Proposal for Automatic Processing of Data Generated by Agrometeorological Station

Proposal for Automatic Processing of Data Generated by Agrometeorological Station

Authors

  • Anton Sotirov Institute of agriculture-Kyustendil, Agricultural Academy-Sofia
  • Krasimir Sotirov Language School "Dr. Petar Beron" – Kyustendil, Bulgaria

DOI:

https://doi.org/10.59957/see.v10.i1.2025.1

Keywords:

agriculture, meteorology, meteo- station, optimization, statistics

Abstract

The study proposes optimization of the meteorological system Meteobot® and its eponymous software version 1.6. by additionally installing the XLStat mathematical statistics application to Microsoft Excel spreadsheets. The application will optimize the operation of the automatic meteorological and soil monitoring system through a wide range of statistical analyses, such as cluster analysis, dendrograms by similarities and differences of data, factor analysis, variations, determination of correlation coefficient, correlation matrix, scattering indicators, dispersion, correlation analysis, extrapolation and interpolation, etc.

Author Biography

Krasimir Sotirov, Language School "Dr. Petar Beron" – Kyustendil, Bulgaria

Student

References

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Published

2025-12-30
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