BIG Geospatial Data WHAT IS SPATIAL BIG DATA
BIG Geospatial Data
WHAT IS SPATIAL BIG DATA? § Defined in part by the context, use-case § Data too big, complex for traditional desktop GIS § Often seen as relating to user experience § Three data attributes of unsatisfactory user experience
VOLUME § Massive § Globally distributed § Unacceptable response time § Example: Kriging crowd-sourced temperature data
VELOCITY § Frequent data § Real time § Example: monitoring of smart phones, tweets § Data loss § System failure
VARIETY § Multi-dimensional § Large human effort to accomplish task § Fusion of multiple data sources § Example: mapping post-disaster situation on the ground
EXAMPLES OF BIG SPATIAL DATA § Raster § Global Climate Models § Unmanned aerial vehicle data (drones) § Li. DAR § Vector § Volunteered Geographic information (Open. Street. Map) § GPS Trace Data (tied to eco-routing)
§ Graph § Spatial-Temporal Engine Measurement Data (vehicle sensors sensing elevation) § Historical Speed Profiles (dynamic road routing)
Traditional Spatial Data Big Spatial Data Simple Use Cases Map of 2012 election voter preferences Real time maps of tweets, traffic Examples Point, line, raster graph data Check-ins, drone videos, GPS tracks in phones Volume 106 crime reports/year, gigabytes of roadmaps 1014 GPS traces Variety Raster, vector, graph Moving objects, time-series Velocity Limited velocity (waiting for next Census) High velocity (real-time map of tweets)
SOURCES § Directed § surveillance § Automated § inherent § Volunteered § gifted
DATA PROCESSING § A need to utilize data § Integration § Open data analytics
APPLICATIONS OF BIG SPATIAL DATA § Eco-Routing § UPS routes avoid left-turns to limit idling, save fuel § Eco-routing could be extended across industries, help save fuel § Climate Change models § With more years of historical models, long-range climate models will be more robust § Carto. DB earth observation § Disaster response § Red Cross detected tornado in Texas by following tweets, seeing hotspot
IT CHALLENGES § Data Intensity § Lots of data § Coming in fast! § Formatting, structure, organization § Computing Intensity § Earth phenomena is complex § Complex algorithms and models needed § Often beyond standard computing capacity
§ Concurrent Intensity § Allow use to millions of people at the same time, § Emergency response capabilities § Spatiotemporal Intensity § Data must be intense across space and time § Geographic, atmospheric, oceanic
OTHER ISSUES § Trustworthy § Privacy § Ethical § Technocracy § Corporatization and technology lock-in
REFERENCES § Evans, M. R. , Oliver, D. , Yang, K. , & Shekhar, S. (2013). Enabling Spatial Big Data via Cyber. GIS: Challenges and Opportunities. Cyber. GIS: Fostering a New Wave of Geospatial Innovation and Discovery. Springer Book. § Yang, C. , Goodchild, M. , Huang, Q. , Nebert, D. , Raskin, R. , Xu, Y. , & Fay, D. (2011). Spatial cloud computing: how can the geospatial sciences use and help shape cloud computing? . International Journal of Digital Earth, 4(4), 305 -329.
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