Dual-hop cooperative Multiple-Input Multiple-Output (MIMO) network with multi-relay cooperative communication is introduced. Power allocation problem with Amplify-and-Forward (AF) and Selective Decode-and-Forward (SDF...Dual-hop cooperative Multiple-Input Multiple-Output (MIMO) network with multi-relay cooperative communication is introduced. Power allocation problem with Amplify-and-Forward (AF) and Selective Decode-and-Forward (SDF) strategies in multi-node scenario are formulated and solved respectively. Optimal power allocation schemes that maximize system capacity with AF strategy are presented. In addition, optimal power allocation methods that minimize asymptotic Symbol Error Rate (SER) with SDF cooperative protocol in multi-node scenario are also proposed. Furthermore, performance comparisons are provided in terms of system capacity and approximate SER. Numerical and simulation results confirm our theoretical analysis. It is revealed that, maximum system capacity could be obtained when powers are allocated optimally with AF protocol, while minimization of system's SER could also be achieved with optimum power allocation in SDF strategy. In multi-node scenario, those optimal power allocation algorithms are superior to conventional equal power allocation schemes.展开更多
根据信道统计特性,研究了放大转发(amplify-and-forward,AF)协作中继网络中的中继选择协作通信方法.首先分析指出在等功率条件下,当信噪比小于某个门限时,选择单个中继节点进行转发(pre-select single relay AF,SAF)比所有节点都转发(al...根据信道统计特性,研究了放大转发(amplify-and-forward,AF)协作中继网络中的中继选择协作通信方法.首先分析指出在等功率条件下,当信噪比小于某个门限时,选择单个中继节点进行转发(pre-select single relay AF,SAF)比所有节点都转发(all relays AF,AAF)的中断概率小.基于此信噪比门限提出一种中继选择协作通信方法,并且指出这种选择方法使得SAF的中断概率最小;然后结合功率分配提出了一种使中断概率最小化的最优中继选择协作通信方法;最后为了降低复杂度,提出了一种次优中继选择协作通信方法.仿真结果表明,这种次优方法和最优中继选择协作通信方法相比,性能相近.展开更多
如何在协作认知网络中有效地实现主要用户和认知用户的频谱共享,即如何在众多认知用户中选择合适的认知中继集是一个基本问题。通过确定并优化主要用户和认知用户效用函数来解决该问题,因采用了纳什均衡理论,故称之为基于博弈论的多中...如何在协作认知网络中有效地实现主要用户和认知用户的频谱共享,即如何在众多认知用户中选择合适的认知中继集是一个基本问题。通过确定并优化主要用户和认知用户效用函数来解决该问题,因采用了纳什均衡理论,故称之为基于博弈论的多中继选择算法(multiple relay selection based on game theory,GTMRS)。在任一认知中继集合中,认知用户之间能够形成非合作功率的博弈模型,可基于纳什均衡得到认知用户的优化协作功率分配算法。在寻找一组确定的中继集合来实现主要用户效用的最大化过程中,引入了修改的信道调和平均数因子,其目的是移除信噪比较小的中继节点,以最大化系统的信噪比。仿真结果显示,该算法能够使更多的认知用户接入到授权频谱中,同时使得主要用户获得更大的效用以及传输速率。因此,基于博弈的多中继选择算法能够有效选择合适的认知中继,并获得主要用户和认知用户在效用上的最优化。展开更多
基金Supported by National Natural Science Foundation of China (NSFC) (No. 60972039)National High Technology Research and Development Program of China (No.2009AA01Z241)Innovation Program for Ph.D. and Postgraduate Candidates in Jiangsu Province (No.CX09B_147Z)
文摘Dual-hop cooperative Multiple-Input Multiple-Output (MIMO) network with multi-relay cooperative communication is introduced. Power allocation problem with Amplify-and-Forward (AF) and Selective Decode-and-Forward (SDF) strategies in multi-node scenario are formulated and solved respectively. Optimal power allocation schemes that maximize system capacity with AF strategy are presented. In addition, optimal power allocation methods that minimize asymptotic Symbol Error Rate (SER) with SDF cooperative protocol in multi-node scenario are also proposed. Furthermore, performance comparisons are provided in terms of system capacity and approximate SER. Numerical and simulation results confirm our theoretical analysis. It is revealed that, maximum system capacity could be obtained when powers are allocated optimally with AF protocol, while minimization of system's SER could also be achieved with optimum power allocation in SDF strategy. In multi-node scenario, those optimal power allocation algorithms are superior to conventional equal power allocation schemes.
文摘如何在协作认知网络中有效地实现主要用户和认知用户的频谱共享,即如何在众多认知用户中选择合适的认知中继集是一个基本问题。通过确定并优化主要用户和认知用户效用函数来解决该问题,因采用了纳什均衡理论,故称之为基于博弈论的多中继选择算法(multiple relay selection based on game theory,GTMRS)。在任一认知中继集合中,认知用户之间能够形成非合作功率的博弈模型,可基于纳什均衡得到认知用户的优化协作功率分配算法。在寻找一组确定的中继集合来实现主要用户效用的最大化过程中,引入了修改的信道调和平均数因子,其目的是移除信噪比较小的中继节点,以最大化系统的信噪比。仿真结果显示,该算法能够使更多的认知用户接入到授权频谱中,同时使得主要用户获得更大的效用以及传输速率。因此,基于博弈的多中继选择算法能够有效选择合适的认知中继,并获得主要用户和认知用户在效用上的最优化。