Smart City Technologies Can Provide Streetscape Data for Pandemic Analytics.
by GISELE GALOUSTIAN | Sunday, Mar 08, 2020FAU I-SENSE and College of Engineering and Computer Science Retool听
Their 鈥楳obility Intelligence Project鈥 for Computational Epidemiology
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Studying the way people move and interact is playing an increasingly important role in understanding how an infection spreads during a pandemic and revealing whether efforts such as social distancing are working. A unique project developed and implemented by researchers at听最大资源采集网听in collaboration with the听听will help to tackle the coronavirus disease (COVID-19) using cutting-edge computational epidemiology.听
The work builds on the 鈥淢obility Intelligence Project鈥 (MIP), an existing collaboration between the two partners. MIP is a first-of-its-kind mobility sensing, analytics, and recommendation system developed by FAU鈥檚听Institute for Sensing and Embedded Network Systems Engineering (I-SENSE) and the听College of Engineering and Computer Science. Originally designed to听improve the quality of life for people who live, work, and play in Downtown West Palm Beach, MIP is being retooled to simulate virus transmission using realistic, contextualized models 鈥 models based on how people听actually听move and interact within the city.听
鈥淭here is significant untapped potential in our emerging smart cities to enable hyper-contextualized computational epidemiology,鈥 said听Jason O. Hallstrom, Ph.D., director of I-SENSE and a professor in the听Department of Electrical Engineering & Computer Science听at FAU. 鈥淔ine-scale mobility datasets are especially powerful. In the case of our Mobility Intelligence Project, those datasets are being collected in real-time, allowing instantaneous modeling and projection of disease spread based on evolving mobility patterns such as those resulting from urban planning initiatives and social distancing guidelines.
Using this cutting-edge technology, Hallstrom鈥檚 team has听developed a proof-of-concept for medium-density and high-density population simulations that demonstrate viral spread and progression from healthy individuals to active infection to recovery, and in some cases, mortality from the disease. People in the contextualized simulations are represented by tiny moving dots. Eventually, these dots will represent real mobility patterns recorded through the MIP platform. The proof-of-concept relies on simulated motion, similar to 鈥淏rownian motion,鈥 the random battering of small particles by atoms and molecules that are constantly moving.听
鈥淭his project will provide a semi-real-time map of where people are and how they are interacting with one another,鈥 said Hallstrom. 鈥淭he concept is to integrate evidence-based models of COVID-19 transmission with hyper-local mobility data to provide place-specific forecasts of disease transmission. When these tools are integrated into city planning efforts, they will provide real-time insights into how mobility changes within the city affect the local population鈥檚 susceptibility to future outbreaks.鈥澨
Last fall, Hallstrom鈥檚 Ph.D. candidates, Fanchen Bao and Stepan Mazokha, installed sensors along the iconic Clematis Street, the hub of West Palm Beach鈥檚 business district. As the installation grows,听the MIP sensors will be able to differentiate between pedestrian and vehicular traffic. Patterns are captured at the scale of individual vehicles and pedestrians, with the capacity to establish population-wide patterns, and to monitor changes in those patterns over time.听
The technology was designed to protect personal privacy听and relies on passive, anonymous monitoring of the unique WiFi and Bluetooth addresses beaconed from popular cell phones and other smart devices.听MIP scrambles information received from people鈥檚 mobile devices so that it cannot be traced back to its original source.听
Using MIP, the city will be able to understand the movement of people in Downtown West Palm Beach. Are they practicing social distancing? Are there infrastructure improvements that could help? Following stay at home and social distancing guidelines for COVID-19, the FAU research team has noticed an 80-90 percent decline in people congregating and moving around the city. They are continuing to monitor this trend.听听听
鈥淭he ability to provide real data on mobility patterns, and to use this data to forecast disease spread is not only a vital tool for epidemiologists studying COVID-19, it also has critical implications for the future,鈥 said听Stella Batalama, Ph.D., dean of the College of Engineering and Computer Science at FAU. 鈥淥ur Mobility Intelligence Project also will assist urban planners and architects to design and build thoughtful neighborhoods and cities that will prevent or mitigate the spread of disease.鈥澨
The objective of the three-year MIP, funded by the City of West Palm Beach, the听, and the听, is to provide the groundwork for understanding mobility patterns, at population scales, with the capacity to disaggregate by group. Mobility data will be fused with GIS content to annotate mobility origins, destinations, and routes (e.g., origin neighborhood, business type, degree of canopy cover). The concept is to learn the connections between people and place in the areas they most often frequent for their meals, entertainment and essential services, and to use that knowledge to draw people to new places, and to establish new connections.听
鈥溩畲笞试床杉, the City of West Palm Beach, the Knight Foundation and the Community Foundation for Palm Beach and Martin Counties are working closely to combat this current public health crisis and to help ensure the safety of our citizens,鈥 said Hallstrom. 鈥淲e are extremely grateful for their continued support and for the impact that our joint efforts will have on the health and well-being of our community.鈥澨