Accuracy Loss Analysis in the Process of Cultivated Land Quality Data Gridding
Abstract
Spatial data gridding is one of the effective methods to solve the
multi-source data fusion. In view of the current problems in the process
of comprehensive analysis between the cultivated land quality data and
other multi-source data, This paper, by adopting the method of the Rule
of Maximum Area (RMA), converted the cultivated land quality data to the
grid scale and analyzed the accuracy loss in the process of cultivated
land quality data gridding in 6 grid scales (10M × 10M, 5M ×
5M, 3M × 3M, 2M × 2M, 1M × 1M, 30S × 30S). Some
conclusions have been reached. (1)The use of gridding methods will have
assigned any analysis units to the specified data grid scales, and it
provides a basis for spatial data integration, comprehensive analysis
and spatial models construction;(2) Grid scale accuracy is higher, the
original figure segmentation of cultivated land quality data is more
serious, and grid results is more accurate, but grid computing time is
increased step by step;(3) Through the study of the multistage of
cultivated land quality data grid, the smaller the grid scale, the
smaller the loss area of cultivated land quality, such as 10M × 10M
gridding results lead to the most loss area, and Each grade area loss
curve has a certain regularity;(4)From accuracy and computational
efficiency, the most appropriate grid scale choice is 1M × 1M grid
of 1:10000 cultivated land quality data of Daxing for the gridding
processing.
Domains
Computer Science [cs]Origin | Files produced by the author(s) |
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