communications, networking, and signal processing wireless foundations faculty may 20, 2008

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Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

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Page 1: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Communications, Networking, and Signal Processing

Wireless Foundations Faculty

May 20, 2008

Page 2: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Grand Challenges

• Capacity of wireless networks– Abstraction of physical resources– Scalability– Architecture

• Communication, Computation and Control– Communicate to compute– Compute to communicate– Control/Sense/Estimate

• Active social networks: towards Web 4.0– Human free will and actions in the world– Incentives and semantics

Page 3: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

• Venkat Anantharam• Michael Gastpar• Kannan Ramchandran• Anant Sahai• David Tse• Martin WainwrightLong term research: focus on signal processing,

information theory, and fundamental limits. Interface to economics and policy.

Page 4: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Here be dragons!

• Information theory• Robust control and signal processing• Learning and distributed adaptation• Game theory and economics• And any other sharp enough blade …

Our weapons:

Page 5: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Holy Grail: Capacity of Wireless Networks

• Point-to-point communication: Information theory provides a clear answer:

• Wireless networks Open problem for 30 years.

C

broadcast

interference

cooperation

Page 6: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Two Key Questions

• Is there a simple abstraction of the physical layer?

• Are there big gains to be had under optimal cooperation?

Page 7: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Deterministic Model: An Abstraction

)(rank)(cutwhere cGc

Tx

Rx1

Rx2

n1

n2

mod 2 addition

Tx1

Tx2

Rx+

+

A1

DS

A2

B1

B2

c

)(cutminflowmax c

Point-to-Point:

Theorem:

Broadcast Interference

Networks

(wireless version of Ford-Fulkerson)

Page 8: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Bridging the Gap

PHY Layer Higher Layers

deterministic model

Page 9: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

The Power of Cooperation

• Baseline: no cooperation. Separate point-to-point links.• Adding terminals degrades user capacity

Node density

Cap

acity

Total system capacityPer-user capacity

Cooperation is essential for better spectrum utilization Links individually are interference-limited. Working together leads to better capacity.

1n

Page 10: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

The Power of Cooperation

Node density

Cap

acity

Packet Multi-hop

[Ref: Gupta/Kumar’00]• shorter-range to reduce interference• a network effect

[Courtesy: R. Chandra, Microsoft Research]

Wireless Meshes

1pn

pn

Page 11: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

The Power of Cooperation

Node density

Cap

acity

Ultimate Cooperation

[Ref: Ozgur/Leveque/Tse’07]

Cooperative MIMO

Construct large effective-aperture antenna array by combining many terminals, simultaneous transmission of many streams over longer range hierarchical cooperation minimizes overhead

Page 12: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Hierarchical Cooperation: A New Architecture

Page 13: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Shannon meets Moore: Compute to Communicate

• Transistors are free, but power is not.

• In short-range communication, this is not irrelevant.

• Shannon said that we can get arbitrarily low probability of error with finite transmit power

What is the analogy to the waterfall curve that includes decoding?

Page 14: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

The need for guidance

• Practical question: “What should we deploy in 2010, 2015, or 2020?”– Semiconductor side: roadmap + scaling– Gives an ability to plan and coordinate work

across different levels.

• No such connection on the comm. side. – Capacity calculations do not say anything

about complexity and power.– Left to either guess, stick to tried/true

approaches, or to invest a lot of engineering effort to even understand plausibility.

• Need a path to connect to the roadmap.

Page 15: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

• Massively parallel ASIC implementation

• Nodes have local memory– Might know a received sample– Might be responsible for a bit

• Nodes have few neighbors– (+1) maximum one-step away– Can send/get messages– Can relay for others

• Nodes consume energy– e.g. 1 pJ per iteration

• Nodes operate causally

Abstracting a model for complexity

Page 16: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Key idea: communicate to compute to communicate

• Treat like a sensor network or distributed control problem.

• After a finite number of iterations, the node has only heard from a finite collection of neighbors.

• Allow any possible set of messages and computations within nodes

• Allow any possible code.

Page 17: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

“Waterslide” curves bound total power

Assuming 1pJ, a range of around 10-40 meters, ideal kT receiver noise, and 1/r2 path loss attenuation.

Page 18: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Joint communication/computation

Page 19: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Complexity shifting in distributed systems

X-Y

X: current frame

Y: Reference frame

MPEGDecoder

Y: Reference frame

X: current frame

Losslesschannel

MPEGEncoder

Page 20: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

PRISM: Distributed Source Coding (DSC) based video coding (K. Ramchandran’s group)

f(X)DSCEncoder

DSCDecoder

Y’: corrupted reference frame

X: current frame X: current frame

Lossychannel

Page 21: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Spectrum: The Looming Future

• Many heterogeneous wireless systems share the entire spectrum in a flexible and on-demand basis.

• How to get from here to there?

Page 22: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Spectrum: Where we are today

• Most of the spectrum is allocated for specific uses and users.

• But measurements show the allocated spectrum is vastly underutilized.

Page 23: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Spatial Spectrum-Sharing (Gastpar)

• Each system must make sure it lives within a certain spatial interference footprint. (Requires spectrum sensing…)

• Example: To the right of the boundary, the REDs must collectively satisfy a maximum interference constraint.

• Leads to new capacity results (identify capacity “mirages”) and coding schemes

Page 24: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Disneyland vs Yosemite: the policy dimension

• Public owns and sets guidelines for use

• Unlicensed users are on their own

• Competition

• Owner controls access to preserve QoS for users

• “Band-managers” own band and lease it out.

• Monopoly

“Spectrum tour guide” can coordinate users without band ownership

Page 25: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Cognitive Radio Slides Follow

Page 26: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Semi-ideal case: perfect location information

Minimal No TalkRadius

Primary System TV

- Locations of TV transmitter and Cognitive radios are known. - Location of TV receivers is unknown Non-interference constraint translates into “Minimal No-talk” radius

Primary Receiver TV set

Page 27: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

If we use SNR as a proxy for distance …

Minimal No TalkRadius

LOS channel

Primary System TV

- With worst case shadowing/multipath assumptions - Detector sensitivity must be set as low as -116 dBm (-98 -> -116)

Shadowing

Detection Sensitivity = -116dBm

- Un-shadowed radios are also forced to shut up

Loss in Real estate~ 100 km

Page 28: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Noise + interference uncertainty

Spurious tones, filter shapes, temperature changes – all impact our knowledge of noise.Calibration can reduce uncertainty but not eliminate it

Cabric et al

Page 29: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Spectrum Sensing: Harder than it looks

Page 30: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

How can we reclaim this lost real estate?

Min No TalkRadius

Primary System TV

- Cooperation … can budget less for shadowing since the chance that all radios are shadowed may be very low

No Talk radiuswith cooperation

Detection Sensitivity = -116 -> -104 dBm

What if independence assumptions are not true?

Page 31: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Need right metrics for safety and performance

• Safety: no harmful interference to primary

• Performance: recovered area for the secondary.

• Fundamental incentive incompatibility in models– Secondary is tempted to

be optimistic in optimizing performance.

– The primary will always be more skeptical of the model.

Page 32: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

FHI and WPAR: the right simple metrics

FHI: worst-case prob of interferenceWPAR: normalized area recovered

– Area closer to edge of primary likely to have more customers

– Area far from edge likely to have another primary.

Page 33: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Cooperative Safety Is Fragile!

Why should the primary trust our independence assumptions?

Page 34: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

What if we knew the shadowing?

Minimal No TalkRadius

Primary System TV

- Then we could dynamically change our sensitivity … and regain lost real estate

Detection Sensitivity = -98dBm

Detection Sensitivity = -116dBm

Shadowing

Page 35: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Fremont PeakSan Juan Battista

10 co-locatedtransmitters

Sutro TowerSan Francisco28 co-locatedtransmitters

Fundamental Sparsity

GPS SatellitesMany in the sky simultaneously

Page 36: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Cooperation between multiband radios

Can start with low PHI, large PMO point for a single radio.

Primary just trusts that shadowing is correlated between bands.

0 0.02 0.04 0.06 0.08 0.1 0.12 0.14 0.160

0.1

0.2

0.3

0.4

0.5

0.6

0.7

0.8

0.9

1

PMO

versus PHI

for wideband radios cooperating using OR rule

Prob

abili

ty o

f Mis

sed

Opp

ortu

nity

(PM

O)

Probability of Harmful Interference (PHI

)

Page 37: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Video and Image Processing Lab

• Theories, algorithms and applications of signals; image, video, and 3D data processing;

• Director: Prof. Zakhor; founded in 1988• Current areas of activities:

• Fast, automated, 3D modeling, visualization and rendering of large scale environments: indoor and outdoor

• Wireless multimedia communication• Applications of image processing to IC processing: maskless

lithography; optical proximity correction

Page 38: Communications, Networking, and Signal Processing Wireless Foundations Faculty May 20, 2008

Figure 1: An example of a residential area in downtown Berkeley which has been texture mapped with 8 airborne pictures on top of 3D geometry obtained via 1/2 meter resolution airborne lidar data