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Distributed Aggregation Algorithms for Mobile Sensor Networks with Group Mobility Model

Distributed Aggregation Algorithms for Mobile Sensor Networks with Group Mobility Model
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摘要 In many applications of mobile sensor networks, such as water flow monitoring and disaster rescue, the nodes in the network can move together or separate temporarily. The dynamic network topology makes traditional spanning-tree-based aggregation algorithms invalid in mobile sensor networks. In this paper, we first present a distributed clustering algorithm which divides mobile sensor nodes into several groups, and then propose two distributed aggregation algorithms, Distance-AGG (Aggregation based on Distance), and Probability-AGG (Aggregation based on Probability). Both of these two algorithms conduct an aggregation query in three phases: query dissemination, intra-group aggregation, and inter-group aggregation. These two algorithms are efficient especially in mobile networks. We evaluate the performance of the proposed algorithms in terms of aggregation accuracy, energy efficiency, and query delay through ns-2 simulations. The results show that Distance-AGG and Probability-AGG can obtain higher accuracy with lower transmission and query delay than the existing aggregation algorithms. In many applications of mobile sensor networks, such as water flow monitoring and disaster rescue, the nodes in the network can move together or separate temporarily. The dynamic network topology makes traditional spanning-tree-based aggregation algorithms invalid in mobile sensor networks. In this paper, we first present a distributed clustering algorithm which divides mobile sensor nodes into several groups, and then propose two distributed aggregation algorithms, Distance-AGG (Aggregation based on Distance), and Probability-AGG (Aggregation based on Probability). Both of these two algorithms conduct an aggregation query in three phases: query dissemination, intra-group aggregation, and inter-group aggregation. These two algorithms are efficient especially in mobile networks. We evaluate the performance of the proposed algorithms in terms of aggregation accuracy, energy efficiency, and query delay through ns-2 simulations. The results show that Distance-AGG and Probability-AGG can obtain higher accuracy with lower transmission and query delay than the existing aggregation algorithms.
出处 《Tsinghua Science and Technology》 SCIE EI CAS 2012年第5期512-520,共9页 清华大学学报(自然科学版(英文版)
基金 Supported by the National Natural Science Foundation of China (Nos. 61100048, 61033015, and 60803015) Programs Foundation of Ministry of Education of China for New Century Excellent Talents in University (No. NCET-11-0955) the Natural Science Foundation of Heilongjiang Province(No. F201038) Programs Foundation of Heilongjiang Educational Committee for New Century Excellent Talentsin University (No. 1252-NCET-011) Program for Group of Science and Technology Innovation of Heilongjiang Educational Committee (No. 2011PYTD002) the Science and Technology Research of Heilongjiang Educational Committee (Nos. 12511395 and 11551343) the Science and Technology Innovation Research Project of Harbin for Young Scholar (Nos. 2008RFQXG107, 2009RFQX080, and2011RFQXG028)
关键词 mobile sensor networks data aggregation group mobility model distributed algorithms mobile sensor networks data aggregation group mobility model distributed algorithms
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  • 1Aschenbruck N, Gerhards-Padilla E, Gerharz M, Frank M, Martini P. Modelling mobility in disaster area scenarios. In: Proceedings of the 10th ACM Symposium on Modeling, Analysis, and Simulation of Wireless and Mobile Systems (MSWiM’07), 2007: 4-12.
  • 2Keally M, Zhou G, Xing G L. Sidewinder: A predictive data forwarding protocol for mobile wireless sensor networks. In: Proceedings of SECON, 2009: 1-9.
  • 3Bayer K, Haas P J, Reinwald B. On synopses for distinct-value estimation under multiset operations. In:Proceedings of the 2007 ACM SIGMOD International Conference on Management of Data (SIGMOD07), 2007: 199-210.
  • 4Kamara A, Misra V, Rubenstein D. CountTorrent: Ubiquitous access to query aggregates in dynamic and mobile sensor networks. In: Proceedings of the 5th International Conference on Embedded Networked Sensor Systems, 2007.
  • 5Wang Y, Wu H. DFT-MSN: The delay/fault-tolerant mobile sensor network for pervasive information gathering. In: Proceedings of IEEE INFOCOM, 2006: 1-12.
  • 6P’asztor B, Musolesi M, Mascolo C. Opportunistic mobile sensor data collection with SCAR. In: Proceedings of MASS, 2007: 1-12.
  • 7Guo L J, Beyah R, Li Y S. SMITE: A stochastic compressive data collection protocol for mobile wireless sensor networks. In: Proceedings of IEEE INFOCOM, 2011: 1611-1619.
  • 8Camp T, Boleng J, Davies V. A survey of mobility models for ad hoc network research. In: Proceedings of Wireless Communications and Mobile Computing, 2002: 483-502.
  • 9Madden S, Franklin M J, Hellerstein J M, Hong W. TAG: A tiny aggregation service for ad-hoc sensor networks. In: Proceedings of the 5th Symp. on Operating System Design and Implementation, 2002: 131-146.
  • 10Luo C, Wu F, Sun J, Chen C W. Compressive data gathering for large-scale wireless sensor networks. In: Proceedings of ACM MOBICOM, 2009: 145-156.

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