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Erschienen in: Environmental Earth Sciences 12/2021

01.06.2021 | Original Article

Using GIS-based order weight average (OWA) methods to predict suitable locations for the artificial recharge of groundwater

verfasst von: Marzieh Mokarram, Saeed Negahban, Ali Abdolali, Mohammad Mehdi Ghasemi

Erschienen in: Environmental Earth Sciences | Ausgabe 12/2021

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Abstract

This study aims to determine suitable locations for artificial recharge of groundwater (ARG) using the GIS-based analytic hierarchy process (AHP) and order weight average (OWA). To determine the weights of the different parameters, the AHP method of pair-comparison was used after preparing a fuzzy map for each attribute. After that, using the OWA–AHP method for different levels of confidence (different values), the weighting process was used for each parameter to produce land suitability maps of varied risks. In addition, the adaptive network-based fuzzy inference system (ANFIS) method was used to predict land suitability classes using input parameters. Then, using the best subset regression method, the most important effective ARG parameters were identified. Fuzzy-AHP results show that 27% of the area has “good” and “very good” conditions for ARG. Under low-level risk and no trade-off, the combined OWA–AHP method shows that the more area is in the “very low” class (80%) while in case of higher level of risk and average trade-off, the highest values are in the “very low” class (27%). The results of the ANFIS method indicate that both fuzzy c-means (FCM) and sub-clustering methods can be used to predict appropriate places for ARG. The results of the best subset regression method show that slope, lithology, land use, and altitude with the lowest Cp values (5.2) are effective parameters to determine the suitability of ARG locations.

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Literatur
Zurück zum Zitat Anand B, Karunanidhi D, Subramani T (2020) Promoting artificial recharge to enhance groundwater potential in the lower Bhavani River basin of South India using geospatial techniques. Environ Sci Pollut Res Int 28:18437–18456CrossRef Anand B, Karunanidhi D, Subramani T (2020) Promoting artificial recharge to enhance groundwater potential in the lower Bhavani River basin of South India using geospatial techniques. Environ Sci Pollut Res Int 28:18437–18456CrossRef
Zurück zum Zitat Anane M, Souissi R, Faïdi H, Mehdaoui R, Gdoura K (2021) PROMETHEE and geospatial analysis to rank suitable sites for grombalia aquifer recharge with reclaimed water. Environ Remote Sens GIS Tunisia, 95–114 Anane M, Souissi R, Faïdi H, Mehdaoui R, Gdoura K (2021) PROMETHEE and geospatial analysis to rank suitable sites for grombalia aquifer recharge with reclaimed water. Environ Remote Sens GIS Tunisia, 95–114
Zurück zum Zitat Arya S, Subramani T, Karunanidhi D (2020) Delineation of groundwater potential zones and recommendation of artificial recharge structures for augmentation of groundwater resources in Vattamalaikarai Basin. South India Environ Earth Sci 79(5):1–13 Arya S, Subramani T, Karunanidhi D (2020) Delineation of groundwater potential zones and recommendation of artificial recharge structures for augmentation of groundwater resources in Vattamalaikarai Basin. South India Environ Earth Sci 79(5):1–13
Zurück zum Zitat Ban AI, Ban OI (2012) Optimization and extensions of a fuzzy multicriteria decision making method and applications to selection of touristic destinations. Expert Syst Appl 39(8):7216–7225CrossRef Ban AI, Ban OI (2012) Optimization and extensions of a fuzzy multicriteria decision making method and applications to selection of touristic destinations. Expert Syst Appl 39(8):7216–7225CrossRef
Zurück zum Zitat Bellmann RE, Zadeh LA (1970) Decision making in a fuzzy environment. Manage Sci 17(4):B-141CrossRef Bellmann RE, Zadeh LA (1970) Decision making in a fuzzy environment. Manage Sci 17(4):B-141CrossRef
Zurück zum Zitat Chu TC, Lin YC (2009) An interval arithmetic based fuzzy TOPSIS model. Expert Syst Appl 36(8):20870–20876 Chu TC, Lin YC (2009) An interval arithmetic based fuzzy TOPSIS model. Expert Syst Appl 36(8):20870–20876
Zurück zum Zitat Das B, Pal SC (2019) Combination of GIS and fuzzy-AHP for delineating groundwater recharge potential zones in the critical Goghat-II block of West Bengal, India. HydroResearch 2:21–30CrossRef Das B, Pal SC (2019) Combination of GIS and fuzzy-AHP for delineating groundwater recharge potential zones in the critical Goghat-II block of West Bengal, India. HydroResearch 2:21–30CrossRef
Zurück zum Zitat El Amrı A, Anane M, Drıdı L, Srasra M, Majdoub R (2021) A GIS based DRASTIC, Pesticide DRASTIC and SI methods to assess groundwater vulnerability to pollution: case study of Oued Laya (Central Tunisia). Environ Remote Sens GIS Tunisia, 143–163 El Amrı A, Anane M, Drıdı L, Srasra M, Majdoub R (2021) A GIS based DRASTIC, Pesticide DRASTIC and SI methods to assess groundwater vulnerability to pollution: case study of Oued Laya (Central Tunisia). Environ Remote Sens GIS Tunisia, 143–163
Zurück zum Zitat Gdoura K, Anane M, Jellali S (2015) Geospatial and AHP-multicriteria analyses to locate and rank suitable sites for groundwater recharge with reclaimed water. Resour Conserv Recycl 104:19–30CrossRef Gdoura K, Anane M, Jellali S (2015) Geospatial and AHP-multicriteria analyses to locate and rank suitable sites for groundwater recharge with reclaimed water. Resour Conserv Recycl 104:19–30CrossRef
Zurück zum Zitat Ghayoumian J, Saravi MM, Feiznia S, Nouri B, Malekian A (2007) Application of GIS techniques to determine areas most suitable for artificial groundwater recharge in a coastal aquifer in southern Iran. J Asian Earth Sci 30(2):364–374CrossRef Ghayoumian J, Saravi MM, Feiznia S, Nouri B, Malekian A (2007) Application of GIS techniques to determine areas most suitable for artificial groundwater recharge in a coastal aquifer in southern Iran. J Asian Earth Sci 30(2):364–374CrossRef
Zurück zum Zitat Jafari MM, Ojaghlou H, Zare M, Schumann GJP (2021) Application of a novel hybrid wavelet-ANFIS/fuzzy c-means clustering model to predict groundwater fluctuations. Atmosphere 12(1):9CrossRef Jafari MM, Ojaghlou H, Zare M, Schumann GJP (2021) Application of a novel hybrid wavelet-ANFIS/fuzzy c-means clustering model to predict groundwater fluctuations. Atmosphere 12(1):9CrossRef
Zurück zum Zitat Jaypuria S, Mahapatra TR, Tripathy S, Nakhale S, Gupta SK (2020) Fuzzy C-means clustering-based ANFIS regression modeling of hybrid laser-TIG fabrication. In: Advances in materials and manufacturing engineering. Springer, Singapore, pp 617–624 Jaypuria S, Mahapatra TR, Tripathy S, Nakhale S, Gupta SK (2020) Fuzzy C-means clustering-based ANFIS regression modeling of hybrid laser-TIG fabrication. In: Advances in materials and manufacturing engineering. Springer, Singapore, pp 617–624
Zurück zum Zitat Kamangar M, Katorani S, Tekyehhah J, Sohrabneja C, Haderi FG (2019) A novel hybrid MCDM model select a suitable location for implement groundwater recharge. Plant Arch 19(2):87–98 Kamangar M, Katorani S, Tekyehhah J, Sohrabneja C, Haderi FG (2019) A novel hybrid MCDM model select a suitable location for implement groundwater recharge. Plant Arch 19(2):87–98
Zurück zum Zitat Karunanidhi D, Aravinthasamy P, Subramani T, Roy PD, Srinivasamoorthy K (2019) Risk of fluoride-rich groundwater on human health: remediation through managed aquifer recharge in a hard rock terrain. South India Nat Resour Res 29:2369–2395CrossRef Karunanidhi D, Aravinthasamy P, Subramani T, Roy PD, Srinivasamoorthy K (2019) Risk of fluoride-rich groundwater on human health: remediation through managed aquifer recharge in a hard rock terrain. South India Nat Resour Res 29:2369–2395CrossRef
Zurück zum Zitat Kim D (1998) Improving the fuzzy system performance by fuzzy system ensemble. Fuzzy Sets Syst 98(1):43–56CrossRef Kim D (1998) Improving the fuzzy system performance by fuzzy system ensemble. Fuzzy Sets Syst 98(1):43–56CrossRef
Zurück zum Zitat Kim GB, Choi MR, Seo MH (2018) Site selection method by AHP-based artificial neural network model for groundwater artificial recharge. J Eng Geol 28(4):741–753 Kim GB, Choi MR, Seo MH (2018) Site selection method by AHP-based artificial neural network model for groundwater artificial recharge. J Eng Geol 28(4):741–753
Zurück zum Zitat Kuk AY (1984) All subsets regression in a proportional hazards model. Biometrika 71(3):587–592CrossRef Kuk AY (1984) All subsets regression in a proportional hazards model. Biometrika 71(3):587–592CrossRef
Zurück zum Zitat Kwong YD, Mehta KM, Miaskowski C, Zhuo H, Yee K, Jauregu A, Liu KD (2020) Using best subset regression to identify clinical characteristics and biomarkers associated with sepsis-associated acute kidney injury. Am J Physiol Renal Physiol 319(6):F979–F998CrossRef Kwong YD, Mehta KM, Miaskowski C, Zhuo H, Yee K, Jauregu A, Liu KD (2020) Using best subset regression to identify clinical characteristics and biomarkers associated with sepsis-associated acute kidney injury. Am J Physiol Renal Physiol 319(6):F979–F998CrossRef
Zurück zum Zitat Malczewski J, Chapman T, Flegel C, Walters D, Shrubsole D, Healy MA (2003) GIS-multicriteria evaluation with ordered weighted averaging (OWA): case study of developing watershed management strategies. Environ Plan A 35(10):1769–1784CrossRef Malczewski J, Chapman T, Flegel C, Walters D, Shrubsole D, Healy MA (2003) GIS-multicriteria evaluation with ordered weighted averaging (OWA): case study of developing watershed management strategies. Environ Plan A 35(10):1769–1784CrossRef
Zurück zum Zitat Moghaddam DD, Rezaei M, Pourghasemi HR, Pourtaghie ZS, Pradhan B (2015) Groundwater spring potential mapping using bivariate statistical model and GIS in the Taleghan watershed, Iran. Arab J Geosci 8(2):913–929CrossRef Moghaddam DD, Rezaei M, Pourghasemi HR, Pourtaghie ZS, Pradhan B (2015) Groundwater spring potential mapping using bivariate statistical model and GIS in the Taleghan watershed, Iran. Arab J Geosci 8(2):913–929CrossRef
Zurück zum Zitat Mokarram M, Aminzadeh F (2010) GIS-based multicriteria land suitability evaluation using ordered weight averaging with fuzzy quantifier: a case study in Shavur Plain, Iran. ISPRS 38(2):508–512 Mokarram M, Aminzadeh F (2010) GIS-based multicriteria land suitability evaluation using ordered weight averaging with fuzzy quantifier: a case study in Shavur Plain, Iran. ISPRS 38(2):508–512
Zurück zum Zitat Mokarram M, Hojati M (2017) Using ordered weight averaging (OWA) aggregation for multi-criteria soil fertility evaluation by GIS (case study: southeast Iran). Comput Electron Agric 132:1–13CrossRef Mokarram M, Hojati M (2017) Using ordered weight averaging (OWA) aggregation for multi-criteria soil fertility evaluation by GIS (case study: southeast Iran). Comput Electron Agric 132:1–13CrossRef
Zurück zum Zitat Naghibi SA, Pourghasemi HR, Dixon B (2016) GIS-based groundwater potential mapping using boosted regression tree, classification and regression tree, and random forest machine learning models in Iran. J Environ Monit Access 188(1):1–27CrossRef Naghibi SA, Pourghasemi HR, Dixon B (2016) GIS-based groundwater potential mapping using boosted regression tree, classification and regression tree, and random forest machine learning models in Iran. J Environ Monit Access 188(1):1–27CrossRef
Zurück zum Zitat Nasiri H, Boloorani AD, Sabokbar HAF, Jafari HR, Hamzeh M, Rafii Y (2013) Determining the most suitable areas for artificial groundwater recharge via an integrated PROMETHEE II-AHP method in GIS environment (case study: Garabaygan Basin, Iran). J Environ Monit Access 185(1):707–718CrossRef Nasiri H, Boloorani AD, Sabokbar HAF, Jafari HR, Hamzeh M, Rafii Y (2013) Determining the most suitable areas for artificial groundwater recharge via an integrated PROMETHEE II-AHP method in GIS environment (case study: Garabaygan Basin, Iran). J Environ Monit Access 185(1):707–718CrossRef
Zurück zum Zitat Ozdemir A (2011) Using a binary logistic regression method and GIS for evaluating and mapping the groundwater spring potential in the Sultan Mountains (Aksehir, Turkey). J Hydrol 405(1–2):123–136CrossRef Ozdemir A (2011) Using a binary logistic regression method and GIS for evaluating and mapping the groundwater spring potential in the Sultan Mountains (Aksehir, Turkey). J Hydrol 405(1–2):123–136CrossRef
Zurück zum Zitat Palanisamy A, Karunanidhi D, Subramani T, Roy PD (2020) Demarcation of groundwater quality domains using GIS for best agricultural practices in the drought-prone Shanmuganadhi River basin of South India. Environ Sci Pollut Res 28:18423–18435 Palanisamy A, Karunanidhi D, Subramani T, Roy PD (2020) Demarcation of groundwater quality domains using GIS for best agricultural practices in the drought-prone Shanmuganadhi River basin of South India. Environ Sci Pollut Res 28:18423–18435
Zurück zum Zitat Patil KA, Khatik ND, Jirapure SN (2020) Identification of artificial recharge zones using GIS. In: International conference on emerging trends in engineering (ICETE). Springer, Cham, pp 248–257 Patil KA, Khatik ND, Jirapure SN (2020) Identification of artificial recharge zones using GIS. In: International conference on emerging trends in engineering (ICETE). Springer, Cham, pp 248–257
Zurück zum Zitat Rajasekhar M, Raju GS, Sreenivasulu Y, Raju RS (2019a) Delineation of groundwater potential zones in semi-arid region of Jilledubanderu river basin, Anantapur District, Andhra Pradesh, India using fuzzy logic, AHP and integrated fuzzy-AHP approaches. HydroResearch 2:97–108CrossRef Rajasekhar M, Raju GS, Sreenivasulu Y, Raju RS (2019a) Delineation of groundwater potential zones in semi-arid region of Jilledubanderu river basin, Anantapur District, Andhra Pradesh, India using fuzzy logic, AHP and integrated fuzzy-AHP approaches. HydroResearch 2:97–108CrossRef
Zurück zum Zitat Rajasekhar M, Sudarsana Raju G, Imran Basha U, Siddi Raju R, Pradeep Kumar B, Ramachandra M (2019b) Identification of suitable sites for artificial groundwater recharge structures in semi-arid region of Anantapur District: AHP approach. Hydrospat Anal 3(1):1–11CrossRef Rajasekhar M, Sudarsana Raju G, Imran Basha U, Siddi Raju R, Pradeep Kumar B, Ramachandra M (2019b) Identification of suitable sites for artificial groundwater recharge structures in semi-arid region of Anantapur District: AHP approach. Hydrospat Anal 3(1):1–11CrossRef
Zurück zum Zitat Rencher AC, Pun FC (1980) Inflation of R2 in best subset regression. Technometrics 22(1):49–53CrossRef Rencher AC, Pun FC (1980) Inflation of R2 in best subset regression. Technometrics 22(1):49–53CrossRef
Zurück zum Zitat Saaty TL, Vargas LG (1980) Hierarchical analysis of behavior in competition: prediction in chess. Behav Sci 25(3):180–191CrossRef Saaty TL, Vargas LG (1980) Hierarchical analysis of behavior in competition: prediction in chess. Behav Sci 25(3):180–191CrossRef
Zurück zum Zitat Stroppiana D, Boschetti M, Brivio PA, Carrara P, Bordogna G (2009) A fuzzy anomaly indicator for environmental monitoring at continental scale. Ecol Indic 9(1):92–106CrossRef Stroppiana D, Boschetti M, Brivio PA, Carrara P, Bordogna G (2009) A fuzzy anomaly indicator for environmental monitoring at continental scale. Ecol Indic 9(1):92–106CrossRef
Zurück zum Zitat Takano Y, Miyashiro R (2020) Best subset selection via cross-validation criterion. TOP, 1–14 Takano Y, Miyashiro R (2020) Best subset selection via cross-validation criterion. TOP, 1–14
Zurück zum Zitat Wang YM, Parkan C (2005) A minimax disparity approach for obtaining OWA operator weights. Inform Sci 175(1–2):20–29CrossRef Wang YM, Parkan C (2005) A minimax disparity approach for obtaining OWA operator weights. Inform Sci 175(1–2):20–29CrossRef
Zurück zum Zitat Yalcin G, Akyurek Z (2004) Multiple criteria analysis for flood vulnerable areas. In: Proc of 24th annual ESRI international user conference, San Diego, USA Yalcin G, Akyurek Z (2004) Multiple criteria analysis for flood vulnerable areas. In: Proc of 24th annual ESRI international user conference, San Diego, USA
Zurück zum Zitat Zarghami M, Rahmani MA (2012) Aggregation of climate change predictions; Case study from semi arid parts of Iran. In: IWA world congress on water, climate and energy, 13–18 Zarghami M, Rahmani MA (2012) Aggregation of climate change predictions; Case study from semi arid parts of Iran. In: IWA world congress on water, climate and energy, 13–18
Metadaten
Titel
Using GIS-based order weight average (OWA) methods to predict suitable locations for the artificial recharge of groundwater
verfasst von
Marzieh Mokarram
Saeed Negahban
Ali Abdolali
Mohammad Mehdi Ghasemi
Publikationsdatum
01.06.2021
Verlag
Springer Berlin Heidelberg
Erschienen in
Environmental Earth Sciences / Ausgabe 12/2021
Print ISSN: 1866-6280
Elektronische ISSN: 1866-6299
DOI
https://doi.org/10.1007/s12665-021-09719-y

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