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State-of-the-art in empirical modeling of rapid prototyping processes

机译:快速原型制作过程的经验建模的最新技术

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Abstract Purpose - The empirical modelling of major rapid prototyping (RP) processes such as fused deposition modelling (FDM), selective laser sintering (SLS) and stereolithography (SL) has attracted the attention of researchers in view of their contribution to the overall cost of the product. Empirical modelling techniques such as artificial neural network (ANN) and regression analysis have been paid considerable attention. In this paper, a powerful modelling technique using genetic programming (GP) for modelling the FDM process is introduced and the issues related to the empirical modelling of RP processes are discussed. The present work aims to investigate the performance of various potential empirical modelling techniques so that the choice of an appropriate modelling technique for a given RP process can be made. The paper aims to discuss these issues. Design/methodology/approach - Apart from the study of applications of empirical modelling techniques on RP processes, a multigene GP is applied to predict the compressive strength of a FDM part based on five given input process parameters. The parameter setting for GP is determined using trial and experimental runs. The performance of the GP model is compared to those of neural networks and regression analysis. Findings - The GP approach provides a model in the form of a mathematical equation reflecting the relationship between the compressive strength and five given input parameters. The performance of ANN is found to be better than those of GP and regression, showing the effectiveness of ANN in predicting the performance characteristics of the FDM part. The GP is able to identify the significant input parameters that comply with those of an earlier study. The distinct advantages of GP as compared to ANN and regression are highlighted. Several vital issues related to the empirical modelling of RP processes are also highlighted in the end. Originality/value - For the first time, a review of the application of empirical modelling techniques on RP processes is undertaken and a new GP method for modelling the FDM process is introduced. The performance of potential empirical modelling techniques for modelling RP processes is evaluated. This is an important step in modernising the era of empirical modelling of RP processes.
机译:摘要目的-主要的快速原型制作(RP)工艺的经验建模,例如熔融沉积建模(FDM),选择性激光烧结(SLS)和立体光刻(SL),已经吸引了研究人员的关注,因为它们对整体成本的贡献产品。诸如人工神经网络(ANN)和回归分析之类的经验建模技术已受到相当多的关注。在本文中,介绍了一种使用遗传编程(GP)对FDM过程进行建模的强大建模技术,并讨论了与RP过程的经验建模有关的问题。本工作旨在调查各种潜在的经验建模技术的性能,以便可以为给定的RP过程选择合适的建模技术。本文旨在讨论这些问题。设计/方法/方法-除了研究经验建模技术在RP工艺上的应用之外,还基于五个给定的输入工艺参数,将多基因GP应用于预测FDM零件的抗压强度。 GP的参数设置是通过试运行和实验确定的。将GP模型的性能与神经网络和回归分析的性能进行比较。研究结果-GP方法以数学方程式的形式提供了一个模型,该模型反映了抗压强度与五个给定输入参数之间的关系。发现ANN的性能优于GP和回归分析,这表明ANN在预测FDM零件的性能特征方面是有效的。 GP能够识别出与早期研究一致的重要输入参数。突出显示了GP与ANN和回归相比的独特优势。最后还重点介绍了与RP过程的经验模型相关的几个重要问题。原创性/价值-首次对经验建模技术在RP过程中的应用进行了回顾,并引入了一种新的GP方法来对FDM过程进行建模。评价了用于建模RP过程的潜在经验建模技术的性能。这是现代化RP过程经验建模时代的重要一步。

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