Fast explosive performance prediction <i>via</i> small-dose energetic materials based on time-resolved imaging combined with machine learning
Xianshuang Wang(Beijing Institute of Technology), Yugui Yao(Beijing Institute of Technology), Ruibin Liu(Beijing Institute of Technology), Jianguo Zhang(Beijing Institute of Technology), Wei Guo(Hebei Medical University), Wenli Cao(Shenyang Pharmaceutical University), Tonglai Zhang(Beijing Institute of Technology), Xueyong Guo(Beijing Institute of Technology), Yage He(Beijing Institute of Technology), Qinghai Shu(Beijing Institute of Technology)
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