Abstract

This paper considers distributed estimation methods to enable the formation of Unmanned-Aerial-Vehicles (UAVs) that track a moving target. The UAVs (or agents) are equipped with communication devices to receive a beacon signal from the target and share information with neighboring UAVs. The shared information includes the time-of-arrival (TOA) of the beacon signal from the target and estimates on the target’s location. Every UAV processes the received information from the neighbors using a single-time-scale distributed estimation protocol. This differs from multi-time-scale protocols that require (i) many consensus iterations on a-priori estimates, (ii) fast communication among agents (in general, much faster than the sampling rate of the target dynamics), and thus, more-costly communication equipment and processing units. Further, our approach outperforms most single-time-scale methods in terms of observability assumption as these methods assume that the target is observable via the measurement data received from neighboring UAVs (referred to as local-observability). This requires more communications among the sensors. In contrast, our approach is only based on global-observability assumption, and thus, requires less networking (only strong-connectivity) and communication traffic along with less computational load by data-processing once at the same time-scale of sampling target dynamics. We consider modified time-difference-of-arrival (TDOA) measurements with a constant output matrix for the linearized model. UAVs make a pre-specified formation, and by estimating the target’s location via these measurements, move along with the target. Note to Practitioners—Inspired by recent development in industrial UAVs along with emerging progress in low-cost processing units, fog computing systems, and wireless communications, this paper considers mobile tracking of a moving target via a group of wireless-connected autonomous drones. In the classical tracking methods, which are prone to single-point-of-failure, all the sensors need to send their information to a ground central station over a long-range and costly data-transmission channel. In contrast, by collaborative tracking the processing and decision-making are distributed among a swarm of drones equipped with onboard miniaturized electronic parts such as sensors, microcontrollers, microprocessors, and communication units. This article provides an efficient algorithm to enable such drones to autonomously track the moving target in real-time. Note that the cost and tracking ability of the UAV swarm are directly determined by the computational efficiency and communication burden of the estimation algorithm. In this regard, most available estimation algorithms are over budget and even infeasible due to the need for fast data-transmission channels, fast CPUs, and high network traffic. Our proposed estimation technique outperforms similar algorithms in terms of required communication bandwidth, data-transmission rate, and computational resources, which considerably reduces the hardware cost and improves tracking efficiency in real-time large-scale applications. We show the feasibility and efficiency of our distributed tracking method by simulation.

Highlights

  • T RACKING moving targets has been a topic of interest in signal processing and control literature [1]–[5]

  • In contrast to ground nonholonomic robots equipped with overhead cameras in [10], [14], this paper considers aerial drones for tracking purposes based on TOA measurements of a beacon signal

  • Various dynamic models for a mobile target exist in the literature [2], [67], among which the Nearly-Constant-Velocity (NCV) model has recently been adopted for target tracking scenarios [2], [36], [67]

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Summary

INTRODUCTION

T RACKING moving targets has been a topic of interest in signal processing and control literature [1]–[5]. Adopting this networked estimation protocol, it can be proved that the communication network of UAVs for target tracking is sufficient to be stronglyconnected (SC), as compared to the hub-based connectivity requirement for measurement-fusion in [49] This is one of the main contributions of the paper, i.e. to give distributed tracking technique with the least connectivity requirement on the communication network of agents. Recall that this protocol benefits from all the merits of STS distributed estimation, including: (i) relaxing the local observability assumption as compared to [29]–[36], which, in turn, lessens the network connectivity to strong-connectivity; (ii) requiring less number of data-sharing/consensus iterations as compared to MTS estimation [39]–[45], which significantly reduces the computation/communication rate over the network.

Dynamic Model of the Mobile Target
Multilateration-Based Measurements
Recall on Algebraic Graph Theory
Problem Statement
TRACKING BASED ON DISTRIBUTED ESTIMATION
ERROR STABILITY ANALYSIS VIA STRUCTURED SYSTEM THEORY
FORMATION SCENARIO
Simulation Results of This Work
Comparison With Related Literature
Conclusion
Future Research Directions
Full Text
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