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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >A new computational intelligence approach in formulation of functional relationship of open porosity of the additive manufacturing process
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A new computational intelligence approach in formulation of functional relationship of open porosity of the additive manufacturing process

机译:增材制造过程中开放孔隙函数关系公式的一种新的计算智能方法

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摘要

An additive manufacturing process of selective laser sintering (SLS) builds components of complex 3D shapes directly from metal powder. Past studies reveal that the properties of an SLS-fabricated prototype such as porosity, surface roughness, waviness, compressive strength, tensile strength, wear strength, and dimensional accuracy depend on the parameter settings of the SLS setup and can be improved by appropriate adjustment. In this context, the computational intelligence (CI) approach of multi-gene genetic programming (MGGP) can be used to formulate the model for understanding the process behavior. MGGP develops the model structure and its coefficients automatically. Despite being widely applied, MGGP generates models that may not give satisfactory performance on test data. The underlying reason is the inappropriate formulation procedure of the multi-gene model and the difficulty in model selection. Therefore, the present work proposes a new CI approach (ensemble-based MGGP (EN-MGGP)) that makes use of statistical and classification strategies for improving its generalization. The EN-MGGP approach is applied to the open porosity data obtained from the experiments conducted on an SLS machine, and its performance is compared to that of the standardized MGGP. The proposed EN-MGGP model outperforms the standardized model and is proven to capture the dynamics of the SLS process by unveiling dominant input process parameters and the hidden non-linear relationships.
机译:选择性激光烧结(SLS)的增材制造工艺直接从金属粉末中构建出复杂3D形状的组件。过去的研究表明,由SLS制造的原型的性能(例如孔隙率,表面粗糙度,波纹度,抗压强度,抗拉强度,耐磨强度和尺寸精度)取决于SLS设置的参数设置,可以通过适当的调整加以改进。在这种情况下,可以使用多基因遗传规划(MGGP)的计算智能(CI)方法来制定模型,以理解过程行为。 MGGP自动开发模型结构及其系数。尽管被广泛应用,MGGP生成的模型可能无法在测试数据上提供令人满意的性能。根本原因是多基因模型的制定程序不当以及模型选择困难。因此,本工作提出了一种新的CI方法(基于集成的MGGP(EN-MGGP)),该方法利用了统计和分类策略来改善其通用性。将EN-MGGP方法应用于从SLS机器上进行的实验获得的开孔孔隙率数据,并将其性能与标准MGGP的性能进行比较。所提出的EN-MGGP模型优于标准模型,并通过揭示主要的输入过程参数和隐藏的非线性关系而证明可捕获SLS过程的动态。

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