A region-dividing approach to robust semidefinite programming and its error bound

Y. Oishi
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引用次数: 34

Abstract

A new asymptotically exact approach is presented for robust semidefinite programming, where coefficient matrices polynomially depend on uncertain parameters. Since a robust semidefinite programming problem is difficult to solve directly, an approximate problem is constructed based on a division of the parameter region. The optimal value of the approximate problem converges to that of the original problem as the resolution of the division becomes finer. An advantage of this approach is that an upper bound on the approximation error is available before solving the approximate problem. This bound shows how the approximation error depends on the resolution of the division. Furthermore, it leads to construction of an efficient division that attains small approximation error with low computational complexity. Numerical examples show efficacy of the present approach. In particular, an exact optimal value is often found with a division of finite resolution
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鲁棒半定规划的区域划分方法及其误差界
针对系数矩阵多项式依赖于不确定参数的鲁棒半定规划问题,提出了一种新的渐近精确方法。针对鲁棒半定规划问题难以直接求解的特点,基于参数区域的划分构造了一个近似问题。随着分割的细化,近似问题的最优值收敛于原问题的最优值。这种方法的一个优点是在求解近似问题之前可以得到近似误差的上界。这个边界显示了近似误差是如何依赖于除法的分辨率的。此外,它还可以构造一个有效的除法,以获得较小的近似误差和较低的计算复杂度。数值算例表明了该方法的有效性。特别地,一个精确的最优值通常是用有限分辨率的划分找到的
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