Title: Selforganization on Cellular Wireless Network and WLAN
1Self-organization on Cellular Wireless Network
and WLAN
2Contents
- Overview of self-organization
- Self-organizing on Cellular wireless network
- Topology generation and dynamic routing
- Issues of self-organization
- Conclusion
3Challenges
- The size and scope of mobile wireless networks
continue to grow with more users and devices
distributed from homes, businesses, to city and
world-wide. This is adding to spatiotemporal
complexity of the network topology and dynamics. - Due to unpredictability of the network, static
setting is insufficient.
4Features of Self-Organization
- Adapting to real-time situation
- Optimal resource planning
- Self-management and cooperation
5Features of Self-Organization (II)
- Self-organization is not just distributed and
localized control it is about the relationship
between the behavior of individual entities and
resulting structure and functionality of the
overall system. - The application of rather simple behavior at the
microscopic level leads to sophisticated
organization of the overall system emergent
behavior
6Design Paradigms
- 1.Design local behavior rules that achieve
global properties - 2.Do not aim for perfect coordination exploit
implicit coordination - 3.Minimize long-lived state information
- 4.Design protocols that adapt to changes
- Christian Prehofer and Christian Bettstetter,
DoCoMo Euro-labs, IEEE Communication, July 2005
7Protocols according to levels of
locality/coordination
8Design Paradigms putting together
9Overview of Cellular Wireless Network
10Self-Org of Base Stations
- BS is able to operate in a standalone fashion.
- BS collaborate with its peers.
- Probing phase
- (1)auto-configures its IP connectivity, subnet
and uplink interface. - (2)channel scan to detect other base stations
in its immediate neighborhood. - (3)contact neighbor stations through uplink,
and integrates itself into the network-wide
information exchange. - Periodically performs channel scan to detect
changes in its environment.
11Self-organizing technologies
12Adaptive cell sizing
- By decreasing the cell radius from 500 to 200m, a
capacity increase of 33 is achieved for voice
service - Revenue-based cell size control adjusts beacon
transmit power. Under congestion the cell will
limit its service area and reduce the
inter-base-station interference. This will enable
it to serve more users closer to the base
station. In light traffic conditions, it will
expand and improve the coverage with cells
overlapping the same area. - Power control Ensure a certain quality of
service is used, as well as improving capacity
13Fixed relay node
14Complex Behavior of Nodes
- Small World refers to a phenomenon where the
average path length between nodes is small, the
nodes are highly clustered, and connectivity
distribution peaks at an average value and then
decays exponentially. - - the hypothesis that everyone in the world
can be reached through a short chain of social
acquaintances. - Scale-free connectivity distributions can be
represented by power-law form, which is
independent of the size or scale of the network.
15Random vs. Scale-free
16Parameters of complex network
- Average path length (L)
- -average number of hops(edges) in the
shortest path between two nodes - Clustering coefficient (C)
- -average fraction of pairs of neighbors of a
node that are also neighbors of each other - Degree (K)
- -number of links connecting that node to the
neighboring nodes
17Small world concept
- A small world Average path length(L) is small,
and clustering coefficient is high. - It is shown that randomly rewiring a few edges
reduces the average distance between nodes, but
little effect on the clustering coefficient. - The degree distribution is exponential. Nodes
with high connectivity are practically absent,
power-law property is not observed.
18Scale-free model
- Real networks expand continuously by addition of
new nodes, and new nodes attach preferentially to
nodes that are already well connected. - Figure shows starting with 3 nodes, and each step
adding new node with 2 edges.
19Applying the model
- It is anticipated that infrastructureless,
deployable, wireless relay stations will be used
the addition to the cellular infrastructure to
improve service to mobile users. - The objective is to design a scale-free overlay
FRN network for QoS purposes.
20Topology generating
21Scale-free result
- Internet clustering coefficient is measured to be
greater then 0.18, and web is 0.1078.
22Dynamic Routing
- Method 1 Load balancing among only BSs.
- Method 2 Load balancing among FRNs and BSs with
no change in destination BS - Method 3 Load balancing among FRNs and BSs with
change in Destination BS
23Routing experiment
- The location of mobile users are generated
according to a uniform distribution. - BSs3 , FRNs 50, K1
24Discussion issues
- 1. Cell configuration
- 2. Efficient Planning
- 3. Coordination on different nodes and layers
25Cell configuration
- The backbone of the wireless mobile network is
the entry points to the networking, especially
the cell concept with BSs at the center. - Cells should be able to flexibly adjust its
topological coverage to facilitate the flow of
signals or packets. - For example Cell-Dimensioning Algorithm
26example Cell-Dimensioning Algorithm
27example Cell-Dimensioning Algorithm
28example Cell-Dimensioning Algorithm(II)
- Cell boundaries before and after BSR x removed
29Efficient Planning
- Adaptation to resources with potential aspects,
ex. Cost, capacity, traffic..etc. - Dynamic routing
- Advanced modeling of reinforcement learning,
which configure service coverage and system
capacity dynamically to balance traffic loads
among cells by being aware of the system
situation.
30Example Integrated Cellular and Ad-hoc Relay
System
31Coordination on different nodes and layers
32SOPRANO
- A wireless multihop network overlaid with a
cellular structure base station(BS), router(R),
and terminals(T) - Self-Organizing Packet Radio Ad-hoc Networks with
Overlay (SOPRANO), IEEE Communications June 2002
33Conclusion
- Self-organization reduces costs, improves
robustness, enhances effectiveness and
performance, facilitates automatically
utilization of cellular wireless networks. - Its overall goal is to enhance QoS.
34References
- Self-Organization in Communication Networks
Principles and Design Paradigms, Christian
Prehofer and Christian Bettstetter, DoCoMo
Euro-Labs, IEEE Communications Magazine July
2005, p 78-85 - Self-organization in future mobile
communications, by A. G. Spilling, A. R. Nix, M.
A. Beach and T. J. Harrold, ELECTRONICS Xr
COMMUNICA'IION ENGINEERING JOURNAL JUNE 2000 - Self-Management of Wireless Base Stations, Kai
Zimmermann, Lars Eggert and Marcus Brunner,
www.ambient-networks.org - On the Design of Self-Organized Cellular Wireless
Networks, Sudhir Dixit, Evs, en Yanmaz, and Ozan
K. Tonguz, IEEE Communications Magazine July
2005 - Self-Organizing packet Radio Ad Hoc Networks with
Overlay (SOPRANO), Ali N. Zadeh and Bijan
Jabbari, Raymond Pickholtz and Branimir Vojcic,
IEEE Communications Magazine June 2002 - Reinforcement-learning-based self-organization
for cell configuration in multimedia mobile
networks, Ching-Yu Liao, Fei Yu, Victor C. M.
Leung and Chung-Ju Chang, EUROPEAN TRANSACTIONS
ON TELECOMMUNICATIONS,Euro. Trans. Telecomms.
2005 16385397 - Applying Emergent Self-Organizing Behavior for
the Coordination of 4G Networks Using Complexity
Metrics, Lester T. W. Ho, Louis G. Samuel,
Jonathan M. Pitts, Bell Labs Technical Journal
8(1), 525 (2003)