National Repository of Grey Literature 4 records found  Search took 0.00 seconds. 
Use of selected artificial intelligence methods for finding small watersheds most at risk of flash floods
Ježík, Pavel ; Fošumpaur, Pavel (referee) ; Hlavčová,, Kamila (referee) ; Starý, Miloš (advisor)
In our region, heavy rains may occur virtually everywhere. Nowadays there are instruments to predict these events in sufficient advance, but without precise localisation, which is a problem. Present instruments for searching endangered watersheds are focused on operative evaluation of meteorological situation and actual precipitation forecast processing (nowcasting). The thesis brings quite different approach. Potentially endangered areas are detected with evaluation of long-term statistical variables (N-year discharges and rain characteristics) and properties of specific watershed. The whole issue is handled out of situation of actual danger, this attitude is so called off-line solution. The thesis describes a model based on selected artificial intelligence methods. The model forms the core of final map application. The use of model and final application is supposed to be used in area of preventive flood protection, and related investment decision-making. The model focuses on heavy rains and flash floods.
Mean month discharges prediction for purposes of reservoir system operation
Šelepa, Milan ; Ježík, Pavel (referee) ; Marton, Daniel (advisor)
The bachleor thesis is focused on the prediction of average monthly discharges in order to control of reservoir and reservoir system. The forecast is made by Monte Carlo method and generator of artificial discharge series LTMA. Then the predicted discharges are statistically compared with the values of real discharges.
Use of selected artificial intelligence methods for finding small watersheds most at risk of flash floods
Ježík, Pavel ; Fošumpaur, Pavel (referee) ; Hlavčová,, Kamila (referee) ; Starý, Miloš (advisor)
In our region, heavy rains may occur virtually everywhere. Nowadays there are instruments to predict these events in sufficient advance, but without precise localisation, which is a problem. Present instruments for searching endangered watersheds are focused on operative evaluation of meteorological situation and actual precipitation forecast processing (nowcasting). The thesis brings quite different approach. Potentially endangered areas are detected with evaluation of long-term statistical variables (N-year discharges and rain characteristics) and properties of specific watershed. The whole issue is handled out of situation of actual danger, this attitude is so called off-line solution. The thesis describes a model based on selected artificial intelligence methods. The model forms the core of final map application. The use of model and final application is supposed to be used in area of preventive flood protection, and related investment decision-making. The model focuses on heavy rains and flash floods.
Mean month discharges prediction for purposes of reservoir system operation
Šelepa, Milan ; Ježík, Pavel (referee) ; Marton, Daniel (advisor)
The bachleor thesis is focused on the prediction of average monthly discharges in order to control of reservoir and reservoir system. The forecast is made by Monte Carlo method and generator of artificial discharge series LTMA. Then the predicted discharges are statistically compared with the values of real discharges.

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