Data-Driven Robust Stabilization with Robust DOA Enlargement for Nonlinear Systems
Data-Driven Robust Stabilization with Robust DOA Enlargement for Nonlinear Systems
Most of nonlinear robust control methods just consider the affine nonlinear nominal model. When the nominal model is assumed to be affine nonlinear, available information about existing non-affine nonlinearities is ignored. For non-affine nonlinear system, Li et al. (2019) proposes a new nonlinear control method to solve the robust stabilization problem with estimation of the robust closed-loop DOA (Domain of attraction). However, Li et al. (2019) assumes that the Lyapunov function is given and does not consider the problem of finding a good Lyapunov function to enlarge the estimate of the robust closed-loop DOA. The motivation of this paper is to enlarge the estimate of the closed-loop DOA by selecting an appropriate Lyapunov function. To achieve this goal, a solvable optimization problem is formulated to select an appropriate Lyapunov function from a parameterized positive-definite function set. The effectiveness of proposed method is verified by numerical results.
Yu Feng、Zhongsheng Hou、Yongqiang Li、Yuanjing Feng、Ronghu Chi、Chaolun Lu、Xuhui Bu
自动化基础理论计算技术、计算机技术
Yu Feng,Zhongsheng Hou,Yongqiang Li,Yuanjing Feng,Ronghu Chi,Chaolun Lu,Xuhui Bu.Data-Driven Robust Stabilization with Robust DOA Enlargement for Nonlinear Systems[EB/OL].(2019-12-24)[2025-08-02].https://arxiv.org/abs/1912.11480.点此复制
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