Dynamic multi-scale simulation for evaluating combat effectiveness against aerial threats

    Irene Ndindabahizi Info
    Tom Vancaeyzeele Info
    Ben Lauwens Info
    Johan Gallant Info
DOI: https://doi.org/10.3846/ntcs.2025.23627

Abstract

The development and assessment of modern weapon systems require efficient and flexible simulation tools. This paper introduces a multi-scale discrete-event simulation framework designed to evaluate the dynamic combat effectiveness of weapon systems. The framework combines high-resolution and low-resolution models to address the complexities of real-world engagements while maintaining computational efficiency. Physical processes are encapsulated as modular state transition functions, allowing seamless integration of a multi complexity level modeling approach. The framework’s versatility is demonstrated through a case study analyzing the effectiveness of a tank weapon system against a fleet of drones. Non-deterministic methods such as Monte Carlo simulations for uncertainty quantification are used to evaluate probabilistic key metrics, such as projectile accuracy and lethality, providing insights into engagement dynamics and optimization of firing strategies. By leveraging a hybrid continuous/discrete approach and modular design, the framework enables comprehensive assessments of weapon effectiveness during an engagement, bridging gaps in traditional deterministic methodologies for both static and dynamic targets. Future enhancements will focus on optimizing sampling techniques for broader applicability of high-resolution stochastic simulations in modern combat scenarios.

Keywords:

Discrete Event Simulations, Julia, Monte Carlo, Uncertainty Quantification, Error budget, multi-scale simulations

How to Cite

Ndindabahizi, I., Vancaeyzeele, T., Lauwens, B., & Gallant, J. (2025). Dynamic multi-scale simulation for evaluating combat effectiveness against aerial threats. New Trends in Computer Sciences, 3(1), 18–37. https://doi.org/10.3846/ntcs.2025.23627

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2025-06-18

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How to Cite

Ndindabahizi, I., Vancaeyzeele, T., Lauwens, B., & Gallant, J. (2025). Dynamic multi-scale simulation for evaluating combat effectiveness against aerial threats. New Trends in Computer Sciences, 3(1), 18–37. https://doi.org/10.3846/ntcs.2025.23627

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