自适应下行OFDMA资源分配

I. Wong, B. Evans
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引用次数: 21

摘要

基于通信性能优化OFDMA资源分配需要解决一个非线性混合整数规划问题。因此,许多研究人员都依赖于次优启发式算法。在最近的一篇论文中,我们证明了遍历率最大化是可能的,使用对偶优化框架,该框架产生的实际最优解的复杂性是子载波数量乘以用户数量的数量级。考虑遍历率的主要缺点之一是假设发射机完全知道信道分布信息(CDI)。因此,本文提出了一种不需要CDI知识的基于随机逼近方法的自适应算法。该算法收敛到最优解的概率为1,而对于每个OFDMA符号,复杂度为子载波数乘以用户数的数量级。在给定的OFDMA符号时间内没有迭代;相反,ldquoiterationsrdquo实际上是跨时间(符号)执行的。基于第三代合作伙伴项目的模拟结果,长期演进(3GPP-LTE) OFDMA系统证实了我们的说法。
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Adaptive downlink OFDMA resource allocation
Optimizing OFDMA resource allocation with respect to communication performance requires solving a nonlinear mixed-integer programming problem. As a result, many researchers have fallen back on suboptimal heuristic algorithms. In a recent paper, we demonstrate that ergodic rate maximization is possible using a dual optimization framework that results in a practically optimal solution with complexity that is on the order of the number of subcarriers times the number of users. One of the primary disadvantages of considering ergodic rates is the assumption that the channel distribution information (CDI) is perfectly known at the transmitter. Therefore, this paper proposes an adaptive algorithm based on stochastic approximation methods that do not require knowledge of the CDI. This algorithm converges to the optimal solution with probability one, while for each OFDMA symbol, the complexity is on the order of the number of subcarriers times the number of users. There are no iterations in a given OFDMA symbol time; instead, the ldquoiterationsrdquo are actually performed across time (symbols). Simulation results based roughly on a third-generation partnership project, long-term evolution (3GPP-LTE) OFDMA system corroborate our claims.
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