Distributed Inference for Relay-Assisted Sensor Networks With Intermittent Measurements Over Fading Channels
Abstract: In this paper, we consider a general distributed estimation problem in relayassisted sensor networks by taking into account time-varying asymmetric communications, fading channels, and intermittent measurements. Motivated by centralized filtering algorithms, we propose a distributed innovation-based estimation algorithm by combining the measurement innovation (assimilation of new measurement) and local data innovation (incorporation of neighboring data). Our algorithm is fully distributed which does not need a fusion center. We establish theoretical results regarding asymptotic unbiasedness and consistency of the proposed algorithm. Specifically, we utilize an reordering technique and the generalized Perron complement to manipulate the first and second moment analyses in a tractable framework. Furthermore, we present a performance-oriented design of the algorithm parameters for energyconstrained networks based on the theoretical results. Simulation results corroborate the theoretical findings, thus demonstrating the effectiveness of the proposed algorithm.