Weitere Kapitel dieses Buchs durch Wischen aufrufen
Over the past few decades, the population in the urban areas has been increasing in a dramatic manner. Currently, about 80% of the U.S. population and about 50% of the world’s population live in urban areas and the population growth rate for urban areas is estimated to be over one million people per week [1, 2]. By 2050, it has been predicted that 64% of people in the developing nations and 85% of people in the developed world would be living in urban areas [1, 2]. Such a dramatic population growth in urban areas has been placing demands on urban infrastructure like never before .
Bitte loggen Sie sich ein, um Zugang zu diesem Inhalt zu erhalten
Sie möchten Zugang zu diesem Inhalt erhalten? Dann informieren Sie sich jetzt über unsere Produkte:
S. E. Koonin, “Urban informatics: Putting big data to work in our cities [online],” http://data-informed.com/urban-informatics-putting-big-data-to-work-in-our-cities/, 2016.
“NYU Center for Urban Science and Progress [online],” http://cusp.nyu.edu/urban-informatics/.
“Beyond smart cities - people first approach [online],” http://www.urbaninformatics.net/.
M. Foth, J. H. Choi, and C. Satchell, “Urban informatics,” in Proceedings of the ACM 2011 Conference on Computer Supported Cooperative Work, 2011, pp. 1–8.
“Wikipedia article on Urban Computing [online],” https://en.wikipedia.org/wiki/Urban_computing.
“McKinsey Report [online],” http://mckinseyonsociety.com/emerging-trends-in-urban-informatics/.
A. Mondal, P. Rao, and S. K. Madria, “Mobile computing, internet of things, and big data for urban informatics,” in International Conference on Mobile Data Management (MDM), vol. 2, 2016, pp. 8–11.
N. Ferreira, J. Poco, H. T. Vo, J. Freire, and C. T. Silva, “Visual exploration of big spatio-temporal urban data: A study of New York City taxi trips,” IEEE Transactions on Visualization and Computer Graphics, vol. 19, no. 12, pp. 2149–2158, Dec. 2013.
J. He, K. Kunze, C. Lofi, S. K. Madria, and S. Sigg, “Towards mobile sensor-aware crowdsourcing: Architecture, opportunities and challenges,” in Proc. DASFAA Workshops, 2014, pp. 403–412.
D. Yang, G. Xue, X. Fang, and J. Tang, “Crowdsourcing to smartphones: Incentive mechanism design for mobile phone sensing,” in Proceedings of the 18th annual international conference on Mobile computing and networking, 2012, pp. 173–184.
A. Jian, G. Xiaolin, Y. Jianwei, S. Yu, and H. Xin, “Mobile crowd sensing for Internet of Things: A credible crowdsourcing model in mobile-sense service,” in Proceedings of the IEEE International Conference on Multimedia Big Data, 2015, pp. 92–99.
J. M. Hernández-Muñoz, J. B. Vercher, L. Muñoz, J. A. Galache, M. Presser, L. A. H. Gómez, and J. Pettersson, “The Future Internet,” 2011, ch. Smart Cities at the Forefront of the Future Internet, pp. 447–462. CrossRef
J. Gubbi, R. Buyya, S. Marusic, and M. Palaniswami, “Internet of Things (IoT): A vision, architectural elements, and future directions,” Future Generation Computer Systems, vol. 29, no. 7, pp. 1645–1660, Sep. 2013.
S. Zygiaris, “Smart city reference model: Assisting planners to conceptualize the building of smart city innovation ecosystems,” Journal of the Knowledge Economy, vol. 4, no. 2, pp. 217–231, Jun 2013. CrossRef
L. Filipponi, A. Vitaletti, G. Landi, V. Memeo, G. Laura, and P. Pucci, “Smart city: An event driven architecture for monitoring public spaces with heterogeneous sensors,” in Fourth International Conference on Sensor Technologies and Applications, 2010, pp. 281–286.
A. Attwood, M. Merabti, P. Fergus, and O. Abuelmaatti, “SCCIR: Smart cities critical infrastructure response framework,” Proceedings of 4th International Conference on Developments in eSystems Engineering, 2011.
N. Zygouras, N. Zacheilas, V. Kalogeraki, D. Kinane, and D. Gunopulos, “Insights on a scalable and dynamic traffic management system,” Proceedings of EDBT, 2015.
T. Mukherjee, D. Chander, A. Mondal, K. Dasgupta, A. Kumar, and A. Venkat, “CityZen: A cost-effective city management system with incentive-driven resident engagement,” in IEEE 15th International Conference on Mobile Data Management, MDM, 2014, pp. 289–296.
S. Basu Roy, I. Lykourentzou, S. Thirumuruganathan, S. Amer-Yahia, and G. Das, “Task assignment optimization in knowledge-intensive crowdsourcing,” The VLDB Journal, vol. 24, no. 4, pp. 467–491, Aug. 2015.
N. Panagiotou, N. Zygouras, I. Katakis, D. Gunopulos, N. Zacheilas, I. Boutsis, V. Kalogeraki, S. Lynch, and B. O’Brien, “Intelligent urban data monitoring for smart cities,” Proceedings of the European Conference on Machine Learning and Knowledge Discovery in Databases (ECML PKDD), pp. 177–192, 2016. CrossRef
G. Suciu, A. Vulpe, S. Halunga, O. Fratu, G. Todoran, and V. Suciu, “Smart cities built on resilient Cloud Computing and secure Internet of Things,” Proceedings of the International Conference on Control Systems and Computer Science, pp. 513–518, 2013.
W. M. da Silva, A. Alvaro, G. H. R. P. Tomas, R. A. Afonso, K. L. Dias, and V. C. Garcia, “Smart cities software architectures: A survey,” in Proceedings of the 28th Annual ACM Symposium on Applied Computing, ser. SAC ’13, 2013, pp. 1722–1727.
E. M. Daly, F. Lecue, and V. Bicer, “Westland row why so slow?: Fusing social media and linked data sources for understanding real-time traffic conditions,” in Proceedings of the ACM International Conference on Intelligent User Interfaces, 2013, pp. 203–212.
H. Khazaei, S. Zareian, R. Veleda, and M. Litoiu, “Sipresk: A big data analytic platform for smart transportation,” First EAI International Summit, pp. 419–430, 2016.
“Ushahidi Platform [online],” https://blog.ushahidi.com/2012/06/05/ushahidi-beijing/.
“Fixmystreet platform [online],” https://www.fixmystreet.com/.
P. Mohan, V. N. Padmanabhan, and R. Ramjee, “Nericell: rich monitoring of road and traffic conditions using mobile smartphones,” in Proceedings of the 6th ACM conference on Embedded network sensor systems, 2008, pp. 323–336.
M. Jain, A. P. Singh, S. Bali, and S. Kaul, “Speed-breaker early warning system.” in Proc. USENIX/ACM Workshop on Networked System for Developing Regions, 2012.
Y.-c. Tai, C.-w. Chan, and J. Y.-j. Hsu, “Automatic road anomaly detection using smart mobile device,” in conference on technologies and applications of artificial intelligence, 2010.
A. Mondal, A. Sharma, K. Yadav, A. Tripathi, A. Singh, and N. M. Piratla, “RoadEye: A system for personalized retrieval of dynamic road conditions,” in IEEE 15th International Conference on Mobile Data Management, MDM, 2014, pp. 297–304.
“Waze traffic navigation app [online],” https://www.waze.com/en-GB/.
A. Biem, E. Bouillet, H. Feng, A. Ranganathan, A. Riabov, O. Verscheure, H. Koutsopoulos, and C. Moran, “IBM Infosphere Streams for scalable, real-time, intelligent transportation services,” in Proceedings of the ACM SIGMOD International Conference on Management of Data, 2010, pp. 1093–1104.
S. Mathur, T. Jin, N. Kasturirangan, J. Chandrasekaran, W. Xue, M. Gruteser, and W. Trappe, “Parknet: drive-by sensing of road-side parking statistics,” in Proceedings of the 8th international conference on Mobile systems, applications, and services, 2010, pp. 123–136.
A. Guttman, R-trees: A dynamic index structure for spatial searching, 1984, vol. 14. CrossRef
N. Zygouras, N. Panagiotou, N. Zacheilas, I. Boutsis, V. Kalogeraki, I. Katakis, and D. Gunopulos, “Towards detection of faulty traffic sensors in real-time,” CEUR Workshop Proceedings, vol. 1392, 2015.
“Smart waste management [online],” http://www.link-labs.com/smart-waste-management/.
A. Rovetta, F. Xiumin, F. Vicentini, Z. Minghua, A. Giusti, and H. Qichang, “Early detection and evaluation of waste through sensorized containers for a collection monitoring application,” Waste Management, vol. 29, no. 12, pp. 2939–2949, 2009. CrossRef
F. Vicentini, A. Giusti, A. Rovetta, X. Fan, Q. He, M. Zhu, and B. Liu, “Sensorized waste collection container for content estimation and collection optimization,” Waste Management, vol. 29, no. 5, pp. 1467–1472, 2009. CrossRef
M. A. A. Mamun, M. A. Hannan, A. Hussain, and H. Basri, “Wireless sensor network prototype for solid waste bin monitoring with energy efficient sensing algorithm,” Proceedings of the International Conference on Computational Science and Engineering, pp. 382–387, 2013.
A. Papalambrou, D. Karadimas, J. Gialelis, and A. G. Voyiatzis, “A versatile scalable smart waste-bin system based on resource-limited embedded devices,” Proceedings of the IEEE International Conference on Emerging Technologies and Factory Automation (ETFA), pp. 1–8, 2015.
“Waste management using Enevo [online],” https://www.enevo.com/.
“Waste management using SmartBin [online],” https://www.smartbin.com/.
D. Karadimas, A. Papalambrou, J. Gialelis, and S. Koubias, “An integrated node for smart-city applications based on active RFID tags; use case on waste-bins,” Proceedings of the IEEE International Conference on Emerging Technologies and Factory Automation (ETFA), pp. 1–7, 2016.
A. Medvedev, P. Fedchenkov, A. Zaslavsky, T. Anagnostopoulos, and S. Khoruzhnikov, “Waste management as an iot-enabled service in smart cities,” Proceedings of the Internet of Things, Smart Spaces, and Next Generation Networks and Systems, ruSMART, pp. 104–115, 2015.
T. Anagnostopoulos, A. Zaslavsky, K. Kolomvatsos, A. Medvedev, P. Amirian, J. Morley, and S. Hadjieftymiades, “Challenges and opportunities of waste management in iot-enabled smart cities: A survey,” IEEE Transactions on Sustainable Computing, vol. 2, no. 3, pp. 275–289, 2017. CrossRef
M. Mun, S. Reddy, K. Shilton, N. Yau, J. Burke, D. Estrin, M. Hansen, E. Howard, R. West, and P. Boda, “PEIR, the personal environmental impact report, as a platform for participatory sensing systems research,” in Proceedings of the 7th international conference on Mobile systems, applications, and services, 2009, pp. 55–68.
P. Shankara, P. Mahanta, E. Arora, and G. Srinivasamurthy, “Impact of internet of things in the retail industry,” in Proceedings of On the Move to Meaningful Internet Systems: OTM Workshops, 2015, pp. 61–65. CrossRef
S. Fosso Wamba, L. A. Lefebvre, Y. Bendavid, and l. Lefebvre, “Exploring the impact of RFID technology and the EPC network on mobile B2B eCommerce: A case study in the retail industry,” in International Journal of Production Economics, vol. 112, 2008, pp. 614–629. CrossRef
H. Belarbi, A. Tajmouati, H. Bennis, and M. El Haj Tirari, “Predictive analysis of Big Data in Retail industry,” in Proceedings of the International Conference on Computing Wireless and Communication Systems, 2016.
R. Vargheese and H. Dahir, “An IoT/IoE enabled architecture framework for precision on shelf availability: Enhancing proactive shopper experience,” in Proceedings of the IEEE International Conference on Big Data, 2014, pp. 21–26.
D. Hicks, K. Mannix, H. M. Bowles, and B. J. Gao, “SmartMart: IoT-based in-store mapping for mobile devices,” in Proceedings of the IEEE International Conference on Collaborative Computing: Networking, Applications and Worksharing, 2013, pp. 616–621.
T. Bohnenberger, A. Jameson, A. Krüger, and A. Butz, “Location-aware shopping assistance: Evaluation of a decision-theoretic approach,” in Proceedings of Human Computer Interaction with Mobile Devices, 2002, pp. 155–169. CrossRef
M.-R. Ra, B. Liu, T. F. La Porta, and R. Govindan, “Medusa: A programming framework for crowd-sensing applications,” in Proceedings of the 10th international conference on Mobile systems, applications, and services, 2012, pp. 337–350.
N. Do, C.-H. Hsu, and N. Venkatasubramanian, “CrowdMAC: a crowdsourcing system for mobile access,” in Proceedings of the 13th International Middleware Conference, 2012, pp. 1–20.
C. Miao, W. Jiang, L. Su, Y. Li, S. Guo, Z. Qin, H. Xiao, J. Gao, and K. Ren, “Cloud-enabled privacy-preserving truth discovery in crowd sensing systems,” in Proceedings of the 13th ACM Conference on Embedded Networked Sensor Systems, 2015, pp. 183–196.
H. Jin, L. Su, B. Ding, K. Nahrstedt, and N. Borisov, “Enabling privacy-preserving incentives for mobile crowd sensing systems,” in Proceedings of the IEEE International Conference on Distributed Computing Systems (ICDCS), 2016, pp. 344–353.
T. Dimitriou and I. Krontiris, “Privacy-respecting auctions as incentive mechanisms in mobile crowd sensing,” in IFIP International Conference on Information Security Theory and Practice, 2015, pp. 20–35.
Q. Li and G. Cao, “Providing privacy-aware incentives in mobile sensing systems,” IEEE Transactions on Mobile Computing, vol. 15, pp. 1485–1498, 2016. CrossRef
H. Meka, S. K. Madria, and M. Linderman, “Incentive based approach to find selfish nodes in mobile p2p networks,” in Proceedings of the IEEE Performance Computing and Communications Conference (IPCCC), 2012, pp. 352–359.
T. K. Wijaya, M. Vasirani, and K. Aberer, “Crowdsourcing behavioral incentives for pervasive demand response,” Tech. Rep., 2014.
A. Mondal, S. K. Madria, and M. Kitsuregawa, “E-arl: An economic incentive scheme for adaptive revenue-load-based dynamic replication of data in mobile-p2p networks,” Distributed and Parallel Databases, vol. 28, pp. 1–31, 2010. CrossRef
B. Fogg, “A behavior model for persuasive design,” in Proceedings of the 4th International Conference on Persuasive Technology. ACM, 2009, pp. 40:1–40:7.
L. Duan, T. Kubo, K. Sugiyama, J. Huang, T. Hasegawa, and J. Walrand, “Incentive mechanisms for smartphone collaboration in data acquisition and distributed computing,” in 2012 Proceedings IEEE INFOCOM, March 2012, pp. 1701–1709.
D. Easley and A. Ghosh, “Behavioral mechanism design: Optimal crowdsourcing contracts and prospect theory,” in Proceedings of the Sixteenth ACM Conference on Economics and Computation, 2015, pp. 679–696.
C. B. Ferster and B. F. Skinner, “Schedules of reinforcement,” Appleton-Century-Crofts, 1957.
M. Karaliopoulos, I. Koutsopoulos, and M. Titsias, “First learn then earn: Optimizing mobile crowdsensing campaigns through data-driven user profiling,” in Proceedings of the 17th ACM International Symposium on Mobile Ad Hoc Networking and Computing, 2016, pp. 271–280.
P. Micholia, M. Karaliopoulos, and I. Koutsopoulos, “Mobile crowdsensing incentives under participation uncertainty,” in Proceedings of the 3rd ACM Workshop on Mobile Sensing, Computing and Communication, 2016, pp. 29–34.
L. Pritschet, D. Powell, and Z. Horne, “Marginally significant effects as evidence for hypotheses: Changing attitudes over four decades,” Psychological Science, vol. 27, no. 7, pp. 1036–1042, 2016. CrossRef
F. Ma, Y. Li, Q. Li, M. Qiu, J. Gao, S. Zhi, L. Su, B. Zhao, H. Ji, and J. Han, “Faitcrowd: Fine grained truth discovery for crowdsourced data aggregation,” in Proceedings of the 21th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, 2015, pp. 745–754.
I. Boutsis, V. Kalogeraki, and D. Guno, “Reliable crowdsourced event detection in smartcities,” in 1st International Workshop on Science of Smart City Operations and Platforms Engineering (SCOPE) in partnership with Global City Teams Challenge (GCTC) (SCOPE - GCTC), 2016, pp. 1–6.
A. Mahmood, W. G. Aref, E. Dragut, and S. Basalamah, “The Palm-tree index: Indexing with the crowd,” Proc. DBCrowd, pp. 26–31, 2013.
S. Kumar, S. Madria, and M. Linderman, “M-Grid: a distributed framework for multidimensional indexing and querying of location based data,” Distributed and Parallel Databases, vol. 35, pp. 55–81, 2017. CrossRef
“Resource Description Framework,” http://www.w3.org/RDF.
C. Bizer, J. Lehmann, G. Kobilarov, S. Auer, C. Becker, R. Cyganiak, and S. Hellmann, “DBpedia - a crystallization point for the Web of data,” Journal of Web Semantics, vol. 7, no. 3, pp. 154–165, September 2009. CrossRef
D. Vrandecic and M. Krötzsch, “Wikidata: a free collaborative knowledgebase,” Comm. of the ACM, vol. 57, no. 10, pp. 78–85, 2014. CrossRef
M. Bermudez-Edo, T. Elsaleh, P. Barnaghi, and K. Taylor, “IoT-Lite: A Lightweight Semantic Model for the Internet of Things,” in 2016 International IEEE Conferences on Ubiquitous Intelligence Computing, Advanced and Trusted Computing, Scalable Computing and Communications, Cloud and Big Data Computing, Internet of People, and Smart World Congress, July 2016, pp. 90–97.
“SPARQL 1.1,” http://www.w3.org/TR/sparql11-query/.
E. I. Chong, S. Das, G. Eadon, and J. Srinivasan, “An efficient SQL-based RDF querying scheme,” in Proc. of the 31st VLDB Conference, 2005, pp. 1216–1227.
D. Abadi, A. Marcus, S. Madden, and K. Hollenbach, “SW-Store: A vertically partitioned DBMS for semantic web data management,” The VLDB Journal, vol. 18, no. 2, pp. 385–406, 2009. CrossRef
T. Neumann and G. Weikum, “The RDF-3X engine for scalable management of RDF data,” The VLDB Journal, vol. 19, no. 1, pp. 91–113, 2010. CrossRef
C. Weiss, P. Karras, and A. Bernstein, “Hexastore: Sextuple indexing for Semantic Web data management,” Proc. VLDB Endow., vol. 1, no. 1, pp. 1008–1019, 2008. CrossRef
M. Atre, V. Chaoji, M. J. Zaki, and J. A. Hendler, “Matrix “Bit” loaded: A scalable lightweight join query processor for RDF data,” in Proc. of the 19th WWW Conference, 2010, pp. 41–50.
M. A. Bornea, J. Dolby, A. Kementsietsidis, K. Srinivas, P. Dantressangle, O. Udrea, and B. Bhattacharjee, “Building an efficient RDF store over a relational database,” in Proc. of 2013 SIGMOD Conference, 2013, pp. 121–132.
P. Yuan, P. Liu, B. Wu, H. Jin, W. Zhang, and L. Liu, “TripleBit: A fast and compact system for large scale RDF data,” Proc. VLDB Endow., vol. 6, no. 7, pp. 517–528, 2013. CrossRef
J. Huang, D. J. Abadi, and K. Ren, “Scalable SPARQL querying of large RDF graphs,” Proc. of VLDB Endow., vol. 4, no. 11, pp. 1123–1134, 2011.
K. Zeng, J. Yang, H. Wang, B. Shao, and Z. Wang, “A distributed graph engine for web scale RDF data,” Proc. VLDB Endow., vol. 6, no. 4, pp. 265–276, 2013. CrossRef
N. Papailiou, D. Tsoumakos, I. Konstantinou, P. Karras, and N. Koziris, “H2RDF+: An Efficient Data Management System for Big RDF Graphs,” in Proc. of the 2014 ACM SIGMOD Conference, Snowbird, Utah, USA, 2014, pp. 909–912.
S. Gurajada, S. Seufert, I. Miliaraki, and M. Theobald, “TriAD: A Distributed Shared-nothing RDF Engine Based on Asynchronous Message Passing,” in Proc. of the 2014 ACM SIGMOD Conference, Snowbird, Utah, USA, 2014, pp. 289–300.
M. Hammoud, D. A. Rabbou, R. Nouri, S.-M.-R. Beheshti, and S. Sakr, “DREAM: Distributed RDF Engine with Adaptive Query Planner and Minimal Communication,” Proc. VLDB Endow., vol. 8, no. 6, pp. 654–665, Feb. 2015.
A. Schätzle, M. Przyjaciel-Zablocki, S. Skilevic, and G. Lausen, “S2RDF: RDF Querying with SPARQL on Spark,” Proc. VLDB Endow., vol. 9, no. 10, pp. 804–815, Jun. 2016.
V. Slavov, A. Katib, P. Rao, S. Paturi, and D. Barenkala, “Fast processing of SPARQL queries on RDF quadruples,” in Proc. of WebDB ’14, 2014, pp. 1–6, https://arxiv.org/pdf/1506.01333v1.pdf.
A. Katib, V. Slavov, and P. Rao, “RIQ: Fast processing of SPARQL queries on RDF quadruples,” Journal of Web Semantics, vol. 37, no. C, pp. 90–111, 2016. CrossRef
A. Katib, P. Rao, and V. Slavov, “A tool for efficiently processing SPARQL queries on RDF quads,” in Proc. of the 16th International Semantic Web Conference (ISWC 2017), Vienna, Austria, Oct. 2017, pp. 1–4, http://ceur-ws.org/Vol-1963/paper472.pdf.
S. K. Madria, “Security and risk assessment in the Cloud,” IEEE Communications Magazine, 2016.
- Mobile Computing, IoT and Big Data for Urban Informatics: Challenges and Opportunities
Sanjay Kumar Madria
Neuer Inhalt/© ITandMEDIA, Best Practices für die Mitarbeiter-Partizipation in der Produktentwicklung/© astrosystem | stock.adobe.com