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Optimisation of quality and energy consumption for additive layer manufacturing processes

机译:优化添加剂层制造工艺的质量和能耗

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Additive Layer Manufacturing (ALM) has great potential to be a viable automated direct manufacturing process for the aerospace, automotive and medical industries. By using layer-by-layer consolidation of raw materials to build three-dimensional near net or net shape objects, ALM enables the recycling of the non-consolidated powder materials and manufacturing of light weight parts, allowing energy and materials saving. One of the main challenges in various ALM processes is to reduce the energy required for the part building process and at the same time maintain the surface quality of the parts, affected by the “stair stepping” effect, as this has aesthetic and functional importance for industrial applications. These objectives are competing criteria and significantly influenced by the build orientation of the ALM parts. This study investigates a computational technology for the identification of optimal part orientations for the minimization of surface roughness and simultaneously energy consumption in the manufacturing process. The computational model based on a multi-objective optimization technique has been developed to predict and optimise the energy consumption and surface quality objectives. The output of the computational optimisation includes the complete set of Pareto solutions, which define the set of best compromises between the chosen objectives.
机译:添加剂层制造(ALM)具有巨大的潜力,可以成为航空航天,汽车和医疗行业的可行自动化直接制造过程。通过使用逐层固结原料来构建三维近网或净形物体,ALM能够再循环非固结粉末材料和轻质零件的制造,允许节省能量和材料。各种ALM工艺中的主要挑战之一是减少零件建筑过程所需的能量,同时保持受“阶梯步进”效应影响的部件的表面质量,因为这具有审美和功能性的重要性工业应用。这些目标是竞争标准,受到ALM零件的构建方向的显着影响。本研究研究了用于识别最佳部分取向的计算技术,以最小化表面粗糙度,同时在制造过程中的能量消耗。基于多目标优化技术的计算模型已经开发出预测和优化能量消耗和表面质量目标。计算优化的输出包括完整的Pareto解决方案,它定义所选目标之间的最佳妥协集合。

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