Chen Junzhi, Wang Tao, Luo Jiu, Chen Hongbo, Heng Yi
School of Computer Science and Engineering, Sun Yat-sen University, Guangzhou, China.
School of Future Science and Engineering, Soochow University, Suzhou, China.
Commun Eng. 2025 Jan 28;4(1):12. doi: 10.1038/s44172-025-00343-3.
Large-scale optimal design problems involving nonlinear differential equations are widely applied in modeling such as craft manufacturing, chemical engineering and energy engineering. Herein we propose a fast and flexible holomorphic embedding-based method to solve nonlinear differential equations quickly, and further apply it to handle the industrial application of reverse osmosis desalination. Without solving nonlinear differential equations at each discrete point by a traditional small-step iteration approach, the proposed method determines the solution through an approximation function or approximant within segmented computational domain independently. The results of solving more than 11 million of nonlinear differential equations with various design parameters for the reverse osmosis desalination process indicate that the fast and flexible holomorphic embedding-based method is six-fold faster than several typical solvers in computational efficiency with the same level of accuracy. The proposed computational method in this work has great application potential in engineering design.
涉及非线性微分方程的大规模优化设计问题在工艺制造、化学工程和能源工程等建模领域有着广泛应用。在此,我们提出一种基于全纯嵌入的快速灵活方法,用于快速求解非线性微分方程,并进一步将其应用于反渗透海水淡化的工业应用中。所提方法并非通过传统的小步迭代方法在每个离散点求解非线性微分方程,而是在分段计算域内通过一个近似函数或近似式独立确定解。针对反渗透海水淡化过程,求解超过1100万个具有各种设计参数的非线性微分方程的结果表明,基于全纯嵌入的快速灵活方法在计算效率上比几种典型求解器快六倍,且精度相同。本文所提出的计算方法在工程设计中具有巨大的应用潜力。