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Enrique Tomás Martínez Beltrán

Federated learning, trustworthy AI and cyberdefense research, focused on systems that are robust, privacy-preserving and useful in security operations.

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  1. Home
  2. Publications on Federated Learning, AI and Cybersecurity
  3. Flighter: Decentralized Federated Learning and Situational Awareness for Secure Military Aerial Reconnaissance
Journal article2025

IEEE Communications Magazine

Flighter: Decentralized Federated Learning and Situational Awareness for Secure Military Aerial Reconnaissance

Mosaic warfare is a military strategy where reconnaissance missions with aerial vehicles are critical for gathering enemy information and achieving battlefield dominance. Nowadays, machine learning (ML) techniques play a...

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Scientific Overview
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Military aircraftReconnaissanceTrainingData modelsAtmospheric modelingAircraft navigationAdaptation modelsReliabilityVehicle dynamicsSecurityMilitary communication
Scientific overview
Live • Tick 0
Flighter decentralized learning loopConceptual animation demonstrating collaborative learning, P2P model exchange, situational reliability evaluation, and decentralized aggregation in a bounded UAV reconnaissance scenario.U1U2U3U4

Flighter Lens • Phase 1 of 6

Local Observation

Four UAVs scan the battlefield in formation, gathering abstract terrain and situational information via local sensors.

Defense Metrics Weights

Model Similarity30%
Flight Formation30%
Geopositioning15%
Interconnection15%
Resource Usage10%

Validation Domains

Mosaic WarfareAerial ReconnaissanceSAR Vehicle DetectionDefense Systems
  1. Local Observation

  2. Local Training

  3. Decentralized Exchange

  4. Situational Defense Module

  5. Consensus & Aggregation

  6. Situational Awareness Update

Scientific overview
RQ2

Turns one DFL security gap into a bounded adversarial evaluation: mobile SAR-equipped participants train collaboratively while model-related, contextual and operational indicators support reliability-oriented decentralized aggregation.

View animation

95.8%

F1 on MSTAR

Baseline reconnaissance scenario

97.5%

F1 on SAMPLE

Baseline reconnaissance scenario

79.1%

F1 on OpenSARShip

Baseline reconnaissance scenario

0.7%

packet loss

Stable baseline communication behavior

Key Scientific Contributions

  • Bounded Reconnaissance Scenario: Evaluates DFL with SAR-equipped aerial vehicles under mobility, changing connectivity and adversarial conditions.
  • Situational Reliability Score: Combines model similarity, flight formation, geopositioning, resource usage and interconnection rate.
  • Reliability-Oriented Aggregation: Weights decentralized aggregation to reduce the influence of potentially unreliable or malicious contributions.

Major Conclusions

  • Within the evaluated SAR-based scenario, contextual and model-related indicators support decentralized aggregation decisions under mobility, communication constraints and adversarial behavior.
  • Flighter should be interpreted as a bounded contribution to robustness and adaptation in adversarial DFL, not as a general-purpose defense for every decentralized federation.
  • The reported results depend on the specific datasets, attacks, model architecture, baseline and simulation conditions used in the publication.

Bounded Adversarial Evaluation

Evaluated conditionScenarioReported result
Geopositioning deviationSAR aerial reconnaissance91.8% F1 (MSTAR), 90.3% (SAMPLE), 72.0% (OpenSARShip)
Collision-course manipulationOperational perturbation92.5% F1 (MSTAR), 89.8% (SAMPLE), 70.1% (OpenSARShip)
Adversarial poisoningCollaborative training attack52.1%-90.1% F1 depending on dataset and attack setup

Methodology phases

1

Sense

Model similarity, formation, position, resources and links

2

Score

Decentralized reliability under perturbations and attacks

3

Aggregate

Reduce influence from compromised or inconsistent nodes

Abstract

Mosaic warfare is a military strategy where reconnaissance missions with aerial vehicles are critical for gathering enemy information and achieving battlefield dominance. Nowadays, machine learning (ML) techniques play a pivotal role in this task by enabling precise detection of military vehicles. However, reconnaissance missions face challenges, particularly when enemies launch attacks targeting ML models and aerial exploration vehicles. Combining decentralized federated learning (DFL) and situational awareness could improve these challenges by facilitating collaborative, context-aware, robust, and privacy-preserving ML-based learning processes. Nevertheless, existing literature overlooks these research fields and their applicability to military reconnaissance missions. Thus, this work introduces Flighter, a novel framework that trains DFL models for enemy detection while safeguarding model integrity using a situational awareness-based defense module. Flighter considers model similarity, flight formations, geopositioning, resource usage, and interconnection rate between aerial vehicles to defend against adversarial attacks targeting reconnaissance tasks. A simulated military scenario using synthetic aperture radar (SAR) data of military vehicles has been deployed to evaluate the framework performance. The evaluation involved four military aircraft operating in two flight formations under adversarial attacks affecting aircraft geopositioning and collaborative training. Extensive experimentation with different attacks demonstrated that Flighter enhances literature detection accuracy and time without compromising privacy.

Authors

Enrique Tomás Martínez BeltránPedro Miguel Sánchez SánchezGérôme BovetBurkhard StillerGregorio Martínez PérezAlberto Huertas Celdrán

Keywords

Military aircraftReconnaissanceTrainingData modelsAtmospheric modelingAircraft navigationAdaptation modelsReliabilityVehicle dynamicsSecurityMilitary communication

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Journal article2023

IEEE Communications Surveys & Tutorials

Decentralized Federated Learning: Fundamentals, State of the Art, Frameworks, Trends, and Challenges

Enrique Tomás Martínez Beltrán, Mario Quiles Pérez, Pedro Miguel Sánchez Sánchez, Sergio López Bernal, Gérôme Bovet, Manuel Gil Pérez, Gregorio Martínez Pérez, Alberto Huertas Celdrán

In recent years, Federated Learning (FL) has gained relevance in training collaborative models without sharing sensitive data. Since its birth, Centralized FL (CFL) has been the most common approach in the literature, wh...

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Conference paper2025

ICC 2025 - IEEE International Conference on Communications

ProFe: Communication-Efficient Decentralized Federated Learning via Distillation and Prototypes

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Conference paper2023

MILCOM 2023 - 2023 IEEE Military Communications Conference (MILCOM)

Stealth Spectrum Sensing Data Falsification Attacks Affecting IoT Spectrum Monitors on the Battlefield

Pedro Miguel Sánchez Sánchez, Enrique Tomás Martínez Beltrán, Alberto Huertas Celdrán, Robin Wassink, Gérôme Bovet, Gregorio Martínez Pérez, Burkhard Stiller

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