针对侦察无人机群的防空系统部署优化

Ning Li;Zhenglian Su;Haifeng Ling;Mumtaz Karatas;Yujun Zheng
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引用次数: 1

摘要

由于其在灵活性、可扩展性、生存能力和成本效益方面的优势,无人机群越来越多地用于侦察任务,并在现代战场上对对手构成了巨大的挑战。研究了针对侦察无人机群部署防空系统的优化问题。给定一组可用的防空系统,该问题确定每个防空系统在预定区域的位置,使敌方无人机通过该区域的成本最大化。成本是基于一个对应的无人机路径规划问题来计算的。为了解决这一对抗问题,我们首先提出了一种针对小尺寸问题实例的精确迭代搜索算法,然后提出了一种针对大尺寸问题实例使用特定编解码方案的进化框架。我们用六种流行的进化算法实现了进化框架。在一组不同测试实例上的计算实验验证了我们的方法在防御侦察无人机群方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Air Defense System Deployment Against Reconnaissance Drone Swarms
Due to their advantages in flexibility, scalability, survivability, and cost-effectiveness, drone swarms have been increasingly used for reconnaissance tasks and have posed great challenges to their opponents on modern battlefields. This paper studies an optimization problem for deploying air defense systems against reconnaissance drone swarms. Given a set of available air defense systems, the problem determines the location of each air defense system in a predetermined region, such that the cost for enemy drones to pass through the region would be maximized. The cost is calculated based on a counterpart drone path planning problem. To solve this adversarial problem, we first propose an exact iterative search algorithm for small-size problem instances, and then propose an evolutionary framework that uses a specific encoding-decoding scheme for large-size problem instances. We implement the evolutionary framework with six popular evolutionary algorithms. Computational experiments on a set of different test instances validate the effectiveness of our approach for defending against reconnaissance drone swarms.
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CiteScore
7.80
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