Abstract: In this paper, we discuss an unsupervised deep learning (DL) method for solving time domain electromagnetic simulations. Compared to the conventional approach, our method encodes initial ...
\draw[help lines, dashed, step=20] (0,0) grid (120,60); \foreach \x/\xval in {20/20, 40/40, 60/60, 80/80, 100/100, 120/120} { \draw[thick] (\x, 1) -- (\x, -1); \node ...
Abstract: 5-D data is the original recorded form in the 3-D seismic acquisition, which includes sufficient information from all five dimensions. However, environmental and economic logistic ...