. "Advances in Fuzzy Systems" . . "Mining Linguistic Associations for Emergent Flood Prediction Adjustment"@en . . "17610" . . "[9F93F1A8960E]" . "Mining Linguistic Associations for Emergent Flood Prediction Adjustment"@en . "Mining Linguistic Associations for Emergent Flood Prediction Adjustment" . "10"^^ . . "3"^^ . . "Mining Linguistic Associations for Emergent Flood Prediction Adjustment" . . . "Burda, Michal" . . "Rusnok, Pavel" . "RIV/61988987:17610/13:A14018JV!RIV14-MSM-17610___" . . "US - Spojen\u00E9 st\u00E1ty americk\u00E9" . "Floods belong to the most hazardous natural disasters and their disaster management heavily relies on precise forecasts of water flow rates. These forecasts are provided by sophisticated physical models based on differential equations. However, these models do depend on unreliable inputs. Thus, an appropriate data-mining analysis of the physical model and its precision based on features that determine distinct situations seems to be helpful in adjusting the physical model. An of application of fuzzy GUHA method in flood peak prediction is presented in this paper. Measured water flow rate data from a system for emergent flood predictions were used in order to mine fuzzy association rules expressed in natural language. The found associations were interpreted as fuzzy IF-THEN rules and used to predict expected time shift of flow rate peaks forecasted by the given physical model."@en . "1" . "3"^^ . . "P(ED1.1.00/02.0070), S" . . . "88486" . "Floods belong to the most hazardous natural disasters and their disaster management heavily relies on precise forecasts of water flow rates. These forecasts are provided by sophisticated physical models based on differential equations. However, these models do depend on unreliable inputs. Thus, an appropriate data-mining analysis of the physical model and its precision based on features that determine distinct situations seems to be helpful in adjusting the physical model. An of application of fuzzy GUHA method in flood peak prediction is presented in this paper. Measured water flow rate data from a system for emergent flood predictions were used in order to mine fuzzy association rules expressed in natural language. The found associations were interpreted as fuzzy IF-THEN rules and used to predict expected time shift of flow rate peaks forecasted by the given physical model." . "1687-7101" . "\u0160t\u011Bpni\u010Dka, Martin" . . . "GUHA; fuzzy rules; floods; perception-based logical deduction"@en . "2013" . . . . . "RIV/61988987:17610/13:A14018JV" . .