“…Since appearance, GPU has shown distinctive prospects across a large range of fields in practice, for instance, artificial intelligence, deep learning, molecular dynamics, quantum chemistry, high-energy physics, and likewise, in CFD applications. Researchers have made the technology of extension mature from single to several GPUs and even clusters [6][7][8], including the different speedups between explicit and implicit schemes [9], the variance among structured, unstructured and hybrid grids [10,11], the influence of single and double precision [12], as well as high-order schemes and high-fidelity methods attracting increasing attention [13][14][15][16][17][18]. Contributed by hardware's development, GPU has possessed the power of simulating more complicated problems, such as turbulence, where LES was studies earlier [19,20] but DNS was still in the infancy [21][22][23][24].…”