Solving high-dimensional optimal control problems in real-time is an important but challenging problem, with applications to multi-agent path planning problems, which have drawn increased attention given the growing popularity of drones in recent years. In this paper, we propose a novel neural network method called SympOCnet that applies the Symplectic network to solve high-dimensional optimal control problems with state constraints. We present several numerical results on path planning problems in two-dimensional and three-dimensional spaces. Specifically, we demonstrate that our SympOCnet can solve a problem with more than 500 dimensions in 1.5 hours on a single GPU, which shows the effectiveness and efficiency of SympOCnet. The proposed method is scalable and has the potential to solve truly high-dimensional path planning problems in real-time.
翻译:实时解决高维最佳控制问题是一个重要但具有挑战性的问题,因为多试剂路径规划问题的应用近年来越来越受欢迎,因此引起越来越多的关注。在本文中,我们提议采用新型神经网络方法SympOCnet(SympOCnet),利用症状网络解决国家制约下的高维最佳控制问题。我们在二维和三维空间的路径规划问题上提出若干数字结果。具体地说,我们SympOCnet(SympOCnet)可以在1.5小时内解决单一GPU(GPU)上超过500维的问题,这表明SympOCnet(SympOCnet)的效力和效率。拟议方法可以伸缩,并有可能实时解决真正高维路径规划问题。