In this paper, we propose an efficient and flexible algorithm to solve dynamic mean-field planning problems based on an accelerated proximal gradient method. Besides an easy-to-implement gradient descent step in this algorithm, a crucial projection step becomes solving an elliptic equation whose solution can be obtained by conventional methods efficiently. By induction on iterations used in the algorithm, we theoretically show that the proposed discrete solution converges to the underlying continuous solution as the grid size increases. Furthermore, we generalize our algorithm to mean-field game problems and accelerate it using multilevel and multigrid strategies. We conduct comprehensive numerical experiments to confirm the convergence analysis of the proposed algorithm, to show its efficiency and mass preservation property by comparing it with state-of-the-art methods, and to illustrates its flexibility for handling various mean-field variational problems.
翻译:在本文中,我们提出了一个高效和灵活的算法,以基于快速速率梯度法解决动态平均场规划问题。除了在这一算法中采取易于执行的梯度下降步骤外,一个关键的预测步骤是解决一个以传统方法有效获得解决办法的椭圆方程。通过引入在算法中使用的迭代,我们理论上表明,随着电网规模的扩大,拟议的离散解决方案会与潜在的连续解决方案相融合。此外,我们将我们的算法概括为平均场游戏问题,并用多层次和多格战略加速。我们进行了全面的数字实验,以确认对拟议算法的趋同分析,通过将其与最新方法进行比较,展示其效率和质量保护特性,并展示其处理各种平均场变异问题的灵活性。