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Proceeding Paper

Seawater Intrusion Vulnerability Assessment Using the GALDIT and the Modified GALDIT–AHP Methods: Application in the Coastal Almyros Aquifer, Thessaly, Greece †

1
Laboratory of Hydraulic Works and Environmental Management, School of Rural and Surveying Engineering, Aristotle University of Thessaloniki, 54124 Thessaloniki, Greece
2
Laboratory of Hydrology and Aquatic Systems Analysis, Department of Civil Engineering, School of Engineering, University of Thessaly, 38334 Volos, Greece
*
Author to whom correspondence should be addressed.
Presented at the 7th International Electronic Conference on Water Sciences, 15–30 March 2023; Available online: https://ecws-7.sciforum.net/.
Environ. Sci. Proc. 2023, 25(1), 15; https://doi.org/10.3390/ECWS-7-14174
Published: 3 April 2023
(This article belongs to the Proceedings of The 7th International Electronic Conference on Water Sciences)

Abstract

:
In the rural and coastal Almyros basin in Magnesia, Greece, the objective of the current study is the assessment of aquifer vulnerability to seawater intrusion using the GALDIT approach. The Almyros aquifer system’s quality and quantity have declined as a result of unsustainable groundwater abstraction for irrigation. The Analytical Hierarchy Process (AHP) of Multicriteria Analysis has been used for the modification of the GALDIT index based on the statistics of experts’s responses to questionnaires on the influence of hydrological, hydrogeological, and other parameters. For all methodologies and time periods, the aquifer’s coastline section had high susceptibility levels, whereas the northeast and southeast had lower values. The most vulnerable area of the aquifer changes over the various time periods of analysis.

1. Introduction

In the study area, no previous studies have been carried out to assess the vulnerability of the aquifer to seawater intrusion. The over-pumping of water reserves to meet irrigation needs has degraded the quality and quantity of water in the Almyros aquifer. The assessment of vulnerability aims at better management of water resources in the area and protection of the Almyros aquifer system from further degradation [1]. The Almyros basin, which is located at the southernmost edge of the Thessalian plain, is a component of the single Almyros-Pagasitikos basin. The study area’s aquifer covers 293 km2 and has an average elevation of around 108 m and slope of about 5.56%. The Almyros basin experiences a semi-arid Mediterranean environment with 500 mm of annual rainfall on average and an average yearly temperature of 16.5 °C [2]. Five categories have been used to group the most significant geological components of the Almyros aquifer: clay (Neogene), clay–gravel–sand (Neogene), sand (Quaternary), clay–sand (Neogene), and limestone [3]. Following the shift in topographic elevation, the coastal region of the Almyros basin is composed of sandy permeability materials and clay lenses towards the western half of the aquifer. The aquifer’s hydrogeological zones are made up of semi-permeable Neogene formations and permeable Quaternary formations [4]. With a geographical average value of 2.3 m per day, hydraulic conductivity values range from 0.1 to 18.7 m per day. In this work, the weights of the parameters are provided using the standard/typical GALDIT method, and the weights are estimated using the Analytical Hierarchy Process (AHP) from the responses of 15 experts, using the GALDIT-AHP method, over three time periods in the Almyros Basin aquifer. The results on seawater intrusion vulnerability are compared and discussed.

2. Materials and Methods

2.1. Method GALDIT

The GALDIT vulnerability index approach, which was put forth by Lobo-Ferreira and associates [4], determines how vulnerable coastal aquifers are to the salt wedge. The following phrases are abbreviated as the GALDIT method: (a) groundwater occurrence, (b) aquifer hydraulic conductivity, (c) depth to groundwater (level above the sea), (d) distance from the shore to the beach, (e) effects of present seawater intrusion, and (f) aquifer thickness; these are the six factors that must be considered. The three components of the procedure are the calibration of the parameters, the classes of the parameters, and the weights of the parameters. The method was first applied to the Bardez aquifer, Goa (India) [5]. The vulnerability assessment index is calculated from the mathematical type:
G A L D I T = i = 1 6 { ( W i ) R i } i = 1 6 W i
where Wi = the weights of the parameters, Ri = the rating of the parameters. The value range of the index is 2.5–10. Indicators with higher values indicate greater exposure to seawater incursion, whereas those with lower values indicate less exposure.

2.2. AHP Method

Saaty first developed the Analytical Hierarchy Process (AHP) in the 1970s. Since then, it has proven to be a useful tool for creating and modeling scenarios with various, frequently at odds, objectives. The method solves a problem in 6 stages [6] which are: (1) segmentation of the problem, (2) prioritization of objectives, criteria and sub-criteria and alternatives, (3) creation of the table of paired observations, (4) estimation of relevant parameters, (5) estimation of consistency, and finally, (6) general comparison of the method. The reliability of the method is based on the consistency ratio (CR). If CI/RI < 0.10, the degree of consistency is satisfactory, so there is little subjectivity, but if CI/RI is greater than 0.10, there may be major discrepancies and Analytic Hierarchy Method (AHP) conclusions may not be significant. In the context of this work, for each vulnerability method, the corresponding tables of pairwise tables were created and completed by 15 water resources experts including university professors, researchers, and postdocs [1].

2.3. Spearman’s Rank Correlation

The Spearman correlation coefficient is named after Charles Spearman and is denoted by the Greek letter ρ (rho) or rs. It is a non-parametric method, which is applied when the parametric conditions are not satisfied (i.e., normality and linearity, the range of observations and the existence of an iso-space scale). The magnitude of agreement is expressed by the sign and magnitude of the Spearman correlation statistic. The equation for calculating the Spearman correlation coefficient is as follows:
r h o = 6   δ i 2 ν ( ν 2 1 )
where ν is the number of pairs, ν must be ≥ 4, and δi is the difference in order between the first and second measurements (pairs of measurements). The hypotheses tested when applying the Spearman correlation index are H0: ρ = 0 (lack of correlation between observations) and H1: ρ ≠ 0 (existence of correlation between observations). A frequently used significance level is α = 0.05. That is, there is a 95% probability that each observed statistical difference is real and not due to chance [7].

3. Results and Discussion

3.1. Calculation of Vulnerability Index GALDIT and Modified GALDIT–AHP

The method was applied for all three study periods 1992–1997, 2004–2009, and 2010–2015. Therefore, parameters that do not remain constant per time period, such as the hydraulic load above sea level, the existing salinity condition, and the aquifer thickness, were calculated for each period using GIS tools. The type of aquifer, based on the geological and hydraulic conditions prevailing in the study area, was considered alluvial/unconfined. In the Almyros basin, as already mentioned, hydraulic conductivity information of the unsaturated zone is provided by the European Soil Data Center (ESDAC) [8]. For the study area, hydraulic conductivity varies between 0.05 and 18.701 m/day or 2.29 m/day on average. For the period 1992–1997, the hydraulic head above sea level was an average of 65.44 m and a maximum value of 217.59 m, in the period 2004–2009 it was 66.85 m and a maximum value of 218. In the period of 2010–2015, it was 66.40 m and a maximum value of 217.39 m. The very low values are located NE–SE of the Almyros basin, near the basin’s coastline region, while the high values of the hydraulic load increase towards the center of the aquifer, moving in the direction of the Holorema stream. The highest concentrations of chlorides measured at the measurement sites are shown on the SE side of the basin, in the Xirorema and Platanorema sub-basins. The average thickness for the aquifer media is 29 m but is not constant in all locations in the Almyros basin. The Almyros basin’s map and the study area are depicted in Figure 1.
The weights of the parameters for the statistical indicators median, average, and mode, as determined by the statistical analysis of the 15 experts’ responses, were taken from the GALDIT–AHP method’s study of the data. The consistency ratio (CR) for each statistical indicator is less than 10%. Specifically, the consistency ratios of the AHP Median, AHP Average, and AHP Mode are 2%, 0.43%, and 8.8%, respectively. The weights of the parameters for each statistical index are presented in Table 1.
The GALDIT method assigns the greatest weights to the parameters of distance from the coast (D) and hydraulic load above the sea (L). The modified GALDIT–AHP assigns the greatest weights to the parameters of the groundwater occurrence (G) and the aquifer hydraulic conductivity (A). The resulting maps for all the methods for the evaluated time periods are presented in Figure 2.
The areas in which a greater extent of high and medium vulnerability is observed are in the Kazani, Lahanorema, and Xirorema sub-basins. In the period 1992–1997, the total percentage of high vulnerability among the indexes covers 1.98% to 3.5% of the aquifer or an area of 5.7 km2 to 10 km2. The lowest overall percentage is estimated by the GALDIT–AHP Average and Median indices. Average vulnerability across indices ranges from 7.2% to 8.7% or an area of 20.7 km2 to 24.8 km2. The lowest percentage of average vulnerability was estimated with the weights of the GALDIT index, while the highest percentage of average vulnerability was estimated with the weights of the AHP Mode index. Low vulnerability ranges from 89.17% to 89.92% or an area of 255 km2 to 258 km2. In the period 2004–2009, the total percentage of high vulnerability among the indices covers 1.94% to 3.6% of the aquifer or an area of 5.6 km2 to 10.3 km2. The lowest overall rate is estimated by the GALDIT–AHP Average and Median indices. Average vulnerability across indices ranges from 8.1% to 9.6% or an area of 23.3 km2 to 27.6 km2. The lowest percentage of average vulnerability was estimated with the weights of the GALDIT index, while the highest percentage of average vulnerability was estimated with the weights of the AHP Mode index. Low vulnerability ranges from 88.2% to 88.8% or an area of 253 km2 to 255 km2. In the period 2010–2015, the total percentage of high vulnerability among the indices covers 2% to 3.6% of the aquifer or an area of 5.9 km2 to 10.2 km2. The lowest overall percentage is estimated by the GALDIT–AHP Average and Median indices. Average vulnerability across indices ranges from 9.1% to 10.4% or an area of 26.2 km2 to 30 km2. The lowest percentage of average vulnerability was estimated with the weights of the GALDIT index, while the highest percentage of average vulnerability was estimated with the weights of the AHP Mode index. Low vulnerability ranges from 87.3% to 87.7% or an area of 251 km2 to 252 km2. Summarized statistics of the evaluation period (1992–2015) are presented in Table 2.

3.2. Sperman Rank Correlation

To test the correlation between salinity concentrations (ppt) and GALDIT seawater intrusion index values for all three time periods, the Spearman correlation coefficient was used. Salinity values and the GALDIT vulnerability index were extracted from the sampling sites using the Extract multi values to points tool. The Spearman correlation test was then performed using the SPSS statistical software. Then, using the SPSS statistical package, the Spearman correlation test followed. Summarized statistics of the evaluation period are presented in Table 3.

4. Conclusions

In all the study periods (1992–1997, 2004–2009, and 2010–2015) a gradual increase in high and medium vulnerability values (0.5–2%) was observed, a fact due to changing parameters such as the hydraulic load above sea level, the existing salinity condition, and the aquifer thickness, which change with time. For the GALDIT index, the standard/typical weights and the weights of the AHP Median and AHP Average statistical indicators showed in all study periods a similar overall rate of high vulnerability with a difference of 0.5–1%. Additionally, there are marginal differences in the correlation coefficients between the GALDIT indices and the observed data, with the GALDIT index generated using standard weights displaying the highest connection throughout all research periods. As a result, when compared to the other indices, the standard weights of the GALDIT index slightly better represent the vulnerability assessment both spatially and statistically. The GALDIT method assigns the greatest weights to the parameter of distance from the coast (D) and to the parameter of hydraulic load above the sea (L).

Author Contributions

Conceptualization, methodology, supervision, writing—review and editing, A.L. (Athanasios Loukas); methodology, software, data curation, writing—original draft preparation, writing—review and editing, S.L.; writing—review and editing, A.L. (Aikaterini Lyra). All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

This research was carried out in the framework of the master’s thesis of S. Lepuri, Laboratory of Hydraulic Works and Environmental Management, School of Rural and Surveying Engineering, Aristotle University of Thessaloniki.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Lepuri, S. Vulnerability of Aquifers of Agricultural and Coastal Basins Due to Nitrate Pollution and Seawater Intrusion. The case of Almyros Basin, Magnesia, Greece. Master Thesis, School of Rural and Surveying Engineering, Aristotle University of Thessaloniki, Thessaloniki, Greece, 2021. [Google Scholar] [CrossRef]
  2. Lepuri, S.; Loukas, A.; Lyra, A.; Voudouris, K. Aquifer vulnerability to nitrate pollution using the canter and drastic methods: The case of almyros in thessaly, greece. Presented at the International Hydrogeological Congress of Greece and Cyprus, Nicosia, Cyprus, 20–22 March 2022. [Google Scholar]
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  4. Lyra, A.; Loukas, A.; Sidiropoulos, P.; Mylopoulos, N.; Voudouris, K. Seawater intrusion in Almyros aquifer, in Thessaly, Greece. Presented at the International Hydrogeological Congress of Greece and Cyprus, Nicosia, Cyprus, 20–22 March 2022. [Google Scholar]
  5. Chachadi, A.; Lobo-Ferreira, J.P. Assessing aquifer vulnerability to sea-water intrusion using GALDIT method: Part 2–GALDIT Indicators Description. Presented at the 4th Inter Celtic Colloquium on Hydrology and Management of Water Resources, Guimaraes, Portugal, 11–13 July 2005. [Google Scholar]
  6. Saaty, T.L. What is the analytic hierarchy process? In Mathematical Models for Decision Support; Mitra, G., Greenberg, H.J., Lootsma, F.A., Rijkaert, M.J., Zimmermann, H.J., Eds.; Springer: Berlin/Heidelberg, Germany, 1988; Volume 48, pp. 109–121. [Google Scholar]
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Figure 1. Map of the Almyros basin including the aquifer and the sub-basins.
Figure 1. Map of the Almyros basin including the aquifer and the sub-basins.
Environsciproc 25 00015 g001
Figure 2. Vulnerability maps of Almyros aquifer with the methods of GALDIT and modified GALDIT–AHP for the periods 1992–1997, 2004–2009, and 2010–2015.
Figure 2. Vulnerability maps of Almyros aquifer with the methods of GALDIT and modified GALDIT–AHP for the periods 1992–1997, 2004–2009, and 2010–2015.
Environsciproc 25 00015 g002
Table 1. The weights of each parameter for the GALDIT method and the modified GALDIT–AHP method.
Table 1. The weights of each parameter for the GALDIT method and the modified GALDIT–AHP method.
ParametersTypicalAHP MedianAHP AverageAHP Mode
Groundwater occurrence0.0600.2760.2820.235
Aquifer hydraulic conductivity0.2000.2630.2460.235
Level above the sea0.2660.1900.1700.214
Distance from the shore0.2660.1180.1460.127
Impact of existing seawater intrusion0.0600.0810.0860.099
Thickness of the aquifer0.1330.0720.0700.090
Table 2. Percentage (%) of the Almyros aquifer under various classes of vulnerability (%) with the typical GALDIT and GALDIT–AHP methods for the period 1992–2015.
Table 2. Percentage (%) of the Almyros aquifer under various classes of vulnerability (%) with the typical GALDIT and GALDIT–AHP methods for the period 1992–2015.
Vulnerability ClassesTypicalAHP MedianAHP AverageAHP Mode
High3.54%1.99%1.99%2.20%
Moderate8.16%9.23%9.21%9.57%
Low88.27%88.70%88.80%88.24%
Table 3. Spearman rank correlation between salinity concentrations and vulnerability indices GALDIT and modified GALDIT–AHP.
Table 3. Spearman rank correlation between salinity concentrations and vulnerability indices GALDIT and modified GALDIT–AHP.
Vulnerability Indices1992–19972004–20092010–2015
GALDIT0.44 0.450.45
AHP Median0.430.440.44
AHP Average0.440.440.43
AHP Mode0.430.450.46
The significance (p) value of the correlations is less than 0.05, thus the statistical difference is real and not due to chance. Correlation coefficients range from rho = 0.43 to 0.46 per study period.
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Lepuri, S.; Loukas, A.; Lyra, A. Seawater Intrusion Vulnerability Assessment Using the GALDIT and the Modified GALDIT–AHP Methods: Application in the Coastal Almyros Aquifer, Thessaly, Greece. Environ. Sci. Proc. 2023, 25, 15. https://doi.org/10.3390/ECWS-7-14174

AMA Style

Lepuri S, Loukas A, Lyra A. Seawater Intrusion Vulnerability Assessment Using the GALDIT and the Modified GALDIT–AHP Methods: Application in the Coastal Almyros Aquifer, Thessaly, Greece. Environmental Sciences Proceedings. 2023; 25(1):15. https://doi.org/10.3390/ECWS-7-14174

Chicago/Turabian Style

Lepuri, Sibianka, Athanasios Loukas, and Aikaterini Lyra. 2023. "Seawater Intrusion Vulnerability Assessment Using the GALDIT and the Modified GALDIT–AHP Methods: Application in the Coastal Almyros Aquifer, Thessaly, Greece" Environmental Sciences Proceedings 25, no. 1: 15. https://doi.org/10.3390/ECWS-7-14174

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