Litcius/Paper detail

Multi-parameter risk mapping of Qazvin aquifer by classic and fuzzy clustering techniques

Saman Javadi, Seied Mehdy Hashemy Shahdany, Aminreza Neshat, António Chambel

2020Geocarto International42 citationsDOIOpen Access PDF

Abstract

This study proposes a new approach to establish a multi-parameter risk mapping method by employing the K-Means clustering technique. Accordingly, spatial assessment of arsenic (As), nitrate (NO3) and total dissolved solids (TDS) were carried out based on the type of land use to estimate contamination potential in an aquifer. Since risk mapping is always associated with the occurrence probability of a phenomenon, pollution occurrence probability was then obtained using the fuzzy C-means clustering. The results reveal that NO3 and As contamination levels increase from the first cluster (C1), covers 22.3% of the aquifer, to C5 encompassing 35.1% of the aquifer devoted to extensive industrial and agricultural activities. Fuzzy clustering results show that the pollution occurrence probability in each aquifer cell varied from less than 30 to more than 90%. Moreover, the results show, industrial and agricultural land uses cover about 70% of the areas with high risk of contamination.

Topics & Concepts

AquiferCluster analysisFuzzy logicContaminationEnvironmental sciencePollutionFuzzy clusteringLand coverEnvironmental engineeringHydrology (agriculture)Water resource managementMathematicsGroundwaterLand useStatisticsComputer scienceGeologyEngineeringCivil engineeringGeotechnical engineeringArtificial intelligenceEcologyBiologyWater Quality and Pollution AssessmentGeochemistry and Geologic MappingRemote-Sensing Image Classification