半定规划,矩阵分解,和雷达代码设计

Yongwei Huang, A. Maio, Shuzhong Zhang
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引用次数: 30

摘要

在本章中,我们研究了厄米正半定矩阵的秩-1分解技术。基于半定规划松弛法和分解技术,我们确定了几类多项式可解的二次约束规划问题。通常,这样的问题没有太多的限制。作为一个例子,我们演示了如何应用这些新技术来解决雷达信号处理中出现的最优代码设计问题。半定规划(SDP)是一个比较新的最优化研究课题。它的成功在该领域引起了极大的轰动。Boyd和Vandenberghe[11]对SDP及其应用做了很好的介绍。在本章中,我们将详细讨论SDP在求解二次约束规划(QCQP)问题中的一个特殊应用。我们将介绍的技术与如何将一个正半定矩阵分解为秩1正半定矩阵的和有关,以一种特定的方式帮助解决具有二次约束的非凸二次优化。该方法的优点是使原二次优化问题的凸性变得无关紧要;只有约束的数量对方法的有效性很重要。我们进一步研究了这种方法如何帮助解决雷达编码设计问题。通过这一研究,我们旨在证明用SDP求解非凸二次优化是一种可行的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semidefinite programming, matrix decomposition, and radar code design
In this chapter, we study specific rank-1 decomposition techniques for Hermitian positive semidefinite matrices. Based on the semidefinite programming relaxation method and the decomposition techniques, we identify several classes of quadratically constrained quadratic programming problems that are polynomially solvable. Typically, such problems do not have too many constraints. As an example, we demonstrate how to apply the new techniques to solve an optimal code design problem arising from radar signal processing. Introduction and notation Semidefinite programming (SDP) is a relatively new subject of research in optimization. Its success has caused major excitement in the field. One is referred to Boyd and Vandenberghe [11] for an excellent introduction to SDP and its applications. In this chapter, we shall elaborate on a special application of SDP for solving quadratically constrained quadratic programming (QCQP) problems. The techniques we shall introduce are related to how a positive semidefinite matrix can be decomposed into a sum of rank-1 positive semidefinite matrices, in a specific way that helps to solve nonconvex quadratic optimization with quadratic constraints. The advantage of the method is that the convexity of the original quadratic optimization problem becomes irrelevant; only the number of constraints is important for the method to be effective. We further present a study on how this method helps to solve a radar code design problem. Through this investigation, we aim to make a case that solving nonconvex quadratic optimization by SDP is a viable approach.
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