论文标题
线性系统的强大自适应控制:超越二次成本
Robust-Adaptive Control of Linear Systems: beyond Quadratic Costs
论文作者
论文摘要
我们考虑了线性系统的鲁棒和自适应模型预测控制(MPC)的问题,这些参数沿途学习(自适应),在必须防止故障的关键环境中学习(自适应)。不同社区从不同的角度研究了这个问题。但是,现有理论仅处理二次成本(LQ问题)的情况,该案例仅限于稳定和跟踪任务。为了处理在许多实际问题中自然出现的更一般性(非凸)成本,我们仔细选择并汇总了来自不同社区的几种工具,即非反应线性回归,间隔预测的最新结果以及基于树木的计划。在每一层中结合和适应理论保证并不小,我们为此设置提供了第一个端到端的次级次要分析。有趣的是,我们的分析自然会适应许多模型,并与数据驱动的强大模型选择策略结合在一起,从而使模型假设放松。最后,我们努力在该方法的任何阶段保持易干性,这在两个具有挑战性的模拟环境中说明了这一点。
We consider the problem of robust and adaptive model predictive control (MPC) of a linear system, with unknown parameters that are learned along the way (adaptive), in a critical setting where failures must be prevented (robust). This problem has been studied from different perspectives by different communities. However, the existing theory deals only with the case of quadratic costs (the LQ problem), which limits applications to stabilisation and tracking tasks only. In order to handle more general (non-convex) costs that naturally arise in many practical problems, we carefully select and bring together several tools from different communities, namely non-asymptotic linear regression, recent results in interval prediction, and tree-based planning. Combining and adapting the theoretical guarantees at each layer is non trivial, and we provide the first end-to-end suboptimality analysis for this setting. Interestingly, our analysis naturally adapts to handle many models and combines with a data-driven robust model selection strategy, which enables to relax the modelling assumptions. Last, we strive to preserve tractability at any stage of the method, that we illustrate on two challenging simulated environments.