A novel scenario-adapted distributed signaling technique in the context of opportunistic communications is presented in this work. Each opportunistic user acquires locally sampled observations from the wireless environment to determine the occupied and available degrees-of-freedom (DoF). Due to sensing errors and locality of observations, a performance loss and inter-system interference arise from subspace uncertainties. Yet, we show that addressing the problem as a total least-squares (TLS) optimization, signaling patterns robust to subspace uncertainties can be designed. Furthermore, given the equivalence of minimum norm and TLS, the latter exhibits the interesting properties of linear predictors. Specifically, the rotationally invariance property is of paramount importance to guarantee the detectability by neighboring nodes. Albeit these advantages, end-to-end subspace uncertainties yield a performance loss that compromises both detectability and wireless environment's performance. To combat the latter, we tackle the distributed identification of the active subspace with and without side information about neighboring nodes' subspaces. An extensive simulation analysis highlights the performance of distributed concurrency schemes to achieve subspace agreement.
翻译:在这项工作中,每个机会型用户都从无线环境中获取当地抽样观测结果,以确定所占用和现有的自由度。由于遥感错误和观测地点,性能损失和系统间干扰产生于子空间的不确定性。然而,我们表明,作为完全最小空间优化(TLS)来解决这个问题,可以设计出对子空间不确定性具有强大影响的信号模式。此外,鉴于最低规范和TLS的等同性,后者展示线性预测器的有趣特性。具体地说,旋转性变换性财产对于保证邻结节点的可探测性至关重要。尽管这些优势,端至端子空间不确定性造成性损失,损害可探测性和无线环境的性能。要对付后者,我们处理分散地确定活动子空间的问题,与邻接节点的子空间有关,而没有附带信息。广泛的模拟分析突出分布式同价方法的绩效,以达成子空间协议。