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Short-term stream flow forecasting at Australian river sites using data-driven regression techniques

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dc.contributor.author Steyn, Melise
dc.contributor.author Wilms, Josefine M
dc.contributor.author Brink, W
dc.contributor.author Smit, F
dc.date.accessioned 2017-12-19T12:40:02Z
dc.date.available 2017-12-19T12:40:02Z
dc.date.issued 2017-09
dc.identifier.citation Steyn, M. et al. 2017. Short-term stream flow forecasting at Australian river sites using data-driven regression techniques. International Work-Conference on Time Series Analysis (ITISE 2017), University of Granada, Granada, Spain , 18-20 September 2017 en_US
dc.identifier.isbn 978-84-17293-01-7
dc.identifier.uri http://hdl.handle.net/10204/9895
dc.description Paper presented at the International Work-Conference on Time Series Analysis (ITISE 2017), University of Granada, Granada, Spain , 18-20 September 2017 en_US
dc.description.abstract This study proposes a computationally efficient solution to stream flow forecasting for river basins where historical time series data are available. Two data-driven modeling techniques are investigated, namely support vector regression and artificial neural network. Each model is trained on historical stream flow and precipitation data to forecast stream flow with a lead time of up to seven days. The Shoalhaven, Herbert and Adelaide rivers in Australia are considered for experimentation. The predictive performance of each model is determined by the Pearson correlation coefficient, the root mean squared error and the Nash-Sutcliffe efficiency. The performance of our data-driven models are compared to that of a physical stream flow forecasting model currently supplied by Australia's Bureau of Meteorology. It is concluded that the data-driven models have the potential to be useful stream flow forecasting tools in river basin modeling. en_US
dc.language.iso en en_US
dc.relation.ispartofseries Worklist;19456
dc.subject Stream flow forecasting en_US
dc.subject Support Vector Regression en_US
dc.subject Artificial Neural Networks en_US
dc.title Short-term stream flow forecasting at Australian river sites using data-driven regression techniques en_US
dc.type Conference Presentation en_US
dc.identifier.apacitation Steyn, M., Wilms, J. M., Brink, W., & Smit, F. (2017). Short-term stream flow forecasting at Australian river sites using data-driven regression techniques. http://hdl.handle.net/10204/9895 en_ZA
dc.identifier.chicagocitation Steyn, Melise, Josefine M Wilms, W Brink, and F Smit. "Short-term stream flow forecasting at Australian river sites using data-driven regression techniques." (2017): http://hdl.handle.net/10204/9895 en_ZA
dc.identifier.vancouvercitation Steyn M, Wilms JM, Brink W, Smit F, Short-term stream flow forecasting at Australian river sites using data-driven regression techniques; 2017. http://hdl.handle.net/10204/9895 . en_ZA
dc.identifier.ris TY - Conference Presentation AU - Steyn, Melise AU - Wilms, Josefine M AU - Brink, W AU - Smit, F AB - This study proposes a computationally efficient solution to stream flow forecasting for river basins where historical time series data are available. Two data-driven modeling techniques are investigated, namely support vector regression and artificial neural network. Each model is trained on historical stream flow and precipitation data to forecast stream flow with a lead time of up to seven days. The Shoalhaven, Herbert and Adelaide rivers in Australia are considered for experimentation. The predictive performance of each model is determined by the Pearson correlation coefficient, the root mean squared error and the Nash-Sutcliffe efficiency. The performance of our data-driven models are compared to that of a physical stream flow forecasting model currently supplied by Australia's Bureau of Meteorology. It is concluded that the data-driven models have the potential to be useful stream flow forecasting tools in river basin modeling. DA - 2017-09 DB - ResearchSpace DP - CSIR KW - Stream flow forecasting KW - Support Vector Regression KW - Artificial Neural Networks LK - https://researchspace.csir.co.za PY - 2017 SM - 978-84-17293-01-7 T1 - Short-term stream flow forecasting at Australian river sites using data-driven regression techniques TI - Short-term stream flow forecasting at Australian river sites using data-driven regression techniques UR - http://hdl.handle.net/10204/9895 ER - en_ZA


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