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Revista Ciencias Técnicas Agropecuarias
versión On-line ISSN 2071-0054
Resumen
VEITIA RODRIGUEZ, Eduardo Román; MONTALVAN ESTRADA, Adelmo y MARTINEZ LOPEZ, Yoan. Systemic Election Indicators for Environmental Sustainability Land. Rev Cie Téc Agr [online]. 2014, vol.23, n.4, pp. 43-50. ISSN 2071-0054.
The article describes the method assumed in a research conducted to identify the Global Change Syndrome with more possibilities in an area of the Camagüey province to be used as a Systemic indicator of the Environmental Sustainability Management of the Land, based on the expanse of their presence. It is facing a complex problem emerging from the interaction Nature-Society which implies that the process for the election of the syndrome with more significance is of a high complex; argued by the existence of several criteria such as: soil degradation, climate change, loss of biodiversity, deforestation, lack of water, overexploitation, ocean pollution, and global development disparities what make necessary to use and integrate tools that enable to face this problem. The selected tools were: Methodology of the Concept of the Global Change Syndrome, Expert Analysis according to the Successive Intervals method or Green and Hierarchical Analysis AHP method, integrating a method of a great access with the combination of these, which allowed optimizing decisions concerning with the most appropriate syndrome among the most similar to the agricultural management despite their complex behavior. This constitutes a contribution to the methodology of the Global Change Syndrome that allows obtaining results with less uncertainty; all this has been an innovation to the methodology.
Palabras clave : global change; global change syndrome; soil environmental sustainability; concept methodology of the global change syndrome; method of successive intervals or method of Green; decision making; multicriteria problems; Hierarchical Analysis Process (AHP).