31
1 Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes Michele Garetto – Università di Torino Paolo Giaccone - Politecnico di Torino Emilio Leonardi Politecnico di Torino MobiHoc 2007

Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

  • Upload
    axelle

  • View
    38

  • Download
    0

Embed Size (px)

DESCRIPTION

Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes. Michele Garetto – Universit à di Torino Paolo Giaccone - Politecnico di Torino Emilio Leonardi – Politecnico di Torino MobiHoc 2007. Outline. Introduction and motivation Assumptions and notations Main results - PowerPoint PPT Presentation

Citation preview

Page 1: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

1

Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile

Nodes Michele Garetto – Università di Torino

Paolo Giaccone - Politecnico di Torino

Emilio Leonardi – Politecnico di Torino

MobiHoc 2007

Page 2: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

2

Outline

Introduction and motivation Assumptions and notationsMain resultsSome hints on the derivation of

resultsConclusions

Page 3: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

3

Introduction The sad Gupta-Kumar result:

In static ad hoc wireless networks with n nodes, the

per-node throughput behaves as

P. Gupta, P.R. Kumar, The capacity of wireless networks, IEEE Trans. on Information Theory, March 2000   

Page 4: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

4

Introduction

The happy Grossglauser-Tse result: In mobile ad hoc wireless networks with n nodes,

the per-node throughput remains constanto assumption: uniform distribution of each node presence

over the network area

M. Grossglauser and D. Tse, Mobility Increases the Capacity of Ad Hoc Wireless Networks, IEEE/ACM Trans. on Networking, August 2002

Page 5: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

5

Introduction

Node mobility can be exploited to carry data across the network Store-carry-forward communication

scheme

S DR

Drawback: large delays (minutes/hours)

Delay-tolerant networking

Page 6: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

6

Mobile Ad Hoc (Delay Tolerant) Networks

Have recently attracted a lot of attention

Examplespocket switched networks (e.g., iMotes)vehicular networks (e.g., cars, buses, taxi)sensor networks (e.g., disaster-relief

networks, wildlife tracking)Internet access to remote villages (e.g., IP

over usb over motorbike)

Page 7: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

7

The general (unanswered) problem

Key issue: how does network capacity depend on the nodes mobility pattern?

Are there intermediate cases in between extremes of static nodes (Gupta-Kumar’00) and fully mobile nodes (Grossglauser-Tse’01)?

Page 8: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

8

Outline

Introduction and motivation Assumptions and notationsMain resultsSome hints on the derivation of

resultsConclusions

Page 9: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

9

n nodes moving over closed connected region independent, stationary and ergodic mobility processes uniform permutation traffic matrix: each node is origin

and destination of a single traffic flow with rate (n) bits/sec

all transmissions employ the same nominal range or power

all transmissions occur at common rate r single channel, omni-directional antennas

Assumptions

s

ou

rce

nod

e

destination node

Page 10: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

10

Protocol Model

Let dij denote the distance between node i and node j, and RT the common transmission range

A transmission from i to j at rate r is successful if:

for every other node k simultaneously transmitting

RT (1+Δ)RT

ij k

Page 11: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

11

Realistic mobility models for DTNs

characterized by : Restricted mobility of individual nodes:

Non-uniform density due to concentration points

From: Sarafijanovic-Djukic, M. Piorkowski, and M. Grossglauser, Island Hopping: Efficient Mobility-Assisted Forwarding in Partitioned Networks,, IEEE SECON 2006

From: J.H.Kang, W.Welbourne, B. Stewart, G.Borriello, Extracting Places from Traces of Locations, ACM Mobile Computing andCommunications Review, July 2005.

Page 12: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

12

Home-point based mobility

Each node has a “home-point”

… and a spatial distribution around the home-point

Page 13: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

13

Home-point based mobilityThe shape of the spatial distribution of each

node is according to a generic, decreasing function s(d) of the distance from the home-point

s(d)

d

Page 14: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

14

Anisotropic node density (clustering)

Achieved through the distribution of home-points

0

1

0 1

Uniform model: home-points randomly placed over the area according to uniform distribution

n = 10000

0

1

0 1

Clustered model: nodes randomly assigned to m = nν clusters uniformly placed over the area. Home-points within disk of radius r from the cluster middle point

Page 15: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

15

Scaling the network size

10 nodes……100 nodes…..1000 nodes

We assume that:

Moreover: node mobility process does not depend on network size

increasing sizeconstant density

constant sizeincreasing density

Page 16: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

16

Asymptotic capacity We say that the per-node capacity is if

there exist two constants c and c’ such that

sustainable means that the network backlog remains finite

Equivalently, we say that the network capacity in this case is

Page 17: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

17

Outline

Introduction and motivation Assumptions and notationsMain resultsSome hints on the derivation of

resultsConclusions

Page 18: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

18

Asymptotic capacity results

Recall:

0 1/2

per-

nod

e c

ap

aci

ty

0

-1/2

-1

logn [(n)] Uniform Model

Independently of the shape of s(d) !

Page 19: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

19

Asymptotic capacity results

Recall: #clusters

0 1/2

per-

nod

e c

ap

aci

ty

0

-1/2

-1

logn [(n)] Clustered Model

“Super-critical regime”: mobility helps

“Sub-critical regime”: mobility does not help

?Lower bound : in case s(d) has finite support

Lower bound : in case s(d) has finite support

?

Page 20: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

20

Outline

Introduction and motivation Assumptions and notationsMain resultsSome hints on the derivation of

resultsConclusions

Page 21: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

21

A notational note

In the analysis we have fixed the network size, L=1

and let the spatial distribution of nodes s(d) to scale with n, i.e., s(f(n)d)

f(n)=1 f(n)=2 f(n)=3

Page 22: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

22

Uniformly dense networks We define the local asymptotic node density ρ(XO) at

point XO as:

Where is the disk centered in XO , of radius

A network is uniformly dense if:

Page 23: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

23

Properties of uniformly dense networks

Theorem: the maximum network capacity is achieved by scheduling policies forcing the transmission range to be

Corollary: simple scheduling policies leading to link capacities

are asymptotically optimal, i.e., allow to achieve the maximum network capacity (in order sense)

Page 24: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

24

Super-critical regime

Let (m = n in the Uniform Model)

When we are in the super-critical regime

Theorem: in super-critical regime a random network realization is uniformely dense w.h.p.Transmission range is

optimalScheduling policy S* is optimal

Page 25: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

25

Mapping over Generalized Random Geometric Graph

(GRGG) Link capacities can be evaluated in terms of contact probabilities:

which depend only on the distance dij between the homepoints of i and j

We can construct a random geometric graph in which vertices stand for homepoints of the nodesedges are weighted by

Network capacity is obtained by solving the maximum concurrent flow problem over the constructed graph

Page 26: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

26

Upper bound : network cut

0 1

1

1/2

Page 27: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

27

Average/random flow through the cut

0 1

1

1/2

The “average” flow through the cut is computed as

fundamental question:

Proof’s idea:

Consider regular tessellation where squarelets have area γ(n)

Take upper and lower bounds for number of homepoints falling in each squarelets, combined, respectively, with lower and upper bounds of distances between homepoints belonging to different squarelets

Answer: YES !

Page 28: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

28

An optimal routing scheme

The above routing strategy sustains per-node traffic

s

d

Routing strategy:

Consider a regular tessellation where squarelets have area

Create a logical route along sequence of horizontal/vertical squarelets, choosing any node whose home-point lie inside traversed squarelet as relay

Page 29: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

29

Network is not uniformly dense

Transmission range may fail even to guarantee network connectivity

When s(d) has finite support:

Sub-critical regime

Nodes have to use

System behaves as network of m static node

Page 30: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

30

ConclusionsWe analyzed the capacity of mobile ad-

hoc networks under heterogeneous nodes Our study has shown the existence of two

different regimes:superctriticalSubcritical

In this paper we have mainly focused on the supercritical regime

Subcritical behavior must be better explored

Page 31: Capacity Scaling in Delay Tolerant Networks with Heterogeneous Mobile Nodes

31

Comments ?

Questions ?