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Big Data in Experimental Mechanics and Model Order Reduction: Today's Challenges and Tomorrow's Opportunities

机译:实验力学中的大数据和模型降阶:当今的挑战和明天的机遇

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Since the turn of the century experimental solid mechanics has undergone major changes with the generalized use of images. The number of acquired data has literally exploded and one of today's challenges is related to the saturation of mining procedures through such big data sets. With respect to digital image/volume correlation one of tomorrow's pathways is to better control and master this data flow with procedures that are optimized for extracting the sought information with minimum uncertainties and maximum robustness. In this paper emphasis is put on various hierarchical identification procedures. Based on such structures a posteriori model/data reductions are performed in order to ease and make the exploitation of the experimental information far more efficient. Some possibilities related to other model order reduction techniques like the proper generalized decomposition are discussed and new opportunities are sketched.
机译:自世纪之交以来,随着图像的普遍使用,实验固体力学发生了重大变化。采集到的数据数量激增,当今的挑战之一与通过如此大数据集进行挖掘程序的饱和有关。关于数字图像/体积相关性,未来的途径之一是通过优化的过程更好地控制和掌握此数据流,该过程经过优化,可以最小的不确定性和最大的鲁棒性提取所需信息。在本文中,重点放在各种层次识别程序上。基于这样的结构,进行后验模型/数据约简,以简化和使实验信息的利用更加有效。讨论了其他与模型降阶技术有关的可能性,例如适当的广义分解,并勾勒出新的机会。

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    Univ Paris Saclay, CNRS, ENS Paris Saclay, LMT, Cachan, France;

    Univ Paris Saclay, CNRS, ENS Paris Saclay, LMT, Cachan, France|Inst Univ France, Paris, France;

    Univ Paris Saclay, CNRS, ENS Paris Saclay, LMT, Cachan, France;

    Univ Paris Saclay, CNRS, ENS Paris Saclay, LMT, Cachan, France;

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