Mohammad Sakib, Akand Rafee, Cook Kaden M, Nilufar Sabrina, Chowdhury Farhan
School of Electrical, Computer, and Biomedical Engineering, Southern Illinois University Carbondale, Carbondale, IL 62901, USA.
School of Mechanical, Aerospace, and Materials Engineering, Southern Illinois University Carbondale, Carbondale, IL 62901, USA.
Gels. 2024 Oct 15;10(10):660. doi: 10.3390/gels10100660.
Artificial intelligence (AI) has the ability to predict rheological properties and constituent composition of 3D-printed materials with appropriately trained models. However, these models are not currently available for use. In this work, we trained deep learning (DL) models to (1) predict the rheological properties, such as the storage (G') and loss (G") moduli, of 3D-printed polyacrylamide (PAA) substrates, and (2) predict the composition of materials and associated 3D printing parameters for a desired pair of G' and G". We employed a multilayer perceptron (MLP) and successfully predicted G' and G" from seven gel constituent parameters in a multivariate regression process. We used a grid-search algorithm along with 10-fold cross validation to tune the hyperparameters of the MLP, and found the R value to be 0.89. Next, we adopted two generative DL models named variational autoencoder (VAE) and conditional variational autoencoder (CVAE) to learn data patterns and generate constituent compositions. With these generative models, we produced synthetic data with the same statistical distribution as the real data of actual hydrogel fabrication, which was then validated using Student's -test and an autoencoder (AE) anomaly detector. We found that none of the seven generated gel constituents were significantly different from the real data. Our trained DL models were successful in mapping the input-output relationship for the 3D-printed hydrogel substrates, which can predict multiple variables from a handful of input variables and vice versa.
人工智能(AI)能够通过适当训练的模型预测3D打印材料的流变特性和成分组成。然而,这些模型目前尚无法使用。在这项工作中,我们训练了深度学习(DL)模型,以(1)预测3D打印聚丙烯酰胺(PAA)基材的流变特性,如储能模量(G')和损耗模量(G''),以及(2)预测材料的成分和与所需G'和G''对相关的3D打印参数。我们采用了多层感知器(MLP),并在多元回归过程中成功地从七个凝胶成分参数预测了G'和G''。我们使用网格搜索算法和10折交叉验证来调整MLP的超参数,发现R值为0.89。接下来,我们采用了两个生成式DL模型,即变分自编码器(VAE)和条件变分自编码器(CVAE)来学习数据模式并生成成分组成。利用这些生成模型,我们生成了与实际水凝胶制造的真实数据具有相同统计分布的合成数据,然后使用学生t检验和自编码器(AE)异常检测器进行验证。我们发现生成的七种凝胶成分中没有一种与真实数据有显著差异。我们训练的DL模型成功地映射了3D打印水凝胶基材的输入-输出关系,该关系可以从少数输入变量预测多个变量,反之亦然。