Adaptive energy-efficient registration and online scheduling for asymmetric wireless sensor networks Authors : Saravanan Balasubramanian, Demet Aksoy Published.

Slides:



Advertisements
Similar presentations
6LoWPAN Extending IP to Low-Power WPAN 1 By: Shadi Janansefat CS441 Dr. Kemal Akkaya Fall 2011.
Advertisements

Maximum Battery Life Routing to Support Ubiquitous Mobile Computing in Wireless Ad Hoc Networks By C. K. Toh.
TDMA Scheduling in Wireless Sensor Networks
Integrated Coverage and Connectivity Configuration in Wireless Sensor Networks Xiaorui Wang, Guoliang Xing, Yuanfang Zhang*, Chenyang Lu, Robert Pless,
Routing Protocols for Sensor Networks Presented by Siva Desaraju Computer Science WMU An Application Specific Protocol Architecture for Wireless Microsensor.
Energy-Efficient Communication Protocol for Wireless Microsensor Networks by Mikhail Nesterenko Wendi Rabiner Heinzelman, Anantha Chandrakasan, and Hari.
Kyung Tae Kim, Hee Yong Youn (Sungkyunkwan University)
An Energy Efficient Routing Protocol for Cluster-Based Wireless Sensor Networks Using Ant Colony Optimization Ali-Asghar Salehpour, Babak Mirmobin, Ali.
TOPOLOGIES FOR POWER EFFICIENT WIRELESS SENSOR NETWORKS ---KRISHNA JETTI.
Low-Energy Adaptive Clustering Hierarchy An Energy-Efficient Communication Protocol for Wireless Micro-sensor Networks M. Aslam hayat.
A novel Energy-Efficient and Distance- based Clustering approach for Wireless Sensor Networks M. Mehdi Afsar, Mohammad-H. Tayarani-N.
Defending Against Traffic Analysis Attacks in Wireless Sensor Networks Security Team
PEDS September 18, 2006 Power Efficient System for Sensor Networks1 S. Coleri, A. Puri and P. Varaiya UC Berkeley Eighth IEEE International Symposium on.
A Survey of Energy-Efficient Scheduling Mechanisms in Sensor Networks Author : Lan Wang·Yang Xiao(2006) Presented by Yi Cheng Lin.
David Goldenberg. Network resources include Energy and Space We have developed the first algorithms leveraging node mobility to improve the communication.
Online Data Gathering for Maximizing Network Lifetime in Sensor Networks IEEE transactions on Mobile Computing Weifa Liang, YuZhen Liu.
Optimizing Lifetime for Continuous Data Aggregation With Precision Guarantees in Wireless Sensor Networks Xueyan Tang and Jianliang Xu IEEE/ACM TRANSACTIONS.
On Tree-Based Convergecasting in Wireless Sensor Networks V. Annamalai, S. K. S. Gupta, L. Schwiebert IEEE 2003 Speaker : Chi-Chih Wu.
APTEEN: A Hybrid Protocol for Efficient Routing and Comprehensive Information Retrieval in Wireless Sensor Networks Arati Manjeshwar, Dharma P. Agrawaly.
An Energy Efficient Hierarchical Clustering Algorithm for Wireless Sensor Networks Seema Bandyopadhyay and Edward J. Coyle IEEE INFOCOM 2003.
1 Y-MAC: An Energy-efficient Multi-channel MAC Protocol for Dense Wireless Sensor Networks Youngmin Kim, Hyojeong Shin, and Hojung Cha International Conference.
Spatial Correlation-Based Collaborative Medium Access Control in Wireless Sensor Networks Authors : Mehmet C. Vuran, Ian F. Akyildiz Georgia Institute.
M-GEAR: Gateway-Based Energy-Aware Multi-Hop Routing Protocol
Protocols for Self-Organization of a Wireless Sensor Network K. Sohrabi, J. Gao, V. Ailawadhi, and G. J. Pottie IEEE Personal Comm., Oct Presented.
A Framework for Energy- Saving Data Gathering Using Two-Phase Clustering in Wireless Sensor Networks Wook Chio, Prateek Shah, and Sajal K. Das Center for.
A Multi-Channel MAC Protocol for Wireless Sensor Networks Chen xun, Han peng, He qiu-sheng, Tu shi-liang, Chen zhang-long The Sixth IEEE International.
1 Optimal Power Allocation and AP Deployment in Green Wireless Cooperative Communications Xiaoxia Zhang Department of Electrical.
Minimal Hop Count Path Routing Algorithm for Mobile Sensor Networks Jae-Young Choi, Jun-Hui Lee, and Yeong-Jee Chung Dept. of Computer Engineering, College.
A Dedicated Multi-channel MAC Protocol Design for VANET with Adaptive Broadcasting Ning Lu 1, Yusheng Ji 2, Fuqiang Liu 1, and Xinhong Wang 1 1 Dept. of.
Energy-Efficient Protocol for Cooperative Networks IEEE/ACM Transactions on Networking, Apr Mohamed Elhawary, Zygmunt J. Haas Yong Zhou
An Energy Efficient MAC Protocol for Wireless LANs Eun-Sun Jung Nitin H. Vaidya IEEE INFCOM 2002 Speaker :王智敏 研二.
An Energy Efficient Hierarchical Clustering Algorithm for Wireless Sensor Networks Seema Bandyopadhyay and Edward J. Coyle Presented by Yu Wang.
Copyright © 2011, A Flow-based Hybrid Mechanism to Improve Performance in NOX and wireless OpenFlow switch networks Bruno Van Den Bossche,
A Low-Latency and Energy-Efficient Algorithm for Convergecast in Wireless Sensor Networks Authors Sarma Upadhyayula, Valliappan Annamalai, Sandeep Gupta.
An Energy-Aware Periodical Data Gathering Protocol Using Deterministic Clustering in Wireless Sensor Networks (WSN) Mohammad Rajiullah & Shigeru Shimamoto.
SIMPLE: Stable Increased Throughput Multi-hop Link Efficient Protocol For WBANs Qaisar Nadeem Department of Electrical Engineering Comsats Institute of.
An Energy-Efficient MAC Protocol for Wireless Sensor Networks Qingchun Ren and Qilian Liang Department of Electrical Engineering, University of Texas at.
A SURVEY OF MAC PROTOCOLS FOR WIRELESS SENSOR NETWORKS
ELECTIONEL ECTI ON ELECTION: Energy-efficient and Low- latEncy sCheduling Technique for wIreless sensOr Networks Shamim Begum, Shao-Cheng Wang, Bhaskar.
Performance Study of Localization Techniques in Zigbee Wireless Sensor Networks Ray Holguin Electrical Engineering Major Dr. Hong Huang Advisor.
A Cooperative Lifetime Extension MAC Protocol in Duty Cycle Enabled Wireless Sensor Networks Hongzhi Jiaot, Mary Ann Ingram, Frank Y. Li Milcom 2011.
MMAC: A Mobility- Adaptive, Collision-Free MAC Protocol for Wireless Sensor Networks Muneeb Ali, Tashfeen Suleman, and Zartash Afzal Uzmi IEEE Performance,
A Quorum-Based Energy-Saving MAC Protocol Design for Wireless Sensor Networks Chih-Min Chao, Yi-Wei Lee IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2010.
Hybrid Indirect Transmissions (HIT) for Data Gathering in Wireless Micro Sensor Networks with Biomedical Applications Jack Culpepper(NASA), Lan Dung, Melody.
S& EDG: Scalable and Efficient Data Gathering Routing Protocol for Underwater Wireless Sensor Networks 1 Prepared by: Naveed Ilyas MS(EE), CIIT, Islamabad,
Copyright © 2011, Scalable and Energy-Efficient Broadcasting in Multi-hop Cluster-Based Wireless Sensor Networks Long Cheng ∗ †, Sajal K. Das†,
Maximizing Lifetime per Unit Cost in Wireless Sensor Networks
Modeling In-Network Processing and Aggregation in Sensor Networks Ajay Mahimkar The University of Texas at Austin March 24, 2004.
Energy-aware Node Placement in Wireless Sensor Networks Global Telecommunications Conference 2004 (Globecom 2004) Peng Cheng, Chen-Nee Chuah Xin Liu UCDAVIS.
Copyright © 2007 OPNET Technologies, Inc. CONFIDENTIAL - RESTRICTED ACCESS: This information may not be disclosed, copied, or transmitted in any format.
Ching-Ju Lin Institute of Networking and Multimedia NTU
An Energy-Efficient Geographic Routing with Location Errors in Wireless Sensor Networks Julien Champ and Clement Saad I-SPAN 2008, Sydney (The international.
Energy-Efficient Wake-Up Scheduling for Data Collection and Aggregation Yanwei Wu, Member, IEEE, Xiang-Yang Li, Senior Member, IEEE, YunHao Liu, Senior.
Distributed Data Gathering Scheduling in Multi-hop Wireless Sensor Networks for Improved Lifetime Subhasis Bhattacharjee and Nabanita Das International.
A Coverage-Preserving Node Scheduling Scheme for Large Wireless Sensor Networks Di Tian, and Nicolas D. Georanas ACM WSNA ‘ 02.
An Adaptive Zone-based Storage Architecture for Wireless Sensor Networks Thang Nam Le, Dong Xuan and *Wei Yu Department of Computer Science and Engineering,
1 Energy Efficient Channel Access Scheduling For Power Constrained Networks Venkatesh Rajendran J.J. Garcia-Luna-Aceves Katia Obrackzka Dept. of Computer.
A Bandwidth Scheduling Algorithm Based on Minimum Interference Traffic in Mesh Mode Xu-Yajing, Li-ZhiTao, Zhong-XiuFang and Xu-HuiMin International Conference.
FERMA: An Efficient Geocasting Protocol for Wireless Sensor Networks with Multiple Target Regions Young-Mi Song, Sung-Hee Lee and Young- Bae Ko Ajou University.
GholamHossein Ekbatanifard, Reza Monsefi, Mohammad H. Yaghmaee M., Seyed Amin Hosseini S. ELSEVIER Computer Networks 2012 Queen-MAC: A quorum-based energy-efficient.
Fair and Efficient multihop Scheduling Algorithm for IEEE BWA Systems Daehyon Kim and Aura Ganz International Conference on Broadband Networks 2005.
A Coverage-Preserving Node Scheduling Scheme for Large Wireless Sensor Networks Di Tian, Nicolas D. Georganas First ACM international workshop on Wireless.
Grid-Based Energy-Efficient Routing from Multiple Sources to Multiple Mobile Sinks in Wireless Sensor Networks Kisuk Kweon, Hojin Ghim, Jaeyoung Hong and.
Toward Reliable and Efficient Reporting in Wireless Sensor Networks Authors: Fatma Bouabdallah Nizar Bouabdallah Raouf Boutaba.
Energy-Efficient Protocols for communication in Biosensor networks.
AUTO-ADAPTIVE MAC FOR ENERGY-EFfiCIENT BURST TRANSMISSIONS IN WIRELESS SENSOR NETWORKS Romain Kuntz, Antoine Gallais and Thomas No¨el IEEE WCNC 2011 Speaker.
Junchao Ma +, Wei Lou +, Yanwei Wu *, Xiang-Yang Li *, and Guihai Chen & Energy Efficient TDMA Sleep Scheduling in Wireless Sensor Networks + Department.
Construction of Optimal Data Aggregation Trees for Wireless Sensor Networks Deying Li, Jiannong Cao, Ming Liu, and Yuan Zheng Computer Communications and.
1 Power-efficient Clustering Routing Protocol Based on Applications in Wireless Sensor Network Authors: Tao Liu and Feng Li Form:International Conferecnce.
Protocols for Wireless Sensor Networks
Presentation transcript:

Adaptive energy-efficient registration and online scheduling for asymmetric wireless sensor networks Authors : Saravanan Balasubramanian, Demet Aksoy Published : Computer Networks Speaker : Wen-Chuan Huang

Outline Introduction Introduction AEROS AEROS Message format Message format Channel division Channel division Control message Control message Experiments Experiments Conclusions Conclusions

Introduction

Goal propose a novel and adaptive sensor registration and scheduling protocol enable adaptive routing paths towards the data collection points minimize the data transmissions such that each observation is transmitted only once per node using collision-free scheduling that is enabled even while the network is organizing The chances of data aggregation during routing is maximized

Message format (temperature, 4, 3, 1, 3, 2, 5, 2, 2) (temperature, 3, 5, 1, 2, 2, 4, 2, 3) (temperature, 3.375, 8, 1, 2, 2, 5, 2, 3) 屬性 感測值感測數量事件範圍持續時間 (4*3+3*5)/(3+5) 3+5

Channel division

In control channel Snoop state advertise subscribe schedule deregister

Scheduling Message type Message type Request Request Request-Ack Request-Ack Request-Nack Request-Nack Channel status Channel status FREE FREE CAN RECEIVE ONLY CAN RECEIVE ONLY NEIGHBOR USE NEIGHBOR USE SUBSCRIBER RECEIVE SUBSCRIBER RECEIVE TRANSMIT TRANSMIT

Energy consumption

Experiments

Conclusions Divide the communication medium into separate control and data channels Data communications take place on independent data channels that are organized to be collision-free Minimize the data communications and to improve the chances of data aggregation during data collection

Q&A