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首页> 外文期刊>IEEE Transactions on Signal Processing >Steepest Descent Algorithms for Optimization Under Unitary Matrix Constraint
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Steepest Descent Algorithms for Optimization Under Unitary Matrix Constraint

机译:ary矩阵约束下的最速下降算法

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摘要

In many engineering applications we deal with constrained optimization problems with respect to complex-valued matrices. This paper proposes a Riemannian geometry approach for optimization of a real-valued cost function ${cal J}$ of complex-valued matrix argument ${bf W}$, under the constraint that ${bf W}$ is an $n times n$ unitary matrix. We derive steepest descent (SD) algorithms on the Lie group of unitary matrices $U(n)$. The proposed algorithms move towards the optimum along the geodesics, but other alternatives are also considered. We also address the computational complexity and the numerical stability issues considering both the geodesic and the nongeodesic SD algorithms. Armijo step size adaptation rule is used similarly to , but with reduced complexity. The theoretical results are validated by computer simulations. The proposed algorithms are applied to blind source separation in MIMO systems by using the joint diagonalization approach . We show that the proposed algorithms outperform other widely used algorithms.
机译:在许多工程应用中,我们处理有关复值矩阵的约束优化问题。本文提出了一种黎曼几何方法,用于优化复杂值矩阵参数$ {bf W} $的实值成本函数$ {cal J} $,在$ {bf W} $是$ n倍的约束下n $ unit矩阵。我们在unit矩阵Lie组上推导出最速下降(SD)算法。提出的算法沿着测地线朝着最优方向发展,但也考虑了其他替代方法。我们还考虑了测地线和非测地SD算法,解决了计算复杂性和数值稳定性问题。 Armijo步长自适应规则的用法与相似,但降低了复杂度。通过计算机仿真验证了理论结果。该算法通过联合对角化方法被应用于MIMO系统的盲源分离。我们表明,提出的算法优于其他广泛使用的算法。

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