Dynamic Three-Dimensional Visualization System of Sea Area Flow Field Based on Virtual Reality Technology

Authors:Rui Li

Abstract


The dynamic three-dimensional visualization design of sea area flow field is carried out, and the ability of dynamic three-dimensional visualization feature analysis and visual reconstruction of sea area flow field is improved. A design method of sea area flow field dynamic three-dimensional visualization system based on virtual reality technology is proposed. The dynamic 3D visualization system of sea area flow field is based on embedded Visual C development software technology. combined with Vega Prime, the virtual reality design of sea area flow field dynamic 3D visualization system is carried out, and the visual simulation technology is used to simulate the dynamic 3D visualization system of sea area flow field. The system mainly includes the dynamic 3D visualization information acquisition module and database model of sea area flow field. The 3D reconstruction module and visual simulation module of the dynamic 3D visualization of the sea area flow field are carried out. The VR design of the dynamic three dimensional visualization system of the sea area flow field is carried out by using the VR program loading method. The 3D solid model construction and scene rendering of the dynamic three dimensional visualization system of the sea area flow field are carried out by using 3DStudio MAX software, and the optimization design of the dynamic three dimensional visualization system of the sea area flow field is realized. The simulation results show that the output stability of the dynamic three-dimensional visualization system of sea area flow field is good, and the ability of dynamic three-dimensional visualization of sea area flow field is strong.


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