On Stabilizing Control of Gaussian Processes for Unknown Nonlinear Systems
暂无分享,去创建一个
Abstract This paper proposes a novel controller design to stabilize Gaussian process (GP) dynamical models for partially unknown nonlinear systems. The unknown system is identified as the GP model. Because existing GP models are difficult to analyze in terms of controller design, a novel GP identification method is proposed that obtains the state dependent coefficient matrix of the system, making the controller design more efficient. The GP model is represented as a piecewise linear system with a bounded uncertainty that is derived based on the characteristics of the GP. Extending quadratic stability theory derives a novel stabilizing controller for such systems.
[1] Andreas Krause,et al. Safe learning of regions of attraction for uncertain, nonlinear systems with Gaussian processes , 2016, 2016 IEEE 55th Conference on Decision and Control (CDC).
[2] Tayfun Çimen,et al. State-Dependent Riccati Equation (SDRE) Control: A Survey , 2008 .
[3] Yunpeng Pan,et al. Data-driven differential dynamic programming using Gaussian processes , 2015, 2015 American Control Conference (ACC).