Problem statement: Evaluating land suitability and selecting crops in modern agriculture is of critical importance to every organization. This is because the narrower area of land, the more effectiveness in planting is required in accordance with the desires of the land. Process of evaluating land suitability class and selecting plants in accordance with decision marker's requirements is complex and unstructured. Approach: This study presented a fuzzy-based Decision Support System (DSS) for evaluating land suitability and selecting crops to be planted. A fuzzy rules was developed for evaluating land suitability and selecting the appropriate crops to be planted considering the decision maker's requirements in crops selection with the efficient use of the powerful reasoning and explanation capabilities of DSS. The idea of letting the problem to be solved determines the method to be used was incorporated into the DSS development. Results: As a result, effective decisions can be made for land suitability evaluation and crop selection problem. An example was presented to demonstrate the applicability of the proposed DSS for solving the problem of evaluating land suitability and selecting crops in real world situations. Conclusion: Fuzzy based model can represent and manipulate agriculture knowledge that is incomplete or vague and it can be used to determine land limitation rating. The rating value was used to determine limitation level of the land and used to determine what the most suitable crops to cultivate for the existing condition of the land.
[1]
Florent Joerin,et al.
Using GIS and outranking multicriteria analysis for land-use suitability assessment
,
2001,
Int. J. Geogr. Inf. Sci..
[2]
N. Lorentzos,et al.
An Integrated Expert Geographical Information System for Soil Suitability and Soil Evaluation
,
1997
.
[3]
R. Brink,et al.
A framework for land evaluation
,
1977
.
[4]
P. N. Smith,et al.
Fuzzy Evaluation of Land-Use and Transportation Options
,
1992
.
[5]
J. B. Kiszka,et al.
The influence of some fuzzy implication operators on the accuracy of a fuzzy model-part II
,
1985
.
[6]
S. Ritung,et al.
Land suitability evaluation with a case map of Aceh Barat district
,
2007
.
[7]
David G. Rossiter,et al.
Automated Land Evaluation System : ALES version 4.65 user's manual
,
1997
.
[8]
Fakhreddine O. Karray,et al.
Soft Computing and Intelligent Systems Design, Theory, Tools and Applications
,
2006,
IEEE Transactions on Neural Networks.
[9]
Mao-Jiun J. Wang,et al.
A comprehensive supply chain management project selection framework under fuzzy environment
,
2007
.
[10]
Li-Xin Wang,et al.
A Course In Fuzzy Systems and Control
,
1996
.
[11]
Efrem G. Mallach,et al.
Decision Support and Data Warehouse Systems
,
2000
.