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Creation of the spatial metric for the image of an agricultural object

https://doi.org/10.26898/0370-8799-2021-1-12

Abstract

The analysis of various approaches to forecasting complex multifactorial systems in conditions of uncertainty of external conditions is presented. It is necessary to develop these approaches in order to create adequate models of agricultural activities for their effective planning and management. A distinctive feature of agricultural production is a critical dependence on environmental factors, which cannot be accurately predicted. Regression modeling and analysis of time series used at present to solve this problem in difficult cases do not result in an adequate forecast of the dynamics of an agricultural object. As an approach, it is proposed to use the construction of the "image" of the system. This approach is classified as "nature-like", as it simulates a way of decision-making by a specialist on the basis of accumulated experience and intuition. The key parameter of this construction will be the correct choice of the metric (coordinate system). This approach is illustrated by an example of creating an image of a two-dimensional phenomenon in a one-dimensional coordinate system. As a result, an image is understood as an image of reality in a vector space of a certain dimension. The image in the authors' view is a reflection of reality in an artificially created metric, more suitable for understanding and analysis, but retaining the main (important) features and functions of the original object. Artificial intelligence techniques can be seen as tools for image creation and analysis. An important characteristic of an image is its predictive power, i.e. the ability to use the image in order to predict the state of a real object in the future period. An image retains its predictive power if the forecast obtained using this image corresponds to the data obtained when observing a real object. The image is formed in a suitable metric for solving a specific problem. The key metric parameter of the image of agricultural activity, suitable for forecasting purposes, is the minimum dimension of the vector space used, at which the predictive power of the image is retained to solve the problem.

About the Authors

P. K. Kutsenogii
Siberian Federal Scientific Centre of Agro-BioTechnologies of the Russian Academy of Sciences
Russian Federation

Peter К. Kutsenogii, Candidate of Science in Physics and Mathematics, Lead Researcher

Krasnoobsk, Novosibirsk Region



V. K. Kalichkin
Siberian Federal Scientific Centre of Agro-BioTechnologies of the Russian Academy of Sciences
Russian Federation

Vladimir K. Kalichkin, Doctor of Science in Agriculture, Professor, Head Researcher

PO Box 463, SFSCA RAS, Krasnoobsk, Novosibirsk Region, 630501



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For citations:


Kutsenogii P.K., Kalichkin V.K. Creation of the spatial metric for the image of an agricultural object. Siberian Herald of Agricultural Science. 2021;51(1):99-109. https://doi.org/10.26898/0370-8799-2021-1-12

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ISSN 0370-8799 (Print)
ISSN 2658-462X (Online)