in laser-based additive manufacturing: a machine learning approach
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Real-time simulation for long paths in laser-based additive manufacturing: a machine learning approach

机译:基于激光的添加剂制造中的长路径的实时仿真:机器学习方法

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This study predicts in real time the evolution of temperature and density for arbitrary long tracks in laser-based additive manufacturing using artificial neural networks (ANNs). First, a random laser path is transformed appropriately to serve as an ANN input via a custom trajectory decomposition method providing a local description of each trajectory point relative to its surroundings, which is calculated and load-optimized using K-d trees. For each trajectory point, a "Master" ANN calculates the present temperature, using the trajectory descriptors and previous step temperature as inputs. This is made into a parallel procedure by exploiting a "Pilot" ANN without temperature feedback, making a first pass over the whole trajectory to estimate temperature responses. The Master ANN uses these results as a feedback that is iteratively refined. A "Rider" ANN uses the final temperatures as input and calculates local density evolution. Four hundred fifty finite element model experiments of short random walk trajectories were used for ANN training. Results are presented for various types of laser paths, including random, hatch, spiral, fractal, and spline. ANN simulation execution time consistently taking under 50% of the real process time in all validated cases for track length in excess of 100 m proved the ability of the platform to operate at the full layer-scale of LBAM.
机译:本研究在使用人工神经网络(ANNS)中实时预测激光类添加剂制造中的温度和密度的进化。首先,将随机激光路径适当地转换为通过自定义轨迹分解方法作为ANN输入,提供相对于其周围环境的每个轨迹点的本地描述,这是使用K-D树的计算和负载优化。对于每个轨迹点,使用轨迹描述符和先前的步骤温度作为输入计算“主”ANN计算本温度。这是通过利用没有温度反馈的“导频”ANN的并行过程,使得第一通过整个轨迹以估计温度响应。 Master Ann使用这些结果作为迭代精制的反馈。 “骑手”ANN使用最终温度作为输入,并计算局部密度进化。四百五十个有限元模型实验短随机散步轨迹用于安培训。结果出现了各种类型的激光路径,包括随机,舱口,螺旋,分形和花键。 ANN仿真执行时间一致在所有经过验证的案例中持续50%的实际过程时间,以便超过100米的轨道长度证明了平台在LBAM的完整层级运行的能力。

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