Application of Computational Intelligence Methods for Predicting Soil Strength

Author:

Abbaspour-Gilandeh Yousef1,Abbaspour-Gilandeh Mohammadreza1

Affiliation:

1. University of Mohaghegh Ardabili , Ardabil , Iran

Abstract

Abstract The aim of this study was to make predictions for soil cone index using artificial neural networks (ANNs), adaptive neuro-fuzzy inference system (ANFIS) and a regression model. Field tests were conducted on three soil textures and obtained results were analyzed by application of a factorial experiment based on a Randomized Complete Block Design with five replications. The four independent variables of percentage of soil moisture content, soil bulk density, electrical conductivity and sampling depth were used to predict soil cone index by ANNs, ANFIS and a regression model. The ANNs design was that of back propagation multilayer networks. Predictions of soil cone index with ANFIS were made using the hybrid learning model. Comparison of results acquired from ANNs, ANFIS and regression models showed that the ANFIS model could predict soil cone index values more accurately than ANNs and regression models. Considering the ANFIS model, a novel result on soil compaction modeling, relative error (ε), and regression coefficient (R 2) were calculated at 2.54% and 0.979, respectively.

Publisher

Walter de Gruyter GmbH

Subject

Mechanical Engineering,Waste Management and Disposal,Agronomy and Crop Science

Reference21 articles.

1. ABBASPOUR-GILANDEH, Y. – ABBASPOUR-GILANDEH, M. 2019. Modelling soil compaction of agricultural soils using fuzzy logic approach and adaptive neuro-fuzzy inference system (ANFIS) approaches. In Modeling Earth Systems and Environment, vol. 5, no. 1, pp. 13–20.

2. ABBASPOUR-GILANDEH, Y. – ALIMARDANI, R. – KHALILIAN, A. – KEYHANI, A. R. – SADATI, S. H. 2006. Energy requirement of site-specific and conventional tillage as affected by tractor speed and soil parameters. In International Journal of Agriculture and Biology, vol. 8, no. 4, pp. 499–503.

3. ABBASPOUR-GILANDEH, Y. – AHANI, M. – ASKARI ASLI ARDEH, E. – RASOOLI-SHARABIANI, V. – SOFALIAN, O. 2010. Design, construction and evaluation of a tractor-mounted soil cone penetrometer with multiple-adjustable-probes. In Iranian Journal of Agricultural Engineering Research, vol. 11, no. 1, pp. 19–34.

4. ABBASPOUR-GILANDEH, Y. – KHALILIAN, A. – HASANKHANI, F. 2011. Use of soil EC data for zoning the production field by artificial neural network for applying the precision tillage. In Journal of Agricultural Machinery Science, vol. 7, no. 1, pp. 27–31.

5. ABBASPOUR-GILANDEH, Y. – RAHIMI-AJDADI, F. 2016. Design, construction and field evaluation of a multiple blade soil mechanical resistance sensor. In Soil and Tillage Research, vol. 157, pp. 93–100.

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