基于神经网络的小口径弹丸优化

Wen-Hou Ma, Yong Yu, Jun Hu
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引用次数: 0

摘要

小口径弹丸在水下高速运动时,弹丸周围的水会产生空化现象。阻力系数最佳的战斗部几何形状对应于弹丸完全被空泡包围的超空泡状态。本文针对小口径弹丸,选择三段锥作为基本弹丸,以阻力系数为优化目标对弹丸外形进行优化。将神经网络与序列二次规划(SQP)算法相结合,减少了优化过程中的计算量,提高了优化效率。优化后的弹丸阻力系数比优化前降低了约40%,并能形成包裹整个弹丸的超空泡。
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 small caliber projectile based on neural network
When small caliber projectile is moving at high speed underwater, the water around the projectile will cavitate. The geometric shape of the warhead with the best drag coefficient corresponds to the supercavitating state where the projectile is completely enveloped by cavitation. In this paper, aiming at a small-caliber projectile, the three-section cone is selected as the basic projectile, and the shape of the projectile is optimized with the drag coefficient as the optimization objective. The neural network and sequential quadratic programming (SQP) algorithm are combined to reduce the calculation amount in the optimization process and improve the optimization efficiency. The drag coefficient of the optimized projectile is reduced by about 40% compared with the projectile before optimization, and it can form a supercavitation that envelops the entire projectile.
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