Multistream Distributed Cophasing
Abstract: In this paper, we develop a distributed cophasing (DCP) technique for physical layer fusion of multiple data streams in a wireless sensor network with multiple destination nodes (DNs). The DNs can either be connected to a fusion center (referred to as centralized data processing; CDP) or process data ind independently and communicate with each other via a rate rate-limited limited link (referred to as distributed data processing; DDP). In the first stage of this two-stage two cophasing scheme, sensors estimate the channel to the DNs using pilot symbols transmitted by the latter; er; following which they simultaneously transmit multiple streams of data symbols by prerotating them according to the estimated channel phases to the different DNs. The achievable rates for both CDP and DDP are derived to quantify the gains obtainable by the multistream DCP. In order to aid data detection at the receiver, we propose a least-squares-based least based iterative algorithm for blind channel estimation in CDP-DCP. CDP DCP. Following this, we develop a message passing based blind channel estimation algorithm for DDP-DCP. DDP DCP. It is found using Monte Carlo simulations that for the CDP system, the proposed blind channel estimation algorithm achieves a probability of error performance very close to that with perfect CSI at the DNs, while using only a moderate number of unknown unkno data symbols for channel estimation. We also derive approximate expressions for the error probability performance of the proposed system for both CDP and DDP and validate their accuracy using Monte Carlo simulations.