Meshing Scheme Research of Our National Mid-low Latitude region

Our country has massive land. Worldwide, our territory locates at the Northern Hemisphere in the east of Eurasia with extremely large south-north latitude span. Most parts locate in mid-latitude region, in order to record geographical spatial data better. This paper refers to the basic thought of GeoFusion model with combination of our national practical application features, and proposes subdivision scheme of global spatial information multilevel mesh with our national geographic features into consideration. The related model algorithm for coding scheme and positioning change realize space expression of continuity, gradation and dynamic state of global geographic information, this scheme is an excellent spatial information multilevel mesh.

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