In this paper, we mainly focus on solving high-dimensional stochastic Hamiltonian systems with boundary condition, and propose a novel method from the view of the stochastic control. In order to obtain the approximated solution of the Hamiltonian system, we first introduce a corresponding stochastic optimal control problem such that the Hamiltonian system of control problem is exactly what we need to solve, then develop two different algorithms suitable for different cases of the control problem and approximate the stochastic control via deep neural networks. From the numerical results, comparing with the Deep FBSDE method which was developed previously from the view of solving FBSDEs, the novel algorithms converge faster, which means that they require fewer training steps, and demonstrate more stable convergences for different Hamiltonian systems.
翻译:在本文中,我们主要侧重于解决具有边界条件的高维随机汉密尔顿系统,并从随机控制的角度提出一种新的方法。 为了获得对汉密尔顿系统的近似解决方案,我们首先引入了相应的随机最佳控制问题,这样汉密尔顿控制系统正是我们需要解决的问题,然后开发两种适合控制问题不同案例的不同算法,并通过深神经网络接近抽查控制。 从数字结果来看,与以前从解决FBSDE系统的角度开发的深FBSDE方法相比较,新奇算法会更快地趋同,这意味着它们需要较少的培训步骤,并显示不同汉密尔顿系统更加稳定的趋同。