Founder and publisher – Russian Scientific Research Institute of Land Improvement Problems
Land Reclamation and Hydraulic Engineering Melioraciâ i gidrotehnika
ISSN 2712-9357
RUS / ENG

NEURAL NETWORK MODELING OF CHICKPEA GRAIN YIELD ON AMELIORATED SOILS

Annotation

The aim of the research is to improve the management practices for chickpea growing upon ameliorated soils in typical climate conditions of arid steppe of Ukraine. For precision programming of chickpea grain yield depending on four factors (water consumption, mineral feterlizers, plant density, and the depth of soil primary tillage) generalized regression method of artificial neural network GRNN (4-54-2-1) with 54 neurons in the first buried layer and two neurons in the second layer was applied; productivity neural network training is 0.22; control – 0.37; test – 0.36; training error – 0.29; control – 0.45; test – 0.47. Multiple correlation considering non-linear patterns of the impact of studying factors on chickpea grain yield was 0.96. Asymmetry parameters of actual and calculated yield were 0.37 and 0.23, respectively. The accuracy of the simulation was 92.08 %. Cross-validation of predictive models was done using statistical criteria for significance: mean error, mean absolute error, standard error deviation, average relative error, correlation coefficient. For processing the modifications of such software as Statistica Advanced and Automated Neural Networks for Windows v.10 Ru were used. Non-linear patterns of the impact of studying factors on the dynamics of forming the chickpea grain yield were determined: water consumption – 37.01 %; mineral fertilizer applying – 22.88 %; plant density – 22.29 %; depth of the primary soil tillage – 17.82 %. The results of neural network modeling presented in the work can be used for four-factor precise programming of chickpea grain yield on ameliorative soils in typical climate conditions of arid steppe.

Keywords: neural network modeling, yield, chickpea, primary soil tillage, mineral fertilizer, plant density, water consumption.

Authors

Degree: Candidate of agricultural sciences (PhD of agricultural sciences)

Title: Associate professor

Position: Associate professor department of Agriculture, Scientific Secretary of the University

Affiliation: Kherson State Agricultural University

Affiliation address: str. R. Luxemburg, 23, Kherson, Ukraine, 73006

E-mail: lso2@yandex.ru

Position: Postgraduate student department of agriculture

Affiliation: Kherson State Agricultural University

Affiliation address: str. R. Luxemburg, 23, Kherson, Ukraine, 73006

E-mail: lso2@yandex.ru

Degree: Candidate of agricultural sciences (PhD of agricultural sciences)

Title: Associate professor

Position: Associate professor Chair of Geographic Information Systems and Technology

Affiliation: Kherson State Agricultural University

Affiliation address: str. R. Luxemburg, 23, Kherson, Ukraine, 73006

E-mail: pichura@yandex.ru

Download