REGIONAL ACTION PLAN SLOVENIA

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Revision as of 08:34, 14 July 2022 by Marek (talk | contribs) (Created page with "D.T3.1.5 UM, AE-ROBO May 2022 '''[https://wiki.precision-farm40.com/images/2/2b/D-T3.1.5-Regional_action_plan_-_SLO.pdf PDF version you can download here.]''' == Precision agriculture == Precision agriculture (PA), through the use of innovative technologies, is a farm management concept that can be used to increase long-term efficiency, manage uncontrolled change and reduce negative impacts on the environment. PA uses new technologies and innovations, combined with sit...")
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D.T3.1.5 UM, AE-ROBO May 2022

PDF version you can download here.

Precision agriculture

Precision agriculture (PA), through the use of innovative technologies, is a farm management concept that can be used to increase long-term efficiency, manage uncontrolled change and reduce negative impacts on the environment. PA uses new technologies and innovations, combined with site-specific agronomic expertise. Pa maximizes production efficiency and increases the quality of agricultural produce without increasing environmental burdens. A is defined as an integrated approach to agriculture, which is not only synonymous with precision agriculture technologies (PATs) but is also a systems approach to the whole agricultural production. PA has been developed through the expertise of different disciplines.


The main (overarching) objective is to reduce decision uncertainty in agricultural work processes by focusing on better understanding users and managing uncontrolled change. Suppose variability in the field is a significant source of uncertainty. In that case, it is essential to manage appropriate PA processes that can respond to variable factors at the level of spatial and temporal distribution.

The formation of the PA cycle is further defined by Comparetti (2011), who defines PA methods in the following stages (shown in the following diagram):

  • Data collection (measurement of spatially variable soil, crop, or yield parameters within the field and monitoring of local weather conditions)
  • Interpretation (integration and mapping of input/output applications with different models)
  • Application (application of variable inputs based on the results of data processing)