Title: Professor Izhak Rubin
1 Unmanned-Vehicle Aided Multi-Tier Autonomous
Intelligent Wireless NetworksMobile Backbone
Networks
- Professor Izhak Rubin
- Electrical Engineering Department
- UCLA
- August 2005
- rubin_at_ee.ucla.edu
-
2FORCEnet Architecture using AINS Technologies
- Development of AINS system architecture for
realizing FORCEnet using intelligent autonomous
collaborating agents embedded in entities that
perform communications networking, sensing,
maneuvering and striking functions.
3AINS Innovative Networking Technologies enable a
Network-Centric C4ISR Operation
- Development of survivable and autonomously
adaptable mobile communications network systems
that support high quality transport of critical
messaging flows and real-time streams in an
adverse environment to enable network centric
combat operations and warfare. -
4Our Approach
- Breakthrough methods to guide intelligent
platforms to rapidly mitigate network system
gaps, substantially re-constitute degraded
configurations and enhance performance, at the
right place at the right time. - Such methods include the autonomous layout and
control of unmanned networked platform formations
and UAV swarms in a multi-tier hierarchical
mobile backbone networked infrastructure, and the
formation of internets-in-the-sky.
5Our Innovative Networking Technologies I
- UV aided Mobile Backbone Networks (MBNs)
Multi-tier adaptive autonomous networking - Robust survivable QoS Routing for mobile ad hoc
wireless networks employing multi tier UV swarms - Architecture, infrastructure and approaches for
the configuration of UAV platforms and swarms to
jointly best support - Communications networking
- Sensing tasks
- Area search and surveillance
6Our Innovative Networking Technologies II
- Power-control spatial-reuse Medium Access Control
(MAC) protocols and algorithms - Integrated MAC scheduling, power control and
routing leading to significant enhancements in
the throughput efficiency of shared radio
channels - Integrated System Management (ISM)
- New paradigm in the design of system management
architecture that combines monitoring, control
and resource allocations for C4ISR systems
7Robust Wireless Networking Architecture and
topology Synthesis
- Synthesis of a multi-tier (land, air and sea
based) mobile backbone network (MBN) - New distributed algorithms to configure the multi
tier backbone network - Dynamical adaptivity to failures, application
mixes and capacity requirements
8Hierarchical Configuration of UV-aided Mobile
Backbone Network (UV-MBN)
ANet 1
Backbone Node Gateway
ANet 2
9AINS based UV-aided Dynamically Reconfigurable
Network
- UV aided Mobile Backbone Network Protocol
- (MBNP)
- Quality of Service (QoS) UV-aided operation
- MBN based On Demand Routing with Flow Control
(MBNR-FC) - Swarm Networking
10Illustration of our heterogeneous Mobile Backbone
Network (MBN)
11UV aided Autonomous Mobile Backbone Network
12Backbone Construction
13The MBN Topology Synthesis Algorithm (TSA)
- Neighbor Discovery
- Every node exchange Hello Message periodically.
Short timer - Every node updates its neighbor list
periodically. Long timer - Each node learns its 1-hop neighbor information
and 2-hop BN neighbor information. - Association Algorithm
- Every node that is in a BCN state or RN state
attempts to associate with a BN with highest
Weight. - The Weight of a node can be based on its ID,
degree, congestion level, and a nodal/link
stability measure. - If no acceptable neighboring BN is detected, try
BCNs If no BCN either, try RNs
(BCN 3,6)
Hello
Hello
(BCN 1,3)
(BCN 4,5,7)
Hello
Hello
Hello
Hello
Hello
Hello
Hello
Hello
Hello
(BCN 1,2,5,7)
Hello
Hello
Hello
Hello
Hello
(BCN 3,4,6)
Hello
Hello
(BCN 2,3)
(BCN 6,7)
Hello Message ID, Weight, BN Neighbor List
14The MBN Topology Synthesis Algorithm (TSA)
- BCN to BN Conversion Algorithm
- (1) Client coverage a BCN that receives an
association request from a BCN or RN, converts
itself to a BN. - (2) Connectivity of the BNet A BCN node finds
that by converting itself to a BN it will upgrade
the Bnet connectivity. - BN to BCN Conversion Algorithm
- (1) All of its BN neighbors have at least one
common BN neighbor whose weight is higher than
the weight of the underlying BN that is
considering to convert. - (2) Each of its BCN clients have at least one
other BN neighbor.
(BCN 3,6)
(BCN 1,3)
(BCN 4,5,7)
(BCN 1,2,5,7)
(BCN 3,4,6)
(BCN 2,3)
(BCN 6,7)
15MBN Topology Synthesis Algorithm Convergence Time
- The MBN topology synthesis algorithm convergence
in constant time, of the order of O(1).
16Total number of backbone nodes (BNs) in the
network
- The backbone network (Bnet) size is independent
of the number of nodes in the network or the
nodal density. - The backbone network (Bnet) size is only
proportional to the area size.
17Control Message Overhead of TSA
- The control message overhead of TSA is
independent of the number of nodes in the network
or the nodal density.
18Data Delivery Radio of 25 UDP flows
19Average End-to-end Delay Performance
20Average Data Path Length
21Average Path Length
- We expect the employment of the MBNR scheme to
yield a longer average path length value than
that obtained under AODV (since routes are now
established only across the backbone network).
Interestingly, our simulation results indicate
that the MBNR protocol does not always produce
longer path lengths. - RREQ packets are transmitted as broadcast
packets, when such a packet experiences
collision, no MAC layer retransmission takes
place. Consequently, if the network is already
overwhelmed by RREQ storm, it is likely that a
route will not be discovered in time or that a
non-shortest path route will be selected
(a) Stationary network (b) Mobile network
22QoS based Robust Scalable Routing (MBNR)
- MBN based Robust Routing protocols (MBNR)
- On-demand routing mechanism that uses selective
control packet forwarding (across the MBN) to
discover routes - Proactive routing for route establishment in
smaller subnets and certain Access Nets - Unique MBN based Flow and Congestion control
mechanism (MBNR-FC protocol) to preserve the
quality of service (QoS) of established flows and
to ensure that, under overloading conditions,
only high priority flows are supported at desired
QoS - Unique cross physical, MAC and network layer
algorithms and protocols to ensure that the
realistic nature of the wireless radio
environment is dynamically incorporated into
communications resource allocations and routing
operations. - Effective use of UGV and UAV swarms to establish
backbone routes and to distribute control packets - Hybrid backbone and non-backbone routing and
flow/congestion control to efficiently utilize
resources in areas that are not covered or are
away from the mobile backbone and its UGV and
UAV agents
23MBN Routing with Flow Control (MBNR-FC)Delay
Jitter Performance Comparison among Different
Protocols
24Network Performance packet delay and delay
jitter
- Delay jitter vs. Traffic loading
- The delay jitter is reduced as traffic loading
rate is increased (when the network is not
saturated). Explanation route discovery produces
a larger delay which is different from the delay
experienced when the route is available. - When the network is congested, more route
discovery attempts take place.
25Hybrid Routing Strategy
- Capacity utilization of pure MBNR-FC
- When the number of BCNs is not able to form a
backbone to cover the whole network area,
backbone-only paths will limit the overall
throughput capacity of the network. - Allowing both backbone routing and non-backbone
routing could fully utilize the network capacity. - Long-distance traffic vs. Short-distance traffic
- Short-distance traffic obtains shorter path
lengths by routing through all type of nodes,
while long-distance traffic does not. - Long-distance traffic obtains routing overhead
reduction by routing through backbone network,
while short-distance traffic does not.
26Delay-throughput performance of MBNR-FC/DA under
2-hop Anets
- The delay-throughput performance with distance
thresholds equal to 7 hops and 9-hops demonstrate
a significant throughput capacity gain compared
to that with distance threshold equal to 0-hops
(which is obtained by pure MBNR-FC).
27Under Development Adaptive Scheme for Distance
threshold Selection
- Adaptive scheme for distance threshold selection
- Execute in a distributed manner.
- Adjust the distance threshold according to the
current traffic distribution. - Procedures
- Each BN collects the congestion information of
its own Anet the number of clients that are not
eligible for participating in the route discovery
process (i.e. if they or their neighbors are
congested.) - BNs that are within 2 hops from each other
exchange their Anet congestion indices. - The obtained congestion information is used by
each BN to compute a distance threshold dth which
it broadcasts to its Anet clients
28High Capacity QoS MAC
- Power-control spatial-reuse Medium Access Control
(MAC) protocols and algorithms - Integrated MAC scheduling, power control and
routing leading to significant enhancements in
the throughput efficiency of shared radio
channels - Provision of quality of service (QoS) by
prioritized scheduling and cross layer
MAC/Networking operations
29MAC Mechanisms
- Power control spatial reuse (PCSR) Medium Access
Control (MAC) layer operations - Scheduling based QoS based MAC mechanisms (such
as PCSR demand assigned TDMA / FDMA / CDMA) - Random access based PCSR techniques providing
enhanced performance - Directional and omnidirectional operations
- PHY-MIMO driven power control MAC operations
- Autonomous power control MAC operations using UAV
swarms
30Power Control Spatial-Reuse MAC DA/TDMA
large increase in spatial reuse factor
31Throughput Analysis of our Power Control
Scheduling Algorithm (PCSA) and alternative
scheme (TPA) (for an illustrative network with 10
active nodes)
32Uniform Traffic
10001000m area, 100 nodes, 30 flows, Fixed
Routing
In this experiment, we fix the routing in
advance so we can focus on understanding purely
the characteristics of the 802.11 MAC. DPC
offers a significantly better Throughput-delay
characteristics compared to low power
transmissions (blue) and regular 802.11 with no
power control (green).
33Localized Traffic
400400m area, 100 nodes, 15 flows, Fixed Routing
Benefits of our distributed power control
algorithm are especially apparent when
traffic patterns are localized.
34Cross Layer Power Control based Topology Synthesis
- What is the optimal number of APs needed for best
network performance (in terms of throughput,
delay, delay-jitter, packet loss ratio)? - APs should not only be deployed to provide
coverage but also to accommodate different
capacity needs of nodes - What is the optimal power to operate at?
- When is it useful to employ Cell Splitting and
get new APs or Soft APs (a laptop configured to
work as an AP) into the network?
35Adaptation of AP / BN selection to the traffic
profile
When using power control the number of APs
deployed Should depend on the Traffic
characteristics in the Network. When the
traffic is mostly Long distance, its better
to Employ a fewer number of APs, and vice versa.
36On going developments Simulation Results for
Hybrid TDMA/CSMA
Experiment with three APs, 9 flows, 3 of which
are inter-AP flows. Case 1 Hybrid scheme Case
2 Regular 802.11 We can clearly see that the
hybrid scheme delivers significant throughput and
delay benefits over the regular, non power
controlled IEEE802.11 Note inter-AP flows can
traverse paths that are as long as 3 hops
37Integrated System Management (ISM)
- New paradigm in the design of system management
architecture that combines monitoring, control
and resource allocations for C4ISR systems - Hierarchical Integrated System Management and
control architecture using nodal, subnetwork and
system wide monitors and control elements - Monitoring attributes and Management Information
Bases (MIBs) for communications, sensing, UV,
maneuverable and strike segments - ISM algorithms for joint resource, performance,
failure and topology management of MBN based
C4ISR systems using UAV swarms
38Integrated System Management system configuration
39Integrated System ManagementIllustration of ISM
display of status of communications, sensing and
UAV networked systems
40ISM Topology Display
41ISM Traffic Graph Display
42On-Going Planned Research Works
- Power control spatial reuse MACs
- Hybrid MAC for meshed architectures
- Topology Synthesis of the Backbone Networks
- Characterization and tuning of the algorithms
performance features and comparisons stability
and efficiency adaptations - MBN based QoS Routing
- Development and analysis of the hybrid MBNR-FC/DA
scheme
43outstanding research works
- UAV and UGV aided networking
- UAV swarms
- Cross Layer networking
- Distributed cross-layer PCSR MACs
- Integrated power control MACs and MBN based QoS
routing - Phy / MAC / Link / Network and topology synthesis
cross layer protocols and algorithms - Performance analyses and simulations under a
multitude of multimedia applications and C4ISR
scenarios - Incorporation of QoS oriented network management
schemes - Energy aware MBN based networking