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Managing uncertainty in sensor database
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Volume 32 ,  Issue 4  (December 2003) table of contents
SPECIAL ISSUE: Special section on sensor network technology and sensor data managment table of contents
Pages: 41 - 46  
Year of Publication: 2003
ISSN:0163-5808
Authors
Reynold Cheng  Purdue University
Sunil Prabhakar  Purdue University
Publisher
ACM  New York, NY, USA
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Downloads (6 Weeks): 15,   Downloads (12 Months): 90,   Citation Count: 8
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ABSTRACT

Sensors are often employed to monitor continuously changing entities like locations of moving objects and temperature. The sensor readings are reported to a centralized database system, and are subsequently used to answer queries. Due to continuous changes in these values and limited resources (e.g., network bandwidth and battery power), the database may not be able to keep track of the actual values of the entities, and use the old values instead. Queries that use these old values may produce incorrect answers. However, if the degree of uncertainty between the actual data value and the database value is limited, one can place more confidence in the answers to the queries. In this paper, we present a frame-work that represents uncertainty of sensor data. Depending on the amount of uncertainty information given to the application, different levels of imprecision are presented in a query answer. We examine the situations when answer imprecision can be represented qualitatively and quantitatively. We propose a new kind of probabilistic queries called Probabilistic Threshold Query, which requires answers to have probabilities larger than a certain threshold value. We also study techniques for evaluating queries under different details of uncertainty, and investigate the tradeoff between data uncertainty, answer accuracy and computation costs.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
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T. Abdessalem, J. Moreira, and C. Ribeiro. Movement query operations for spatio-temporel databases. In Proc. 17èmes Journées Bases de Données Avancées (BDA'01), Agadir, Maroc, October 2001.
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R. Cheng, S. Prabhakar, and D. V. Kalashnikov. Querying imprecise data in moving object environments. In Proc. of the Intl Conf. on Data Engineering (ICDE'03), 2003.
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Y. Manolopoulos, Y. Theodoridis, and V. J. Tsotras. Chapter 4: Access methods for intervals. In Advanced Database Indexing. Kluwer, 2000.
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P. A. Sistla, O. Wolfson, S. Chamberlain, and S. Dao. Querying the uncertain position of moving objects. In Temporal Databases: Research and Practice. 1998.
 
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CITED BY  8
Collaborative Colleagues:
Reynold Cheng: colleagues
Sunil Prabhakar: colleagues