GIS and AHP multi-criteria analysis methods for the quality assessment of agricultural soils irrigated with wastewater: case of the Day River, Beni Mellal (Morocco)

2021 ◽  
Vol 14 (22) ◽  
Author(s):  
Abdessamad Hilali ◽  
Mohamed El Baghdadi ◽  
El Hassania El Hamzaoui
Evaluation ◽  
2021 ◽  
pp. 135638902110203
Author(s):  
Geert te Boveldt ◽  
Imre Keseru ◽  
Cathy Macharis

In spatial planning, the paradigm has shifted from positivist to deliberative approaches. Still, cost–benefit analysis remains the dominant evaluation method. Multi-criteria analysis is arguably more appropriate, as it allows for stakeholder participation. While there are dozens of ever more sophisticated multi-criteria analysis methods, their practicality as real-world learning tools has received little attention. The goal of this article is to assess the suitability of different multi-criteria analysis methods for deliberative planning. It presents a critical review of the logical-mathematical cores of the principal methods but also of the different participatory frameworks within which they can be applied. While mathematically sophisticated methods are valuable in well-defined problems with precise data available, we conclude that in the participatory and politically sensitive stages of the planning process, user-friendly and transparent methods are more appropriate and recommend the development of a method that supports the incremental improvement of design options rather than ranking alternatives.


Author(s):  
Abrar Alturkistani ◽  
Ching Lam ◽  
Kimberley Foley ◽  
Terese Stenfors ◽  
Elizabeth R Blum ◽  
...  

BACKGROUND Massive open online courses (MOOCs) have the potential to make a broader educational impact because many learners undertake these courses. Despite their reach, there is a lack of knowledge about which methods are used for evaluating these courses. OBJECTIVE The aim of this review was to identify current MOOC evaluation methods to inform future study designs. METHODS We systematically searched the following databases for studies published from January 2008 to October 2018: (1) Scopus, (2) Education Resources Information Center, (3) IEEE (Institute of Electrical and Electronic Engineers) Xplore, (4) PubMed, (5) Web of Science, (6) British Education Index, and (7) Google Scholar search engine. Two reviewers independently screened the abstracts and titles of the studies. Published studies in the English language that evaluated MOOCs were included. The study design of the evaluations, the underlying motivation for the evaluation studies, data collection, and data analysis methods were quantitatively and qualitatively analyzed. The quality of the included studies was appraised using the Cochrane Collaboration Risk of Bias Tool for randomized controlled trials (RCTs) and the National Institutes of Health—National Heart, Lung, and Blood Institute quality assessment tool for cohort observational studies and for before-after (pre-post) studies with no control group. RESULTS The initial search resulted in 3275 studies, and 33 eligible studies were included in this review. In total, 16 studies used a quantitative study design, 11 used a qualitative design, and 6 used a mixed methods study design. In all, 16 studies evaluated learner characteristics and behavior, and 20 studies evaluated learning outcomes and experiences. A total of 12 studies used 1 data source, 11 used 2 data sources, 7 used 3 data sources, 4 used 2 data sources, and 1 used 5 data sources. Overall, 3 studies used more than 3 data sources in their evaluation. In terms of the data analysis methods, quantitative methods were most prominent with descriptive and inferential statistics, which were the top 2 preferred methods. In all, 26 studies with a cross-sectional design had a low-quality assessment, whereas RCTs and quasi-experimental studies received a high-quality assessment. CONCLUSIONS The MOOC evaluation data collection and data analysis methods should be determined carefully on the basis of the aim of the evaluation. The MOOC evaluations are subject to bias, which could be reduced using pre-MOOC measures for comparison or by controlling for confounding variables. Future MOOC evaluations should consider using more diverse data sources and data analysis methods. INTERNATIONAL REGISTERED REPORT RR2-10.2196/12087


2021 ◽  
Author(s):  
Wojciech Kamiński

AbstractThis article considers factors of number of sidings and the occurrences of transit traffic and presents a comparison of selected railway lines in Poland. Multi-criteria analysis methods were used, like the zero unitarization method and the technique for order preference by similarity to ideal solution method. The comparison made it possible to arrange the selected railway lines in the order from the most to the least useful. The obtained results showed also that zero unitarization method is limited only to the analysis of all lines on which transit traffic occurs or all lines without transit traffic. The comparison of all lines is possible using the technique for order preference by similarity to ideal solution method.


Water ◽  
2019 ◽  
Vol 11 (3) ◽  
pp. 501 ◽  
Author(s):  
Barbara Karleuša ◽  
Andreja Hajdinger ◽  
Lidija Tadić

Irrigated agriculture has considerable impacts on the environment. To minimize negative effects and maximize positive effects, it is necessary to provide comprehensive analyses beyond the strictly technical domain. In this study, we apply a methodology for determining priorities in implementing irrigation plans using multi-criteria analysis methods on a specific case study area in the sub-catchment area of the Orljava River in Požega–Slavonia County, Croatia. Five potential irrigation areas (Orljava–Londža, Pleternica, Ovčare, Treštanovci, and Venje–Hrnjevac) were analyzed according to five selected criteria: environmental protection, water-related (four sub-criteria), social, economic, and time criteria with different criteria importance (weight). The aim of this study was to confirm the adequacy of using six multi-criteria analysis (MCA) methods (mostly used: PROMETHEE, AHP, ELECTRE TRI, and the less used: DEXi, PRIME, and PCA) in determining priorities for fulfilling irrigation plans, present models for preparation of the input data, apply certain methods, and compare the results on the selected case study area. The methods’ adequacy was confirmed during the research. Five of the six MCA methods identified the Ovčare area as the most appropriate for irrigation development (i.e., it has priority in implementing the irrigation plan). According to one (AHP) of the six methods, Orljava–Londža has more advantages over other areas. All MCA methods, except PCA, chose Venje–Hrnjevac as the least advisable (last to be implemented) alternative. Conclusions from this research confirm findings from recently published research regarding the application of MCA on water management problems.


2017 ◽  
Vol 11 (1) ◽  
pp. 48-63 ◽  
Author(s):  
Asli Kumcu ◽  
Klaas Bombeke ◽  
Ljiljana Platisa ◽  
Ljubomir Jovanov ◽  
Jan Van Looy ◽  
...  

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