Application of stochastic models in predicting Lake Malawi water levels

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Rodgers, Makwinja, et al. “Application of Stochastic Models in Predicting Lake Malawi Water Levels”. International Journal of Water Resources and Environmental Engineering, vol. 9, no. 9, 2017, pp. 191-00, https://doi.org/10.5897/ijwree2017.0740.
Rodgers, M., Titus, P., Ishmael, B. M. K., & Chikumbusko, C. K. (2017). Application of stochastic models in predicting Lake Malawi water levels. International Journal of Water Resources and Environmental Engineering, 9(9), 191-200. https://doi.org/10.5897/ijwree2017.0740
Rodgers M, Titus P, Ishmael BMK, Chikumbusko CK. Application of stochastic models in predicting Lake Malawi water levels. International Journal of Water Resources and Environmental Engineering. 2017;9(9):191-200.
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