Ozaki Hiroto, Aoyagi Takeshi
Research Center for Computational Design of Advanced Functional Materials, National Institute of Advanced Industrial Science and Technology, Central 2, 1-1-1, Umezono, Tsukuba, Ibaraki, 305-8568, Japan.
Sci Rep. 2022 Jan 10;12(1):447. doi: 10.1038/s41598-021-03651-8.
Considerable attention has been given to deep-learning and machine-learning techniques in an effort to reduce the computational cost of computational fluid dynamics simulation. The present paper addresses the prediction of steady flows passing many fixed cylinders using a deep-learning model and investigates the accuracy of the predicted velocity field. The deep-learning model outputs the x- and y-components of the flow velocity field when the cylinder arrangement is input. The accuracy of the predicted velocity field is investigated, focusing on the velocity profile of the fluid flow and the fluid force acting on the cylinders. The present model accurately predicts the flow when the number of cylinders is equal to or close to that set in the training dataset. The extrapolation of the prediction to a smaller number of cylinders results in error, which can be interpreted as internal friction of the fluid. The results of the fluid force acting on the cylinders suggest that the present deep-learning model has good generalization performance for systems with a larger number of cylinders.
为了降低计算流体动力学模拟的计算成本,深度学习和机器学习技术受到了广泛关注。本文使用深度学习模型对通过多个固定圆柱体的稳定流动进行预测,并研究预测速度场的准确性。当输入圆柱体排列时,深度学习模型输出流速场的x和y分量。研究预测速度场的准确性,重点关注流体流动的速度剖面和作用在圆柱体上的流体力。当圆柱体数量等于或接近训练数据集中设置的数量时,本模型能准确预测流动。将预测外推到较少数量的圆柱体时会产生误差,这可以解释为流体的内摩擦。作用在圆柱体上的流体力结果表明,本深度学习模型对具有较多圆柱体的系统具有良好的泛化性能。