A Distributed and Adaptive Signal Processing Approach to Reducing Energy Consumption in Sensor Networks Jim Chou, et al Univ. of Califonia at Berkeley.

Slides:



Advertisements
Similar presentations
A Data Dissemination Method for Supporting Mobile Sinks in Hierarchical Routing Protocol of WSN APAN 2008 Jieun Cho 4, August,
Advertisements

Compressive Data Gathering for Large-Scale Wireless Sensor Networks
Time-Frequency Analysis Analyzing sounds as a sequence of frames
A Transmission Control Scheme for Media Access in Sensor Networks Lee, dooyoung AN lab A.Woo, D.E. Culler Mobicom’01.
1 Balancing Push and Pull for Efficient Information Discovery in Large-Scale Sensor Networks Xin Liu, Qingfeng Huang, Ying Zhang CS 6204 Adv Top. in Systems-Mob.
PERFORMANCE MEASUREMENTS OF WIRELESS SENSOR NETWORKS Gizem ERDOĞAN.
Cooperative Multiple Input Multiple Output Communication in Wireless Sensor Network: An Error Correcting Code approach using LDPC Code Goutham Kumar Kandukuri.
後卓越進度報告 蔡育仁老師實驗室 2007/03/19. Distribute Source Coding (DSC) in WSNs Distributed source coding is a data compression technique to reduce the redundancy.
Network Correlated Data Gathering With Explicit Communication: NP- Completeness and Algorithms R˘azvan Cristescu, Member, IEEE, Baltasar Beferull-Lozano,
Compressive Data Gathering for Large- Scale Wireless Sensor Networks Chong Luo Feng Wu Shanghai Jiao Tong University Microsoft Research Asia Jun Sun Chang.
On Computing Compression Trees for Data Collection in Wireless Sensor Networks Jian Li, Amol Deshpande and Samir Khuller Department of Computer Science,
On Efficient Clustering of Wireless Sensor Networks Mohamed Younis, Poonam Munshi, Gaurav Gupta (Univ. of Maryland) Sameh M. Elsharkawy( Catholic Univ.)
1 Data Persistence in Large-scale Sensor Networks with Decentralized Fountain Codes Yunfeng Lin, Ben Liang, Baochun Li INFOCOM 2007.
PEDS September 18, 2006 Power Efficient System for Sensor Networks1 S. Coleri, A. Puri and P. Varaiya UC Berkeley Eighth IEEE International Symposium on.
1 Prediction-based Strategies for Energy Saving in Object Tracking Sensor Networks Tzu-Hsuan Shan 2006/11/06 J. Winter, Y. Xu, and W.-C. Lee, “Prediction.
1 Cross-Layer Scheduling for Power Efficiency in Wireless Sensor Networks Mihail L. Sichitiu Department of Electrical and Computer Engineering North Carolina.
Distributed Regression: an Efficient Framework for Modeling Sensor Network Data Carlos Guestrin Peter Bodik Romain Thibaux Mark Paskin Samuel Madden.
2015/6/15VLC 2006 PART 1 Introduction on Video Coding StandardsVLC 2006 PART 1 Variable Length Coding  Information entropy  Huffman code vs. arithmetic.
Context Compression: using Principal Component Analysis for Efficient Wireless Communications Christos Anagnostopoulos & Stathes Hadjiefthymiades Pervasive.
Adaptive Security for Wireless Sensor Networks Master Thesis – June 2006.
Low Power Design for Wireless Sensor Networks Aki Happonen.
A Hierarchical Energy-Efficient Framework for Data Aggregation in Wireless Sensor Networks IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, VOL. 55, NO. 3, MAY.
UNIVERSITY OF SOUTHERN CALIFORNIA Embedded Networks Laboratory 1 Wireless Sensor Networks Ramesh Govindan Lab Home Page:
© 2005, it - instituto de telecomunicações. Todos os direitos reservados. Gerhard Maierbacher Scalable Coding Solutions for Wireless Sensor Networks IT.
November 18, 2004 Energy Efficient Data Gathering in Sensor Networks F. Koushanfar, UCB N. Taft, Intel Research M. Potkonjak, UCLA A. Sangiovanni-Vincentelli,
Lattices for Distributed Source Coding - Reconstruction of a Linear function of Jointly Gaussian Sources -D. Krithivasan and S. Sandeep Pradhan - University.
A Transmission Control Scheme for Media Access in Sensor Networks Alec Woo, David Culler (University of California, Berkeley) Special thanks to Wei Ye.
Model-driven Data Acquisition in Sensor Networks Amol Deshpande 1,4 Carlos Guestrin 4,2 Sam Madden 4,3 Joe Hellerstein 1,4 Wei Hong 4 1 UC Berkeley 2 Carnegie.
Compression with Side Information using Turbo Codes Anne Aaron and Bernd Girod Information Systems Laboratory Stanford University Data Compression Conference.
Linear Codes for Distributed Source Coding: Reconstruction of a Function of the Sources -D. Krithivasan and S. Sandeep Pradhan -University of Michigan,
CS 580S Sensor Networks and Systems Professor Kyoung Don Kang Lecture 7 February 13, 2006.
Noise, Information Theory, and Entropy
Energy Conservation in wireless sensor networks Kshitij Desai, Mayuresh Randive, Animesh Nandanwar.
On Error Preserving Encryption Algorithms for Wireless Video Transmission Ali Saman Tosun and Wu-Chi Feng The Ohio State University Department of Computer.
Quality-aware Data Collection in Energy Harvesting WSN Nga Dang Elaheh Bozorgzadeh Nalini Venkatasubramanian University of California, Irvine.
Sensor Networks Storage Sanket Totala Sudarshan Jagannathan.
Signal Strength based Communication in Wireless Sensor Networks (Sensor Network Estimation) Imran S. Ansari EE 242 Digital Communications and Coding (Fall.
2004 IEEE International Conference on Mobile Data Management Yingqi Xu, Julian Winter, Wang-Chien Lee.
The Minimal Communication Cost of Gathering Correlated Data over Sensor Networks EL 736 Final Project Bo Zhang.
A Distributed Framework for Correlated Data Gathering in Sensor Networks Kevin Yuen, Ben Liang, Baochun Li IEEE Transactions on Vehicular Technology 2008.
AN ENERGY CONSUMPTION ANALYTIC MODEL FOR WIRELESS SENSOR MAC PROTOCOL ERIC MAKITA SEPTEMBRE
Comparison and Analysis of Equalization Techniques for the Time-Varying Underwater Acoustic Channel Ballard Blair PhD Candidate MIT/WHOI.
Abhik Majumdar, Rohit Puri, Kannan Ramchandran, and Jim Chou /24 1 Distributed Video Coding and Its Application Presented by Lei Sun.
Adaptive Data Aggregation for Wireless Sensor Networks S. Jagannathan Rutledge-Emerson Distinguished Professor Department of Electrical and Computer Engineering.
Tufts University. EE194-WIR Wireless Sensor Networks. March 3, 2005 Increased QoS through a Degraded Channel using a Cross-Layered HARQ Protocol Elliot.
RIDA: A Robust Information-Driven Data Compression Architecture for Irregular Wireless Sensor Networks Nirupama Bulusu (joint work with Thanh Dang, Wu-chi.
Shriram Sarvotham Dror Baron Richard Baraniuk ECE Department Rice University dsp.rice.edu/cs Sudocodes Fast measurement and reconstruction of sparse signals.
An Energy Efficient Hierarchical Clustering Algorithm for Wireless Sensor Networks Seema Bandyopadhyay and Edward J. Coyle Presented by Yu Wang.
Using Polynomial Approximation as Compression and Aggregation Technique in Wireless Sensor Networks Bouabdellah KECHAR Oran University.
Guillaume Laroche, Joel Jung, Beatrice Pesquet-Popescu CSVT
Dr. Sudharman K. Jayaweera and Amila Kariyapperuma ECE Department University of New Mexico Ankur Sharma Department of ECE Indian Institute of Technology,
 Tree in Sensor Network Patrick Y.H. Cheung, and Nicholas F. Maxemchuk, Fellow, IEEE 3 rd New York Metro Area Networking Workshop (NYMAN 2003)
Collaborative Broadcasting and Compression in Cluster-based Wireless Sensor Networks Anh Tuan Hoang and Mehul Motani National University of Singapore Wireless.
Neural Networks Presented by M. Abbasi Course lecturer: Dr.Tohidkhah.
Hanyang University Hyunok Oh Energy Optimal Bit Encoding for Flash Memory.
By: Gang Zhou Computer Science Department University of Virginia 1 Medians and Beyond: New Aggregation Techniques for Sensor Networks CS851 Seminar Presentation.
CASA 2006 CASA 2006 A Skinning Approach for Dynamic Mesh Compression Khaled Mamou Titus Zaharia Françoise Prêteux.
Data funneling : routing with aggregation and compression for wireless sensor networks Petrovic, D.; Shah, R.C.; Ramchandran, K.; Rabaey, J. ; SNPA 2003.
Samuel Cheng, Shuang Wang and Lijuan Cui University of Oklahoma
Energy Efficient Data Management in Sensor Networks Sanjay K Madria Web and Wireless Computing Lab (W2C) Department of Computer Science, Missouri University.
1 Department of Electrical Engineering, Stanford University EE 392J Final Project Presentation Shantanu Rane Hash-Aided Motion Estimation & Rate Control.
KAIS T Location-Aided Flooding: An Energy-Efficient Data Dissemination Protocol for Wireless Sensor Networks Harshavardhan Sabbineni and Krishnendu Chakrabarty.
AN EFFICIENT TDMA SCHEME WITH DYNAMIC SLOT ASSIGNMENT IN CLUSTERED WIRELESS SENSOR NETWORKS Shafiq U. Hashmi, Jahangir H. Sarker, Hussein T. Mouftah and.
MAC Protocols for Sensor Networks
Demetrios Zeinalipour-Yazti (Univ. of Cyprus)
Computing and Compressive Sensing in Wireless Sensor Networks
Seema Bandyopadhyay and Edward J. Coyle
Outline Ganesan, D., Greenstein, B., Estrin, D., Heidemann, J., and Govindan, R. Multiresolution storage and search in sensor networks. Trans. Storage.
REED : Robust, Efficient Filtering and Event Detection
Sudocodes Fast measurement and reconstruction of sparse signals
Presentation transcript:

A Distributed and Adaptive Signal Processing Approach to Reducing Energy Consumption in Sensor Networks Jim Chou, et al Univ. of Califonia at Berkeley Infocom ` /04/20 Presented by Hojin

2 Contents Introduction Distributed Compression Correlation Tracking Querying & Reporting Alg. Result Conclusion & Comment

3 Introduction Battery powered : energy depletion => network partition, data loss … Solution: energy aware-routing, efficient information processing … In this paper, they use inherent correlation(spatio- temporal) in sensor data

4 Distributed Compression(1/2) Each sensor can compress its data w/o knowing the other sensor’s data

5 Distributed Compression(2/2) 4-level tree code book(uncompressed data:4 bit) Using 2 bit X = 0.9(index 9)  F(X) = 9 mod 4(2^2) = 1  => 01 Descend tree LSB first Assume(?) side info. Y = 0.8 Encoder: Decoder:

6 Correlation Tracking(1/3) Side information Y  Use a Linear Predictive model   Find the and that minimize the mean squared prediction error Assume and are pairwise jointly wide sense stationary

7 Correlation Tracking(2/3) Practically,

8 Correlation Tracking(3/3) If, no decoding error If, decoding error Chebyshev’s inequality

9 Querying & Reporting Alg.

10 Results(1/2) Light, temperature, humidity – each 18,000 samples Simulate the measurement of data by reading from a file, previously recorded from actual sensors 12 bit data Stat topology-1 data gathering node, 5 sensor nodes Prediction model:

11 Results(2/2) Zero decoding error => conservative in choosing i Spikes => chose aggressive weight factor Assume the energy used to transmit a bit is equivalent to the energy used to receive a bit

12 Conclusion & Comments Reduce energy consumption by using distributed compression and adaptive prediction Orthogonal approach to previous methods Overhead to data gathering node(computation & memory space)