Ubiquitous Geo-Sensing for Context-Aware Analysis: Exploring Relationships between Environmental and Human Dynamics

Sensors - Tập 12 Số 7 - Trang 9800-9822
Günther Sagl1, Thomas Blaschke2, Euro Beinat2, Bernd Resch3,4
1Doctoral College Geographic Information Science, University of Salzburg, Schillerstrasse 30, 5020 Salzburg, Austria
2Centre for Geoinformatics, University of Salzburg, Schillerstrasse 30, 5020 Salzburg, Austria
3Institute for Geoinformatics and Remote Sensing, University of Osnabrück, Barbarastrasse 22b, 49076 Osnabrück, Germany
4SENSEable City Lab, Massachusetts Institute of Technology, 9-209, 77 Massachusetts Avenue, Cambridge, MA 02139, USA

Tóm tắt

Ubiquitous geo-sensing enables context-aware analyses of physical and social phenomena, i.e., analyzing one phenomenon in the context of another. Although such context-aware analysis can potentially enable a more holistic understanding of spatio-temporal processes, it is rarely documented in the scientific literature yet. In this paper we analyzed the collective human behavior in the context of the weather. We therefore explored the complex relationships between these two spatio-temporal phenomena to provide novel insights into the dynamics of urban systems. Aggregated mobile phone data, which served as a proxy for collective human behavior, was linked with the weather data from climate stations in the case study area, the city of Udine, Northern Italy. To identify and characterize potential patterns within the weather-human relationships, we developed a hybrid approach which integrates several spatio-temporal statistical analysis methods. Thereby we show that explanatory factor analysis, when applied to a number of meteorological variables, can be used to differentiate between normal and adverse weather conditions. Further, we measured the strength of the relationship between the ‘global’ adverse weather conditions and the spatially explicit effective variations in user-generated mobile network traffic for three distinct periods using the Maximal Information Coefficient (MIC). The analyses result in three spatially referenced maps of MICs which reveal interesting insights into collective human dynamics in the context of weather, but also initiate several new scientific challenges.

Từ khóa


Tài liệu tham khảo

Hidalgo, 2008, Understanding individual human mobility patterns, Nature, 453, 779, 10.1038/nature06958

Onnela, 2007, Structure and tie strengths in mobile communication networks, Proc. Natl. Acad. Sci. USA, 104, 7332, 10.1073/pnas.0610245104

Candia, J., González, M.C., Wang, P., Schoenharl, T., Madey, G., and Barabási, A.-L. (2008). Uncovering individual and collective human dynamics from mobile phone records. J. Phys. A: Math. Theor., 41.

Blaschke, 2011, Collective sensing: Integrating geospatial technologies to understand urban systems—An overview, Remote Sens., 3, 1743, 10.3390/rs3081743

Hart, 2006, Environmental sensor networks: A revolution in the earth system science?, Earth Sci. Rev., 78, 177, 10.1016/j.earscirev.2006.05.001

Resch, 2010, Live geography: Interoperable geo-sensor webs facilitating the vision of digital earth, Int. J. Adv. Netw. Serv., 3, 323

Sagl, G., Beinat, E., Resch, B., and Blaschke, T. (1, January 29). Integrated Geo-Sensing: A Case Study on the Relationships between Weather Conditions and Mobile Phone Usage in Northern Italy. Fuzhou, China.

Hsiang, 2011, Civil conflicts are associated with the global climate, Nature, 476, 438, 10.1038/nature10311

Tacoli, 2009, Crisis or adaptation? Migration and climate change in a context of high mobility, Environ. Urban., 21, 513, 10.1177/0956247809342182

Song, 2010, Limits of predictability in human mobility, Science, 327, 1018, 10.1126/science.1177170

Calabrese, F., Lorenzo, G.D., and Ratti, C. (September, January 19–). Human Mobility Prediction Based on Individual and Collective Geographical Preferences. Madeira Island, Portugal.

Traag, V.A., Browet, A., Calabrese, F., and Morlot, F. (October, January 9–). Social Event Detection in Massive Mobile Phone Data Using Probabilistic Location Inference. Boston, MA, USA.

Calabrese, 2011, Real-time urban monitoring using cell phones: A case study in Rome, IEEE Trans. Intell. Transp. Syst., 12, 141, 10.1109/TITS.2010.2074196

Reades, 2009, Eigenplaces: Analysing cities using the space-time structure of the mobile phone network, Environ. Plan. B Plan. Des., 36, 824, 10.1068/b34133t

Girardin, 2009, Quantifying urban attractiveness from the distribution and density of digital footprints, Int. J. Spat. Data Infrastruct. Res., 4, 175

Ratti, C., Sobolevsky, S., Calabrese, F., Andris, C., Reades, J., Martino, M., Claxton, R., and Strogatz, S.H. (2010). Redrawing the map of Great Britain from a network of human interactions. PLoS One, 5.

Calabrese, F., Dahlem, D., Gerber, A., Paul, D., Chen, X., Rowland, J., Rath, C., and Ratti, C. (October, January 9–). The Connected States of America: Quantifying Social Radii of Influence. Boston, MA, USA.

Salah, A., Gevers, T., Sebe, N., and Vinciarelli, A. (2010). Human Behavior Understanding, Springer. Volume 6219.

Sevtsuk, 2010, Does urban mobility have a daily routine? Learning from the aggregate data of mobile networks, J. Urban Technol., 17, 41, 10.1080/10630731003597322

Becker, 2011, A tale of one city: Using cellular network data for urban planning, IEEE Pervasive Comput., 10, 18, 10.1109/MPRV.2011.44

Di Lorenzo, G., and Calabrese, F. (October, January 5–). Identifying Human Spatio-Temporal Activity Patterns from Mobile-Phone Traces. Washington, DC, USA.

Martino, M., Calabrese, F., Lorenzo, G.D., Andris, C., Liu, L., and Ratti, C. Ocean of Information: Fusing Aggregate & Individual Dynamics for Metropolitan Analysis. Hong Kong, China.

Calabrese, F., Pereira, F.C., Lorenzo, G.D., Liu, L., and Ratti, C. (2010). Pervasive Computing (Lecture Notes in Computer Science), Springer. Volume 6030/2010.

Gore, A. The Digital Earth: Understanding our planet in the 21st Century. Available online: http://portal.opengeospatial.org/files/?artifact_id=6210 (accessed on 8 November 2011).

Sagl, G., Resch, B., Hawelka, B., and Beinat, E. From Social Sensor Data to Collective Human Behaviour Patterns: Analysing and Visualising Spatio-Temporal Dynamics in Urban Environments. Salzburg, Austria.

Goodchild, 2007, Citizens as sensors: The world of volunteered geography, GeoJournal, 69, 211, 10.1007/s10708-007-9111-y

SENSEable City Lab MIT LIVE Singapore!. Available online: http://senseable.mit.edu/livesingapore/ (accessed on 17 May 2012).

Phithakkitnukoon, S., Leong, T.W., Smoreda, Z., and Olivier, P. (2012). Weather Effects on Mobile Social Interaction: A Case Study Of Mobile Phone Users in Lisbon, Portugal, Newcastle University. Computing Science, Technical Report Series; No. CS-TR-1315.

Hayes, J., and Stephenson, M. (2011, January 12–15). Bridging the Social and Physical Sensing Worlds: Detecting Coverage Gaps and Improving Sensor Networks. San Francisco, CA, USA.

Wang, 2010, A CyberGIS framework for the synthesis of cyberinfrastructure, GIS, and spatial analysis, Ann. Assoc. Am. Geogr., 100, 535, 10.1080/00045601003791243

Yang, 2010, Geospatial cyberinfrastructure: Past, present and future, Comput. Environ. Urban Syst., 34, 264, 10.1016/j.compenvurbsys.2010.04.001

Lucchi, 2009, Service chaining architectures for applications implementing distributed geographic information processing, Int. J. Geogr. Inf. Sci., 23, 561, 10.1080/13658810802665570

Sagl, G., Resch, B., Mittlboeck, M., Hochwimmer, B., Lippautz, M., and Roth, C. (2012). Standardised geo-sensor webs and web-based geo-processing for near real-time situational awareness in emergency management. Int. J. Bus. Contin. Risk Manag, in press.

Lane, 2010, A survey of mobile phone sensing, IEEE Commun. Mag., 48, 140, 10.1109/MCOM.2010.5560598

Resch, 2010, Pervasive monitoring—An intelligent sensor pod approach for standardised measurement infrastructures, Sensors, 10, 11440, 10.3390/s101211440

Alesheikh, 2005, Providing interoperability for air quality in-situ sensors observations using GML technology, Int. J. Environ. Sci. Technol., 2, 133, 10.1007/BF03325867

Rios, 2002, Value of security: Modeling time-dependent phenomena and weather conditions, Power Syst. IEEE Trans., 17, 543, 10.1109/TPWRS.2002.800872

Warner, R.M. (1998). Spectral Analysis of Time-Series Data, The Guildford Press.

Reshef, 2011, Detecting novel associations in large data sets, Science, 334, 1518, 10.1126/science.1205438

Reshef, D., and Reshef, Y. MINE: Maximal Information-Based Nonparametric Exploration. Available online: http://www.exploredata.net/ (accessed on 17 May 2012).

Bartlett, 1950, Test of significance in factor analysis, Br. J. Psychol., 3, 77

Kaiser, 1974, An index of factorial simplicity, Psychometrika, 39, 32, 10.1007/BF02291575

Neyman, J. Statistical Inference in Facor Analysis. Volume 5.

Akinaga, Y., Kaneda, S., Shinagawa, N., and Miura, A. (2, January 28). A Proposal for a Mobile Communication Traffic Forecasting Method Using Time-Series Analysis for Multi-Variate Data. St. Louis, MO, USA. Volume 2.

Koopmans, L.H. (1995). The Spectral Analysis of Time Series, Academic Press Inc.. Volume 22.

SAF Headquarters and Offices Available online: http://www.saf.ud.it/cms/data/lista/000007.aspx (accessed on 9 June 2012).

Centro Studi Volta Official Website Available online: http://www.istitutovolta.it/it.html (accessed on 9 June 2012).

Bepo Glace Blog Via Monte Sei Busi Available online: http://bepoglace.wordpress.com/2010/09/07/via-monte-sei-busi/ (access on 9 June 2012).

Beata Vergine Delle Grazie-Udine Official Website Available online: http://www.bvgrazie.it/ (accessed on 10 June 2012).

Università degli studi di Udine Official Website Available online: http://www.uniud.it/didattica/facolta/interfacolta/biotecnologie/info_dida/calendario_accademico (accessed on 11 June 2012).

Telecom Italia Mobile TIM Domestic Market Available online: http://www.telecomitalia.com/tit/en/investors/business_areas_competitive_scenario/domestic_market.html (accessed on 25 June 2012).

Simon, N., and Tibshirani, R. Comment on “Detecting Novel Associations in Large Data Sets”. Available online: http://www-stat.stanford.edu/∼tibs/reshef/comment.pdf (accessed on 10 June 2012).

Szekely, 2009, Brownian distance covariance, Ann. Appl. Stat., 3, 1236