优化 ODE 解决方案:应用 Nelder-Mead 算法解决混合边界值问题

A. Wusu, O. Olabanjo
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摘要

本摘要介绍了 Nelder-Mead 算法在优化具有导数边界条件的常微分方程 (ODE) 解法中的新应用。研究提出了一种精炼的方法,利用 Nelder-Mead 算法的适应性来处理具有复杂导数约束的 ODE。为了增强解决复杂 ODE 的工具包,本研究的目标是展示该算法在导数边界条件下优化解决方案的功效。该方法涉及调整 Nelder-Mead 算法,以便在满足 ODE 及其导数约束条件的同时浏览参数空间。实验结果表明,该算法有能力找出满足这些严格要求的解决方案,这标志着在处理具有导数边界条件的 ODE 方面取得了重大进展。研究最后强调了该算法在推进 ODE 求解技术方面的潜力,尤其是在基于梯度的方法难以奏效的情况下,从而拓宽了各种科学和工程领域的应用范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing ODE solutions: application of Nelder-Mead algorithm for solving mixed boundary value problems
This abstract introduces a novel application of the Nelder-Mead algorithm in optimizing solutions to Ordinary Differential Equations (ODEs) with derivative boundary conditions. The study presents a refined methodology that leverages the Nelder-Mead algorithm’s adaptability to tackle ODEs characterized by intricate derivative constraints. With the aim of enhancing the toolkit for solving complex ODEs, the objective of this research is to showcase the algorithm’s efficacy in optimizing solutions under derivative boundary conditions. The methodology involves adapting the Nelder-Mead algorithm to navigate the param-eter space while satisfying both the ODEs and their derivative constraints. Experimental results demonstrate the algorithm’s capability to identify solutions that meet these stringent requirements, marking a significant advancement in addressing ODEs with derivative boundary conditions. The study concludes by emphasizing the algorithm’s potential for advancing ODE-solving techniques, particularly in scenarios where gradient-based methods struggle, thus widening the scope of applications across various scientific and engineering domains.
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