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Using machine learning to aid in the parameter optimisation process for metal-based additive manufacturing

机译:使用机器学习帮助金属基添加剂制造参数优化过程

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摘要

Purpose - The purpose of this study is to investigate the use of machine learning to aid in this manual process of parameter optimisation. Metal-based additive manufacturing is a relatively new technology used to fabricate metal objects within an entirely digital workflow. However, only a small number of different metals are proven for this process. This is partly due to the need to find a new set of parameters which can be used to successfully build an object for every new alloy investigated. There are dozens of variables which contribute to a successful set of parameters and process parameter optimisation is currently a manual process which relies on human judgement. Design/methodology/approach - Here, the authors demonstrate the application of machine learning as an alternative method to determine this set of process parameters, the subject of this test is the processing of pure copper in a laser powder bed fusion printer. Data in the form of optical images were collected over the course of traditional parameter optimisation. These images were segmented and fed into a convolutional autoencoder and then clustered to find the clusters which best represented a high-quality result. The clusters were manually scored according to their quality and the results applied to the original set of parameters. Findings - It was found that the machine-learned clustering and subsequent scoring reflected many of the observations which were found in the traditional parameter optimisation process. Originality/value - This exercise, as well as demonstrating the effectiveness of the ML approach, indicates an opportunity to fully automate the approach to process optimisation by applying labels to the data, hence, an approach that could also potentially be suited for on-the-fly process optimisation.
机译:目的 - 本研究的目的是调查机器学习的使用,以帮助参数优化的手动过程。基于金属的添加剂制造是一种相对较新的技术,用于在完全数字工作流程中制造金属物体。但是,只有少数不同的金属被证明这一过程。这部分是由于需要找到一组新的参数,该参数可用于成功构建每个新合金的对象。有几十个变量有助于成功的参数集,过程参数优化是目前是一个依赖于人工判断的手动进程。设计/方法/方法 - 此处,作者展示了机器学习的应用作为确定这组工艺参数的替代方法,该测试的主题是激光粉床融合打印机中的纯铜的处理。在传统参数优化过程中收集光学图像形式的数据。这些图像被分段并送入卷积的AutoEncoder,然后聚集以找到最能代表高质量结果的集群。群集根据其质量进行手动评分,结果应用于原始参数集。结果 - 发现机器学习的聚类和随后的评分反映了传统参数优化过程中发现的许多观察结果。原创性/值 - 本练习,以及展示ML方法的有效性,表示通过将标签应用于数据来完全自动化处理优化方法的机会,因此,也可能适合上的方法-fly过程优化。

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