具有保证局部稳定性的神经网络最优反馈控制

Tenavi Nakamura-Zimmerer;Qi Gong;Wei Kang
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引用次数: 3

摘要

最近的研究表明,监督学习可以成为设计高维非线性动态系统的近最优反馈控制器的有效工具。但是神经网络控制器的行为仍然没有得到很好的理解。特别是,一些测试精度高的神经网络甚至无法局部稳定动态系统。为了应对这一挑战,我们提出了几种新的神经网络架构,我们证明了它们保证了局部渐近稳定性,同时保持了半全局学习最优反馈策略的近似能力。通过对两个高维非线性最优控制问题的数值模拟,将所提出的结构与标准神经网络反馈控制器进行了比较:一个不稳定Burgers型偏微分方程的稳定性,以及一个无人机的高度和航向跟踪。仿真表明,即使训练良好,标准神经网络也可能无法稳定动力学,而所提出的体系结构总是至少局部稳定的,并且可以实现接近最优的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Optimal Feedback Control With Guaranteed Local Stability
Recent research shows that supervised learning can be an effective tool for designing near-optimal feedback controllers for high-dimensional nonlinear dynamic systems. But the behavior of neural network controllers is still not well understood. In particular, some neural networks with high test accuracy can fail to even locally stabilize the dynamic system. To address this challenge we propose several novel neural network architectures, which we show guarantee local asymptotic stability while retaining the approximation capacity to learn the optimal feedback policy semi-globally. The proposed architectures are compared against standard neural network feedback controllers through numerical simulations of two high-dimensional nonlinear optimal control problems: stabilization of an unstable Burgers-type partial differential equation, and altitude and course tracking for an unmanned aerial vehicle. The simulations demonstrate that standard neural networks can fail to stabilize the dynamics even when trained well, while the proposed architectures are always at least locally stabilizing and can achieve near-optimal performance.
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