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Hydroinformatics for Scientific Knowledge, Informed Policy, and Effective Response AGENDA Page 4 - 11 CUAHSI Conference on Hydroinformatics July 29 - 31, 2019 Brigham Young University Provo, Utah Hydroinformatics for scientific knowledge, informed policy, and effective response AGENDA Page 4 - 11 BYU CAMPUS DIRECTIONS Page 12 KEYNOTE SPEAKERS Page 13 - 17 PLENARY LIGHTNING TALKS TABLE Page 18 SESSIONS OF Page 19 - 35 WORKSHOPS CONTENTS Page 36 - 39 TOWN HALL Page 40 POSTER PRESENTATIONS Page 41 - 54 2 ACKNOWLEDGEMENTS CUAHSI would like to acknowledge the contributions, support, and assistance from the following organizations: Conference on Hydroinformatics Program Committee Daniel P. Ames (Brigham Young University) Sara Larsen (Upper Colorado River Commission) Emilio Mayorga (University of Washington) Lauren Patterson (Duke University) Jon Pollak (CUAHSI) Jordan Read (U.S. Geological Survey) Dwane Young (U.S. Environmental Protection Agency) Conference Session Chairs, Speakers and Workshop Organizers Brigham Young University CUAHSI Member Institutions National Science Foundation 3 AGENDA Monday, July 29 7:00 - 8:30am Registration and Breakfast Engineering Building (2nd Fl) Welcome Address Engineering 8:45 - 9:00am Building Speaker: Jerad Bales (CUAHSI) (Room 204/206) 9:00 - 10:00am Keynote Engineering Building Incubating progress in hydrologic big data deep learning as a community (Room Speaker: Chaopeng Shen (Pennsylvania State University) 204/206) 10:00 - 10:30am Refreshment Break Engineering Building (2nd Fl) 10:30 - 11:00am Plenary Lightning Talks Engineering Building Leveraging water quality monitoring data through the water quality portal (Room Speaker: Dwane Young (U.S. Environmental Protection Agency) 204/206) HydroQuality: Upload and download quality data Speaker: Chao Chen (Boise State University) Model and code sharing via CUAHSI hosted MATLAB online Speaker: Lisa Kempler (MathWorks) HydroShare: An overview of new functionality developed in support of collaborative reproducible research Speaker: David Tarboton (Utah State University) HydroLearn: Facilitating the development, adaptation and sharing of active-learning resources in hydrology education Speaker: Emad Habib (University of Louisiana at Lafayette) 11:00am - Keynote Engineering 12:00pm Building Enabling global scale water analysis with cloud technologies (Room Speaker: Tyler Erickson (Google) 204/206) 4 12:00 - 1:30pm Lunch Wilkinson Student Center (3rd Fl - Room 3250/3252) Monday Afternoon Concurrent Sessions / Workshops 1:30 - 2:45pm Unveiling new innovations in advanced cyberinfrastructure to support a Engineering community hydrologic modeling ecosystem Building Conveners: Jonathan L. Goodall (University of Virginia; Anthony M. Castronova (CUAHSI); Christina (3rd Fl - Room Bandaragoda (University of Washington) 321) StreamPULSE: a platform for modeling river and stream metabolism on a global scale Speaker: Michael Vlah (Duke University) Design and implementation of cyberinfrastructure to support a cloud-based, community hydrologic modeling ecosystem Speaker: Young-Don Choi (University of Virginia) Model and code sharing via CUAHSI hosted MATLAB online Speaker: Lisa Kempler (MathWorks) Temporal evapotranspiration aggregation method: An application for calculating evapotranspiration metrics, exploring the modifiable aerial unit problem, and shortening the time to science Speaker: James Matthew Coll (University of Kansas) A roadmap for Earthdata remote sensing for hydroinformatics Speakers: Michael Gangl (NASA Physical Oceanography Distributed Active Archive Center); Catalina Oaida (Raytheon); Lewis McGibbney (NASA JPL); Jessica Hausman (NASA JPL) Workshop: The Western States Water Council Water Data Exchange (WaDE) - Engineering Hands-on use cases for insights into water rights and use in the Western United Building States (2nd Fl - Room Instructors: Adel Abdallah, Western States Water Council and Sara Larsen, Upper Colorado River 221) Commission Workshop: HydroQuality: Upload and download quality data Clyde Building Instructors: Chao Chen (Boise State University); Connor Scully-Allison (University of Arizona); Chase (2nd Fl - Room Carthen, (University of Nevada Reno); Rui Wu (East Carolina University) 234) 2:45 - 3:00 Refreshment Break Engineering Building (2nd Fl) 5 Monday Afternoon Concurrent Sessions / Workshops 3:00 - 4:30pm Continental scale community hydrologic modeling cyberinfrastructure, Engineering knowledge representations and data management I Building Convener: David Tarboton (Utah State University) (3rd Fl - Room Optimal access to NASA water cycle data 321) Speaker: Richard Strub (NASA Goddard Earth Sciences Data and Information Services Center) Hydrologic observation, model, and theory congruence on evapotranspiration variance: diagnosis of continental scale land surface models Speaker: Ruijie Zeng (Utah State University) Global monitoring of fresh water at high spatial and temporal resolutions. Assessing stream and lake hydrological/physical features within a machine learning framework Speaker: Giuseppe Amatulli (Yale University) NWM-driven hydrodynamic simulations to resolve complex flow dynamics in low gradient watersheds Speaker: Haitham Saad (University of Louisiana) A novel multi-scale data fusion framework for massive datasets Speaker: Dhruva Kathuria (Texas A&M University) Synergies between mechanistic and machine learning models Engineering Building Convener: Jordan Read (U.S. Geological Survey) Physics guided machine learning: A new paradigm for modeling dynamical systems (3rd Fl - Room 325) Speaker: Vipin Kumar (University of Minnesota) Application of a convolution neural network to the identification of karst features Speaker: Scott Haag (Drexel University) GLADD: A new Global Lake Dynamics Database created using machine learning and satellite data Speaker: Ankush Khandelwal (University of Minnesota) Clowder: Open source data sharing leveraging active curation and applied machine learning Speaker: Bing Zhang (University of Illinois) Workshop: Developing open source water resources web applications using Engineering Tethys platform Building Instructor: Dan Ames (Brigham Young University) (2nd Fl - Room 221) 4:30 - 5:00pm Afternoon Break 5:00 - 6:30pm Poster Session Wilkinson Student Center (3rd Fl - Room 3280/3290) 6 Tuesday, July 30 7:00 - 8:45am Registration and Breakfast Engineering Building (2nd Fl) 8:45 - 9:00am Welcome Engineering Building (Room 204/206) 9:00 - 10:00am Keynote Engineering Building Contemporary challenges in optical remote sensing for hydroenvironmental change detection (Room 204/206) Speaker: Ni-Bin Chang, University of Central Florida 10:00 - Refreshment Break Engineering 10:15am Building (2nd Fl) 10:15 - State of CUAHSI Community Cyberinfrastructure Engineering 11:00am Building Speaker: Anthony Castronova, CUAHSI (Room 204/206) 11:00am - Keynote Engineering 12:00pm Building Open water data and western state water agencies - notes from the field (Room 204/206) Speaker: Sara Larsen, Upper Colorado River Commission 12:00 - 1:30pm Lunch Wilkinson Student Center (3rd Fl - Room 3250/3252) 7 Tuesday Afternoon Concurrent Sessions / Workshops 1:30 - 3:30pm Applied Hydroinformatics Engineering Building Convener: Kyle Onda (Duke University) Cyberinfrastructure for intelligent water supply: Measuring water use, conservation, and socio- (3rd Fl - Room demographic differences using an inexpensive, high frequency metering system 321) Speaker: Jeffery S. Horsburgh (Utah State University) A citizen science approach to streamflow and temperature forecasting Speaker: Pedro Mauricio Avellaneda-Lopez (Indiana University) Characterization of water resources using an online groundwater level mapping tool Speaker: Norm Jones (Brigham Young University) Using random forest models to predict streamflow metrics in ungauged watersheds and to estimate hydrologic alteration in urban streams Speaker: Charles Stillwell (U.S. Geological Survey) Hydrological Event Detection & Analysis (HEDA) tool for streamflow water quality time series Speaker: Scott Hamshaw (University of Vermont) Regional flood forecasting applications for the Dominican Republic Speaker: Jason Biesinger (Brigham Young University) Continental scale community hydrologic modeling cyberinfrastructure, Engineering knowledge representations and data management II Building Convener: Jerad Bales (CUAHSI) (3rd Fl - Room 325) The National Hydrologic Model: an infrastructure for collaboration in the hydrologic community Speaker: Steven Markstrom (U.S. Geological Survey) Cyberinfrastructure needs for continental-domain hydrological modeling Speaker: Martyn P. Clark (University of Saskatchewan at Canmore) Incorporating river geometry in large scale hydrologic and hydrodynamic models Speaker: Sayan Dey (Purdue University) Fast summarizing algorithm for polygonal statistics over a regular grid Speaker: Scott Haag (Drexel University) Workshop: Facilitating the development, adaptation, and sharing of active- Engineering learning resources in hydrology education Building Instructors: Emad Habib, University of Louisiana; Melissa Gallagher, University of Louisiana; David (2nd Fl - Room Tarboton, Utah State University; Dan Ames, Brigham Young University 221) 1:30 - 5:00pm Workshop: Use GDAL, PKTOOLS and GRASS for massive raster operations in Clyde Building hydrology (2nd Fl - Room Instructors: Giuseppe Amatulli, Yale University 234) 3:30 - 4:00pm Refreshment Break Engineering Building (2nd Fl) 8 Tuesday Afternoon Concurrent Sessions / Workshops 4:00 - 6:00pm Advancing cyberinfrastructure for sharing, managing and publishing geoscience Engineering data and models in support of transparent,
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