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Machine learning methods for predicting the outcome of hypervelocity impact events

机译:预测超高速撞击事件结果的机器学习方法

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The outcome of projectile impacts on spaced aluminium armour (i.e. Whipple shield) at hypervelocity is traditionally predicted by semi-analytical equations known as ballistic limit equations (BLEs). For spherical aluminium projectiles impacting aluminium Whipple shields, the state-of-the-art BLE has been found to correctly reproduce the perforationon-perforation result of approximately 75% of tests contained within a database with over 1100 entries. For such high-dimensional, complex problems, machine learning methods may be a superior approach over such semi-analytical/empirical methods. Towards this end an artificial neural network (ANN) and support vector machine (SVM) have been developed to better classify the outcome of hypervelocity impact events on aluminium Whipple shields. The ANN was found to correctly reproduce the perforationon-perforation result of over 93% of the training exemplars, generalizing at 92.2% when applied with an optimized architecture. The SVM was not able to reach comparable levels of generalization error as the ANN, peaking at 83% after the removal of a small number of test exemplars which induced conflict within the SVM pattern recognition. Although providing a significant improvement in predictive accuracy over the conventional BLE, the performance of both the ANN and SVM were highly sensitive to the population density of the parameter space described by the training data. Within highly populated regions the qualitative trends of the machines are demonstrated to accurately identify patterns associated with projectile fragmentation and melting, while in sparsely populated regions the accuracy significantly decreases and the qualitative trends can become nonsensical. Further improvements in accuracy are limited by the inhomogeneous sampling of the parameter space defined by the current impact test database a problem expected to be typical of any terminal ballistics problem in which the cost of performing experiments limits their scope to, for example, materials and geometries of interest, impact conditions expected during operation, and a limited range about the perforation threshold (i.e. ballistic limit). A combined novelty-detecting neural net and heteroassociate neural net have been applied to iteratively improve the performance of the ANN without requiring an inordinate number of additional tests. This process, referred to as bootstrapping, has been successfully demonstrated through the design of 'optimized' Whipple shields for given impact conditions, hypervelocity impact testing of the designed shields, and re-training of the critic net to incorporate the results of the new impact tests. Crown Copyright 2015 Published by Elsevier Ltd. All rights reserved.
机译:传统上,弹丸撞击间隔开的铝质装甲(即Whipple盾)的结果通常是通过称为弹道极限方程(BLE)的半解析方程来预测的。对于撞击铝Whipple防护罩的球形铝弹,已发现最新的BLE可以正确再现数据库中包含大约1100个条目的测试的大约75%的穿孔/不穿孔结果。对于此类高维,复杂的问题,机器学习方法可能是优于此类半分析/经验方法的更好方法。为此,已经开发了人工神经网络(ANN)和支持向量机(SVM),以更好地对铝Whipple盾上的超高速撞击事件的结果进行分类。发现ANN可以正确地再现超过93%的训练样本的穿孔/不穿孔结果,当与优化的架构一起使用时,一般为92.2%。 SVM无法达到与ANN相当的泛化误差水平,在去除了少数在SVM模式识别中引起冲突的测试样本后,其峰值达到83%。尽管与传统BLE相比,预测精度有了显着提高,但ANN和SVM的性能对训练数据描述的参数空间的总体密度高度敏感。在人口稠密的地区,机器的定性趋势可以准确识别与弹丸破碎和熔化相关的模式,而在人口稀疏的地区,其准确性会大大降低,定性的趋势可能变得毫无意义。精度的进一步提高受到当前冲击试验数据库定义的参数空间的不均匀采样的限制,该问题有望成为任何终端弹道问题的典型问题,在该问题中,执行实验的成本将其范围限制在例如材料和几何形状上兴趣,操作过程中预期的冲击条件以及射孔阈值的有限范围(即弹道极限)。结合了新颖性检测神经网络和异构关联神经网络,可以迭代地提高ANN的性能,而无需进行过多的额外测试。通过针对给定的冲击条件设计“优化的” Whipple防护罩,对设计的防护罩进行超高速冲击测试以及对批评家网进行重新培训以纳入新的冲击结果,已成功证明了此过程,即引导过程测试。 Crown版权所有2015,由Elsevier Ltd.发行。保留所有权利。

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