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Neural network method as means of processing experimental data on grain crop yields

А. Г. Никифоров, A V Kuchumov, Sergei Terentev, Inessa Karamulina, И.М. Романова, Sergei Glushakov

2020E3S Web of Conferences17 citationsDOIOpen Access PDF

Abstract

In the work based on agroecological and technological testing of varieties of grain crops of domestic and foreign breeding, winter triticale in particular, conducted on the experimental field of the Smolensk State Agricultural Academy between 2015 and 2019, we present the methodology and results of processing the experimental data used for constructing the neural network model. Neural networks are applicable for solving tasks that are difficult for computers of traditional design and humans alike. Those are processing large volumes of experimental data, automation of image recognition, approximation of functions and prognosis. Neural networks include analyzing subject areas and weight coefficients of neurons, detecting conflict samples and outliers, normalizing data, determining the number of samples required for teaching a neural network and increasing the learning quality when their number is insufficient, as well as selecting the neural network type and decomposition based on the number of input neurons. We consider the technology of initial data processing and selecting the optimal neural network structure that allows to significantly reduce modeling errors in comparison with neural networks created with unprepared source data. Our accumulated experience of working with neural networks has demonstrated encouraging results, which indicates the prospects of this area, especially when describing processes with large amounts of variables. In order to verify the resulting neural network model, we have carried out a computational experiment, which showed the possibility of applying scientific results in practice.

Topics & Concepts

Artificial neural networkComputer scienceField (mathematics)Artificial intelligenceOutlierData processingAutomationMachine learningData miningPattern recognition (psychology)MathematicsEngineeringDatabasePure mathematicsMechanical engineeringAnimal Nutrition and HealthTransportation Systems and LogisticsMechanical Systems and Engineering
Neural network method as means of processing experimental data on grain crop yields | Litcius