The Kansas Biological Survey has developed a library of modeled flood inundation extents, using the FLDPLN model, for major streams across Kansas that can be accessed in near real-time to provide valuable information to disaster responders. This research 1) examines the USGS National Elevation Dataset (NED) and evaluates the affects of errors in the elevation data on flood inundation extent estimation and 2) evaluates the capabilities and limitations of the FLDPLN model for inundation extent estimation. Results showed that, although the accuracy of pre-LiDAR NED is better than published figures, modeled flood extents vary significantly when using LiDAR-derived vs. pre-LiDAR NED elevation data inputs. Comparison of modeled flood extents for ...
Flooding is among the most destructive natural disasters. Continuous monitoring of potential floodin...
Flooding is the costliest natural disaster in the United States and tragically often leads to loss o...
This presentation was given as part of the GIS Day@KU symposium on November 15, 2017. For more infor...
The Kansas Biological Survey has developed a library of modeled flood inundation extents, using the ...
New methods are needed for mapping floods in near real-time that leverage the increasing availabilit...
Flood models predict inundation extents, and can be an important source of information for flood ris...
In the United States, many river floodplains contain critical infrastructure that is vulnerable to e...
Recent flood disasters, such as Hurricane Harvey in 2017, have emphasized the need for computational...
This dissertation describes two unrelated threads of research. The first is a study of cross validat...
Spatial Modeling Applications Jude Kastens – Research Assistant, Kansas Applied Remote Sensing Progr...
Recent floods from intense storms in the southern United States and the unusually active 2017 Atlant...
National Weather ServicePlatinum Sponsors * KU Transportation Research Institute Gold Sponsors...
The variable flood regime of a natural floodplain supports a variety of vegetation and habitat niche...
There are various methods that are used to predict flood inundation. The U.S. Army Corps of Enginee...
Flooding is one of the most devastating natural disasters occurring annually in the Philippines. A c...
Flooding is among the most destructive natural disasters. Continuous monitoring of potential floodin...
Flooding is the costliest natural disaster in the United States and tragically often leads to loss o...
This presentation was given as part of the GIS Day@KU symposium on November 15, 2017. For more infor...
The Kansas Biological Survey has developed a library of modeled flood inundation extents, using the ...
New methods are needed for mapping floods in near real-time that leverage the increasing availabilit...
Flood models predict inundation extents, and can be an important source of information for flood ris...
In the United States, many river floodplains contain critical infrastructure that is vulnerable to e...
Recent flood disasters, such as Hurricane Harvey in 2017, have emphasized the need for computational...
This dissertation describes two unrelated threads of research. The first is a study of cross validat...
Spatial Modeling Applications Jude Kastens – Research Assistant, Kansas Applied Remote Sensing Progr...
Recent floods from intense storms in the southern United States and the unusually active 2017 Atlant...
National Weather ServicePlatinum Sponsors * KU Transportation Research Institute Gold Sponsors...
The variable flood regime of a natural floodplain supports a variety of vegetation and habitat niche...
There are various methods that are used to predict flood inundation. The U.S. Army Corps of Enginee...
Flooding is one of the most devastating natural disasters occurring annually in the Philippines. A c...
Flooding is among the most destructive natural disasters. Continuous monitoring of potential floodin...
Flooding is the costliest natural disaster in the United States and tragically often leads to loss o...
This presentation was given as part of the GIS Day@KU symposium on November 15, 2017. For more infor...