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Articles

Integration of ANP and Fuzzy set techniques for land suitability assessment based on remote sensing and GIS for irrigated maize cultivation

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Pages 1063-1079 | Received 09 Jun 2018, Accepted 13 Nov 2018, Published online: 10 Dec 2018
 

ABSTRACT

Land suitability assessment can inform decisions on land uses suitable for maximizing crop yield while making best use, but not impairing the ability of natural resources such as soil to support growth. We assessed the suitability of maize to be produce in 12,000 ha land of Dasht-e-Moghan region of Ardabil province, northwest of Iran. Suitability criteria included soil depth, gypsum (%), CaCO3 (%), pH, electrical conductivity (EC), exchangeable sodium percentage (ESP), slope (%) and climate data. We modified and developed a novel set of techniques to assess suitability: fuzzy set theory, analytic network process (ANP), remote sensing and GIS. A map of suitability was compared a map created using a traditional suitability technique, the square root method. The coefficient of determination between the land suitability index and observed maize yield for square root and ANP-fuzzy methods was 0.747 and 0.919, respectively. Owing to greater flexibility to represent different data sources and derive weightings for meaningful land suitability classes, the ANP-fuzzy method was a superior method to represent land suitability classes than the square root method.

Acknowledgments

The authors wish to express their sincere thanks to the Regional Water Organization of Ardabil Province, Islamic Republic of Iran for supporting field studies and samplings. We would also like to thank all the members of the soil science laboratory of faculty of agriculture, Universities of Tehran and Tabriz, for providing the facilities to carry out this work and for their suggestions. The authors are grateful to anonymous reviewers who considerably improved the quality of the manuscript.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This work is financially supported by Doctoral Fund of Ministry of Sciences, Research and Technology of Islamic Republic of Iran with grant number D/39/6463. The contribution from McDowell was funded by the Our Land and Water National Science Challenge (Ministry of Business, Innovation and Employment contract C10X1507).

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