• Title of article

    Performance evaluation of adaptive neuro-fuzzy inference system for modelling dissolved oxygen of Kubanni Reservoir: A case study in Zaria, Nigeria

  • Author/Authors

    Chukwuemeka ، Eneogwe Corresponding author: Department of Water Resources and Environmental Engineering - Ahmadu Bello University , Mohammed ، Sanni Ismaila Department of Water Resources and Environmental Engineering - Ahmadu Bello University , Umar ، Abubakar Alfa Department of Water Resources and Environmental Engineering - Ahmadu Bello University , Abraham ، Idoko Apeh Department of Water Resources and Environmental Engineering - Ahmadu Bello University , Ayobami ، Bello Abdulrazaq Department of Chemical Engineering - Ahmadu Bello University

  • From page
    347
  • To page
    353
  • Abstract
    Background: Water quality evaluation require arduous laboratory and statistical analyses comprising of sample collection and sometimes transportation to laboratories, which may be expensive. In recent years, there has been an emergent need to monitor the dissolved oxygen (DO) concentrations of Kubanni reservoir as a result of anthropogenic and agricultural pollution. Hence, this study was conducted to apply adaptive neuro-fuzzy inference system (ANFIS)-based modelling in the prediction of DO of Kubanni reservoir. Methods: Water quality data for seven years were used to develop ANFIS models. Six water quality parameters, namely, total dissolved solids, free carbon dioxide, turbidity, temperature, manganese, and electrical conductivity, were selected for analysis based on their sensitivity. Subtractive clustering and grid partitioning techniques were considered when generating the fuzzy inference system (FIS). Three ANFIS models according to different lengths for training data and testing data were selected for modelling. Results: The results showed that Model-1 gave the best correlation (R-squared and adjusted R-squared of 0.852503 and 0.845000, respectively) for whole data using six input variables. While Model-3 gave the best correlation (R-squared and adjusted R-squared of 0.807791 and 0.799940, respectively) for whole data using three input variables. Conclusion: The performance efficiency of ANFIS model 1 using 6 inputs shows that the model is reliable for modelling water quality.
  • Keywords
    Dissolved oxygen , Water quality modelling , Manganese , Nigeria
  • Journal title
    Environmental Health Engineering and Management Journal
  • Journal title
    Environmental Health Engineering and Management Journal
  • Record number

    2738796