Baixi Chen, Weining Mao, Yangsheng Lin, Wenqian Ma, Nan Hu
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In addition, the data-driven models were established to quantify and optimize the uncertain mechanical behaviors of FDM-based tensile specimens under various printing parameters.\n\n\nFindings\nAs indicated by the results, the uncertain behaviors of the stiffness and strength of the PLA tensile specimens were dominated by the printing speed and nozzle temperature, respectively. The manufacturing-induced stochastic constitutive behaviors could be accurately captured by the developed data-driven model with the R2 over 0.98 on the testing dataset. The optimal parameters obtained from the data-driven framework were T = 231.3595 °C, S = 40.3179 mm/min and t = 0.2343 mm, which were in good agreement with the experiments.\n\n\nPractical implications\nThe developed data-driven models can also be integrated into the design and characterization of parts fabricated by extrusion and other additive manufacturing technologies.\n\n\nOriginality/value\nStochastic behaviors of additively manufactured products were revealed by considering extensive manufacturing factors. 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引用次数: 0
摘要
目的熔融沉积建模(FDM)是一种广泛使用的快速成型制造方法,能够制造复杂的功能部件。由于制造过程中的机械和环境因素,FDM 零件不可避免地会表现出属性和性能的不确定性。本研究旨在确定 FDM 制造的聚乳酸(PLA)拉伸试样在制造过程中的随机构成行为。通过进行拉伸试验,研究了印刷机选择和三个主要制造参数(即印刷速度 S、喷嘴温度 T 和层厚度 t)对随机构成行为的影响。还解释了加载速率的影响。研究结果表明,聚乳酸拉伸试样刚度和强度的不确定行为分别受印刷速度和喷嘴温度的影响。所开发的数据驱动模型可以准确捕捉制造引起的随机构成行为,在测试数据集上的 R2 超过 0.98。数据驱动框架获得的最佳参数为 T = 231.3595 °C、S = 40.3179 mm/min 和 t = 0.2343 mm,这些参数与实验结果非常吻合。原创性/价值通过考虑广泛的制造因素,揭示了快速成型产品的随机行为。提出的数据驱动模型有助于描述和优化 FDM 产品并控制其质量。
Manufacturing-induced stochastic constitutive behaviors of additive manufactured specimens: testing, data-driven modeling, and optimization
Purpose
Fused deposition modeling (FDM) is an extensively used additive manufacturing method with the capacity to build complex functional components. Due to the machinery and environmental factors during manufacturing, the FDM parts inevitably demonstrated uncertainty in properties and performance. This study aims to identify the stochastic constitutive behaviors of FDM-fabricated polylactic acid (PLA) tensile specimens induced by the manufacturing process.
Design/methodology/approach
By conducting the tensile test, the effects of the printing machine selection and three major manufacturing parameters (i.e., printing speed S, nozzle temperature T and layer thickness t) on the stochastic constitutive behaviors were investigated. The influence of the loading rate was also explained. In addition, the data-driven models were established to quantify and optimize the uncertain mechanical behaviors of FDM-based tensile specimens under various printing parameters.
Findings
As indicated by the results, the uncertain behaviors of the stiffness and strength of the PLA tensile specimens were dominated by the printing speed and nozzle temperature, respectively. The manufacturing-induced stochastic constitutive behaviors could be accurately captured by the developed data-driven model with the R2 over 0.98 on the testing dataset. The optimal parameters obtained from the data-driven framework were T = 231.3595 °C, S = 40.3179 mm/min and t = 0.2343 mm, which were in good agreement with the experiments.
Practical implications
The developed data-driven models can also be integrated into the design and characterization of parts fabricated by extrusion and other additive manufacturing technologies.
Originality/value
Stochastic behaviors of additively manufactured products were revealed by considering extensive manufacturing factors. The data-driven models were proposed to facilitate the description and optimization of the FDM products and control their quality.