College of Mechanical and Electrical Engineering, National Engineering Research Center for Intelligent Electrical Vehicle Power System, Qingdao University, Qingdao 266071, PR China.
School of Mathematics and Statistics, Qingdao University, Qingdao 266071, PR China.
Neural Netw. 2024 Dec;180:106756. doi: 10.1016/j.neunet.2024.106756. Epub 2024 Sep 22.
This study introduces an innovative neural network framework named spectral integrated neural networks (SINNs) to address both forward and inverse dynamic problems in three-dimensional space. In the SINNs, the spectral integration technique is utilized for temporal discretization, followed by the application of a fully connected neural network to solve the resulting partial differential equations in the spatial domain. Furthermore, the polynomial basis functions are employed to expand the unknown function, with the goal of improving the performance of SINNs in tackling inverse problems. The performance of the developed framework is evaluated through several dynamic benchmark examples encompassing linear and nonlinear heat conduction problems, linear and nonlinear wave propagation problems, inverse problem of heat conduction, and long-time heat conduction problem. The numerical results demonstrate that the SINNs can effectively and accurately solve forward and inverse problems involving heat conduction and wave propagation. Additionally, the SINNs provide precise and stable solutions for dynamic problems with extended time durations. Compared to commonly used physics-informed neural networks, the SINNs exhibit superior performance with enhanced convergence speed, computational accuracy, and efficiency.
本研究提出了一种名为谱积分神经网络(SINN)的创新神经网络框架,以解决三维空间中的正向和逆向动力学问题。在 SINN 中,利用谱积分技术进行时间离散化,然后应用全连接神经网络解决空间域中产生的偏微分方程。此外,采用多项式基函数扩展未知函数,旨在提高 SINN 解决逆问题的性能。通过几个包含线性和非线性热传导问题、线性和非线性波传播问题、热传导逆问题和长时间热传导问题的动态基准示例来评估所开发框架的性能。数值结果表明,SINN 可以有效地准确求解涉及热传导和波传播的正向和逆向问题。此外,SINN 为具有扩展时间持续时间的动态问题提供了精确和稳定的解决方案。与常用的物理信息神经网络相比,SINN 具有增强的收敛速度、计算精度和效率,表现出更优越的性能。