Machine Learning and Regression Analysis Approaches for Investigation of Mechanical Properties of FDM Manufactured Re-Entrant Auxetic Structures Under Flexural Loading

IF 0.9 Q4 ENGINEERING, MANUFACTURING Journal of Advanced Manufacturing Systems Pub Date : 2023-01-28 DOI:10.1142/s0219686723500336
S. Vyavahare, Soham Teraiya, Shailendra Kumar
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Abstract

This paper describes an experimental study on re-entrant auxetic structures manufactured by fused deposition modeling (FDM). The feedstock materials of NPR structures are acrylonitrile butadiene styrene (ABS) and poly-lactic acid (PLA). Experimental study is performed to examine the effect of design factors (angle, width, and length of arm) of unit cell of auxetic structures on three responses namely strength, stiffness, and specific energy absorption (SEA) under flexural loading. From the experimental results, it is found that flexural strength improves with increase in all three design factors of ABS structures; while it improves with increase in angle and reduction in width and length of arm for PLA structures. Furthermore, based on experimental study, regression models of responses are developed using analysis of variance (ANOVA). Also, machine learning (ML) models using neural networks are developed to predict all three responses. Results of regression models are compared with NN models to assess accuracy of prediction. Finally, optimal configuration of auxetic structure is determined using gray relational analysis (GRA) to improve the responses; and reduce weight and fabrication time.
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基于机器学习和回归分析方法的FDM制造的可再入辅助结构在弯曲载荷下的力学性能研究
本文介绍了用熔融沉积模型(FDM)制造的凹入式膨胀结构的实验研究。NPR结构的原料是丙烯腈-丁二烯-苯乙烯(ABS)和聚乳酸(PLA)。通过试验研究,考察了单元单元的设计因素(角度、宽度和臂长)对弯曲载荷下的强度、刚度和比能吸收(SEA)三种响应的影响。实验结果表明,ABS结构的抗弯强度随着三个设计因素的增加而提高;同时它随着PLA结构的臂的角度的增加以及臂的宽度和长度的减小而改善。此外,在实验研究的基础上,使用方差分析(ANOVA)建立了反应的回归模型。此外,还开发了使用神经网络的机器学习(ML)模型来预测所有三种反应。将回归模型的结果与神经网络模型进行比较,以评估预测的准确性。最后,利用灰色关联分析(GRA)确定了饱胀结构的最优配置,以提高响应;并减少重量和制造时间。
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来源期刊
Journal of Advanced Manufacturing Systems
Journal of Advanced Manufacturing Systems ENGINEERING, MANUFACTURING-
CiteScore
2.90
自引率
14.30%
发文量
32
期刊介绍: Journal of Advanced Manufacturing Systems publishes original papers pertaining to state-of-the-art research and development, product development, process planning, resource planning, applications, and tools in the areas related to advanced manufacturing. The journal addresses: - Manufacturing Systems - Collaborative Design - Collaborative Decision Making - Product Simulation - In-Process Modeling - Resource Planning - Resource Simulation - Tooling Design - Planning and Scheduling - Virtual Reality Technologies and Applications - CAD/CAE/CAM Systems - Networking and Distribution - Supply Chain Management
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