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StormSense: A New Integrated Network of IoT Water Level Sensors in the Smart Cities of Hampton Roads, VA
Loftis, Jon Derek ; Forrest, David R. ; Katragadda, Sridhar ; Spencer, Kyle ; Organski, Tammie ; Nguyen, Cuong ; Rhee, Sokwoo
Loftis, Jon Derek
Forrest, David R.
Katragadda, Sridhar
Spencer, Kyle
Organski, Tammie
Nguyen, Cuong
Rhee, Sokwoo
Abstract
Propagation of cost-effective water level sensors powered through the Internet of Things (IoT) has expanded the available offerings of ingestible data streams at the disposal of modern smart cities. StormSense is an IoT-enabled inundation forecasting research initiative and an active participant in the Global City Teams Challenge, seeking to enhance flood preparedness in the smart cities of Hampton Roads, VA, for flooding resulting from storm surge, rain, and tides. In this study, we present the results of the new StormSense water level sensors to help establish the “regional resilience monitoring network” noted as a key recommendation from the Intergovernmental Pilot Project. To accomplish this, the Commonwealth Center for Recurrent Flooding Resiliency’s Tidewatch tidal forecast system is being used as a starting point to integrate the extant (NOAA) and new (United States Geological Survey [USGS] and StormSense) water level sensors throughout the region and demonstrate replicability of the solution across the cities of Newport News, Norfolk, and Virginia Beach within Hampton Roads, VA. StormSense’s network employed a mix of ultrasonic and radar remote sensing technologies to record water levels during 2017 Hurricanes Jose and Maria. These data were used to validate the inundation predictions of a street level hydrodynamic model (5-m resolution), whereas the water levels from the sensors and the model were concomitantly validated by a temporary water level sensor deployed by the USGS in the Hague and crowd-sourced GPS maximum flooding extent observations from the sea level rise app, developed in Norfolk, VA.
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2018-01-01
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CCRM Peer Reviewed Articles
Physical Sciences Peer-Reviewed Articles, Hurricane Jose; Hurricane Maria; Hydrodynamic modeling; King tide, Water levels--Forecasting--Virginia--Atlantic Coast
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Virginia Institute of Marine Science
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https://doi.org/10.4031/MTSJ.52.2.7
