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GPU-enabled ensemble data assimilation for mesh-refined lattice Boltzmann method

Hasegawa, Yuta   ; Idomura, Yasuhiro   ; Onodera, Naoyuki   

We implemented the ensemble data assimilation (DA) method, the local ensemble transform Kalman filter (LETKF), into the mesh-refined lattice Boltzmann method (LBM) for turbulent flows. Both the LETKF and the mesh-refined LBM were fully implemented on GPUs, so that they are efficiently computed on modern GPU-based supercomputers. We examined the DA accuracy against the flow around a cylinder. The result showed that our method enabled accurate DA with spatially- and temporarily-sparse observation data; the error of the assimilated velocity field with the observation interval of $$tau_K/2$$ and the observation resolution $$D/16$$ (1.56% of the total computational grids) was smaller than the amplitude of the observation noise, where $$tau_K$$ is the period of the K$'{a}$rm$'{a}$n vortex and $$D$$ is diameter of the square cylinder.

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