Volume 18 , Issue 4 , PP: 323-333, 2022 | Cite this article as | XML | Html | PDF | Full Length Article
F. Viscaino Naranjo 1 * , A. R. León Yacelga 2 , B. E. Villalta Jadan 3
Doi: https://doi.org/10.54216/IJNS.180427
Potential mechanisms for dealing with water resources are provided by water resource management (WRM). To determine agricultural water resources, a new multi-criteria water resource management approach was created in this work. The management of agricultural water resources has become a major issue in the current circumstances. To create this circumstance, a multi-criteria approach is required. We were able to address a real-world water resource management issue using the suggested multi-criteria decision-making technique. The neutrosophic TOPSIS environment has been taken into account in this decision-making dilemma. Summertime water demand is high, and towards the end of summer, when monsoon season arrives, water demand is low in the agricultural field. During the monsoon season, it is not uncommon for rain to fall just in parts. In agriculture, growing crops during the monsoon season was difficult at the time. As a result, the nature of the water shortage in this area is non-linear and unclear. Because of this, we suggested an MCDM technique for WRM issues in a neutrosophic TOPSIS -environment context.
Neutrosophic algebra , TOPSIS , Near-Subtraction , Semigroups ,
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