分析人工神经网络方法

IF 3.5 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Forces in mechanics Pub Date : 2026-06-01 Epub Date: 2026-02-23 DOI:10.1016/j.finmec.2026.100360
Ali Ahmadi Azar
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引用次数: 0

摘要

本研究介绍了分析人工神经网络方法(AANNM),这是一个开创性的框架,系统地将神经网络解算器的离散黑箱输出转换为封闭形式的分析解。通过求解Kelvin-Voigt粘弹性模型的微分方程,证明了AANNM的有效性。首先,利用物理信息神经网络(PINN)获得高保真的数值解。然后部署AANNM的核心创新:使用离散的PINN数据构建代数方程系统,其解产生精确多项式解析表达式的系数。推导的AANNM解直接针对已知的精确解析解进行验证,证明了异常的一致性,并提供了比纯数值方法比较更严格的基准。至关重要的是,虽然用pin进行了演示,但AANNM框架是求解器不可知论的,旨在将任何人工神经网络的离散解转换为解析形式。这种固有的灵活性确保了该方法对未来人工神经网络发展的适用性,使其具有永恒和适应性。提出的框架将AANNM建立为一个变革性的管道,将数据驱动的数值模型与严格的分析数学连接起来,显著提高了计算科学中机器学习的可解释性、实用性和可信度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Analytical Artificial Neural Networks Method
This study introduces the Analytical Artificial Neural Networks Method (AANNM), a groundbreaking framework that systematically converts the discrete, black-box outputs of neural network solvers into closed-form analytical solutions. The efficacy of AANNM is demonstrated by solving the differential equation governing the Kelvin-Voigt viscoelastic model. First, a high-fidelity numerical solution is obtained using a Physics-Informed Neural Network (PINN). The core innovation of AANNM is then deployed: the discrete PINN data is used to construct a system of algebraic equations, the solution of which yields the coefficients for a precise polynomial analytical expression. The derived AANNM solution is directly validated against the known exact analytical solution, demonstrating exceptional agreement and providing a more rigorous benchmark than comparisons with purely numerical methods. Crucially, while demonstrated with PINNs, the AANNM framework is solver-agnostic, designed to convert discrete solutions from any artificial neural network into analytical form. This inherent flexibility ensures the method's applicability to future ANN advancements, making it both timeless and adaptable. The proposed framework establishes AANNM as a transformative pipeline that bridges data-driven numerical models with rigorous analytical mathematics, significantly enhancing the interpretability, utility, and trustworthiness of machine learning in computational science.
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来源期刊
Forces in mechanics
Forces in mechanics Mechanics of Materials
CiteScore
3.50
自引率
0.00%
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审稿时长
52 days
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