To allocate cultivable crops via a new multivariate statistical approach assessing spatial distribution of groundwater quality parameters

被引:0
|
作者
Mohammad Rafie Rafiee
Hamid Zareifard
Mehdi Mahbod
Mahmood Mahmoodi-Eshkaftaki
机构
[1] Jahrom University,Department of Water Sciences and Engineering
[2] Jahrom University,Department of Statistics
[3] Jahrom University,Department of Mechanical Engineering of Biosystems
来源
关键词
Groundwater; Geostatistics; Semivariogram; Multilevel Gaussian factor model; Bayesian analysis; Salinity; Sodium adsorption ratio;
D O I
暂无
中图分类号
学科分类号
摘要
Due to the correlation between water qualitative indices, their spatial variations are commonly estimated using semivariogram expressed methods, such as Kriging and cokriging. Some studies have tried applying multivariate statistics to identify the effect of various parameters on groundwater spatial variations; however, their estimations are eventually determined by Kriging family of methods. In this study, two multilevel Gaussian factor models (GF1 and GF2) are introduced to jointly model the multivariate data. Such an approach avoids the difficulties of maximum likelihood estimation, incorporating imperfect information to reach an effective decision. Thirty-five agricultural well samples were analyzed for EC and SAR, and other correlated variables over an area of about 1837 Km2 to prepare thematic maps of the groundwater quality classes, based on which administrative crops are suggested for the regional agriculture after selecting the best model for zoning groundwater quality. The GF2 model outperformed the ordinary Kriging in joint modelling of EC and Mg + Ca + Na. Moreover, the best fitting was obtained under Gaussian and Matern covariance functions. EC estimated values by Kriging and the multilevel Gaussian factor model were 2.18–5.17 ds/m and 2.53–4.54 ds/m, respectively. A notable resemblance was found between the spatial variation patterns obtained by the two methods in both EC and SAR variables. Despite relatively larger domains obtained from the Kriging model, such extreme values of EC and SAR covered small and insignificant zones of the study area. The areas estimated by the GF2 model and Kriging for the EC range 3–4.5 ds/m were relatively close (98.4% and 85.6% of the total area, respectively), while the values exceeding this range, covered very small, negligible fractions of total area (1.1% and 7.9%, respectively). Similar results were obtained for SAR estimates. The cultivable area signified by the two models were not significantly different, as shown by the allowable cultivation area maps generated. When GF2 model is applied, the whole study area is cultivable for all recommended crops in 90% and less yield potentials, while the limitations were insignificant, considering Kriging method.
引用
收藏
相关论文
共 50 条
  • [41] Evaluation of Souss-Massa Daraa Region Irrigation Groundwater Hydrogeochemical Characteristics and Quality: A Multivariate Statistical Approach
    Doubi, M.
    Darif, H.
    Koulou, A.
    Touir, R.
    Abba, H.
    Khaffou, M.
    Erramli, H.
    PORTUGALIAE ELECTROCHIMICA ACTA, 2022, 40 (06) : 425 - 440
  • [42] Determination of processes affecting groundwater quality in the coastal aquifer beneath Puri city, India: a multivariate statistical approach
    Mohapatra, P. K.
    Vijay, R.
    Pujari, P. R.
    Sundaray, S. K.
    Mohanty, B. P.
    WATER SCIENCE AND TECHNOLOGY, 2011, 64 (04) : 809 - 817
  • [43] Integrated GIS and multivariate statistical approach for spatial and temporal variability analysis for lake water quality index
    Subramaniam, Poornasuthra
    Ahmed, Ali Najah
    Fai, Chow Ming
    Malek, Marlinda Abdul
    Kumar, Pavitra
    Huang, Yuk Feng
    Sherif, Mohsen
    Elshafie, Ahmed
    COGENT ENGINEERING, 2023, 10 (01):
  • [44] Assessing temporal and spatial patterns of surface-water quality with a multivariate approach: a case study in Uruguay
    Gorgoglione, A.
    Alonso, J.
    Chreties, C.
    Fossati, M.
    6TH INTERNATIONAL CONFERENCE ON WATER RESOURCE AND ENVIRONMENT, 2020, 612
  • [45] Assessing the source and spatial distribution of chemical composition of a rift lake, using multivariate statistical, hydrogeochemical modeling and remote sensing
    Noyola-Medrano, Cristina
    Alfredo Ramos-Leal, Jose
    Lopez-Alvarez, Briseida
    Moran-Ramirez, Janet
    Maria Fuentes-Rivas, Rosa
    EARTH SCIENCES RESEARCH JOURNAL, 2019, 23 (01) : 43 - 55
  • [46] Hydrogeochemical characteristics and multivariate statistical approach for monitoring groundwater quality scenario in the vicinity of industrial area of western Himalaya, India
    Singh, Kshitindra Kumar
    Tewari, Geeta
    Bisht, Mamta
    Tiwary, R. K.
    Kumar, Suresh
    Patni, Kiran
    Gangwar, Aabha
    Kanyal, Bhawana
    CHEMISTRY AND ECOLOGY, 2023, 39 (06) : 611 - 639
  • [47] Groundwater quality assessment using multivariate statistical approach and geospatial modelling around cement industrial corridor, South India
    B. Suvarna
    V. Sunitha
    Y. Sudharshan Reddy
    B. Muralidhara Reddy
    A. K. Kadam
    M. Ramakrishna Reddy
    International Journal of Environmental Science and Technology, 2023, 20 : 5051 - 5070
  • [48] Multivariate statistical analysis approach to assess groundwater quality in two selected mandals of Vizianagaram district, Andhra Pradesh, India
    Kumar, GVSRPavan
    Rao, KSrinivasa
    Yadav, Arunendra
    Kumar, MLakshman
    Dora, HSainadh
    JOURNAL OF THE INDIAN CHEMICAL SOCIETY, 2022, 99 (05)
  • [49] A multivariate statistical approach to evaluate the hydro-geochemistry of groundwater quality in the middle Ganga river basin, Patna, India
    Sulaiman, Mohammed Aasif
    Zafar, Mohammad Masroor
    Prabhakar, Ravi
    Kumar, Ramesh
    Sinha, Ravindra Kumar
    Kumari, Anupma
    ACTA GEOPHYSICA, 2024, 72 (03) : 1913 - 1926
  • [50] Groundwater quality assessment using multivariate statistical approach and geospatial modelling around cement industrial corridor, South India
    Suvarna, B.
    Sunitha, V
    Reddy, Y. Sudharshan
    Reddy, B. Muralidhara
    Kadam, A. K.
    Reddy, M. Ramakrishna
    INTERNATIONAL JOURNAL OF ENVIRONMENTAL SCIENCE AND TECHNOLOGY, 2023, 20 (05) : 5051 - 5070