Title: Presentazione di PowerPoint
1Parametric-Gain Approach to the Analysis of DPSK
Dispersion-Managed Systems
- Bononi, P. Serena, A. Orlandini, and N. Rossi
- Dipartimento di Ingegneria dellInformazione,
Università di Parma -
- Viale degli Usberti, 181A, 43100 Parma, Italy
- e-mail bononi_at_tlc.unipr.it
2Milan
Parma
Rome
3Outline
- Introduction
- State of the Art BER tools in DPSK transmission
- The PG Approach
- Key Assumptions
- Tools
- Results
- Conclusions
4Introduction
- Amplified spontaneous emission (ASE) noise from
optical amplifiers makes the propagating field
intensity time-dependent even in
constant-envelope modulation formats such as
DPSK. - Random intensity fluctuations, through
self-phase modulation (SPM), cause nonlinear
phase noise 1, which is the dominant impairment
in single-channel DPSK. - Most existing analytical models focus on the
statistics of the nonlinear phase noise.
1 J. Gordon et al., Opt. Lett., vol. 15, pp.
1351-1353, Dec. 1990.
5State of the Art
- K.-Po Ho 2 computed the probability density
function (PDF) of nonlinear phase noise and
derived a BER expression for DPSK systems with
optical delay demodulation. Very elegant work,
but - model assumes zero chromatic dispersion (GVD)
- does not account for the impact of practical
optical/electrical filters on both signal and ASE
2 K.-Po Ho, JOSAB, vol. 20, pp. 1875-1879,
Sept. 2003.
6State of the Art
- Wang and Kahn 3 computed the exact BER for
DPSK (but provided no algorithm details) using
Forestieris Karhunen-Loeve (KL) method 4 for
quadratic receivers in Gaussian noise - Model accounts for impact of practical
optical/electrical filters on both signal and ASE - ....but ignores nonlinearity it concentrates on
GVD only.
3 J. Wang et al., JLT, vol. 22, pp. 362-371,
Feb. 2004. 4 E. Forestieri, JLT, vol. 18, pp.
1493-1503, Nov. 2000.
7The PG Approach
- Also our group 5 computed the BER for DPSK
using Forestieris KL method. Our model - besides accounting for impact of practical
optical/electrical filters - also accounts for the interplay of GVD and
nonlinearity, including the signal-ASE nonlinear
interaction using the tools developed in the
study of parametric gain (PG) - is tailored to dispersion-managed (DM) long-haul
systems
5 P. Serena et al., JLT, vol. 24, pp.
2026-2037, May 2006.
8DPSK DM System
- KL method requires Gaussian field statistics at
receiver (RX), after optical filter
9Why Gaussian Field?
- At zero dispersion, PDF of ASE RX field before
OBPF is strongly non-Gaussian 2
but with some dispersion, PDF contours become
elliptical ? Gaussian PDF
ImE
ImE
2
3
4
0
1
D
ReE
ReE
Single span OSNR 25 dB/0.1nm FNL 0.15p rad
2 K.-Po Ho, JOSAB, vol. 20, pp. 1875-1879,
Sept. 2003.
10Why Gaussian Field?
- Even at zero dispersion...
PDF of ASE RX field AFTER OBPF Gaussianizes 6
before OBPF
Red Monte Carlo (MC) Blue Multicanonical MC
(MMC)
- OSNR10.8 dB/0.1 nm, FNL0.2p, ASE BW BM80 GHz
11Why Gaussian Field?
Reason is that a white ASE over band BM remains
white after SPM
h(t)
w(t)
n(t)
OBPF
SPM
12- Having shown the plausibility of the Gaussian
assumption for the RX field, it is now enough to
evaluate its power spectral density (PSD) to get
all the needed information, to be passed to the
KL BER routine. - A linearization of the dispersion-managed
nonlinear Schroedinger equation (DM-NLSE) around
the signal provides the desired PSDs, according
to the theory of parametric gain.
13Linear PG Model
7 C. Lorattanasane et al., JQE, July 1997 8
A. Carena et al., PTL, Apr. 1997 9 M. Midrio
et al., JOSA B, Nov. 1998 5 P. Serena et al.,
JLT, vol. 24, pp. 2026-2037, May 2006.
DM, finite N spans
DM, infinite spans
14Linear PG Model
15 Limits of Linear PG Model
- linear PG model (dashed) versus Monte-Carlo BPM
simulation (solid)
FNL 0.55 p rad, D8 ps/nm/km, Din0
/0.1 nm
/0.1 nm
16 _at_ PG doubling
strengths for 10 Gb/s NRZ
end-line OSNR (dB/0.1nm)
DM systems with Din0. ( Ngtgt1 spans)
1.4
21
1.2
19
17
1
p
15
15
0.8
rad/
- For fixed OSNR (e.g. 15dB) in region well below
red PG-doubling curve - Linear PG model holds
- ASE Gaussian
NL
F
0.6
0.4
0.2
0
1
0
0.2
0.4
0.6
0.8
Map strength S ( DR2 )
10 P.Serena et al., JLT, vol. 23, pp.
2352-2363, Aug. 2005.
17 Our BER Algorithm
Steps of our semi-analytical BER evaluation
algorithm
- Rx DPSK signal obtained by noiseless BPM
propagation (includes ISI from DM line) - ASE at RX assumed Gaussian. PSD obtained either
from linear PG model (small FNL) or estimated
off-line from Monte-Carlo BPM simulations (large
FNL). Reference FNL for PSD computation suitably
decreased from peak value to average value for
increasing transmission fiber dispersion (map
strength). - Data from steps 1, 2 passed to Forestieris KL
BER evaluation algorithm, suitably adapted to
DPSK.
18Results
- Check with experimental results H. Kim et al.,
PTL, Feb. 03
10 Gb/s single-channel system, 6?100 km NZDSF
19Results
R10 Gb/s single-channel, 20?100 km, D8
ps/nm/km, Din0. OSNR11 dB/0.1 nm, Bo1.8R
Noiseless optimized Dpre, Dpost
1E-9
BER
1E-4
1E-2
20Results
10 Gb/s single-channel system, 20?100 km, Din0.
Bo1.8R . Noiseless optimized Dpre, Dpost.
DPSK-NRZ
DPSK-RZ (50)
_at_ D8 ps/nm/km
PG
no PG
FNL0.5?
FNL0.5?
FNL0.3?
FNL0.1?
FNL0.3?
Strength ( DR2)
Strength ( DR2)
21Conclusions
- Novel semi-analytical method for BER estimation
in DPSK DM optical systems. - The striking difference between OOK and DPSK is
that in DPSK PG impairs the system at much lower
nonlinear phases, when the linear PG model still
holds. Hence for penalties up to 3 dB one can
use the analytic ASE PSDs from the linear PG
model instead of the time-consuming off-line MC
PSD estimation. - Hence our mehod provides a fast and effective
tool in the optimization of maps for DPSK DM
systems.