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Original scientific paper

https://doi.org/10.14256/JCE.2102.2017

Comparison of supervised learning methods for prediction of monthly average flow

Jadran Berbić
Eva Ocvirk
Gordon Gilja


Full text: english pdf 946 Kb

page 643-656

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Full text: croatian pdf 933 Kb

page 643-656

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Abstract

Long-term planning of water engineering systems requires knowledge of long-term availability of water, most often in the form of monthly average flow information. Knowledge from stochastic hydrology is most often applied, although possible scenarios also involve generation of synthetic flow. The use of climatic models imposes the possibility of modelling based on future scenarios, and it is assumed in the paper that supervised learning can be applied for this purpose. The paper analyses accuracy of three supervised learning models in three approaches and the autoregressive model in the first approach, for predicting monthly average flow as related to the length of a historic dataset.

Keywords

long-term planning; monthly average flow; autoregressive model; supervised learning

Hrčak ID:

206266

URI

https://hrcak.srce.hr/206266

Publication date:

1.10.2018.

Article data in other languages: croatian

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