Sequential Decentralized Parameter Estimation under Randomly Observed Fisher Information
Yasin Yilmaz, Xiaodong Wang

TL;DR
This paper introduces a novel sequential decentralized estimation framework using level-triggered sampling in wireless sensor networks, achieving asymptotic optimality and outperforming traditional uniform sampling methods.
Contribution
It proposes a new level-triggered sampling scheme for sequential decentralized estimation, applicable to both fading and non-fading channels, with proven asymptotic optimality.
Findings
Proposed estimator is asymptotically optimal and unbiased.
Outperforms traditional uniform sampling estimators in simulations.
Applicable to both fading and non-fading wireless channels.
Abstract
We consider the problem of decentralized estimation using wireless sensor networks. Specifically, we propose a novel framework based on level-triggered sampling, a non-uniform sampling strategy, and sequential estimation. The proposed estimator can be used as an asymptotically optimal fixed-sample-size decentralized estimator under non-fading listening channels (through which sensors collect their observations), as an alternative to the one-shot estimators commonly found in the literature. It can also be used as an asymptotically optimal sequential decentralized estimator under fading listening channels. We show that the optimal centralized estimator under Gaussian noise is characterized by two processes, namely the observed Fisher information U_t, and the observed correlation V_t. It is noted that under non-fading listening channels only V_t is random, whereas under fading listening…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Target Tracking and Data Fusion in Sensor Networks · Statistical Methods and Inference
