Geography Reference
In-Depth Information
PE is calculated as: the percent proportion of the variation between the remotely
sensed area estimate (predicted) and the surveyed area estimate (observed) to that
of the surveyed area estimate (observed) for each method for each year within a
state administration's boundaries.
After finishing the automated classification process, and obtaining the results
and evaluations, results were compared with statistical records on the level of the
three governorates (Aleppo, Arraqqa, and Deir Azzour), on the administrative
region level (e.g., Al-Bab) in each governorate, and on the level of the natural
borders of agricultural stabilization zones within the borders of the three gov-
ernorates and their administrative regions. Finally, these statistical records were
reported on the level of the irrigation agricultural projects' borders.
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