Peer-reviewed articles 17,970 +



Title: COMPARISON OF MODELLING OF SUSPENDED SEDIMENT CONCENTRATION USING LINEAR AND MACHINE LEARNING METHODS

COMPARISON OF MODELLING OF SUSPENDED SEDIMENT CONCENTRATION USING LINEAR AND MACHINE LEARNING METHODS
M. Cisty;F. Cyprich;K. Holubova;V. Simor
1314-2704
English
20
3.1
Measured sediment concentration records are important information to support water management activities. However, for various reasons, these time series could be incomplete. This paper contains options for modelling the concentrations of suspended sediments when unmeasured periods occurs. Using of various modelling strategies for is discussed and some statistical and machine learning methods are selected for this task. The results show a significant increase in the accuracy of modelling the concentration of suspended sediments compared to the standard method, which is the rating curve. The river Danube around Bratislava (Slovakia) was selected for evaluation of the proposed methodology.
conference
20th International Multidisciplinary Scientific GeoConference SGEM 2020
20th International Multidisciplinary Scientific GeoConference SGEM 2020, 18 - 24 August, 2020
Proceedings Paper
STEF92 Technology
International Multidisciplinary Scientific GeoConference-SGEM
SWS Scholarly Society; Acad Sci Czech Republ; Latvian Acad Sci; Polish Acad Sci; Russian Acad Sci; Serbian Acad Sci & Arts; Natl Acad Sci Ukraine; Natl Acad Sci Armenia; Sci Council Japan; European Acad Sci, Arts & Letters; Acad Fine Arts Zagreb Croatia; C
51-58
18 - 24 August, 2020
website
cdrom
7103
suspended sediment; Danube River; CatBoost; Best Subset Regression; Principal Components Regression