控制器(灌溉)
控制理论(社会学)
计算机科学
控制工程
弹道
自适应控制
非线性系统
先验与后验
欠驱动
跟踪误差
参数统计
人工智能
机器人
工程类
控制(管理)
数学
物理
认识论
统计
哲学
生物
量子力学
农学
天文
作者
Spencer M. Richards,Navid Azizan,Jean-Jacques Slotine,Marco Pavone
标识
DOI:10.1177/02783649231165085
摘要
Real-time adaptation is imperative to the control of robots operating in complex, dynamic environments. Adaptive control laws can endow even nonlinear systems with good trajectory tracking performance, provided that any uncertain dynamics terms are linearly parameterizable with known nonlinear features. However, it is often difficult to specify such features a priori, such as for aerodynamic disturbances on rotorcraft or interaction forces between a manipulator arm and various objects. In this paper, we turn to data-driven modeling with neural networks to learn, offline from past data, an adaptive controller with an internal parametric model of these nonlinear features. Our key insight is that we can better prepare the controller for deployment with control-oriented meta-learning of features in closed-loop simulation, rather than regression-oriented meta-learning of features to fit input-output data. Specifically, we meta-learn the adaptive controller with closed-loop tracking simulation as the base-learner and the average tracking error as the meta-objective. With both fully actuated and underactuated nonlinear planar rotorcraft subject to wind, we demonstrate that our adaptive controller outperforms other controllers trained with regression-oriented meta-learning when deployed in closed-loop for trajectory tracking control.
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