Abstract

Mobile target search is a problem pertinent to a variety of applications, including wilderness search and rescue. This paper proposes a hybrid approach for target search utilizing a team of mobile agents supported by a network of static sensors. The approach is novel in that the mobile agents deploy the sensors at optimized times and locations while they themselves travel along their respective optimized search trajectories. In the proposed approach, mobile-agent trajectories are first planned to maximize the likelihood of target detection. The deployment of the static-sensor network is subsequently planned. Namely, deployment locations and times are optimized while being constrained by the already planned mobile-agent trajectories. The latter optimization problem, as formulated and solved herein, aims to minimize an overall network-deployment error. This overall error comprises three main components, each quantifying a deviation from one of three main objectives the network aims to achieve: (i) maintaining directional unbiasedness in target-motion consideration, (ii) maintaining unbiasedness in temporal search-effort distribution, and, (iii) maximizing the likelihood of target detection. We solve this unique optimization problem using an iterative heuristic-based algorithm with random starts. The proposed hybrid search strategy was validated through the extensive simulations presented in this paper. Furthermore, its performance was evaluated with respect to an alternative hybrid search strategy, where it either outperformed or performed comparably depending on the search resources available.

Highlights

  • Many real-world problems can be formulated as a mobile-target search problem, including those used to locate lost persons [1,2,3,4,5,6,7,8]

  • The proposed method presented is primarily formulated as one for wilderness search and rescue (WiSAR), where the objective is to locate a lost person as soon as possible [19,47,48,49], it can be adapted to any mobile-target search problem, where the target location likelihood can change during the search and the space-time scales are similar

  • It is assumed that the coverage of both static sensors and mobile agents are sparse enough such that planning of both agent trajectories and sensor deployments necessitate careful consideration to maximize the likelihood of target detection

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Summary

Introduction

Many real-world problems can be formulated as a mobile-target search problem, including those used to locate lost persons [1,2,3,4,5,6,7,8]. The work presented in this paper, for example, considers the problem of planning a search to locate a (mobile) target with a team of mobile agents supported by a static-sensor network. The method first plans optimal agent-motion trajectories, followed by planning optimal sensor-deployment positions and times on these trajectories, while maximizing the likelihood of mobile-target detection in an unbounded environment. The proposed hybrid approach is novel in that it guarantees the deployment of a near-optimal static-sensor network, without interfering in the search of a target utilizing a team of mobile agents following their respective optimal trajectories. The proposed method presented is primarily formulated as one for wilderness search and rescue (WiSAR), where the objective is to locate a lost person as soon as possible [19,47,48,49], it can be adapted to any mobile-target search problem, where the target location likelihood can change during the search and the space-time scales are similar. Examples of such problems include: urban search and rescue [50,51,52,53,54], target pursuit [55,56], wildlife search [57], and surveillance [58]

Search Scenario and Assumptions
Problem Formulation
The Proposed Search-Planning Method
Initial Planning
Sensor-Network
Proposed
Re-Planning
Example 1
Example 2
15. Figure
15. Planned re-planned agent trajectories sensor deployments for Example
Two Comparative Experiments
Large Sets of Simulations
Findings
Conclusions
Full Text
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