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Comparison between fuzzy logic and water quality index methods: A case of water quality assessment in Ikare community, Southwestern Nigeria

Johnson O. Oladipo, Akinola S. Akinwumiju, O. S. Aboyeji, Adedeji A. Adelodun

2021Environmental Challenges73 citationsDOIOpen Access PDF

Abstract

A ubiquitous, reliable, and affordable method to determine surface water quality (SWQ) is still evasive. In the current study, we compared two easily accessible statistical tools: fuzzy logic (FL) inference and water quality index (WQI) analytical methods, in assessing the water quality in Ikare community of Nigeria. Furthermore, crosstabs analysis and Python programming language validated the reliability of FL and WQI methods. Consequently, a classification map was generated in the ArcGIS environment to depict the disparity in the methods’ pollution distribution levels. We observed that, of the 20 sampling points, BOD5 evinced a 65% and 37% impact on SWQ via WQI and FL analyses, respectively. However, with fecal coliform, FL and WQI professed an absolute (100%) and zero (0%) impact, respectively. Through ArcGIS, 8.3% of the waters were categorized as “moderate” for drinking using FL, whereas WQI classified the whole study area's waters as “bad”. Hence, via the comparison, we infer on the superiority of FL inference over WQI methods because FL enables equal consideration to the measured values and SWQ standards, whereas WQI considers only the latter for evaluation.

Topics & Concepts

Water qualityFuzzy inference systemPython (programming language)Environmental scienceIndex (typography)Fuzzy logicPollutionSampling (signal processing)Computer scienceFuzzy inferenceHydrology (agriculture)StatisticsData miningAdaptive neuro fuzzy inference systemMathematicsArtificial intelligenceEngineeringFuzzy control systemEcologyWorld Wide WebComputer visionFilter (signal processing)Geotechnical engineeringOperating systemBiologyWater Quality and Pollution AssessmentHydrological Forecasting Using AIWater Quality Monitoring Technologies
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