MATHEMATICAL PROGRAMMING METHODS IN OPTIMIZING AGRICULTURAL CLUSTER SYSTEMS: OPTIMIZATION BASED ON LINEAR AND NONLINEAR MODELS

Authors

  • Juraev Farrukh Dustmirzayevich University of Economics and Pedagogy NTT PhD in Economics, Professor Author

Keywords:

Agrocluster, linear programming, nonlinear programming, optimization, mathematical modeling, resource allocation, production efficiency, agriculture, logistics.

Abstract

This article analyzes the use of mathematical programming methods, in particular linear and nonlinear models, in optimizing regional agrocluster systems. Based on the model, the economically optimal organization of production and processing processes, the possibilities of reducing production costs and increasing profits are assessed. The results of the study confirm that mathematical modeling methods can be used to increase the efficiency of the agrocluster system.

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References

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Published

2025-03-13