Physics-informed regularisation procedure in neural networks: An application in blast protection engineering

IF 2.1 Q2 ENGINEERING, CIVIL
J. J. Pannell, S. Rigby, G. Panoutsos
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引用次数: 14

Abstract

Machine learning offers the potential to enable probabilistic-based approaches to engineering design and risk mitigation. Application of such approaches in the field of blast protection engineering would allow for holistic and efficient strategies to protect people and structures subjected to the effects of an explosion. To achieve this, fast-running engineering models that provide accurate predictions of blast loading are required. This paper presents a novel application of a physics-guided regularisation procedure that enhances the generalisation ability of a neural network (PGNN) by implementing monotonic loss constraints to the objective function due to specialist prior knowledge of the problem domain. The PGNN is developed for prediction of specific impulse loading distributions on a rigid target following close-in detonation of a spherical mass of high explosive. The results are compared to those from a traditional neural network (NN) architecture and stress-tested through various data holdout approaches to evaluate its generalisation ability. In total the results show five statistically significant performance premiums, with four of these being achieved by the PGNN. This indicates that the proposed methodology can be used to improve the accuracy and physical consistency of machine learning approaches for blast load prediction.
神经网络中的物理规则化过程:在防爆工程中的应用
机器学习提供了实现基于概率的工程设计和风险缓解方法的潜力。将这些方法应用于防爆工程领域,将有助于制定全面有效的策略来保护受到爆炸影响的人员和结构。为了实现这一点,需要快速运行的工程模型来准确预测爆破载荷。本文提出了一种新的物理引导正则化程序的应用,该程序通过对目标函数实现单调损失约束来增强神经网络(PGNN)的泛化能力,这是由于专家对问题域的先验知识。PGNN是为预测球形高能炸药近距离爆轰后刚性目标上的比脉冲载荷分布而开发的。将结果与传统神经网络(NN)架构的结果进行比较,并通过各种数据保持方法进行压力测试,以评估其泛化能力。总的来说,结果显示了五个具有统计学意义的绩效溢价,其中四个由PGNN实现。这表明,所提出的方法可用于提高用于爆炸载荷预测的机器学习方法的准确性和物理一致性。
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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来源期刊
CiteScore
4.30
自引率
25.00%
发文量
48
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