GreenDelivery: Proactive Content Caching and Push with Energy- Harvesting-based Small Cells IEEE Communications Magazine, 2015 Sheng Zhou, Jie Gong, Zhenyu.

Slides:



Advertisements
Similar presentations
Cost-Based Cache Replacement and Server Selection for Multimedia Proxy Across Wireless Internet Qian Zhang Zhe Xiang Wenwu Zhu Lixin Gao IEEE Transactions.
Advertisements

XORs in The Air: Practical Wireless Network Coding
Min Song 1, Yanxiao Zhao 1, Jun Wang 1, E. K. Park 2 1 Old Dominion University, USA 2 University of Missouri at Kansas City, USA IEEE ICC 2009 A High Throughput.
Novasky: Cinematic-Quality VoD in a P2P Storage Cloud Speaker : 童耀民 MA1G Authors: Fangming Liu†, Shijun Shen§,Bo Li†, Baochun Li‡, Hao Yin§,
Optimization of Data Caching and Streaming Media Kristin Martin November 24, 2008.
Telecommunication Networks and integrated Services (TNS) Laboratory Department of Digital Systems University of Piraeus Research Center (UPRC) University.
Adaptive Multiple Relay Selection Scheme for Cooperative Wireless Networks WCNC 2010 Gayan Amarasuriya, Masoud Ardakani and Chintha Tellambura {amarasur,
Mohamed Hefeeda 1 School of Computing Science Simon Fraser University, Canada Multimedia Streaming in Dynamic Peer-to-Peer Systems and Mobile Wireless.
Peering in Infrastructure Ad hoc Networks Mentor : Linhai He Group : Matulya Bansal Sanjeev Kohli EE 228a Course Project.
Distributed Servers Architecture for Networked Video Services S. H. Gary Chan, Member IEEE, and Fouad Tobagi, Fellow IEEE.
Proxy-based Distribution of Streaming Video over Unicast/Multicast Connections B. Wang, S. Sen, M. Adler and D. Towsley University of Massachusetts Presented.
1 TDMA Scheduling in Competitive Wireless Networks Mario CagaljHai Zhan EPFL - I&C - LCA February 9, 2005.
A Survey of Home Energy Management Systems in Future Smart Grid Communications By Muhammad Ishfaq Khan.
CS Spring 2012 CS 414 – Multimedia Systems Design Lecture 34 – Media Server (Part 3) Klara Nahrstedt Spring 2012.
Green Cellular Networks: A Survey, Some Research Issues and Challenges
Exploiting Virtualization for Delivering Cloud based IPTV Services Speaker : 吳靖緯 MA0G IEEE Conference on Computer Communications Workshops.
1 Proxy-Assisted Techniques for Delivering Continuous Multimedia Streams Lixin Gao, Zhi-Li Zhang, and Don Towsley.
Adaptive Resource Allocation for Layer-Encoded IPTV Multicasting in IEEE WiMAX Wireless Networks Wen-Hsing Kuo, Wanjiun Liao, Tehuang Liu IEEE TRANSACTIONS.
Optimal Multicast Capacity and Delay Tradeoffs in MANETs: A Global Perspective Yun Wang, Xiaoyu Chu, Xinbing Wang Department of Electronic Engineering.
Resource Allocation for E-healthcare Applications
1 MultimEDia transport for mobIlE Video AppLications 9 th Concertation Meeting Brussels, 13 th February 2012 MEDIEVAL Consortium.
Network diversity in broadband wireless system ONR workshop 2003 Hui Liu Department of Electrical Engineering University of Washington.
1 IEEE Trans. on Smart Grid, 3(1), pp , Optimal Power Allocation Under Communication Network Externalities --M.G. Kallitsis, G. Michailidis.
Constrained Green Base Station Deployment with Resource Allocation in Wireless Networks 1 Zhongming Zheng, 1 Shibo He, 2 Lin X. Cai, and 1 Xuemin (Sherman)
1 Optimal Power Allocation and AP Deployment in Green Wireless Cooperative Communications Xiaoxia Zhang Department of Electrical.
Optimal Power Control, Rate Adaptation and Scheduling for UWB-Based Wireless Networked Control Systems Sinem Coleri Ergen (joint with Yalcin Sadi) Wireless.
Heterogeneous network - How do mobile operators exploit different network together to enhance customer satisfaction and reduce operating cost. Yao-Yu Li,
Mohamed Hefeeda 1 School of Computing Science Simon Fraser University, Canada Video Streaming over Cooperative Wireless Networks Mohamed Hefeeda (Joint.
IEEE Globecom 2010 Tan Le Yong Liu Department of Electrical and Computer Engineering Polytechnic Institute of NYU Opportunistic Overlay Multicast in Wireless.
Function Computation over Heterogeneous Wireless Sensor Networks Xuanyu Cao, Xinbing Wang, Songwu Lu Department of Electronic Engineering Shanghai Jiao.
1 [3] Jorge Martinez-Bauset, David Garcia-Roger, M a Jose Domenech- Benlloch and Vicent Pla, “ Maximizing the capacity of mobile cellular networks with.
Putting Intelligence in Internetworking: an Architecture of Two Level Overlay EE228 Project Anshi Liang Ye Zhou.
1 A Distributed Algorithm for Joint Sensing and Routing in Wireless Networks with Non-Steerable Directional Antennas Chun Zhang *, Jim Kurose +, Yong Liu.
Towards Exploiting User- Centric Information for Proactive Caching in Mobile Networks ‡ , WWRF28, Athens Xenofon Vasilakos Xenofon Vasilakos,
Hybrid Cellular-Ad hoc Data Network Shuai Zhang, Ziwen Zhang, Jikai Yin.
Device-to-Device Communication in Cellular Networks Speaker: Tsung-Han Chiang Date: Feb. 24,
JWITC 2013Jan. 19, On the Capacity of Distributed Antenna Systems Lin Dai City University of Hong Kong.
CROSS-LAYER OPTIMIZATION PRESENTED BY M RAHMAN ID:
Cell Zooming for Cost-Efficient Green Cellular Networks
Kenza Hamidouche, Mérouane Debbah
Capacity Enhancement with Relay Station Placement in Wireless Cooperative Networks Bin Lin1, Mehri Mehrjoo, Pin-Han Ho, Liang-Liang Xie and Xuemin (Sherman)
X. Li, W. LiuICC May 11, 2003A Joint Layer Design Smart Contention Resolution Random Access Wireless Networks With Unknown Multiple Users: A Joint.
PROP: A Scalable and Reliable P2P Assisted Proxy Streaming System Computer Science Department College of William and Mary Lei Guo, Songqing Chen, and Xiaodong.
Scalable Video Coding and Transport Over Broad-band wireless networks Authors: D. Wu, Y. Hou, and Y.-Q. Zhang Source: Proceedings of the IEEE, Volume:
IEEE Communications Magazine February 2006 Stefan Parkvall, Eva Englund, Magnus Lundevall, and Johan Torsner, Ericsson Research 2015/12/31.
ASSIGNMENT, DISTRIBUTION AND QOS PROVISIONING IN COMMUNICATION NETWORKS.
Content caching and scheduling in wireless networks with elastic and inelastic traffic Group-VI 09CS CS CS30020 Performance Modelling in Computer.
A Throughput-Adaptive MAC Protocol for Wireless Sensor Networks Zuo Luo, Liu Danpu, Ma Yan, Wu Huarui Beijing University of Posts and Telecommunications.
2011 ULTRA Program: Green Radio Prof. Jinho Choi College of Engineering Swansea University, UK.
Towards Self-Healing Smart Grid via Intelligent Local Controller Switching under Jamming Hongbo Liu, Yingying Chen Department of ECE Stevens Institute.
Multicast Recipient Maximization in IEEE j WiMAX Relay Networks Wen-Hsing Kuo † ( 郭文興 ) & Jeng-Farn Lee ‡ ( 李正帆 ) † Department of Electrical Engineering,
Smart Grid Schneider Electric Javier Orellana
CHANNEL ALLOCATION FOR SMOOTH VIDEO DELIVERY OVER COGNITIVE RADIO NETWORKS Globecom 2010, FL, USA 1 Sanying Li, Tom H. Luan, Xuemin (Sherman) Shen Department.
A Social-Network-Aided Efficient Peer-to-Peer Live Streaming System IEEE/ACM TRANSACTIONS ON NETWORKING, JUNE 2015 Haiying Shen, Yuhua Lin Dept. of Electrical.
1 Architecture and Behavioral Model for Future Cognitive Heterogeneous Networks Advisor: Wei-Yeh Chen Student: Long-Chong Hung G. Chen, Y. Zhang, M. Song,
Video Caching in Radio Access network: Impact on Delay and Capacity
Cooperative Resource Management in Cognitive WiMAX with Femto Cells Jin Jin, Baochun Li Department of Electrical and Computer Engineering University of.
Wireless Packet Scheduling With Soft Deadlines Aditya Dua and Nicholas Bambos Department of Electrical Engineering Stanford University ICC 2007.
Social and Spatial Proactive Caching for Mobile Data Offloading IEEE International Conference on Communications (ICC) – W3: Workshop on Small Cell and.
Seminar Announcement December 24, Saturday, 15:00-17:00, Room: A302, WNLO Title: Quality-of-Experience (QoE) and Power Efficiency Tradeoff for Fog Computing.
Younes Abdi, PhD Faculty of Information Technology
Is there a promising way?
Smart Antenna Research Laboratory Aravind Kailas
University of Maryland College Park
Wonkwang Shin, Byoung-Yoon Min and Dong Ku Kim
Golrezaei, N. ; Molisch, A.F. ; Dimakis, A.G.
July 3, 2015 MuSIC (co-located with ICME) 2015, Torino, Italy
Speaker: Jin-Wei Lin Advisor: Dr. Ho-Ting Wu
Hongchao Zhou, Xiaohong Guan, Chengjie Wu
Presentation transcript:

GreenDelivery: Proactive Content Caching and Push with Energy- Harvesting-based Small Cells IEEE Communications Magazine, 2015 Sheng Zhou, Jie Gong, Zhenyu Zhou, Wei Chen Department of Electronic Engineering, Tsinghua University, Beijing, China Zhisheng Niu Department of Electrical and Electronic Engineering, North China Electric Power University Speaker: Yi-Ting Chen

Outline Introduction Framework Two Case Example Research Challenges Conclusions 2

Introduction To innovate green wireless access, three emerging technologies have been demonstrated as effective –Energy harvesting (EH) [1] –Traffic-aware service provisioning [2] –Wireless multicasting [3] 3 [1] D. Gunduz, K. Stamatiou, N. Michelusi, M. Zorzi, “Designing intelligent energy harvesting communication systems,” IEEE Commun. Mag., vol.52, no.1, pp , Jan [2] Z. Niu, “TANGO: traffic-aware network planning and green operation,” IEEE Wireless Commun. Mag., vol.18, no.5, pp.25-29, Oct [3] J. Liu, W. Chen, Y.J. Zhang, Z. Cao, “A utility maximization framework for fair and efficient multicasting in multicarrier wireless cellular networks,” IEEE/ACM Trans. Networking, vol.21, no.1, pp , Feb

Introduction 4 Energy harvesting (EH) –Utilizing the energy from natural sources such as solar, wind, and kinetic activities, –Allowing wireless transmissions to consume less energy [5] or no energy [4] from the power grid. [4] K. Tutuncuoglu, A. Yener, “Optimum transmission policies for battery limited energy harvesting nodes,” IEEE Trans. Wireless Commun., vol.11, no.3, pp , Mar [5] J. Gong, S. Zhou, and Z. Niu, “Optimal power allocation for energy harvesting and power grid coexisting wireless communication systems,” IEEE Trans. Commun., vol.61, no.7, pp , Jul

Introduction Traffic-aware service provisioning –Proposed to match the wireless resources to the traffic demands –Achieving better energy efficiency (EE). –ie. Optimizing BS sleeping based on the traffic demands and EH profile 5

Introduction Wireless multicast –Achieving significant EE gain via delivering commonly interested contents to multiple users simultaneously –Avoiding duplicated retransmissions of the same content. 6

Some Barriers Exploiting EH is limited by the state of the art readiness for battery capacity. The EE gain from on-demand service is also limited because of harsh and stringent QoS requirements of multimedia traffics like video streaming. In current cellular infrastructures, wireless multicasting can only be enabled if and only if a number of users requires a common content concurrently. 7

Main Contributions We propose a paradigm-shift framework Based on the EH status and content popularity distribution, the SCs proactively cache and push the contents before the actual arrival of user demands. Design objective: –Minimize the number of user requests handled by the macro BS. Energy saving The user quality of service (QoS) 8

Framework EH technology provides renewable energy for SCs to: 1. Fetch contents from macro BS via the backhaul link. 9

Framework EH technology provides renewable energy for SCs to: 2. Cache the fetched content. 10

Framework EH technology provides renewable energy for SCs to: 3. Push the contents to users before the users must request it. 11

Framework EH technology provides renewable energy for SCs to: 4. Unicast the contents to users upon request. 12

Exploiting the Content and Energy Timeliness Key Idea –To exploit the timeliness of the contents and energy via intelligent caching and push –Matching random energy arrivals and user requests over time and space 13

Exploiting the Content and Energy Timeliness 14

Benefits of GreenDelivery The temporal mismatch of content requests and energy arrivals can be resolved. Energy waste due to battery overflow can be avoided. The only cost to be paid is the storage resource for caching, the price of which is dramatically dropping nowadays 15

Case Study The considered model: 16

The Probability of Content 17

First Case: Push Only 18

First Case: Push Only 19

First Case: Push Only 20

First Case: Push Only 21

Second Case: Cache and Push 22

Second Case: Cache and Push 23

Second Case: Cache and Push 24

Second Case: Cache and Push 25

Research Challenge Intelligent Push under Random Energy Arrivals, Finite Battery and Fading Channel –In practice, the energy arrival and user requests can not be precisely predicted. Trade-off between Benefits of Push and Content Storage Cost –Caching itself also introduces additional costs 26

Conclusion GreenDelivery is a new access network framework to enable efficient content delivery via EH based SCs. Exploiting the content popularity information and battery status, proactive fetch/caching and push are implemented. The transmission cost of macro BSs is substantially reduced, which is illustrated via our case studies. 27

Thanks for your listening! 28