Title: Capacity of Fading Broadcast Channels with Rate Constraints
1Capacity of Fading Broadcast Channels with Rate
Constraints
- Chris T. K. Ng, Andrea J. Goldsmith
- Dept. of Electrical Engineering
- Stanford University
2Introduction
- For a fading channel, multiple definitions of
capacity exist. - Each definition imposes a different set of
constraints on how the transmitter can adapt to
the time-varying channel. - We propose a unifying framework for calculating
the capacity region of fading broadcast channels. - It provides a methodology for obtaining capacity
regions under existing constraints. - New types of constraints are defined, and the
corresponding capacity region is derived under
the same framework. - There are limitations in practical systems not
addressed by the existing capacity definitions. - New constraints are introduced to allow for a
more realistic and accurate modeling of the
operation of a wireless channel.
3Capacity definitions for fading channels
- Fading channels
- Time-varying channel gain.
- Adapt transmission rates/power for different
fading states. - Ergodic (Shannon) capacity
- Long-term average of maximum achievable rate.
- Small or zero rate when channel is in an
unfavorable state. - Large delay.
- Zero-Outage capacity
- Constant rate across all fading states.
- Large energy is needed to invert the channel.
4Capacity with constraints
- Outage capacity
- Transmission rate is zero with some outage
probability. - Otherwise transmission rate is constant.
- Minimum rate capacity
- Maintain a minimum rate across all fading states.
- Excess power can be freely allocated to any
states to maximize average rates. - Capacity regions comparisons
- More restrictive constraints lead to smaller
capacity region. - Ergodic gt minimum rate, outage gt zero-outage.
5Rate constraints parameters under unifying
framework
- Maximum rate constraint Rm
- Can be used to represent system bottlenecks
(e.g., limited processing rate). - Minimum rate constraint Rn
- Shortage probability q
- With probability q the minimum rate constraints
are relaxed. - Different from outage probability since
transmission rates need not be zero when in
shortage. - For simplicity, a common shortage mode is
assumed all users declare shortage at the same
time.
6Capacity definitions under rate constraint
parameters
- Types of capacity regions represented by the rate
constraint parameters
7System Model
- Discrete-time flat fading Gaussian broadcast
channel - Perfect channel state information at transmitter
and all receiver average power constraint for
the transmitter. - Received signal
- Zero-mean Gaussian random variable z with
variance nB. - Time-vary noise density is referred to as fading
state. - Superposition coding with successive decoding,
each user j has rate - Consider the case with two users (M2).
8Rate constraints for the AWGN channel
- No fading
- Noise density n1, n2 are constants.
- Assumes n2 gt n1 (reverse subscripts otherwise).
- Capacity region with the rate constraints
- First consider zero shortage probability.
- Effects of imposing the rate constraints
- Power allocation is not simply determined by the
total power, but also by the maximum and minimum
rate constraints. - The achieved rates expression will be extended to
formulate the optimal power allocation for a
fading channel.
9Optimal power allocation between users
- Consider for a given fading state.
- Noise densities n1, n2 are known and constant.
- Assume a certain amount of power is allocated for
this fading state. - Will address power allocation for different
fading states later. - Within a fading state, how to divide up the
available power between the users? - Need to satisfy the given maximum and minimum
rate constraints.
10Rate constraints power allocation boundaries
- Represent rate constraints as power allocation
boundaries. - Each additional constraint reduces the feasible
power region.
11Achievable rates possible maximum points
- All possible maximum points have the same form
for the achieved rates in terms of the available
total power P. - Allows formulation of optimal power allocation
strategy across fading states.
12Capacity region with rate constraints for a
fading channel
- Fading channel
- Noise density n1, n2 are time-varying.
- Consider first shortage probability q is zero.
- Minimum rate constraints need to be held at all
times. - Power allocation is done in 2 stages
- Allocate power P(n) to each fading state.
- Allocate power for each state between users.
13Power allocation between users in a fading channel
- Suppose the power P(n) allocated to a fading
state n is given. - Allocate power between users as in the AWGN case.
- Leads to a common form of rates achieved in terms
of the total power P(n) for all possible maximum
points. - This common rate expression is used to optimize
power allocation across fading states.
14Optimal power allocation across fading states
- Minimum power required by a fading state
- Determined by the minimum rate constraints.
- Maximum power limit for a fading state
- No allocation of additional power once maximum
rates are achieved. - Allocation of excess power between the maximum
and minimum limits. - Optimal power allocation strategy is
water-filling. - Water-filling level depends on the effective
noise of the fading states, and the average total
power constraint.
15Water-filling power allocation for the excess
power
- Water-filling power allocation
- Depends on the effective noise n of the fading
states. - Determined by the constant parameters A, B, C, D
of the common rate expression RP(P(n), n). - Some fading states have the same effective noise
and water-filling parameters. - Three distinct water-filling equations
16Combined optimal power allocation strategy
- Power allocation illustrated in the direction of
n1. - Water-filling level depends on the average total
power available.
17Shortage probability
- Calculate optimal power allocation for two cases
- Case 1) All rate constraints are present.
- Case 2) Minimum rate constraints are removed.
- Select the set of shortage fading states that
results in maximum power savings. - Use power allocation 1) for non-shortage states,
and 2) for shortage states. - Water-filling levels for non-shortage and
shortage states need to be jointly optimized. - For small shortage probability q, often it is
optimal to suspend transmission when in shortage. - Reduces to outage probability.
18Optimal power allocation for shortage states
- Optimal power allocation is obtained from power
allocation for zero-shortage, and power
allocation without minimum rate constraints.
19Numerical results Imbalanced fading states
- Symmetrical two-user fading broadcast channel 40
dB SNR difference.
20Numerical results More balanced fading states
- More balanced fading states 20 dB SNR difference.
21Conclusion
- Unifying framework for calculating capacity
region of fading broadcast channels. - Existing capacity types ergodic, outage, minimum
rate. - New constraints maximum rate, shortage
probability. - Optimal power allocation between users
- Evaluate a finite set of extreme points.
- Optimal power allocation across fading states
- Minimum and maximum power allocation limits.
- Excess power allocation determined by
water-filling. - Water-filling level depends on effective noise of
the fading states. - Shortage capacity
- Removing the minimum rate constraints.
- Jointly optimize power allocation over shortage
and non-shortage.