基于雷达探测概率模型的隐形无人机穿透效率优化

Chengen Yuan, Dongli Ma, Yuhong Jia, Liang Zhang
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引用次数: 0

摘要

气动/隐身优化是隐身无人机设计过程中的一个关键问题。平衡不同入射角RCS的权重,将隐身特性与气动特性相结合,是气动/隐身优化的热点。针对这一问题,本文引入雷达探测概率模型来解决 RCS 入射角的重量平衡问题,并引入穿透效率模型将多目标优化转化为单目标优化。本文选择了一个参数化的飞翼无人机模型作为研究对象。采用基于遗传算法的无梯度优化算法实现效率最大化。该优化模型平衡了 RCS 平均值和 RCS 峰值对隐身性能的影响。此外,该模型通过平衡空气动力学和隐身优化,实现了整个生命周期穿透效率系数的最优化。结果表明,优化后的模型穿透效率系数提高了 13.84%,最大飞行架次增加了 1.8%。这些结果证明,该模型合理地结合了气动和隐身优化,适用于执行穿透任务的无人机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stealth Unmanned Aerial Vehicle Penetration Efficiency Optimization Based on Radar Detection Probability Model
Aerodynamic/stealth optimization is a key issue during the design of a stealth UAV. Balancing the weight of different incident angles of the RCS and combining stealth characteristics with aerodynamic characteristics are hotspots of aerodynamic/stealth optimization. To address this issue, this paper introduces a radar detection probability model to solve the weight balance problem of incident angles of the RCS and a penetration efficiency model to transfer the multi-object optimization into single-objective optimization. In this paper, a parameterized model of a flying-wing UAV is selected as the research object. A gradient-free optimization algorithm based on the genetic algorithm is used for maximizing efficiency. The optimization model balances the influence of the RCS mean value and RCS peak value on stealth performance. Moreover, the model achieves an optimal entire life cycle penetration efficiency coefficient by balancing aerodynamic and stealth optimization. The results show that the optimized model improves the penetration efficiency coefficient by 13.84% and increases maximum flight sorties by 1.8%. These results prove that the model has a reasonable combination of aerodynamic and stealth optimization for UAVs undertaking penetration missions.
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