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Predicting the effectiveness of blast wall barriers using neural networks

机译:使用神经网络预测爆炸墙屏障的有效性

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摘要

Blast damage assessment of buildings and structural elements requires an accurate prediction of the blast loads in terms of the peak pressures and impulses. Blast loadings on structures have typically been evaluated using empirical relationships. These relationships assume that there are no obstacles between the explosive device and the target. If a blast barrier is used to protect personnel or a structure behind it, the actual blast loading environment will be significantly reduced for some distance behind the barrier. This paper is concerned with an accurate prediction of the area of effectiveness behind the barrier using experimental data and a neural network-based model. To train and validate the neural network, a database is developed through a series of measurements of the blast environment behind the barrier. The principal parameters controlling the blast environment, such as wall height, distance behind the wall, height above ground, and standoff distance are used as the training input data. Peak overpressure and peak scaled impulse are used as the outputs in the neural network configuration. The trained and validated neural network is used to develop contour plots of overpressure and impulse adjustment factors to simplify the process of predicting the effectiveness of blast barriers. The developed model is also deployed in a stand-alone application that is used as a fast-running predictive tool for the blast overpressures and impulses behind the wall.
机译:建筑物和结构元件的爆炸破坏评估需要根据峰值压力和脉冲来准确预测爆炸载荷。通常使用经验关系来评估结构上的爆炸荷载。这些关系假定爆炸装置与目标之间没有障碍物。如果使用爆炸屏障来保护人员或其后方的结构,则在屏障后面一定距离处,实际的爆炸加载环境将大大降低。本文涉及使用实验数据和基于神经网络的模型对障碍物有效区域的准确预测。为了训练和验证神经网络,通过对屏障后面爆炸环境的一系列测量来开发数据库。控制爆炸环境的主要参数(例如墙高,墙后距离,地上高度和对峙距离)用作训练输入数据。峰值超压和峰值比例冲激用作神经网络配置中的输出。经过训练和验证的神经网络可用于开发超压和冲量调整因子的等高线图,从而简化预测爆炸屏障效果的过程。开发的模型还部署在独立的应用程序中,用作爆炸后的超压和冲击波的快速运行预测工具。

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