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Learning-Based Policy Optimization for Adversarial Missile-Target Assignment

Weilin Luo, Jinhu Lü, Kexin Liu, Lei Chen

2021IEEE Transactions on Systems Man and Cybernetics Systems61 citationsDOI

Abstract

The missile-target assignment (MTA) is a typical weapon-target assignment problem in Command and Control of modern warfare. Despite the significance of the problem, traditional algorithms still lack efficiency, solution quality, and practicability in the adversarial environment. In this article, we propose a data-driven policy optimization with deep reinforcement learning (PODRL) for the adversarial MTA. We design a comprehensive reward function to motivate the optimization of assignment policy. As such, the learned policy can implicitly model the penetration of missiles under an adversarial environment in a data-driven way. We also present a fair sample strategy to improve the sample efficiency and accelerate the policy optimization. Experimental results show that PODRL can adaptively generate satisfactory solutions in both small-scale and large-scale instances. Furthermore, we evaluate the effectiveness of PODRL in a multiobjective scenario. The result demonstrates that a well-optimized policy can achieve high-quality allocation and demand forecast of the missile resources simultaneously.

Topics & Concepts

Adversarial systemReinforcement learningComputer scienceMissileSample (material)Mathematical optimizationScale (ratio)Control (management)Optimization problemFunction (biology)Artificial intelligenceEngineeringAlgorithmMathematicsAerospace engineeringPhysicsBiologyChemistryEvolutionary biologyChromatographyQuantum mechanicsMilitary Defense Systems AnalysisGuidance and Control SystemsTerrorism, Counterterrorism, and Political Violence
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