Abstract
With the advent of the Internet of Things (IoT) that offers capabilities to identify and connect worldwide physical objects into a unified system, the importance of modeling and processing IoT data has become significantly accentuated. IoT data is substantial in quantity, noisy, heterogeneous, inconsistent, and arrives at the system in a streaming fashion. Due to the unique characteristics of IoT data, the manipulation of IoT data for practical applications has encountered many fundamental challenging problems, such as data modeling and processing. This paper proposes the infrastructure for an IoT prototype system that aims to develop foundation models for IoT data. We illustrate major modules in the IoT prototype, as well as their functionalities, and provide our vision of the key techniques used for tacking the critical problems in each module.
Similar content being viewed by others
References
Wong C Y. Integration of Auto-id Tagging System With Holonic Manufacturing Systems. White Article, Auto-id Labs, University of Cambridge, 2001
Cooper J, James A. Challenges for Database Management in the Internet of Things. IETE Technical Review, 2009
ITU. The Internet of Things. ITU Internet Reports, 2005
Contactless Payment and the Retail Point of Sale: Applications, Technologies and Transaction Models. Smart Card Alliance White Paper, http://www.it.iitb.ac.in/~tijo/seminar/Contactless_Pmt_Report.pdf
Landt J. The History of RFID. AIM, Inc.
Internet Protocol, version 6 (IPv6) Specification, http://tools.ietf.org/html/rfc2460
Buneman P, Khanna S, Tan W C. Why and Where: A Characterization of Data Provenance. ICDT, 2001
Zogg J M. GPS Basics. U-Box. 2002
Zigbee Alliance, 2009, http://www.zigbee.org/
Buneman P, Khanna S, Tajima K, Tan W. Archiving scientific data. ACM Trans. Database Syst., 2004, 29(1): 2–42
Cheng R, Kalashnikov D V, Prabhakar S. Evaluating probabilistic queries over imprecise data. SIGMOD, 2003, 551-562
Jeffery S R, Alonso G, Franklin M J, Hong W, Widom J. Declarative support for sensor data cleaning. PerCom, 2006, 83–100
Subramaniam S, Palpanas T, Papadopoulos D, Kalogeraki V, Gunopulos D. Online outlier detection in sensor data using non-parametric models. VLDB, 2006, 187–198
Kriegel H-P, Kunath P, Pfeifle M, Renz M. Probabilistic similarity join on uncertain data. DASFAA, 2006, 295–309
Lian X, Chen L. Probabilistic ranked queries in uncertain databases. EDBT, 2008, 261: 511–522
Lian X, Chen L. Monochromatic and bichromatic reverse skyline search over uncertain databases. SIGMOD, 2008, 213–226
Pei J, Jiang B, Lin X, Yuan Y. Probabilistic skylines on uncertain data. VLDB, 2007, 15–26
Fan W. Dependencies revisited for improving data quality. PODS, 2008, 159–170
Chomicki J, Marcinkowski J. Minimal-change integrity maintenance using tuple deletions. Info. Comput., 2005, 197(1–2): 90–121
Arenas M, Bertossi L, Chomicki J. Consistent query answers in inconsistent databases. PODS, 1999, 68–79
Bohannon P, Fan W, Flaster M, Rastogi R. A cost-based model and effective heuristic for repairing constraints by value modification. SIGMOD, 2005, 143–154
Cong G, Fan W F, Geerts F, Jia X B, Ma S. Improving data quality: Consistency and accuracy. VLDB, 2007, 315–326
Wijsen J. Database repairing using updates. TODS, 2005, 30(3): 722–768
Lian X, Chen L, Song S. Consistent query answers in inconsistent probabilistic databases. SIGMOD, 2010, 303–314
Wu E, Diao Y, Rizvi S. High-performance complex event processing over streams. SIGMOD, 2006, 407–418
Meng X L. Multiple-imputation inferences with uncongenial sources of input (with discussion). Statistical Science, 1995, 9: 538–558
Dong X, Halevy A. Indexing dataspaces. SIGMOD, 2007, 43–54
Muralikrishna M, DeWitt D J. Equi-depth multidimensional histograms. SIGMOD Rec., 1988, 17(3): 28–36
Olken F, Rotem D. Simple random sampling from relational databases. VLDB, 1986, 160–169
Fuxman A, Fazli E, Miller R J. ConQuer: Efficient management of inconsistent databases. SIGMOD, 2005, 155–166
Lian X, Chen L. Efficient join processing on uncertain data streams. CIKM, 2009, 857–866
Letchner J, Ré C, Balazinska M, Philipose M. Access methods for Markovian streams. ICDE, 2009, 246–257
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Chen, L., Tseng, M. & Lian, X. Development of foundation models for Internet of Things. Front. Comput. Sci. China 4, 376–385 (2010). https://doi.org/10.1007/s11704-010-0385-8
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11704-010-0385-8