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Creating of a database for the APIS information system

Author Affiliations

  • 1Department of Geodesy and Geoinformatics, Tashkent Institute of Irrigation and Agricultural Mechanization Engineers, National Research University, Tashkent, Uzbekistan

Int. Res. J. Environment Sci., Volume 12, Issue (2), Pages 34-38, July,22 (2023)

Abstract

This article provides information on the creation of the APIS information system and database to provide pastureland users with information on pasture productivity and changes in natural external factors. Information in the system is provided by processing satellite images in GIS programs and using spectral indices. The use of the NDVI formula in assessing the condition of pasture lands, the use of field studies in determining the yield of plants, and the combination of the results of these methods are recommended to determine the state of productivity of pastures. Data on the Salinity index (SI) and Land surface temperature (LST) were also included using spectral indices to assess the effects of natural external factors on the productivity of pasture lands. Creation of the information system and database was developed taking into account the properties of these spectral indices. In the design of the database for the APIS system, the relational model was used as the database model, and the MySQL database management system was used to create the database. Reading and writing data from the database was carried out using the PHP programming language.

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