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Dam Water Level Prediction Using Vector AutoRegression, Random Forest Regression and MLP-ANN Models Based on Land-Use and Climate Factors

Author

Listed:
  • Yashon O. Ouma

    (Department of Civil Engineering, University of Botswana, Private Bag UB 0061, Gaborone, Botswana)

  • Ditiro B. Moalafhi

    (Faculty of Natural Resources, Botswana University of Agriculture and Natural Resources (BUAN), Private Bag 0027, Gaborone, Botswana)

  • George Anderson

    (Department of Computer Science, University of Botswana, Private Bag UB 0061, Gaborone, Botswana)

  • Boipuso Nkwae

    (Department of Civil Engineering, University of Botswana, Private Bag UB 0061, Gaborone, Botswana)

  • Phillimon Odirile

    (Department of Civil Engineering, University of Botswana, Private Bag UB 0061, Gaborone, Botswana)

  • Bhagabat P. Parida

    (Department of Civil and Environmental Engineering, Botswana International University of Science and Technology (BIUST), Private Bag 16, Palapye, Botswana)

  • Jiaguo Qi

    (Center for Global Change and Earth Observations, Michigan State University, East Lansing, MI 48824, USA)

Abstract

To predict the variability of dam water levels, parametric Multivariate Linear Regression (MLR), stochastic Vector AutoRegressive (VAR), Random Forest Regression (RFR) and Multilayer Perceptron (MLP) Artificial Neural Network (ANN) models were compared based on the influences of climate factors (rainfall and temperature), climate indices (DSLP, Aridity Index (AI), SOI and Niño 3.4) and land-use land-cover (LULC) as the predictor variables. For the case study of the Gaborone dam and the Bokaa dam in the semi-arid Botswana, from 2001 to 2019, the prediction results showed that the linear MLR is not robust for predicting the complex non-linear variabilities of the dam water levels with the predictor variables. The stochastic VAR detected the relationship between LULC and the dam water levels with R 2 > 0.95; however, it was unable to sufficiently capture the influence of climate factors on the dam water levels. RFR and MLP-ANN showed significant correlations between the dam water levels and the climate factors and climate indices, with a higher R 2 value between 0.890 and 0.926, for the Gaborone dam, compared to 0.704–0.865 for the Bokaa dam. Using LULC for dam water predictions, RFR performed better than MLP-ANN, with higher accuracy results for the Bokaa dam. Based on the climate factors and climate indices, MLP-ANN provided the best prediction results for the dam water levels for both dams. To improve the prediction results, a VAR-ANN hybrid model was found to be more suitable for integrating LULC and the climate conditions and in predicting the variability of the linear and non-linear time-series components of the dam water levels for both dams.

Suggested Citation

  • Yashon O. Ouma & Ditiro B. Moalafhi & George Anderson & Boipuso Nkwae & Phillimon Odirile & Bhagabat P. Parida & Jiaguo Qi, 2022. "Dam Water Level Prediction Using Vector AutoRegression, Random Forest Regression and MLP-ANN Models Based on Land-Use and Climate Factors," Sustainability, MDPI, vol. 14(22), pages 1-31, November.
  • Handle: RePEc:gam:jsusta:v:14:y:2022:i:22:p:14934-:d:970015
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    References listed on IDEAS

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