Centralized Adaptation for Parameter Estimation Over Wireless Sensor Networks

We study the performance of centralized least mean squares (CLMS) algorithms in wireless sensor networks where nodes transmit their data over fading channels to a central processing unit (e.g., a fusion center or a cluster head) for parameter estimation. Wireless channel impairments, including fading and path loss, distort the transmitted data, cause link failure, and degrade the performance of adaptive solutions. To address this problem, we propose a novel CLMS algorithm that uses a refined version of the transmitted data and benefits from a link failure alarm strategy to discard severely distorted data. Furthermore, to remove the bias due to communication noise from the estimate, we introduce a bias elimination scheme that also leads to a lower steady-state mean square error. Our theoretical findings are supported by numerical simulation results.

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