资源高效制造的原位校准数字过程双模型

D. Adeniji, J. Schoop
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引用次数: 5

摘要

制造过程改进工作的主要目标是在提高产品质量和过程生产率的同时显著地最小化过程资源,如时间、成本、浪费和消耗的能源。本文提出了一种新的基于人工智能(AI)的物理信息优化方法来生成数字过程双胞胎(dpt)。以γ钛铝化物合金(γ-TiAl)航空部件的精加工为例,验证了DPT方法的实用性。这种特殊的组件一直受到持续的质量缺陷的困扰,包括表面和次表面裂缝,这对资源效率产生了不利影响。以前的工艺改进工作仅限于轶事事后调查和经验建模,无法解决切割过程中裂纹如何以及何时发生的基本问题。在这项工作中,提出了原位过程表征与基于模块化物理模型的集成,并使用机器学习算法创建能够减少环境和能源影响的DPT,同时显着提高产量和盈利能力。基于初步结果,采用该方法,γ-TiAl加工的整体隐含能源效率提高了84%以上,工艺排队时间提高了93%,废料成本降低了2%,排队成本降低了93%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In-Situ Calibrated Digital Process Twin Models for Resource Efficient Manufacturing
The chief objective of manufacturing process improvement efforts is to significantly minimize process resources such as time, cost, waste, and consumed energy while improving product quality and process productivity. This paper presents a novel physics-informed optimization approach based on artificial intelligence (AI) to generate digital process twins (DPTs). The utility of the DPT approach is demonstrated for the case of finish machining of aerospace components made from gamma titanium aluminide alloy (γ-TiAl). This particular component has been plagued with persistent quality defects, including surface and sub-surface cracks, which adversely affect resource efficiency. Previous process improvement efforts have been restricted to anecdotal post-mortem investigation and empirical modeling, which fail to address the fundamental issue of how and when cracks occur during cutting. In this work, the integration of in-situ process characterization with modular physics-based models is presented, and machine learning algorithms are used to create a DPT capable of reducing environmental and energy impacts while significantly increasing yield and profitability. Based on the preliminary results presented here, an improvement in the overall embodied energy efficiency of over 84%, 93% in process queuing time, 2% in scrap cost, and 93% in queuing cost has been realized for γ-TiAl machining using our novel approach.
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CiteScore
10.90
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