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Data driven prediction of fragment velocity distribution under explosive loading conditions 被引量:2
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作者 Donghwan Noh Piemaan Fazily +4 位作者 Songwon Seo Jaekun Lee Seungjae Seo Hoon Huh Jeong Whan Yoon 《Defence Technology(防务技术)》 2025年第1期109-119,共11页
This study presents a machine learning-based method for predicting fragment velocity distribution in warhead fragmentation under explosive loading condition.The fragment resultant velocities are correlated with key de... This study presents a machine learning-based method for predicting fragment velocity distribution in warhead fragmentation under explosive loading condition.The fragment resultant velocities are correlated with key design parameters including casing dimensions and detonation positions.The paper details the finite element analysis for fragmentation,the characterizations of the dynamic hardening and fracture models,the generation of comprehensive datasets,and the training of the ANN model.The results show the influence of casing dimensions on fragment velocity distributions,with the tendencies indicating increased resultant velocity with reduced thickness,increased length and diameter.The model's predictive capability is demonstrated through the accurate predictions for both training and testing datasets,showing its potential for the real-time prediction of fragmentation performance. 展开更多
关键词 data driven prediction Dynamic fracture model Dynamic hardening model FRAGMENTATION Fragment velocity distribution High strain rate Machine learning
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Trajectory prediction algorithm of ballistic missile driven by data and knowledge
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作者 Hongyan Zang Changsheng Gao +1 位作者 Yudong Hu Wuxing Jing 《Defence Technology(防务技术)》 2025年第6期187-203,共17页
Recently, high-precision trajectory prediction of ballistic missiles in the boost phase has become a research hotspot. This paper proposes a trajectory prediction algorithm driven by data and knowledge(DKTP) to solve ... Recently, high-precision trajectory prediction of ballistic missiles in the boost phase has become a research hotspot. This paper proposes a trajectory prediction algorithm driven by data and knowledge(DKTP) to solve this problem. Firstly, the complex dynamics characteristics of ballistic missile in the boost phase are analyzed in detail. Secondly, combining the missile dynamics model with the target gravity turning model, a knowledge-driven target three-dimensional turning(T3) model is derived. Then, the BP neural network is used to train the boost phase trajectory database in typical scenarios to obtain a datadriven state parameter mapping(SPM) model. On this basis, an online trajectory prediction framework driven by data and knowledge is established. Based on the SPM model, the three-dimensional turning coefficients of the target are predicted by using the current state of the target, and the state of the target at the next moment is obtained by combining the T3 model. Finally, simulation verification is carried out under various conditions. The simulation results show that the DKTP algorithm combines the advantages of data-driven and knowledge-driven, improves the interpretability of the algorithm, reduces the uncertainty, which can achieve high-precision trajectory prediction of ballistic missile in the boost phase. 展开更多
关键词 Ballistic missile Trajectory prediction The boost phase data and knowledge driven The BP neural network
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Data-driven modeling on anisotropic mechanical behavior of brain tissue with internal pressure
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作者 Zhiyuan Tang Yu Wang +3 位作者 Khalil I.Elkhodary Zefeng Yu Shan Tang Dan Peng 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2024年第3期55-65,共11页
Brain tissue is one of the softest parts of the human body,composed of white matter and grey matter.The mechanical behavior of the brain tissue plays an essential role in regulating brain morphology and brain function... Brain tissue is one of the softest parts of the human body,composed of white matter and grey matter.The mechanical behavior of the brain tissue plays an essential role in regulating brain morphology and brain function.Besides,traumatic brain injury(TBI)and various brain diseases are also greatly influenced by the brain's mechanical properties.Whether white matter or grey matter,brain tissue contains multiscale structures composed of neurons,glial cells,fibers,blood vessels,etc.,each with different mechanical properties.As such,brain tissue exhibits complex mechanical behavior,usually with strong nonlinearity,heterogeneity,and directional dependence.Building a constitutive law for multiscale brain tissue using traditional function-based approaches can be very challenging.Instead,this paper proposes a data-driven approach to establish the desired mechanical model of brain tissue.We focus on blood vessels with internal pressure embedded in a white or grey matter matrix material to demonstrate our approach.The matrix is described by an isotropic or anisotropic nonlinear elastic model.A representative unit cell(RUC)with blood vessels is built,which is used to generate the stress-strain data under different internal blood pressure and various proportional displacement loading paths.The generated stress-strain data is then used to train a mechanical law using artificial neural networks to predict the macroscopic mechanical response of brain tissue under different internal pressures.Finally,the trained material model is implemented into finite element software to predict the mechanical behavior of a whole brain under intracranial pressure and distributed body forces.Compared with a direct numerical simulation that employs a reference material model,our proposed approach greatly reduces the computational cost and improves modeling efficiency.The predictions made by our trained model demonstrate sufficient accuracy.Specifically,we find that the level of internal blood pressure can greatly influence stress distribution and determine the possible related damage behaviors. 展开更多
关键词 data driven Constitutive law ANISOTROPY Brain tissue Internal pressure
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测量原理-数据-领域知识融合ECT重建方法
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作者 李珍兴 邵继续 +1 位作者 吴俊杰 任婷 《仪表技术与传感器》 CSCD 北大核心 2024年第4期112-121,共10页
低质量的图像制约了电容层析成像在多相流参数测量中的应用。针对该问题,引入了由深度卷积神经网络预测的数据驱动先验,提出了融合测量原理、数据驱动先验和稀疏先验的成像模型;建立了新的算法实现成像模型的高效求解。评估结果证实,与... 低质量的图像制约了电容层析成像在多相流参数测量中的应用。针对该问题,引入了由深度卷积神经网络预测的数据驱动先验,提出了融合测量原理、数据驱动先验和稀疏先验的成像模型;建立了新的算法实现成像模型的高效求解。评估结果证实,与其他的成像算法相比,新算法在细节重建、伪影去除和鲁棒性等方面具有显著优势。 展开更多
关键词 计算成像问题 数据驱动先验 深度卷积神经网络 电容层析成像 反问题 多相流测量
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基于隐式描述符的三维模型对应关系计算
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作者 HAYTHEM Alhag 杨军 《计算机工程》 CAS CSCD 北大核心 2022年第5期229-234,共6页
三维模型对应关系计算在自动驾驶、虚拟现实、智能交通等领域得到广泛关注与应用。三维模型在几何结构和尺度发生很大变化时,低层次几何信息描述符所提取的特征将不足,从而使得对应关系计算结果准确率不高。为此,提出一种通过引入先验... 三维模型对应关系计算在自动驾驶、虚拟现实、智能交通等领域得到广泛关注与应用。三维模型在几何结构和尺度发生很大变化时,低层次几何信息描述符所提取的特征将不足,从而使得对应关系计算结果准确率不高。为此,提出一种通过引入先验知识来完成三维模型对应关系计算的方法。利用深度学习网络模仿人类计算先验知识,以对模型各部分之间的几何相似性进行编码,解决模型在各部分发生显著变化时无法应用低层次几何信息计算模型间对应关系的问题。使用多视图卷积神经网络对模型各部分相应的视图进行预分割并标记,根据模型对应表面点之间的相似度隐式地计算数据驱动描述符,在数据驱动描述符的指导下计算最终的三维模型对应关系。实验结果表明,相较基于先验知识的计算方法,该方法能提高三维模型对应关系计算结果的准确率,且可有效降低测地误差。 展开更多
关键词 三维模型 对应关系 多视图卷积神经网络 数据驱动描述符 先验知识
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