We present an online multi-task learning approach for adaptive nonlinear control, which we call Online Meta-Adaptive Control (OMAC). The goal is to control a nonlinear system subject to adversarial disturbance and unknown $\textit{environment-dependent}$ nonlinear dynamics, under the assumption that the environment-dependent dynamics can be well captured with some shared representation. Our approach is motivated by robot control, where a robotic system encounters a sequence of new environmental conditions that it must quickly adapt to. A key emphasis is to integrate online representation learning with established methods from control theory, in order to arrive at a unified framework that yields both control-theoretic and learning-theoretic guarantees. We provide instantiations of our approach under varying conditions, leading to the first non-asymptotic end-to-end convergence guarantee for multi-task adaptive nonlinear control. OMAC can also be integrated with deep representation learning. Experiments show that OMAC significantly outperforms conventional adaptive control approaches which do not learn the shared representation.
翻译:我们为适应性非线性控制提出了一个在线多任务学习方法,我们称之为在线元数据适应控制(OMAC),目标是控制一个非线性系统,该系统受到对抗性干扰和未知的美元/textit{环境依赖}美元/环境依赖}美元/非线性动态,其假设是,环境依赖动态可以通过某种共享的表达方式很好地捕捉到。我们的方法是由机器人控制的驱动,机器人系统遇到一系列必须迅速适应的新环境条件。一个关键重点是将在线代表学习与既有的控制理论方法结合起来,以便形成一个统一框架,既能产生控制理论又能产生学习理论的保证。我们在不同条件下提供我们方法的即时反应,从而导致为多任务适应性非线性非线性控制提供第一个非无线性端到端融合保证。OMAC也可以与深层的表达学习结合起来。实验表明,OMAC明显地超越了不学习共享代表的常规适应性控制方法。