STARMAP: Spaceborne Target Acquisition Radar With Meta-RL Assisted Placement

The urgent requirement to monitor and identify unmanned aerial systems (UASs) within restricted airspace has become increasingly critical. Traditional methods fail to detect low-observable (LO) UASs effectively, thus presenting considerable threats in defense and civil sectors. While radar systems a...

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Main Authors: Alireza Famili, Shihua Sun, Tolga Atalay, Angelos Stavrou
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Open Journal of the Communications Society
Subjects:
Online Access:https://ieeexplore.ieee.org/document/11098477/
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author Alireza Famili
Shihua Sun
Tolga Atalay
Angelos Stavrou
author_facet Alireza Famili
Shihua Sun
Tolga Atalay
Angelos Stavrou
author_sort Alireza Famili
collection DOAJ
description The urgent requirement to monitor and identify unmanned aerial systems (UASs) within restricted airspace has become increasingly critical. Traditional methods fail to detect low-observable (LO) UASs effectively, thus presenting considerable threats in defense and civil sectors. While radar systems are traditionally favored for their robust detection capabilities, the standard active radar configurations—where transmitters are collocated with receivers—face numerous operational challenges. A more promising solution is adopting passive radar technology, which leverages ambient environmental signals, thereby obviating the need for proprietary transmitters. In this vein, we introduce STARMAP framework, a cutting-edge methodology employing spaceborne illuminators. This approach is particularly effective for extensive range operations such as the surveillance of missiles and fighter jets at high altitudes. Despite the benefits, the major challenges include measuring distance and pinpointing targets, exacerbated by the unknown positions of transmitters. STARMAP overcomes these limitations by integrating time difference of arrival (TDOA) methods with bistatic Doppler shift evaluations. A crucial yet often neglected aspect in passive radar systems is the influence of receiver spatial configuration on localization precision. STARMAP underscores the necessity to optimize the arrangement of receivers to minimize errors induced by unfavorable geometries, a task complicated by its NP-hard nature. To address this, we have developed an advanced meta-reinforcement learning (meta-RL) algorithm, enhancing a double deep Q-network (DDQN) to optimize receiver placement. Through rigorous testing across various scenarios and dimensions, our findings demonstrate that STARMAP substantially improves localization accuracy by reducing geometry-induced errors compared to traditional placement strategies.
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issn 2644-125X
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publishDate 2025-01-01
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spelling doaj-art-7052ee2f606f4de69d46e7d3c59f216c2025-08-20T04:03:21ZengIEEEIEEE Open Journal of the Communications Society2644-125X2025-01-0166218624110.1109/OJCOMS.2025.359308811098477STARMAP: Spaceborne Target Acquisition Radar With Meta-RL Assisted PlacementAlireza Famili0https://orcid.org/0000-0002-0617-5851Shihua Sun1https://orcid.org/0009-0008-0365-1390Tolga Atalay2https://orcid.org/0000-0002-9195-4007Angelos Stavrou3https://orcid.org/0000-0001-9888-0592WayWave Inc., Arlington, VA, USADepartment of Electrical and Computer Engineering, Virginia Tech, Arlington, VA, USAA2 Labs LLC, Arlington, VA, USAWayWave Inc., Arlington, VA, USAThe urgent requirement to monitor and identify unmanned aerial systems (UASs) within restricted airspace has become increasingly critical. Traditional methods fail to detect low-observable (LO) UASs effectively, thus presenting considerable threats in defense and civil sectors. While radar systems are traditionally favored for their robust detection capabilities, the standard active radar configurations—where transmitters are collocated with receivers—face numerous operational challenges. A more promising solution is adopting passive radar technology, which leverages ambient environmental signals, thereby obviating the need for proprietary transmitters. In this vein, we introduce STARMAP framework, a cutting-edge methodology employing spaceborne illuminators. This approach is particularly effective for extensive range operations such as the surveillance of missiles and fighter jets at high altitudes. Despite the benefits, the major challenges include measuring distance and pinpointing targets, exacerbated by the unknown positions of transmitters. STARMAP overcomes these limitations by integrating time difference of arrival (TDOA) methods with bistatic Doppler shift evaluations. A crucial yet often neglected aspect in passive radar systems is the influence of receiver spatial configuration on localization precision. STARMAP underscores the necessity to optimize the arrangement of receivers to minimize errors induced by unfavorable geometries, a task complicated by its NP-hard nature. To address this, we have developed an advanced meta-reinforcement learning (meta-RL) algorithm, enhancing a double deep Q-network (DDQN) to optimize receiver placement. Through rigorous testing across various scenarios and dimensions, our findings demonstrate that STARMAP substantially improves localization accuracy by reducing geometry-induced errors compared to traditional placement strategies.https://ieeexplore.ieee.org/document/11098477/Passive radarsspaceborne illuminationTDOAreinforcement learningoptimal placement
spellingShingle Alireza Famili
Shihua Sun
Tolga Atalay
Angelos Stavrou
STARMAP: Spaceborne Target Acquisition Radar With Meta-RL Assisted Placement
IEEE Open Journal of the Communications Society
Passive radars
spaceborne illumination
TDOA
reinforcement learning
optimal placement
title STARMAP: Spaceborne Target Acquisition Radar With Meta-RL Assisted Placement
title_full STARMAP: Spaceborne Target Acquisition Radar With Meta-RL Assisted Placement
title_fullStr STARMAP: Spaceborne Target Acquisition Radar With Meta-RL Assisted Placement
title_full_unstemmed STARMAP: Spaceborne Target Acquisition Radar With Meta-RL Assisted Placement
title_short STARMAP: Spaceborne Target Acquisition Radar With Meta-RL Assisted Placement
title_sort starmap spaceborne target acquisition radar with meta rl assisted placement
topic Passive radars
spaceborne illumination
TDOA
reinforcement learning
optimal placement
url https://ieeexplore.ieee.org/document/11098477/
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AT shihuasun starmapspacebornetargetacquisitionradarwithmetarlassistedplacement
AT tolgaatalay starmapspacebornetargetacquisitionradarwithmetarlassistedplacement
AT angelosstavrou starmapspacebornetargetacquisitionradarwithmetarlassistedplacement