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基于自适应布谷鸟搜索算法的熔融沉积成型(FDM)零件蒸汽平滑表面及尺寸特征预测建模

Predictive modeling of surface and dimensional features of vapour-smoothened FDM parts using self-adaptive cuckoo search algorithm.

作者信息

Chohan Jasgurpreet Singh, Mittal Nitin, Singh Rupinder, Singh Urvinder, Salgotra Rohit, Kumar Raman, Singh Sandeep

机构信息

Department of Mechanical Engineering, Chandigarh University, Mohali, 140413 India.

Department of Electronics and Communication Engineering, Chandigarh University, Mohali, 140413 India.

出版信息

Prog Addit Manuf. 2022;7(5):1023-1036. doi: 10.1007/s40964-022-00277-8. Epub 2022 Mar 6.

Abstract

Despite numerous advantages of fused deposition modeling (FDM), the inherent layer-by-layer deposition behavior leads to considerable surface roughness and dimensional variability, limiting its usability for critical applications. This study has been conducted to select optimum parameters of FDM and vapour smoothing (chemical finishing) process to maximize surface finish, hardness, and dimensional accuracy. A self-adaptive cuckoo search algorithm for predictive modelling of surface and dimensional features of vapour-smoothened FDM-printed functional prototypes has been demonstrated. The chemical finishing has been performed on hip prosthesis (benchmark) using hot vapours of acetone (using dedicated experimental set-up). Based upon the selected design of experiment technique, 18 sets of experiments (with three repetitions) were performed by varying six parameters. Afterwards, a self-adaptive cuckoo search algorithm was implemented by formulating five objective functions using regression analysis to select optimum parameters. An excellent functional relationship between output and input parameters has been developed using a self-adaptive cuckoo search algorithm which has successfully found the solution to optimization issues related to different responses. The confirmatory experiments indicated a strong correlation between predicted and actual surface finish measurements, along with hardness and dimensional accuracy.

摘要

尽管熔融沉积建模(FDM)有诸多优点,但其固有的逐层沉积行为会导致相当大的表面粗糙度和尺寸变异性,限制了其在关键应用中的可用性。本研究旨在选择FDM和蒸汽平滑(化学后处理)工艺的最佳参数,以最大限度地提高表面光洁度、硬度和尺寸精度。展示了一种用于预测蒸汽平滑处理的FDM打印功能原型表面和尺寸特征的自适应布谷鸟搜索算法。使用丙酮热蒸汽(使用专用实验装置)对髋关节假体(基准)进行了化学后处理。基于选定的实验设计技术,通过改变六个参数进行了18组实验(每组重复三次)。之后,通过回归分析制定五个目标函数,实现了自适应布谷鸟搜索算法,以选择最佳参数。使用自适应布谷鸟搜索算法建立了输出参数与输入参数之间的良好函数关系,该算法成功地找到了与不同响应相关的优化问题的解决方案。验证性实验表明,预测的和实际的表面光洁度测量值之间以及硬度和尺寸精度之间存在很强的相关性。

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