SYSYOct 30, 2017

Optimal Measurement Policy for Predicting UAV Network Topology

arXiv:1710.1118517 citationsh-index: 35
Originality Incremental advance
AI Analysis

For UAV network operators, it addresses the challenge of rapid topology changes to improve communication efficiency.

The paper develops an optimal tracking policy for UAVs to predict network topology changes, reducing communication link loss rate by setting up links with prolonged connectivity.

In recent years, there has been a growing interest in using networks of Unmanned Aerial Vehicles (UAV) that collectively perform complex tasks for diverse applications. An important challenge in realizing UAV networks is the need for a communication platform that accommodates rapid network topology changes. For instance, a timely prediction of network topology changes can reduce communication link loss rate by setting up links with prolonged connectivity. In this work, we develop an optimal tracking policy for each UAV to perceive its surrounding network configuration in order to facilitate more efficient communication protocols. More specifically, we develop an algorithm based on particle swarm optimization and Kalman filtering with intermittent observations to find a set of optimal tracking policies for each UAV under time-varying channel qualities and constrained tracking resources such that the overall network estimation error is minimized.

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