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Machine learning algorithms for the prediction of drought conditions in the Wami River sub-catchment, Tanzania

Christossy Lalika, Aziz Ul Haq Mujahid, Mturi James, Makarius C.S. Lalika

2024Journal of Hydrology Regional Studies22 citationsDOIOpen Access PDF

Abstract

This study refers to the Wami river sub-catchments in Eastern Tanzania. The five-machine learning (ML) algorithms, including long short-term memory (LSTM), multivariate adaptive regression spline (MARS), support vector machine (SVM), extreme learning machine (ELM), and M5 Tree, were used to predict the most widely used drought index, the standard precipitation index (SPI), at six and nine months. Algorithms were established using monthly rainfall data for the period from 1990 to 2022 at five meteorological stations distributed across the Wami River sub-catchment: Barega, Dakawa, Dodoma, Kongwa, and Mandera stations. New hydrological insights for the region. The predicted results of all five ML algorithms were evaluated using several statistical metrics, including Pearson’s correlation coefficient (R), mean absolute error (MAE), root mean square error (RMSE), and Nash Sutcliffe efficiency (NSE). The prediction results revealed that LSTM perform better in predicting drought conditions using SPI6 (6-month SPI) and SPI9 (9-month SPI) with the highest NSE of 0.99 in all five stations, and R of 0.99 in four stations except at Kongwa station, where R range from 0.75 to 0.99. These prediction results will aid decision-makers and planners to develop a drought monitoring and drought early warning system in order to strengthen the governance and resilience to the catchment and people on the impacts of water scarcity and climate change. • The LSTM, MARS, SVM, ELM, and M5 Tree, were used to predict drought condition. • Established algorithms used monthly rainfall data of five meteorological stations. • LSTM performed the best in predicting drought conditions. • The result from this study could be beneficial for drought monitoring.

Topics & Concepts

Drainage basinMultivariate adaptive regression splinesTanzaniaMean squared errorDownscalingDecision treeExtreme learning machineSupport vector machinePrecipitationEnvironmental scienceMachine learningAlgorithmComputer scienceBayesian multivariate linear regressionLinear regressionGeographyMeteorologyMathematicsStatisticsCartographyEnvironmental planningArtificial neural networkHydrology and Drought AnalysisHydrological Forecasting Using AIClimate variability and models