Department of Surgery, Brigham and Women's Hospital, Harvard Medical School, Boston, United States of America.
Independent Researcher, Tehran, Iran.
Biomed Phys Eng Express. 2024 Sep 20;10(6). doi: 10.1088/2057-1976/ad7960.
Freeze casting, a manufacturing technique widely applied in biomedical fields for fabricating biomaterial scaffolds, poses challenges for predicting directional solidification due to its highly nonlinear behavior and complex interplay of process parameters. Conventional numerical methods, such as computational fluid dynamics (CFD), require adequate and accurate boundary condition knowledge, limiting their utility in real-world transient solidification applications due to technical limitations. In this study, we address this challenge by developing a physics-informed neural networks (PINNs) model to predict directional solidification in freeze-casting processes. The PINNs model integrates physical constraints with neural network predictions, requiring significantly fewer predetermined boundary conditions compared to CFD. Through a comparison with CFD simulations, the PINNs model demonstrates comparable accuracy in predicting temperature distribution and solidification patterns. This promising model achieves such a performance with only 5000 data points in space and time, equivalent to 250,000 timesteps, showcasing its ability to predict solidification dynamics with high accuracy. The study's major contributions lie in providing insights into solidification patterns during freeze-casting scaffold fabrication, facilitating the design of biomaterial scaffolds with finely tuned microstructures essential for various tissue engineering applications. Furthermore, the reduced computational demands of the PINNs model offer potential cost and time savings in scaffold fabrication, promising advancements in biomedical engineering research and development.
冷冻铸造是一种广泛应用于生物医学领域制造生物材料支架的制造技术,由于其高度非线性行为和复杂的工艺参数相互作用,对于预测定向凝固具有挑战性。传统的数值方法,如计算流体动力学 (CFD),需要充分和准确的边界条件知识,由于技术限制,限制了它们在实际瞬态凝固应用中的实用性。在这项研究中,我们通过开发物理信息神经网络 (PINNs) 模型来解决这个挑战,以预测冷冻铸造过程中的定向凝固。PINNs 模型将物理约束与神经网络预测相结合,与 CFD 相比,需要的预定边界条件要少得多。通过与 CFD 模拟的比较,PINNs 模型在预测温度分布和凝固模式方面表现出相当的准确性。该有前途的模型仅在空间和时间上使用 5000 个数据点,相当于 250000 个时间步长,就展示了其以高精度预测凝固动力学的能力。该研究的主要贡献在于深入了解冷冻铸造支架制造过程中的凝固模式,有助于设计具有精细微结构的生物材料支架,这些微结构对于各种组织工程应用至关重要。此外,PINNs 模型的计算需求降低为支架制造节省了潜在的成本和时间,有望在生物医学工程研究和开发中取得进展。