Wireless Sensor Networks In-Network Relational Databases Jocelyn Botello.

Slides:



Advertisements
Similar presentations
1 Aggregated Traffic Flow Weight Controlled Hierarchical MAC Protocol for Wireless Sensor Networks Asia FI School Presented By Md. Abdur Razzaque Kyung.
Advertisements

1 A Real-Time Communication Framework for Wireless Sensor-Actuator Networks Edith C.H. Ngai 1, Michael R. Lyu 1, and Jiangchuan Liu 2 1 Department of Computer.
Recovery Techniques in Mobile Databases Prepared by Ammar Hamamra.
Distributed Algorithms for Mobile Sensor Networks Chelsea Sanders Ben Tullis.
Routing protocols in mobile sensor networks -Rajiv Menon.
GRS: The Green, Reliability, and Security of Emerging Machine to Machine Communications Rongxing Lu, Xu Li, Xiaohui Liang, Xuemin (Sherman) Shen, and Xiaodong.
Joint Access Point Placement and Channel Assignment for Wireless LANs Xiang Ling School of Communication and Information Engineering University.
Introduction to Wireless Sensor Networks
IN-NETWORK VS CENTRALIZED PROCESSING FOR LIGHT DETECTION SYSTEM USING WIRELESS SENSOR NETWORKS Presentation by, Desai, Bhairav Solanki, Arpan.
EVENT-DRIVEN DATA COLLECTION IN WIRELESS SENSOR NETWORKS WITH MOBILE SINKS A CKNOWLEDGEMENT X IUJUAN Y I ( UCI. EDU ) Malini Karunagaran Rutuja Raghoji.
Probabilistic Aggregation in Distributed Networks Ling Huang, Ben Zhao, Anthony Joseph and John Kubiatowicz {hling, ravenben, adj,
Energy-Efficient Target Coverage in Wireless Sensor Networks Mihaela Cardei, My T. Thai, YingshuLi, WeiliWu Annual Joint Conference of the IEEE Computer.
The Cougar Approach to In-Network Query Processing in Sensor Networks By Yong Yao and Johannes Gehrke Cornell University Presented by Penelope Brooks.
Tributaries and Deltas: Efficient and Robust Aggregation in Sensor Network Streams Amit Manjhi, Suman Nath, Phillip B. Gibbons Carnegie Mellon University.
Adaptive Sampling in Distributed Streaming Environment Ankur Jain 2/4/03.
Approximate data collection in sensor networks the appeal of probabilistic models David Chu Amol Deshpande Joe Hellerstein Wei Hong ICDE 2006 Atlanta,
U NIVERSITY OF M ASSACHUSETTS, A MHERST Department of Computer Science Re-thinking Data Management for Storage-Centric Sensor Networks Deepak Ganesan University.
Online Data Gathering for Maximizing Network Lifetime in Sensor Networks IEEE transactions on Mobile Computing Weifa Liang, YuZhen Liu.
Energy-efficient Self-adapting Online Linear Forecasting for Wireless Sensor Network Applications Jai-Jin Lim and Kang G. Shin Real-Time Computing Laboratory,
CS Dept, City Univ.1 Research Issues in Wireless Sensor Networks Prof. Xiaohua Jia Dept. of Computer Science City University of Hong Kong.
Collaborative Localization and Tracking in Wireless Sensor Networks Dr. Xinrong Li Department of Electrical Engineering University of North Texas
Cross Strait Quad-Regional Radio Science and Wireless Technology Conference, Vol. 2, p.p. 980 – 984, July 2011 Cross Strait Quad-Regional Radio Science.
Sensor Coordination using Role- based Programming Steven Cheung NSF NeTS NOSS Informational Meeting October 18, 2005.
Panayiotis G. Andreou, George Constantinou, Demetrios Zeinalipour-Yazti, George Samaras Department of Computer Science, University of Cyprus Panayiotis.
The Coverage Problem in Wireless Ad Hoc Sensor Networks Supervisor: Prof. Sanjay Srivastava By, Rucha Kulkarni
Department of Computer Science City University of Hong Kong Department of Computer Science City University of Hong Kong 1 Continuous Residual Energy Monitoring.
U NIVERSITY OF M ASSACHUSETTS, A MHERST Department of Computer Science Re-thinking Data Management for Storage-Centric Sensor Networks Deepak Ganesan University.
March 6th, 2008Andrew Ofstad ECE 256, Spring 2008 TAG: a Tiny Aggregation Service for Ad-Hoc Sensor Networks Samuel Madden, Michael J. Franklin, Joseph.
Cayirci Ne X tworking’03 June 23-25,2003, Chania, Crete, Greece The First COST-IST(EU)-NSF(USA) Workshop on EXCHANGES & TRENDS IN N ETWORKING 1 Node Addressing.
Department of Computer Science City University of Hong Kong Department of Computer Science City University of Hong Kong 1 A Statistics-Based Sensor Selection.
November 18, Traffic Grooming in Optical WDM Networks Presented by : Md. Shamsul Wazed University of Windsor.
Maximizing Lifetime of Ad Hoc Networks/WSNs Using Dynamic Broadcast Scheme Guofeng Deng.
Department of Computer Science City University of Hong Kong Department of Computer Science City University of Hong Kong 1 Probabilistic Continuous Update.
Sensor Database System Sultan Alhazmi
Query Processing for Sensor Networks Yong Yao and Johannes Gehrke (Presentation: Anne Denton March 8, 2003)
Maximum Lifetime Routing in Wireless Sensor Networks by Collins Adetu Nicole Powell Course: EEL 5784 Instructor: Dr. Ming Yu.
1 A Novel Capacity Analysis for Wireless Backhaul Mesh Networks Tein-Yaw David Chung, Kung-Chun Lee, and Hsiao-Chih George Lee Department of Computer Science.
Multi-Criteria Routing in Pervasive Environment with Sensors Santhanakrishnan, G., Li, Q., Beaver, J., Chrysanthis, P.K., Amer, A. and Labrinidis, A Department.
Distributed Databases Midterm review. Lectures covered Everything until (including) March 2 nd Everything until (including) March 2 nd Focus on distributed.
Dave McKenney 1.  Introduction  Algorithms/Approaches  Tiny Aggregation (TAG)  Synopsis Diffusion (SD)  Tributaries and Deltas (TD)  OPAG  Exact.
Cross-layer Packet Size Optimization for Wireless Terrestrial, Underwater, and Underground Sensor Networks IEEE INFOCOM 2008 Mehmet C. Vuran and Ian F.
College of Engineering Robert Akl, D.Sc. Department of Computer Science and Engineering.
Chapter 6 Relaxation (1) CDS in unit disk graph
Maximizing the lifetime of WSN using VBS Yaxiong Zhao and Jie Wu Computer and Information Sciences Temple University.
1 G-REMiT: An Algorithm for Building Energy Efficient Multicast Trees in Wireless Ad Hoc Networks Bin Wang and Sandeep K. S. Gupta Computer Science and.
Maximizing Lifetime per Unit Cost in Wireless Sensor Networks
Energy-aware Node Placement in Wireless Sensor Networks Global Telecommunications Conference 2004 (Globecom 2004) Peng Cheng, Chen-Nee Chuah Xin Liu UCDAVIS.
Topics in Internet Research Energy Efficient Routing in Ad-Hoc Wireless Networks Aadil Zia Khan Department of Computer Science Lahore University of Management.
A Dynamic Query-tree Energy Balancing Protocol for Sensor Networks H. Yang, F. Ye, and B. Sikdar Department of Electrical, Computer and systems Engineering.
Energy-Aware Data-Centric Routing in Microsensor Networks Azzedine Boukerche SITE, University of Ottawa, Canada Xiuzhen Cheng, Joseph Linus Dept. of Computer.
W. Hong & S. Madden – Implementation and Research Issues in Query Processing for Wireless Sensor Networks, ICDE 2004.
Topology Management -- Power Efficient Spatial Query Presented by Weihang jiang.
Saran Jenjaturong, Chalermek Intanagonwiwat Department of Computer Engineering Chulalongkorn University Bangkok, Thailand IEEE CROWNCOM 2008 acceptance.
Survey on the Characterization and Classification of Wireless Sensor Network Application [1] CS 2310 Software Engineering Xiaoyu Liang.
Ben Miller.   A distributed algorithm is a type of parallel algorithm  They are designed to run on multiple interconnected processors  Separate parts.
Toward Reliable and Efficient Reporting in Wireless Sensor Networks Authors: Fatma Bouabdallah Nizar Bouabdallah Raouf Boutaba.
Query-based wireless sensor storage management for real time applications Ravinder Tamishetty, Lek Heng Ngoh, and Pung Hung Keng Proceedings of the 2006.
EASE: An Energy-Efficient In-Network Storage Scheme for Object Tracking in Sensor Networks Jianliang Xu Department of Computer Science Hong Kong Baptist.
Sep Multiple Query Optimization for Wireless Sensor Networks Shili Xiang Hock Beng Lim Kian-Lee Tan (ICDE 2007) Presented by Shan Bai.
Top-k Queries in Wireless Sensor Networks Amber Faucett, Dr. Longzhuang Li, In today’s world, wireless.
The Design of an Acquisitional Query Processor For Sensor Networks Samuel Madden, Michael J. Franklin, Joseph M. Hellerstein, and Wei Hong Presentation.
-1/16- Maximum Battery Life Routing to Support Ubiquitous Mobile Computing in Wireless Ad Hoc Networks C.-K. Toh, Georgia Institute of Technology IEEE.
ENERGY EFFICIENT TIME SYNCHRONIZATION PROTOCOL FOR MOBILE UNDERWATER ACOUSTIC SENSOR NETWORKS Under the Guidance of Submitted by Mr. P. Mukunthan, AP/CSE.
Distributed database approach,
Distributed Algorithms for Mobile Sensor Networks
The Design of an Acquisitional Query Processor For Sensor Networks
Distributed Probabilistic Range-Aggregate Query on Uncertain Data
A schematic overview of localization in wireless sensor networks
Survey on Coverage Problems in Wireless Sensor Networks - 2
Survey on Coverage Problems in Wireless Sensor Networks
Presentation transcript:

Wireless Sensor Networks In-Network Relational Databases Jocelyn Botello

Botello 2April 9, 2008EEL 6897: Prof. Boloni Overview Introduction Sensor Database System Projects –TinyDB –Cougar Maximum Performance –Efficiency –Optimization

Botello 3April 9, 2008EEL 6897: Prof. Boloni Introduction Minimization Goal: –Network Traffic –Amount of Transmitted Data Maximization Goal: –Computing Capacity –Power Acquire Data for Unlimited Time

Botello 4April 9, 2008EEL 6897: Prof. Boloni Sensor Database System Access data with no previous knowledge Three-Layer Reference Model Relational Model –Sensor Data: Time Series –Stored Data: Relations

Botello 5April 9, 2008EEL 6897: Prof. Boloni TinyDB from Berkley Query Processor Multiple Query Concurrency Tree Routing

Botello 6April 9, 2008EEL 6897: Prof. Boloni TinyDB from Berkley Event- Based Queries Actuation Queries Lifetime- Based Queries Monitoring Queries Network Health Queries Exploratory Queries Aggregation Queries

Botello 7April 9, 2008EEL 6897: Prof. Boloni Cougar from Cornell Sensors –Abstract Data Type Functions –In-Network Processing –Gateway Node Query Proxy –Small Database Component

Botello 8April 9, 2008EEL 6897: Prof. Boloni Efficiency Communication Failure Reliable Data –Uncertainty of Data –Security of Data Network’s Power Life

Botello 9April 9, 2008EEL 6897: Prof. Boloni Communication Failure Sensors Physically Dependable –Outside Factors Keep Data Alive –Back-Up –Accessibility, Availability

Botello 10April 9, 2008EEL 6897: Prof. Boloni Reliable Data: Uncertainty Level of Accuracy Vs Cost of Computation Desired Accuracy Probabilistic Threshold Query

Botello 11April 9, 2008EEL 6897: Prof. Boloni Reliable Data: Security Network Specific –Level of Security –Access Points/Rights Affects of Aggregation Dynamic Level of Security Vs Access Time

Botello 12April 9, 2008EEL 6897: Prof. Boloni Optimization Data Space Management Queries Aggregation

Botello 13April 9, 2008EEL 6897: Prof. Boloni Data Space Management Storage Nodes –Minimize Traffic & Retrieve Time Switch Roles –Busy Region –Power Life

Botello 14April 9, 2008EEL 6897: Prof. Boloni Queries Independent, Dynamic Irrelevant Factors –Power Management –Time Synchronization –Data Processing –Data Collection Maintaining Power Life Multiple, Nested Queries

Botello 15April 9, 2008EEL 6897: Prof. Boloni Aggregation Partial/Total Aggregation Selective Data Spatial Aggregation –Spatial Moving Average –Voroni Diagram –Triangular Irregular Network

Botello 16April 9, 2008EEL 6897: Prof. Boloni Conclusion Maximum Performance –Efficiency Reliable Data Vs Communication Failure –Optimization Queries Aggregation –Minimize Network Traffic –Conservation of Power

Botello 17April 9, 2008EEL 6897: Prof. Boloni Future Work Power Management Data Management Data Collection Data Processing –Query Processing Network Design

Botello 18April 9, 2008EEL 6897: Prof. Boloni References [1] P. S. Philippe Bonnet, Johannes Gehrke, “Towards sensor database systems,” ACM, vol. 1987, pp. 3–14, [2] Y. Yao and J. Gehrke, “The cougar approach to in- network query processing in sensor networks,” ACM SIGMOD Record, vol. 31, no. 3, pp. 9–18, September [3] Q. Luo and H. Wu, “System design issues in sensor databases,” in Proc. ACM SIGMOD International Conference on Management of Data, June 2007, pp. 1182–1185. [4] Zechinelli-Martini, Jose-Luis, and I. Elias-Morales, “Modelling and querying sensor databases,” in Proc. IEEE 8th Mexican International Conference on Current Trends in Computer Science, September 2007, pp. 138–148. [5] S. R. Madden, M. J. Franklin, J. M. Hellerstein, and W. Hong, “Tinydb: An acquisitional query procesing system for sensor networks,” ACM Transactions on Database System, vol. 30, no. 1, pp. 122–173, March [6] T. Apaydin, S. Vural, and P. Sinha, “On improving data accessibility in storage based sensor networks,” in Proc. IEEE International Conference on Mobile Adhoc and Sensor System(MASS ’07), October 2007, pp. 1–9. [7] R. Cheng and S. Prabhakar, “Managing uncertainty in sensor databases,” SIGMOD Record, vol. 32, no. 4, pp. 41–46, [8] B. Thuraisingham, “Secure sensor information management and mining,” IEEE Signal Processing Magazine, vol. 3, pp. 14–19, May [9] R. Tamishetty, L. H. Ngoh, and P. H. Keng, “Query-based wireless sensor storage management for real-time applications,” in Proc. IEEE International Conference on Industrial Informatics 2006, August 2006, pp. 166– 170. [10] S. M. Michael J. Franklin, Joseph M. Hellerstein, “Thinking big about tiny databases,” Bulletin of IEEE Computer Society Technical Committee on Data Engineering, September [11] Q. Ren and Q. Liang, “Query processing optimization through sample size and monitoring coverage controlling in wireless sensor networks,” IEEE CNF, vol. 3, pp. 830–834, September [12] Q. Ren and Q. Lian, “A quality-guaranteed and energy-efficient query processing algorithm for sensor networks,” in Proc. IEEE Wireless Communications and Networking Conference 2006 (WCNC2006), April 2006, pp. 47–62. [13] L. Q. Zhuang, J. B. Zhang, D. H. Zhang, and Y. Z. Zhao, “Data management for wireless sensor networks: Research issues and challenges,” in Proc. IEEE 2006 International Conference on Wireless Communication, Networking and Mobile Computing, September 2005, pp. 1–5. [14] G. K. J. B. Jeffrey Considine, Feifei Li, “Approximate aggregation techniques for sensor databases,” in Proc. IEEE 20th International Conference on Data Engineering (ICDE’04), April 2004, pp. 449–460. [15] P. Flajolet and G. N. Martin, “Probablistic counting algorithms for data base applications,” Journal of Computer and System Sciences. [16] M. Sharifzadeh and C. Shababi, “Supporting spatial aggregation in sensor network databases,” in Proc. 12th Annual ACM international workshop on Geographic Information Systems, 2004, pp.166– 175.