Predictive models for 3D inkjet material printer using automated image analysis and machine learning algorithms

IF 1.9 Q3 ENGINEERING, MANUFACTURING
Mutha Nandipati, Michael Ogunsanya, Salil Desai
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Abstract

Additive manufacturing (AM) is a smart manufacturing process to fabricate components with high precision, minimal post-processing, and increased component complexity in a variety of materials. This research focuses on developing automated image analysis and predictive models for a widely used 3D material inkjet printing (IJP) process. The interplay of four input process parameters, which include frequency, voltage, temperature, and meniscus vacuum, on the output metrics of the inkjet printer was evaluated using statistical measures (ANOVA). Droplet types were classified as no drop, satellite drop, and normal drop using four machine learning classifiers, including random forest, support vector classifier, k-nearest neighbor, and decision trees. Hyperparameter tuning was performed for each model for over 486 data points. Regression predictive models were developed for both ink droplet velocity and volume with three linear models (linear, lasso, and ridge regression) and four non-linear models (random forest, decision tree, support vector regression, and k-nearest neighbor). Mean squared error and the coefficient of determination, r-squared value, were used to evaluate the performance of the predictive models. For the drop type classification models, k-fold of 5 yielded the highest accuracy for the RF, KNN, and DT models of around 98%. Similarly, for the regression based predictive models RF, DT and KNN accuracy results ranged from 97 to 99%. All the machine learning models were validated with experimental data with high prediction accuracies accuracy. This research serves as a foundation for developing design guidelines for 3D material inkjet printing with applications in biosensors, flexible electronics, and regenerative tissue engineering.
利用自动图像分析和机器学习算法建立三维喷墨材料打印机的预测模型
快速成型制造(AM)是一种智能制造工艺,可利用各种材料制造出精度高、后处理最少、部件复杂度更高的部件。本研究的重点是为广泛使用的三维材料喷墨打印(IJP)工艺开发自动图像分析和预测模型。使用统计方法(方差分析)评估了四个输入工艺参数(包括频率、电压、温度和半月板真空度)对喷墨打印机输出指标的相互影响。使用四种机器学习分类器(包括随机森林、支持向量分类器、k-近邻和决策树)将液滴类型分为无液滴、卫星液滴和正常液滴。每个模型都对超过 486 个数据点进行了超参数调整。利用三个线性模型(线性、套索和脊回归)和四个非线性模型(随机森林、决策树、支持向量回归和 k 最近邻),为墨滴速度和体积开发了回归预测模型。平均平方误差和判定系数 r 平方值用于评估预测模型的性能。在水滴类型分类模型中,k-fold 为 5 时,RF、KNN 和 DT 模型的准确率最高,约为 98%。同样,对于基于回归的预测模型,RF、DT 和 KNN 的准确率在 97% 到 99% 之间。所有机器学习模型都通过实验数据进行了验证,预测准确率较高。这项研究为制定三维材料喷墨打印设计指南奠定了基础,可应用于生物传感器、柔性电子器件和再生组织工程。
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来源期刊
Manufacturing Letters
Manufacturing Letters Engineering-Industrial and Manufacturing Engineering
CiteScore
4.20
自引率
5.10%
发文量
192
审稿时长
60 days
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