In order to join virtual sessions, you must be registered and logged-in(Were you registered for the in-person meeting in Denver? if yes, just log in.) 
Note: All session times are in Mountain Daylight Time.

Computational spatial science approaches to building smarter and healthier cities II

Type: Paper
Sponsor Groups: Spatial Analysis and Modeling Specialty Group, Geographic Information Science and Systems Specialty Group, Transportation Geography Specialty Group
Organizers: Avipsa Roy, Ziqi Li
Chairs: Avipsa Roy


The advances in sensor technologies and availability of connected devices have enabled the generation of large volumes of disparate, dynamic and geolocated data by both scientific communities and citizens. Such technological innovations have given birth to the concept of smart and connected cities. A smart city is forward-looking and progressive and has the potential to provide a higher-quality of life while meeting the daily needs of its citizens. The growing awareness among state authorities and local agencies regarding health, environmental, and economic benefits of smarter cities have motivated development of new methods in order to plan and design smarter cities.
Resilience is of utmost importance to design smarter cities. Therefore, the need for computational methods that can combine online and real-time knowledge discovery from dynamic geospatial data streams in conjunction with socio-economic data has risen enormously. These methods are designed to help practitioners and researchers with improved policymaking. The recent developments in data science and artificial intelligence have enabled integration of online (social-media) and static data sets (census/demographics/socio-economic/land-use) to develop robust spatial analytics approaches. The issue of modeling urban designs to build a smart city which is also resilient needs to be well understood to maximize the benefits of connected technologies - smartphones, GPS devices, health tracking devices etc. Visualization techniques are also important to allow public participation not only in data collection, but also in analytics and decision-making efforts to reduce error and uncertainties. Incorporating good quality and bias-corrected crowdsourced data with traditional data sources is another approach to improve data quality for connected applications and ease the decision-making process by policymakers.


Type Details Minutes Start Time
Presenter Haiyun Ye*, University of California, Santa Barbara, Analyzing patterns of U.S. tornado casualties with spatio-temporal clustering methods 15 12:00 AM
Presenter Colin Ferster*, University of Victoria, Trisalyn Nelson, Arizona State University, School of Geographical Sciences & Urban Planning, Laberee Karen, University of Victoria, Department of Geography, Winters Meghan, Simon Fraser University, Faculty of Health Sciences, Using crowdsourced data to estimating exposure for bicycling safety 15 12:00 AM
Presenter Daniel Fuller*, , Henry Luan, University of Oregon, Ali Alfosool, Memorial University, Yuanzhu Chen, Memorial University, Time weighted approaches for combining GPS and area level data to create individual exposure measures 15 12:00 AM
Presenter Valentin Maigret*, Universite de Cergy-Pontoise, Geovizualization of residential tranquility and safety in Paris 15 12:00 AM

To access contact information login