KANtrol:用于解决多维和分数最优控制问题的物理信息型科尔莫戈罗夫-阿诺德网络框架

Alireza Afzal Aghaei
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摘要

本文介绍了 KANtrol 框架,该框架利用 Kolmogorov-Arnold 网络(KAN)来解决涉及连续时间变量的最优控制问题。我们解释了如何利用高斯正交来逼近问题中的积分部分,特别是对于积分微分状态方程。我们还演示了如何利用自动微分来计算整数阶动力学的精确导数,而对于非整数阶的分数导数,我们则在 KAN 框架内采用矩阵向量积离散化。我们解决了多维问题,包括二维热偏微分方程的优化控制。模拟结果表明,KAN 控制框架在精度和效率方面都优于经典 MLP。
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KANtrol: A Physics-Informed Kolmogorov-Arnold Network Framework for Solving Multi-Dimensional and Fractional Optimal Control Problems
In this paper, we introduce the KANtrol framework, which utilizes Kolmogorov-Arnold Networks (KANs) to solve optimal control problems involving continuous time variables. We explain how Gaussian quadrature can be employed to approximate the integral parts within the problem, particularly for integro-differential state equations. We also demonstrate how automatic differentiation is utilized to compute exact derivatives for integer-order dynamics, while for fractional derivatives of non-integer order, we employ matrix-vector product discretization within the KAN framework. We tackle multi-dimensional problems, including the optimal control of a 2D heat partial differential equation. The results of our simulations, which cover both forward and parameter identification problems, show that the KANtrol framework outperforms classical MLPs in terms of accuracy and efficiency.
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