Title:
1Â Particle Filtering for Joint Data-Channel
Estimation in Fast Fading ChannelsÂ
Didier Le Ruyet, Gilles Rigal and Han Vu-Thien
2Outline
3Problem statement
4Problem Statement
5Classical solutions Slow fading
6Classical solutions Slow fading
7Classical solutions Fast fading
8Classical solutions Fast fading
PSP approach
Particle Filtering?
9Joint data-channel estimation applying the
Particle Filtering
10Particle filtering Joint data-channel estimation
11Particle filtering Joint data-channel estimation
12Particle filtering Joint data-channel estimation
13Particle filtering Joint data-channel estimation
14Particle filtering Joint data-channel estimation
The channel estimation
Along each trajectory in the state space the
channel is estimated by a Kalman filter.
I ) Prediction phase
II ) Correction phase
15Particle filtering Joint data-channel estimation
Calculation of the importance function
16Particle filtering Joint data-channel estimation
Calculation of the importance weights
Normalisation of the importance weights
17Particle filtering Joint data-channel estimation
Resampling
I ) Periodic every L bits
The particles with a weight lt T are moved in the
group with maximum weight.
II ) Uniformly according to the importance
weights
If
the particles are distributed uniformly
according to the importance weights.
18Particle filtering Joint data-channel estimation
Alternative scheme (E. Punskaya, A. Doucet, W.J.
Fitzgerald, EUSIPCO, September 2002)
1
1
-1
-1
At each time only the best M particles are
retained
1
1
-1
1
-1
-1
1
1
-1
1
-1
1
-1
close to the M algorithm
1
-1
-1
k-1
k
k1
19Simulation results
- GSM system the receiver detects only one slot
for each - TDMA frame
- Preamble 26 known bits for the channel
initialisation - Information bits 58
- Second channel model HT240
20Simulation results
Comparison PSP-Particle filtering
First channel model FER versus Eb/No
21Simulation results
First channel model Complexity versus Eb/No
22Simulation results
HT240 FER versus Eb/No
23Simulation results
HT240 Complexity versus Eb/No
24Simulation results
Comparison M-T-Particle filtering
First channel model FER versus Eb/No
25Simulation results
First channel model Complexity versus Eb/No
26Preliminary conclusion
If the state space is discrete, the particle
filtering technique is equivalent to the
classical solutions.
When is it interesting to use the particle
filtering in digital communications?
Joint estimation of discrete and continuous
parameters
Example Joint delay-channel-data estimation
in DS-CDMA systems.
(The paper of Punskaya, Doucet and Fitzgerald
reaches the same conclusion)
27Joint delay-channel estimation in a DS-CDMA system
Data sequence
Spreading sequence
Chip duration
Received signal
28DS-CDMA Joint delay-channel estimation
State model
Channel
Delay
Nearly constant channel coefficients and constant
delay
Channel estimation
Kalman filter
Delay estimation
SISR algorithm
29DS-CDMA Joint delay-channel estimation
SISR algorithm for the delay estimation
- Initial distribution of the particles
- Selection of the importance function
- Calculation of the importance weights
uniformly according to the importance weights if
30Simulation results
Time
31Simulation results
Time
32Conclusion
Possible applications of the PF in digital
communications
Discrete state space
equivalent to the classical solutions (M and T
algorithms)
More interesting
PF for the joint estimation of discrete and
continuous parameters
Example Joint delay-channel estimation in a
DS-CDMA system
The first results are encouraging this approach
can give better performance than the classical
solutions.