论文标题
基于张量的基于RIS辅助网络在缺陷下运行的通道估计
Tensor-Based Channel Estimation for RIS-Assisted Networks Operating Under Imperfections
论文作者
论文摘要
可重新配置的智能表面(RIS)是未来无线网络的候选技术。它使无线环境可以达到巨大的连通性和增强的数据速率。但是,RIS辅助网络的有希望的收益在很大程度上取决于通道状态信息的准确性。由于RIS元素的被动性质,渠道估计可能变得具有挑战性。当物理缺陷或电子障碍会影响RIS,由于其对不同环境影响或电路限制引起的RIS,这变得最明显。在本文中,我们提出了一种有效且低复杂性的基于RIS辅助网络中的基于不同缺陷的通道估计方法。通过假设一个短期模型,其中RIS缺陷行为以未知振幅和相移偏差为模型,相对于通道相干时间是非静态的,我们制定了基于封闭形式的基于近端奇异值分解的闭合算法,以实现相关通道的关节估计和未知的损害。此外,分析了所提出算法的可识别性和计算复杂性,我们研究了不同缺陷对渠道估计质量的影响。模拟结果证明了我们提出的基于张量的算法的有效性,与基于竞争张量的迭代交替溶液相比,估计准确性和计算复杂性。
Reconfigurable intelligent surface (RIS) is a candidate technology for future wireless networks. It enables to shape the wireless environment to reach massive connectivity and enhanced data rate. The promising gains of RIS-assisted networks are, however, strongly depends on the accuracy of the channel state information. Due to the passive nature of the RIS elements, channel estimation may become challenging. This becomes most evident when physical imperfections or electronic impairments affect the RIS due to its exposition to different environmental effects or caused by hardware limitations from the circuitry. In this paper, we propose an efficient and low-complexity tensor-based channel estimation approach in RIS-assisted networks taking different imperfections into account. By assuming a short-term model in which the RIS imperfections behavior, modeled as unknown amplitude and phase shifts deviations, is non-static with respect to the channel coherence time, we formulate a closed-form higher order singular value decomposition based algorithm for the joint estimation of the involved channels and the unknown impairments. Furthermore, the identifiability and computational complexity of the proposed algorithm are analyzed, and we study the effect of different imperfections on the channel estimation quality. Simulation results demonstrate the effectiveness of our proposed tensor-based algorithm in terms of the estimation accuracy and computational complexity compared to competing tensor-based iterative alternating solutions.