克里金
均方误差
表面粗糙度
选择性激光熔化
均方根
高斯过程
材料科学
人工神经网络
表面光洁度
标准差
机器学习
人工智能
参数统计
高斯函数
计算机科学
高斯分布
数学
复合材料
统计
工程类
量子力学
微观结构
电气工程
物理
标识
DOI:10.1115/msec2022-85329
摘要
Abstract To avoid redundant trial and error experiments in hope of achieving acceptable surface roughness, reliable predictive models must be engineered to anticipate surface characteristics based on process parameter inputs. In the present study, two rigorously tested supervised machine-learning based models are proposed to predict the arithmetic average (Ra) of profile deviation for the surface of Ti-6Al-4V alloy manufactured via selective laser melting (SLM). Firstly, a Gaussian Process Regression (GPR) model with Rational Quadratic kernel function is constructed after ten-fold cross validation of the training data. Secondly, using the same training data and the same ten-fold cross validation, a feed-forward narrow neural network (NN) is employed. Primary input parameters of SLM process, namely laser power, scanning speed, hatch spacing, layer thickness and volumetric energy density are mined from literature investigating as-built surface characteristics of SLMed Ti-6Al-4V alloy. To further test the developed machine-learning models, ten 8 × 8 × 8 mm Ti-6Al-4V cubes are manufactured and a comparative between two non-parametric (GPR and NN) models is performed by predicting the surface roughness (Ra) of the ten samples. It is discovered that the NN model underperforms with a root mean squared error (RMSE) of 2.76 μm, as opposed to its counterpart GPR model, exhibiting RMSE of 0.82 μm. Additionally, analyses of the surface characteristics of the fabricated samples, the surface profiles, and impact of such a predictive model are provided.
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