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Machine learning for additive manufacturing of electronics

机译:电子产品添加制造机器学习

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Quality of electronic products fabricated with additive manufacturing (AM) techniques such as 3D inkjet printing can be assured by adopting pro-active predictive models for process condition monitoring instead of using conventional post-manufacture assessment techniques. This paper details a model-based approach, and associated machine learning algorithms, which can be used to achieve and maintain optimal product quality during production runs and to realise model predictive process control (MPC). The investigated data-driven prognostics based on state-space modelling of the dynamic behaviour of 3D inkjet printing for electronics manufacturing is new and makes it an original contribution. 3D printing of conductive lines for electronic circuits is a main targeted application, and is used to demonstrate and validate the prognostics capability of machine learning models developed from measured process data. The results show that, for moderately non-linear dynamics of the 3D-Printing process, state-space models can inform on the expected process trends (states) and related product quality characteristics even over large prediction horizons. The models can also support the realisation of model predictive process control for optimal target performance.
机译:通过采用用于工艺条件监测的Pro-Active预测模型,可以确保具有添加剂制造(AM)诸如3D喷墨印刷等技术的电子产品的质量。本文详细介绍了一种基于模型的方法,以及相关机器学习算法,可用于在生产过程中实现和维持最佳的产品质量,并实现模型预测过程控制(MPC)。基于电子制造的3D喷墨打印动态行为的国家空间建模的研究数据驱动的预测是新的,使其成为原始贡献。用于电子电路的导电线路的3D打印是主要的目标应用,并且用于演示和验证从测量的过程数据开发的机器学习模型的预后性能力。结果表明,对于3D打印过程的中等非线性动态,即使在大型预测视野中,状态空间模型也可以通知预期的过程趋势(状态)和相关产品质量特征。该模型还可以支持实现最佳目标性能的模型预测过程控制。

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