Title: Customized Mobility Model for MANET routing
1Customized Mobility Model for MANET routing
- By
- Anuraag Dimri
- (iwc2006001)
- Under Supervision of
- Dr Shekhar Verma.
2Overview of Presentation
- Mobile Ad-hoc Networks
- Motivation
- Mobility Models
- Customized Mobility Model
- Simulation
- Simulation Results
- Observation
- References
- Questions
3Why Ad Hoc Networks ?
- Ease of deployment
- Decreased dependence on infrastructure
4Mobile Ad Hoc Networks
- Formed by wireless hosts which may be mobile and
arbitarily located - Without necessarily using a pre-existing
infrastructure - Routes between nodes may potentially contain
multiple hops
5Many Applications
- Enables, for example, Personal Area Networks
(PANs)(Bluetooth, IEEE 802.15) - For military and disaster management.
- Information distribution (meetings, seminars
etc.) - Internet / intranet hot spots (public
transportation) - New mobile devices are invented constantly and
used various ways.
6Two Characteristics that effect protocol
performance.
- 1. TRAFFIC CHARACTERISTCS
- 2.MOBILITY CHARACTERISTICS
7Traffic Characteristics vary
- Traffic characteristics may differ in different
ad hoc networks - bit rate
- reliability requirements
- unicast / multicast / geocast
- host-based addressing / content-based addressing
/ capability-based addressing - May co-exist (and co-operate) with an
infrastructure-based network
8Mobility Variations
- Mobility patterns may be different
- people sitting at an airport lounge
- Taxi cabs
- kids playing
- military movements
- personal area network
- Mobility characteristics
- speed
- predictability
- direction of movement
- pattern of movement
- uniformity (or lack thereof) of mobility
characteristics among different nodes
9 MotivationREFMultihop Ad Hoc Networking The
Theory Conti, M. Giordano, S. Communications
Magazine, IEEE April 2007
- MANET research generally lacks realism, both
from the socio economic and technical
perspective. Many research areas (e.g., security
and cooperation, energy management, and transport
protocols) address relevant theoretical problems
that will have a practical impact only if and
when MANET has a large-scale deployment - MANET research focuses on building a complex
large-scale system with almost no attention to
building up a user community.
10Mistake in designing adhoc nwk protocolsvaidya,
infocom 2005Assuming Extreme Scenarioas the
Common Case
11Extreme Ad Hoc NetworkingLarge Isolated
Networks? No infrastructure
C
E
A
B
12Extreme Scenario
- Extreme ad hoc networks No infrastructure
- ? No certification authority
- ? No DHCP server
- ? Long-lived partitions
13More Likely Ad Hoc NetworksAccess to
Infrastructure
internet
C
E
A
B
14More Likely Ad Hoc NetworksSmall
15More Realistic Multi-Hop WirelessMesh Networks
internet
Wireless backbone
B
C
A
16More Realistic Multi-Hop WirelessHybrid Networks
internet
Access Point
Wireless channel
E
B
C
A
D
17Practical assumptions
- Infrastructure can be accessed selectively
- Not all enumerable scenarios are relevant
- ? Design protocols and study there performance
for the likely scenarios
18Realistic mobility modelsREFStudy on
Environment Mobility Models for Mobile Ad Hoc
Network Hotspot Mobility Model and Route
Mobility Model. Gang Lu Belis, D. Manson, G.
Wireless Networks,Communications and Mobile
Computing, 2005 International Conference on
Volume 1,
- Mobility models are random-based
- -they dont model the situations correctly
- Some of the situations the node movement is not
random but more or less deterministic. - Authors propose 1.ROUTE MOBILITY MODEL-
construct complex environment like city area.
2.HOTSPOT MOBILITY MODEL.-attractive places
exist in simulation area.
19 Mobility Models Designed to
describe the movement pattern of mobile users,
and how their location, velocity and acceleration
change over time.
20Dimensions of Mobility Space
- Temporal Dependency
- Physical constraints of the mobile entity
itself - e.g the current velocity is more or less
dependent on the previous velocity, according to
certain parameter. - Spatial Dependency
- Movement pattern is influenced by and
correlated with nodes in its neighborhood. - Geographic Restrictions
- Movement may be restricted along the street
or a freeway. A geographic map may define these
boundaries.
21RANDOM-BASED MOBILITY MODELS
- Destination, speed and direction are all chosen
randomly and independently of other nodes - The Random Waypoint Model
- Mobile node randomly selects one location in
the simulation field as the destination and
travels constant velocity chosen uniformly and
randomly from 0,Vmax - The velocity and direction of a node are
chosen independently of other nodes
22- on reaching the destination, the node stops for a
duration defined by the pause time parameter
Tpause. After which it again chooses another
random destination in the simulation field and
moves towards it
23- Vmax and Tpause are two key parameters that
determine the mobility behavior of nodes. - Small Vmax Large Tpause gt stable nwk
- Large Vmax Low Tpausegt Highly dynamic
- Random Walk Model
- Special case of Random Waypoint model with
zero pause time. - Limitations of Random Models
- Velocity of MN is a memoryless random process.
- MN is considered an entity that moves
independently of other nodes and can move freely
within simulation field without any restrictions.
24MOBILITY MODELS WITH TEMPORAL DEPENDENCY
- the velocities of single node at different time
slots are correlated. - Gauss-Markov Mobility Model-
- Smooth Random Mobility Model-probabilities of
selecting certain speed is higher in the
range0,Vmax
25MOBILITY MODELS WITH SPATIAL DEPENDENCY
- In some applications including disaster relief
and battlefield, team collaboration among users
exists and the users are likely to follow the
team leader. Therefore, the mobility of MN could
be influenced by other neighboring nodes. - Reference Point Group Mobility Model -each group
has a center - movement of the group leader determines the
mobility behavior of the entire group
26MOBILITY MODELS WITH GEOGRAPHIC RESTRICTION
- In real life applications, nodes movement is
subject to the environment. In particular, the
motions of vehicles are bounded to the freeways
or local streets in the urban area, and on campus
the pedestrians may be blocked by the buildings
and other obstacles. Therefore, the nodes may
move in a pseudo-random way on predefined
pathways in the simulation field. - Obstacle Mobility Model
- Obstacles in the simulation field are present.
- MN is required to change its trajectory
- Obstacles also impact the way radio propagates
-
27 28- Node movement restricted to the pathways in the
map - Initially, the nodes are placed randomly on the
edges of the graph. Then for each node a
destination is randomly chosen and the node moves
towards this destination through the shortest
path along the edges. - Destination of each motion phase is randomly
chosen, a certain level of randomness still
exists for this model. So, in this graph based
mobility model, the nodes are traveling in a
pseudo-random fashion on the pathways
29Customized Mobility Model
- Mobility is a characteristic of device Laptops
PDAs and Cell phones exhibit different
mobility - Emphasis on scenario based simulation.
- Problem with predominantly used Random Waypoint
Mobility Model - Does not precisely mimics real world mobility
- Exhibits speed decay
- Suffers with Density wave phenomenon
30Customized Mobility Model
- Mobility dependent on place and type of device
- Campus may have 1. Buildings
- 2. Cafeteria
- 3. Playground
- 4. Pathways
- 5. Empty spaces with no user density
31Customized Mobility Model
- Types of devices associated can be enumerated as
follows. - 1.Cell phones
- 2.PDAs
- 3.Laptops
- Simulation area based on real map
- Partitioned in to zones exhibiting different
mobility of its own - Inter zone transition based on real world
movements
32Customized Mobility Model
- Decomposing simulation area in to
- different regions of different
- mobility.
- Unrealistic assumption of randomly
distributed nodes is avoided.
Campus LAN as composed of different
entities
33 First ModelBased on domain
switching probabilities
- The simulation region is divided in to different
sub-domains - Based on domain switching probability
inter-domain node transition takes place - Studies on campus LAN have shown repetitive
associative behavior. - Modified Random Trip Mobility model27 so that
it can take multiple probability transition
matrix files for continuous node movement. - Takes domain file and probability file as input
-
34First Model
- Domain file is of the form
- r 100 100 400 400 15
- c 1000 250 200 5
- r 500 500 900 900 20
- High node density and mobility can be achieved
by increasing number of nodes, decreasing the
area and increasing the trips - Domain transition matrix file probab is
- 0.2 0.6 0.2
- 0.1 0.8 0.1
- 0.2 0.7 0.1
35First Model
- Cafeteria is depicted by the second column
- Another probability transition matrix file called
newProbab mimics user movement to cafeteria after
lunch time0.8 0.0 0.2 - 0.3 0.4 0.3
- 0.2 0.0 0.8
- Thus we are able to depict a situation in which
nodes move towards the cafeteria and then
relatively same number of nodes move back
36First Model
- Let nodes in each domain10
- Based on probab I,II and III end up with 5,21
and 4 nodes. - If we model 7 nodes each to move from the II to
I and III, the probability of files moving is
7/21 0.3 in both the cases. And probability of
nodes remaining in cafeteria is 0.4 (1-0.3-0.3). - Calculate the other probabilities based on the
node movement..
Thus real world node movement can be modeled .
37 Second ModelChoosing speed and
pause time from Gaussian Distribution
- Partition simulation region in to different
sub-domains - These subdomains can have different mobility
characteristics that may be represented by,
pursue, brownian and random waypoint mobility
model - The setdest program22 picks speed from uniform
distribution and takes only fixed pause time.
38Second Model
Uniform vs Gaussian distribution for picking
speed and pause time
39Second Model
Different subdomains can be assigned different
minimum and maximum speeds, Pause times can also
be varied to model the mobility of different
regions differently
Snapshot of the second model
40Simulation
- Three simulation exercises to simulateRandom
Waypoint ModelFirst ModelSecond Model - Simulation Parameters-simulation area
1500x1500-number of nodes90-simulation
time180 sec-type of datacbr-data rate 4mb\s
per connection-speed 3m\s , pause time4m\s
(for first simulation)-different speed and pause
time for diff domains(third simulatin) -
41 First simulationRandom
waypoint model
Throughput plot for AODV and DSDV for first
simulation at node 22
42 Second simulationBased on domain
switiching probability
Throughput plot for AODV and DSDV for second
simulation at node 22
43 Second simulationBased on domain
switiching probability
Throughput plot for AODV and DSDV for second
simulation at node 88
44 Third simulationBased on
modified speed and pause times
Throughput plot for AODV and DSDV for third
simulation at node 22
45 Third simulationBased on
modified speed and pause times
Throughput plot for AODV and DSDV for second
simulation at node 88
46Comparative Analysis
47Observations
- Throughput of a specific routing protocol depends
on the underlying mobility model. - Mobility model Node density ? Average connected
paths ? Routing protocol performance - The number of nodes in the simulation area have
impact on the measured protocol performance. - Testing a protocol according to a realistic model
depicting the movement of nodes is more important
rather than random movement. - Increase in the data rate has an effect on the
routing protocol. - In terms of throughput AODV performs better in
all scenarios.
48Observations
- Throughput is affected by the simulation
scenario. Different throughputs where obtained
for the three simulations. - AODV and DSDV produce different average end to
end delay, which was calculated as - sum of delay experienced by each packet\Total
number of packets - There is a drop in PDR as traffic is increased.
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