Generative Manufacturing: A requirements and resource-driven approach to part making

Hongrui Chen, Aditya Joglekar, Zack Rubinstein, Bradley Schmerl, Gary Fedder, Jan de Nijs, David Garlan, Stephen Smith, Levent Burak Kara
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Abstract

Advances in CAD and CAM have enabled engineers and design teams to digitally design parts with unprecedented ease. Software solutions now come with a range of modules for optimizing designs for performance requirements, generating instructions for manufacturing, and digitally tracking the entire process from design to procurement in the form of product life-cycle management tools. However, existing solutions force design teams and corporations to take a primarily serial approach where manufacturing and procurement decisions are largely contingent on design, rather than being an integral part of the design process. In this work, we propose a new approach to part making where design, manufacturing, and supply chain requirements and resources can be jointly considered and optimized. We present the Generative Manufacturing compiler that accepts as input the following: 1) An engineering part requirements specification that includes quantities such as loads, domain envelope, mass, and compliance, 2) A business part requirements specification that includes production volume, cost, and lead time, 3) Contextual knowledge about the current manufacturing state such as availability of relevant manufacturing equipment, materials, and workforce, both locally and through the supply chain. Based on these factors, the compiler generates and evaluates manufacturing process alternatives and the optimal derivative designs that are implied by each process, and enables a user guided iterative exploration of the design space. As part of our initial implementation of this compiler, we demonstrate the effectiveness of our approach on examples of a cantilever beam problem and a rocket engine mount problem and showcase its utility in creating and selecting optimal solutions according to the requirements and resources.
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生成制造:以需求和资源为导向的零件制造方法
CAD 和 CAM 技术的进步使工程师和设计团队能够以前所未有的便捷方式对零件进行数字化设计。现在,软件解决方案提供了一系列模块,用于优化设计以满足性能要求、生成制造指令,以及以产品生命周期管理工具的形式对从设计到采购的整个过程进行数字化跟踪。然而,现有的解决方案迫使设计团队和企业采取单一的序列方法,制造和采购决策在很大程度上取决于设计,而不是设计过程的组成部分。在这项工作中,我们提出了一种新的零件制造方法,在这种方法中,设计、制造和供应链的要求和资源可以被共同考虑和优化。我们提出的生成式制造编译器接受以下输入:基于这些因素,编译器生成并评估制造流程替代方案以及每个流程所隐含的最优衍生设计,并实现用户引导下的设计空间迭代探索。作为该编译器初步实施的一部分,我们在悬臂梁问题和火箭发动机支架问题上演示了我们方法的有效性,并展示了它在根据要求和资源创建和选择最佳解决方案方面的实用性。
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