| Literature DB >> 27247897 |
Mohamed Hanine1, Omar Boutkhoum1, Abdessadek Tikniouine1, Tarik Agouti2.
Abstract
Fuzzy multi-criteria group decision making (FMCGDM) process is usually used when a group of decision-makers faces imprecise data or linguistic variables to solve the problems. However, this process contains many methods that require many time-consuming calculations depending on the number of criteria, alternatives and decision-makers in order to reach the optimal solution. In this study, a web-based FMCGDM framework that offers decision-makers a fast and reliable response service is proposed. The proposed framework includes commonly used tools for multi-criteria decision-making problems such as fuzzy Delphi, fuzzy AHP and fuzzy TOPSIS methods. The integration of these methods enables taking advantages of the strengths and complements each method's weakness. Finally, a case study of location selection for landfill waste in Morocco is performed to demonstrate how this framework can facilitate decision-making process. The results demonstrate that the proposed framework can successfully accomplish the goal of this study.Entities:
Keywords: Fuzzy AHP; Fuzzy Delphi; Fuzzy TOPSIS; Fuzzy logic; Fuzzy multi-criteria group decision-making (FMCGDM); Web-based framework
Year: 2016 PMID: 27247897 PMCID: PMC4864887 DOI: 10.1186/s40064-016-2198-1
Source DB: PubMed Journal: Springerplus ISSN: 2193-1801
Computer systems for decision analysis for implementation of MCDA methods (Ishizaka and Nemery 2013)
| System/software | Fuzzy model | Free | Group model | MCDA methods |
|---|---|---|---|---|
| No-integrated approaches | ||||
| MakeItRational | No | Yes | Yes | AHP |
| Super decisions | No | Yes | No | ANP |
| RightChoice | No | Yes | No | MAUT |
| M-MACBETH | No | No | No | MACBETH |
| Visual PROMETHEE | No | Yes (limited to ten alternatives) | No | PROMETHEE I–II–III–IV–V |
| Electre III–IV software | No | Yes | No | Electre III–IV |
| Microsoft Excel solver | No | No | No | Goal programming |
| DEA software | No | Free and open source | No | DEA |
| Expert choice | No | Yes | Yes | AHP |
| Integrated approaches | ||||
| DecernsMCDA | Yes | No | No | AHP–MAVT–MAUT–PROMETHEE–FlowSort–TOPSIS |
| VISA | No | No | Yes | MAUT/MAVT |
Fig. 1The general framework proposed for the fuzzy FMCGDM model
Fig. 2Triangular fuzzy number (TFN)
Fig. 3Intersection between M1 and M2
Linguistic variables for ratings
| Linguistic scale | Triangular fuzzy number |
|---|---|
| Very bad (VB) | (0, 0, 1) |
| Bad (B) | (0, 1, 3) |
| Medium bad (MB) | (1, 3, 5) |
| Medium (M) | (3, 5, 7) |
| Medium good (MG) | (5, 7, 9) |
| Good (G) | (7, 9, 10) |
| Very good (VG) | (9, 10, 10) |
Fig. 4The home page of the FMCGDM framework
Fig. 5Sections and workflow of FMCGDM framework web site
Fig. 6Example of questionnaire
The criteria and sub-criteria for selecting location of landfill municipal solid waste
| Criteria | Sub-criteria |
|---|---|
| Economics criteria (C1) | Price of land (C11) |
| Available transportation (C12) | |
| Effect on economic progress of surrounding region (C13) | |
| Infrastructure cost (C14) | |
| Land cover and land use (C21) | |
| Available land (C2) | Haul distance (C22) |
| Local restrictions (C23) | |
| Distance from rivers (C31) | |
| Soils conditions and topography (C3) | Soil type (C32) |
| Ground water quality (C33) | |
| Distance from wells (C34) | |
| Distance from residential areas(C41) | |
| Social-cultural criteria (C4) | Distance from historical locations (C42) |
| Wind direction (C43) |
Fig. 7Results of the fuzzy AHP method
Fig. 8Results of the fuzzy TOPSIS method
Fig. 9Graph of sensitivity analysis