Kernel-Based State-Space Kriging for Predictive Control

被引:0
|
作者
A.Daniel Carnerero [1 ,2 ]
Daniel R.Ramirez [3 ]
Daniel Limon [3 ]
Teodoro Alamo [3 ]
机构
[1] the Department of System Engineering and Automation, University of Seville
[2] the School of Engineering, Tokyo Institute of Technology
[3] Department of System Engineering and Automation, University of Seville
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中图分类号
TP13 [自动控制理论];
学科分类号
摘要
In this paper, we extend the state-space kriging(SSK) modeling technique presented in a previous work by the authors in order to consider non-autonomous systems. SSK is a data-driven method that computes predictions as linear combinations of past outputs. To model the nonlinear dynamics of the system, we propose the kernel-based state-space kriging(K-SSK), a new version of the SSK where kernel functions are used instead of resorting to considerations about the locality of the data. Also, a Kalman filter can be used to improve the predictions at each time step in the case of noisy measurements. A constrained tracking nonlinear model predictive control(NMPC) scheme using the black-box input-output model obtained by means of the K-SSK prediction method is proposed. Finally, a simulation example and a real experiment are provided in order to assess the performance of the proposed controller.
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页码:1263 / 1275
页数:13
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