Adaptive high-order splitting schemes for large-scale differential Riccati equations

被引:1
|
作者
Tony Stillfjord
机构
[1] Chalmers University of Technology and the University of Gothenburg,Mathematical Sciences
来源
Numerical Algorithms | 2018年 / 78卷
关键词
Differential Riccati equations; Large-scale; Splitting schemes; High order; Adaptivity; 15A24; 49N10; 65L05; 93A15;
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摘要
We consider high-order splitting schemes for large-scale differential Riccati equations. Such equations arise in many different areas and are especially important within the field of optimal control. In the large-scale case, it is critical to employ structural properties of the matrix-valued solution, or the computational cost and storage requirements become infeasible. Our main contribution is therefore to formulate these high-order splitting schemes in an efficient way by utilizing a low-rank factorization. Previous results indicated that this was impossible for methods of order higher than 2, but our new approach overcomes these difficulties. In addition, we demonstrate that the proposed methods contain natural embedded error estimates. These may be used, e.g., for time step adaptivity, and our numerical experiments in this direction show promising results.
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页码:1129 / 1151
页数:22
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