A new Lagrangian dual global optimization algorithm for solving bilinear matrix inequalities

H. Tuan, P. Apkarian, Y. Nakashima
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引用次数: 64

Abstract

A global optimization algorithm for solving bilinear matrix inequalities (BMI) problems is developed. It is based on a dual Lagrange formulation for computing lower bounds that are used in a branching procedure to eliminate partition sets in the space of nonconvex variables. The advantage of the proposed method is twofold. First, lower bound computations reduce to solving easily tractable linear matrix inequality (LMI) problems. Secondly, the lower bounding procedure guarantees global convergence of the algorithm when combined with an exhaustive partitioning of the space of nonconvex variables. Another important feature is that the branching phase takes place in the space of nonconvex variables only, hence limiting the overall cost of the algorithm. Also, an important point in the method is that separated LMI constraints are encapsulated into an augmented BMI for improving the lower bound computations. Applications of the algorithm to robust structure/controller design are considered.
求解双线性矩阵不等式的拉格朗日对偶全局优化算法
提出了求解双线性矩阵不等式(BMI)问题的全局优化算法。它基于计算下界的对偶拉格朗日公式,该下界用于分支过程中消除非凸变量空间中的划分集。该方法的优点是双重的。首先,下界计算简化为求解易于处理的线性矩阵不等式问题。其次,下界过程结合非凸变量空间的穷举划分保证了算法的全局收敛性。另一个重要的特点是分支阶段只发生在非凸变量空间中,因此限制了算法的总成本。此外,该方法的一个重点是将分离的LMI约束封装到增强的BMI中,以改进下界计算。研究了该算法在鲁棒结构/控制器设计中的应用。
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