评估基于机器学习的自主制造的增材制造试验台

Zhi Zhang, Antony George, M. Alam, Christopher Eubel, C. Vallabh, M. Shtein, Kira Barton, David Hoelzle
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摘要

本文详细介绍了一个试验台的设计和运行情况,该试验台用于评估自主制造概念,以实现所需的制件性能指标。该试验台即声波晶体自主制造系统(AMSPnC),由快速成型制造、材料运输、超声波测试和认知子系统组成。重要的是,AMSPnC 具有常见的制造缺陷,如工艺操作窗口限制、工艺不确定性和概率故障。案例研究使用一个标准的监督学习模型来说明 AMSPnC 功能,该模型是通过打印和测试 48 种独特的设计来训练的,这些设计跨越了允许的设计空间。利用该模型,定义了三个独立的性能指标,并应用优化算法自主选择三个相应的设计集,以实现指定的性能。验证制造和测试证实,目标函数定义的三个最佳设计中有两个达到了预期性能,而第三个则超出了在 PnC 中实现独特带通的设计窗口。此外,在所有样品中,观察到的带通特性与有限元法计算得出的预测之间存在明显差异,这凸显了自主制造对于复杂制造目标的重要性。
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An additive manufacturing testbed to evaluate machine learning based autonomous manufacturing
This paper details the design and operation of a testbed to evaluate the concept of autonomous manufacturing to achieve a desired manufactured part performance specification. This testbed, the Autonomous Manufacturing System for Phononic Crystals (AMSPnC), is comprised of additive manufacturing, material transport, ultrasonic testing, and cognition subsystems. Critically, the AMSPnC exhibits common manufacturing deficiencies such as process operating window limits, process uncertainty, and probabilistic failure. A case study illustrates the AMSPnC function using a standard supervised learning model trained by printing and testing an array of 48 unique designs that span the allowable design space. Using this model, three separate performance specifications are defined and an optimization algorithm is applied to autonomously select three corresponding design sets to achieve the specified performance. Validation manufacturing and testing confirms that two of the three optimal designs, as defined by an objective function, achieve the desired performance, with the third being outside the design window in which a distinct bandpass is achieved in PnCs. Furthermore, across all samples, there is a marked difference between the observed bandpass characteristics and predictions from finite elements method computation, highlighting the importance of autonomous manufacturing for complex manufacturing objectives.
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