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Published byWilla Patricia Cole Modified over 8 years ago
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BIG Geospatial Data
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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
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VOLUME Massive Globally distributed Unacceptable response time Example: Kriging crowd-sourced temperature data
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VELOCITY Frequent data Real time Example: monitoring of smart phones, tweets Data loss System failure
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VARIETY Multi-dimensional Large human effort to accomplish task Fusion of multiple data sources Example: mapping post-disaster situation on the ground
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EXAMPLES OF BIG SPATIAL DATA Raster Global Climate Models Unmanned aerial vehicle data (drones) LiDAR Vector Volunteered Geographic information (OpenStreetMap) GPS Trace Data (tied to eco-routing)
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Graph Spatial-Temporal Engine Measurement Data (vehicle sensors sensing elevation) Historical Speed Profiles (dynamic road routing)
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Traditional Spatial DataBig Spatial Data Simple Use Cases Map of 2012 election voter preferences Real time maps of tweets, traffic ExamplesPoint, line, raster graph dataCheck-ins, drone videos, GPS tracks in phones Volume10 6 crime reports/year, gigabytes of roadmaps 10 14 GPS traces VarietyRaster, vector, graphMoving objects, time-series VelocityLimited velocity (waiting for next Census) High velocity (real-time map of tweets)
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SOURCES Directed surveillance Automated inherent Volunteered gifted
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DATA PROCESSING A need to utilize data Integration Open data analytics
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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 CartoDB earth observation Disaster response Red Cross detected tornado in Texas by following tweets, seeing hotspot
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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
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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
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OTHER ISSUES Trustworthy Privacy Ethical Technocracy Corporatization and technology lock-in
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REFERENCES Evans, M. R., Oliver, D., Yang, K., & Shekhar, S. (2013). Enabling Spatial Big Data via CyberGIS: Challenges and Opportunities. CyberGIS: 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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