Predicting the perforation capability of Kinetic Energy Projectiles using artificial neural networks

John R. Auten, R. Hammell
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引用次数: 1

Abstract

The U.S. Army requires the evaluation of new weapon and vehicle systems through the use of experimental testing and Vulnerability/Lethality (V/L) modeling & simulation (M&S). The current M&S methods being utilized often require significant amounts of time and subject matter expertise. This typically means that quick results cannot be provided when needed to address new threats encountered in theater. Recently there has been an increased focus on rapid results for M&S efforts that can also provide accurate results. Accurately modeling the penetration and residual properties of a ballistic threat as it progresses through a target is an extremely important part of determining the effectiveness of the threat against that target. This paper presents preliminary results from the training of an artificial neural network for the prediction of perforation of a monolithic metallic target plate.
基于人工神经网络的动能弹丸射孔能力预测
美国陆军要求通过使用实验测试和脆弱性/杀伤力(V/L)建模与仿真(M&S)对新武器和车辆系统进行评估。当前使用的M&S方法通常需要大量的时间和主题专业知识。这通常意味着,当需要解决战区遇到的新威胁时,无法提供快速的结果。最近,人们越来越关注M&S的快速结果,同时也能提供准确的结果。准确模拟弹道威胁穿透目标时的穿透和残余特性是确定对目标威胁有效性的极其重要的一部分。本文介绍了用于单片金属靶板穿孔预测的人工神经网络训练的初步结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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