Experts involved in the application of tidal and storm surge induction models have constantly insisted on the parameterization of surface roughness as a key component is their practice and professional engagements. To a large extent therefore, surface roughness has been approached as the ability of the terrain of any given terrain to act as a momentum sink to the overland water flowing across the surface as well as the prevailing moving air (wind) that subsequently help drive the flow. Hence, the effects of surface roughness on the overland water and wind are best determine using estimates of manning’s n, surface coverage canopy and effective aerodynamic roughness length of the given locality which at times vary spatially depending on the modeling domain as the pertinent function of the physical landscape.
Werner(2004), for instance argues that while land usage and hence cover method may be used to automatically parameterize surface roughness of an extremely large model domain, certain parameter prediction errors emanate due to the differences in types of land cover , misclassification and at times inaccurate estimation of the inundation extent and duration. Surface features and Terrain According to Werner et al. (2004), the propagation of overland inundation is hugely dependent on the roughness of the terrain surface.
In fact, roughness of the terrain and topography are considered as the two most important parameters that influence overland flow. Similarly, drag forces exerted on the water and wind flow by the above-ground obstacles in the flood plain such as vegetation cover, shrubs, grasses, trees and other erect structures help in the dissipation of hydraulic energy as well as the momentum of the flood wave in the floodplain. The obstacles or obstructions also help in the modification of wind characteristics which is an extremely important forcing mechanism in the modeling of hurricane storm surges.
In most finite scenarios, the above phenomena are parameterized and subsequently implemented in a bottom friction coefficients form such as manning’s n and other coefficients that are used to depict surface canopy closure and overall roughness length. Various studies intended at establishing and improving surface flood plain roughness often consider the bottom friction calibrated model as compared to the use of LiDAR data. Nevertheless, several research studies have also advanced models that seek to elaborately describe the dynamics of the LiDAR data as purely as possible without the use of calibrated or tuned friction characteristics in establishment of the floodplain roughness.
Human settlement in the floodplains is not a new concept in geographical studies. Available evidence for instance indicate that for a long time now, people have continuously developed settlements in floodplains and as a result, thousands of others have continued to do so, hence turning events of flooding into extremely dangerous, yet recurrent natural disasters of the modern generation. Flood risk management as well the overall reduction of potential destructive effects have been subsequently dealt with by various emergency management agencies that carry out mapping of flood prone areas in order to come up with Digital Flood Insurance Rate Maps (DFIRMS) for such regions.
In 2007, the European Commission approved the implementation of the European Union (EU) Flood Directive of 2007 that requires all the affiliated member states to carry out exhaustive and elaborate risk easements of flooding areas and map potential flood extent so as to facilitate the coordination and other related activities collectively aimed at reducing the risk of floods. According to the European Union (EU) Flood Directive of 2007, topographic data was cited as an inevitable requirement in the entire process of establishment of the precision of flood maps and related models for most inland areas.
Similarly, topographic data alone was found to offer some degree of error in flood modelling and hence the need to support such information with additional scientific research findings.
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