首页> 外文会议>Proceedings of the ASME international design engineering technical conferences and computers and information in engineering conference 2018 >DATA DRIVEN MODELING AND OPTIMIZATION FOR ENERGY EFFICIENCY IN ADDITIVE MANUFACTURING PROCESS WITH GEOMETRIC ACCURACY CONSIDERATION
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DATA DRIVEN MODELING AND OPTIMIZATION FOR ENERGY EFFICIENCY IN ADDITIVE MANUFACTURING PROCESS WITH GEOMETRIC ACCURACY CONSIDERATION

机译:考虑几何精度的增材制造过程中能量效率的数据驱动建模与优化

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Despite of its tremendous merits in producing parts with complex geometry and functionally graded materials, additive manufacturing (AM) is inherently an energy expensive process. Prior studies have shown that process parameters, such as printing resolution, printing speed, and printing temperature, are correlated to energy consumption per part. Moreover, part geometric accuracy is another major focus in AM research, and extensive studies have shown that the geometric accuracy of final parts is highly dependent on those process parameters as well. Though both energy consumption and part geometric accuracy heavily depend on the process parameters in AM processes, jointly considering the dual outputs in AM process is not fully investigated. The proposed study aims to obtain a quantitative understanding of the impact of these process parameters on AM energy consumption given part quality requirements, such as geometric accuracy. The study utilizes a MakerGear M2 fused deposition modeling (FDM) 3D printer to complete the designed experiments. By implementing experimental design and statistical regression analysis technologies, the study quantifies the correlation between AM process parameters and energy consumption as well as the final geometric accuracy measure. An optimization framework is proposed to minimize the energy consumption per part. The Kuhn-Tucker non-linear optimization algorithm is used to identify the optimal process parameters. This study is of significance to AM energy consumption in terms of jointly considering energy consumption and final part geometric accuracy in the optimization framework.
机译:尽管增材制造(AM)在生产具有复杂几何形状和功能梯度材料的零件方面具有巨大优势,但其本质上是一项耗费能源的过程。先前的研究表明,诸如打印分辨率,打印速度和打印温度之类的工艺参数与每个部件的能耗相关。此外,零件的几何精度是增材制造研究的另一个主要重点,广泛的研究表明,最终零件的几何精度也高度依赖于这些工艺参数。尽管能量消耗和零件几何精度都在很大程度上取决于增材制造工艺中的工艺参数,但仍未充分考虑共同考虑增材制造工艺中的双重输出。提出的研究旨在定量了解这些工艺参数对给定零件质量要求(例如几何精度)的AM能耗的影响。该研究利用MakerGear M2熔融沉积建模(FDM)3D打印机完成了设计的实验。通过实施实验设计和统计回归分析技术,该研究量化了增材制造工艺参数与能耗以及最终几何精度度量之间的相关性。提出了一种优化框架,以最大程度地降低每部分的能耗。 Kuhn-Tucker非线性优化算法用于识别最佳过程参数。在优化框架中,综合考虑能耗和最终零件的几何精度,该研究对增材制造能耗具有重要意义。

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