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Successive convex approximation based methods for dynamic spectrum management

机译:基于连续凸逼近的动态频谱管理方法

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This paper contains two parts. The first part presents a novel framework for the successive convex approximation (SCA) method to solve a general optimization problem, as well as its properties. This framework starts with making change of variables (COV), motivated by the fact that it might be easier to construct convex approximations for the problem after making the COV. Furthermore, a general method is proposed to construct a convex upper bound approximation (CUBA) for a nonconvex function that satisfies tightness and differentiation conditions. Moreover, a way is introduced to generalize that CUBA by incorporating a convex function. These methods lead to plenty of degrees of freedom for using the SCA method to solve a problem. The second part revisits state-of-the-art dynamic spectrum management (DSM) algorithms, namely the successive convex approximations for low-complexity (SCALE) algorithm, the convex approximation for distributed spectrum balancing (CA-DSB) algorithm and the difference-of-convex-functions algorithm based DSM (DCA-DSM) method, to show how they can be derived from the SCA and CUBA construction methods. Numerical experiments are shown to compare them.
机译:本文分为两部分。第一部分为逐次凸逼近(SCA)方法提出了一个新颖的框架,以解决一般的优化问题及其性质。该框架从更改变量(COV)开始,这是由于在制作COV之后可能更容易针对问题构造凸近似。此外,提出了一种通用的方法来构造满足凸度和微分条件的非凸函数的凸上限近似(CUBA)。此外,引入了一种通过合并凸函数来概括该CUBA的方法。这些方法为使用SCA方法解决问题带来了很大的自由度。第二部分回顾了最新的动态频谱管理(DSM)算法,即低复杂度的连续凸近似(SCALE)算法,分布式频谱平衡的凸近似(CA-DSB)算法和差分-基于凸函数算法的DSM(DCA-DSM)方法,展示了如何从SCA和CUBA构造方法中导出它们。数值实验表明可以进行比较。

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