Pareto前沿逼近启发的进化PINN学习算法求解病态问题

IF 1.9 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Computation Pub Date : 2023-08-21 DOI:10.3390/computation11080166
T. Lazovskaya, D. Tarkhov, Maria Chistyakova, Egor Razumov, Anna Sergeeva, T. Shemyakina
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引用次数: 0

摘要

本文介绍了新的物理信息进化神经网络学习算法的发展。这些算法旨在通过构建接近帕累托前沿的种群来解决病态问题的挑战。研究的重点是比较算法的能力基于三个质量标准的解决方案。为了评估算法的性能,我们使用了两个基准问题。第一个是在具有不连续边界条件的方形区域中求解拉普拉斯方程。第二个问题考虑了没有边界条件但有测量值的情况。此外,研究了超参数对最终结果的影响。将所提出的算法与构建基于物理的神经网络的标准算法(通常称为香草算法)进行了比较。结果表明,所提出的算法在解决不正确的问题时具有更好的性能。此外,所提出的算法具有识别具有所需平滑度的特定解的能力。
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Evolutionary PINN Learning Algorithms Inspired by Approximation to Pareto Front for Solving Ill-Posed Problems
The article presents the development of new physics-informed evolutionary neural network learning algorithms. These algorithms aim to address the challenges of ill-posed problems by constructing a population close to the Pareto front. The study focuses on comparing the algorithm’s capabilities based on three quality criteria of solutions. To evaluate the algorithms’ performance, two benchmark problems have been used. The first involved solving the Laplace equation in square regions with discontinuous boundary conditions. The second problem considered the absence of boundary conditions but with the presence of measurements. Additionally, the study investigates the influence of hyperparameters on the final results. Comparisons have been made between the proposed algorithms and standard algorithms for constructing neural networks based on physics (commonly referred to as vanilla’s algorithms). The results demonstrate the advantage of the proposed algorithms in achieving better performance when solving incorrectly posed problems. Furthermore, the proposed algorithms have the ability to identify specific solutions with the desired smoothness.
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来源期刊
Computation
Computation Mathematics-Applied Mathematics
CiteScore
3.50
自引率
4.50%
发文量
201
审稿时长
8 weeks
期刊介绍: Computation a journal of computational science and engineering. Topics: computational biology, including, but not limited to: bioinformatics mathematical modeling, simulation and prediction of nucleic acid (DNA/RNA) and protein sequences, structure and functions mathematical modeling of pathways and genetic interactions neuroscience computation including neural modeling, brain theory and neural networks computational chemistry, including, but not limited to: new theories and methodology including their applications in molecular dynamics computation of electronic structure density functional theory designing and characterization of materials with computation method computation in engineering, including, but not limited to: new theories, methodology and the application of computational fluid dynamics (CFD) optimisation techniques and/or application of optimisation to multidisciplinary systems system identification and reduced order modelling of engineering systems parallel algorithms and high performance computing in engineering.
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