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Ballistic response of armour plates using Generative Adversarial Networks 被引量:1
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作者 s.thompson F.Teixeira-Dias +1 位作者 M.Paulino A.Hamilton 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2022年第9期1513-1522,共10页
It is important to understand how ballistic materials respond to impact from projectiles such that informed decisions can be made in the design process of protective armour systems. Ballistic testing is a standards-ba... It is important to understand how ballistic materials respond to impact from projectiles such that informed decisions can be made in the design process of protective armour systems. Ballistic testing is a standards-based process where materials are tested to determine whether they meet protection, safety and performance criteria. For the V50ballistic test, projectiles are fired at different velocities to determine a key design parameter known as the ballistic limit velocity(BLV), the velocity above which projectiles perforate the target. These tests, however, are destructive by nature and as such there can be considerable associated costs, especially when studying complex armour materials and systems. This study proposes a unique solution to the problem using a recent class of machine learning system known as the Generative Adversarial Network(GAN). The GAN can be used to generate new ballistic samples as opposed to performing additional destructive experiments. A GAN network architecture is tested and trained on three different ballistic data sets, and their performance is compared. The trained networks were able to successfully produce ballistic curves with an overall RMSE of between 10 and 20 % and predicted the V50BLV in each case with an error of less than 5 %. The results demonstrate that it is possible to train generative networks on a limited number of ballistic samples and use the trained network to generate many new samples representative of the data that it was trained on. The paper spotlights the benefits that generative networks can bring to ballistic applications and provides an alternative to expensive testing during the early stages of the design process. 展开更多
关键词 Machine learning Generative Adversarial Networks GAN Terminal ballistics Armour systems
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生油的煤
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作者 s.thompson 郝芳 《地质科技情报》 CAS CSCD 北大核心 1989年第S1期31-39,共9页
煤是东南亚许多第三纪盆地的油源岩。这些富氢、贫氧煤的先质体是滨海平原泥炭,它们主要发育于长年潮湿的热带气候区。在这些环境中,水流再改造作用使脂质组干酵根相对于镜质组干酪根富集。本文将对库塔伊盆地的中新世煤系生油岩的分布... 煤是东南亚许多第三纪盆地的油源岩。这些富氢、贫氧煤的先质体是滨海平原泥炭,它们主要发育于长年潮湿的热带气候区。在这些环境中,水流再改造作用使脂质组干酵根相对于镜质组干酪根富集。本文将对库塔伊盆地的中新世煤系生油岩的分布、岩石学及化学特征加以描述,对第三纪及同期的滨海平原沉积的研究可应用于挪威海区油源者的分布,这里还将就挪威海区各盆地含煤岩系的沉积环境与其可能生油和(或)气潜力的关系进行评述。Haltenbanken地区三叠纪—侏罗纪煤越拿近三角洲边缘可能越易于生油,编制岩相图可能有助于该区的石油勘探。 展开更多
关键词 源岩 干酪根 镜质组 含煤岩系 生油岩 三角洲相 岩相 化学特征 黑色泥岩 沉积环境
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