Modelling of an Additive 3D-Printing Process Based on Design of Experiments Methodology

J. Eguren, A. Esnaola, Gorka Unzueta
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引用次数: 6

Abstract

Purpose: The implementation of additive manufacturing (AM) or 3D-printer manufacturing for technical prototyping, preproduction series and short production series can bring benefits in terms of reducing cost and time to market in product development. These technologies are beginning to be applied in different industrial sectors and have a great possibility of development. As these technologies are still in development, there is a need to define the capacity of the 3D machines to establish minimum standards for producing high-quality parts. Methodology/Approach: The proposed methodology is based on a design of experiments (DOE) approach, which serves as a guide for engineers when it comes to executing any experimental study. The following steps were followed (Unzueta et al., 2019): Phase 1: define; Phase 2: measure; Phase 3: plan; Phase 4: execute experimentation; Phase 5: analyse the results; Phase 6: improve via confirmation experiments; Phases 7-8: control and standardise. Findings: The proposed methodology is based on a design of experiments (DOE) approach, which serves as a guide for engineers when it comes to executing any experimental study. The following steps were followed (Unzueta et al., 2019): Phase 1: define; Phase 2: measure; Phase 3: plan; Phase 4: execute experimentation; Phase 5: analyse the results; Phase 6: improve via confirmation experiments; Phases 7-8: control and standardise. Originality/Value of paper: This study uses a methodological approach to demonstrate how the 3D printing technology can be enriched with statistical testing techniques (DOE). It defines numerical prediction models to obtain high-quality parts with a new AM technology, using a planning process with a minimum amount of experimentation.
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基于实验方法设计的增材3d打印过程建模
目的:实施增材制造(AM)或3d打印机制造技术原型,预生产系列和短生产系列可以在产品开发中降低成本和上市时间方面带来好处。这些技术开始在不同的工业领域得到应用,具有很大的发展可能性。由于这些技术仍在发展中,有必要定义3D机器的能力,以建立生产高质量零件的最低标准。方法论/方法:提出的方法是基于实验设计(DOE)方法,当涉及到执行任何实验研究时,它可以作为工程师的指南。遵循以下步骤(Unzueta et al., 2019):第一阶段:定义;第二阶段:测量;第三阶段:规划;阶段4:执行实验;第五阶段:分析结果;第六阶段:通过验证实验进行改进;第7-8阶段:控制和标准化。发现:提出的方法是基于实验设计(DOE)方法,当涉及到执行任何实验研究时,它可以作为工程师的指南。遵循以下步骤(Unzueta et al., 2019):第一阶段:定义;第二阶段:测量;第三阶段:规划;阶段4:执行实验;第五阶段:分析结果;第六阶段:通过验证实验进行改进;第7-8阶段:控制和标准化。原创性/论文价值:本研究采用方法学方法来演示如何利用统计测试技术(DOE)丰富3D打印技术。它定义了数值预测模型,以获得高质量的零件与新的增材制造技术,使用最少的实验量的规划过程。
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来源期刊
CiteScore
3.10
自引率
13.30%
发文量
16
审稿时长
6 weeks
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