The present invention relates to optical communications systems, and more particularly to methods and systems for reduced complexity nonlinear compensation in an optical communications system.
The integrity of an optical signal transmitted over long lengths of optical fiber degrades due to nonlinear interference (NLI) generated between different spectral components of the modulated optical field. Following detection, the NLI results in a noise-like degradation of the received signal that, in addition to amplified spontaneous emission (ASE) and other possible sources of noise in the receiver, increases the bit error rate and limits transmission reach. Unlike ASE, however, NLI is in principle predictable, and can be estimated for a known transmit data sequence and from the physical characteristics of the optical fiber link. If the complexity of an NLI estimation algorithm is sufficiently low, NLI can be compensated through appropriate digital signal processing (DSP) at either the transmitter or receiver of a coherent optical transmission system. For coherent transmission, the complexities of present methods of nonlinear pre-compensation grow rapidly with channel memory (in unit intervals, UI, or, equivalently, signalling intervals) to make implementation impractical for systems with channel memories exceeding 100 UI.
Techniques for addressing this limitation are desired.
Aspects of the present invention provide techniques for compensating nonlinear impairments of a signal traversing an optical communications system. A parallel array of linear convolutional filters are configured to process a selected set of samples of the signal to generate an estimate of a nonlinear interference field. The predetermined set of samples comprises a first sample and a plurality of second samples. A processor applies the estimated nonlinear interference field to the first sample to at least partially compensate the nonlinear impairment.
The present techniques reduce the computational complexity of estimating the NLI developed within the bandwidth of a single optical channel, i.e. intra-channel nonlinearity such as self-phase modulation (SPM), and the NLI developed between adjacent subcarriers of a multiple subcarrier optical modulation, i.e. inter-sub-channel nonlinearity such as cross-phase modulation (XPM) and cross-polarization modulation (XPolM). Time and frequency domain variants of this NLI compensation algorithm are described. The resulting low-complexity NLI compensation scheme may improve the maximum achievable system margin for 16QAM modulation by ˜1 to 2 dB over transmission distances of 1000-2000 km of G.652 fiber for a single optical channel comprised of one or more optical subcarriers.
Further features and advantages of the present invention will become apparent from the following detailed description, taken in combination with the appended drawings, in which:
It will be noted that throughout the appended drawings, like features are identified by like reference numerals.
A receiver 18 configured to receive and detect the transmitted data signals may be provided as a coherent receiver, which includes a polarization beam splitter 20 for splitting the received optical signal into received X and Y polarizations, an optical hybrid 22 for separately mixing the X and Y polarizations with a local oscillator, and a set of photodetectors 24 for detecting the optical power of each of the mixing products generated by the optical hybrid 22. An Analog-to-Digital (A/D) converter block 26 samples each photodetector current, and the resulting sample streams—each of which is related to the modulated dimensions of the optical carrier field—are processed by a Digital Signal Processor 28 in accordance with the Nd-dimensional constellation to generate recovered signals Rx and Ry that correspond with the transmitted data signals Sx and Sy.
During transmission through the link 16, the modulated optical signal is subject to distortions due to linear intra-channel effects such as chromatic dispersion, polarization dependent loss, polarization mode dispersion, and nonlinear intra-channel effects such as self-phase modulation, among others. As such, the j:th received sample vector {right arrow over (R)}(tj) detected by the receiver 18 can be related to its corresponding transmitted sample vector {right arrow over (A)}(tj) as
{right arrow over (R)}(tj)≈{right arrow over (A)}(tj)+Δ{right arrow over (α)}(tj)+{right arrow over (n)}(tj) Eq. 1
where Δ{right arrow over (α)}(tj) is the intra-channel nonlinear interference (NLI) field and {right arrow over (n)}(tj) represents any additional sources of additive noise or distortion, such as, for example, ASE.
The intra-channel NLI field, Δ{right arrow over (α)}(tj) can be estimated as a sum:
Δ{right arrow over (α)}(tj)≈Σm=−MMΣn=−NNCmn{right arrow over (A)}H(tj+m+n){right arrow over (A)}(tj+n){right arrow over (A)}(tj+m) Eq. 2
involving interactions between the transmitted sample vector {right arrow over (A)}(tj)=[x(tj), y(tj)], weighted by a complex number, Cmn, that characterizes the efficiency of the nonlinear interaction. In this formulation, the superscript H denotes the Hermitian conjugate (i.e. the adjoint) of {right arrow over (A)}(tj), while the summation ranges over the number of samples, 2·max(M,N)+1, that interact through chromatic dispersion (i.e. the channel memory). The coefficients Cmn quantify all relevant details of the dispersion map and transmitter pulse shape.
As is known in the art, the sample frequency (or rate) will typically be higher than the symbol rate. For example, in conventional Nyquist sampling, the sample frequency (or rate) will typically be twice the bandwidth of a bandlimited signal. Other sampling techniques are known in which the ratio between the sample rate and the signal bandwidth is not equal to 2. Accordingly, in the general case, the present technique will normally be implemented in the “sample domain”, with signals being processed on a sample-by-sample basis at the appropriate sample rate. However, for the purpose of understanding the present technique, it is convenient to consider the special case in which the sample rate is equal to that of the symbol rate, and the sample timing corresponds with the symbol timing. In this case, the sample vectors {right arrow over (A)}(tj)=[x(tj), y(tj)] correspond with the symbol vectors {right arrow over (d)}(k)=[x(k), y(k)], and Eq. 2 above can be reformulated as:
Δ{right arrow over (α)}(k)≈Σm=−MMΣn=−NNCmn{right arrow over (d)}H(k+m+n){right arrow over (d)}(k+n){right arrow over (d)}(k+m) Eq. 2A
The following description will use this special case for the purposes of explaining the present technique, it being understood that it will be appropriate to implement many embodiments in the sample domain, using the corresponding sample-domain formulations.
Referring to
{right arrow over (d)}precomp(k)={right arrow over (d)}(k)−Δ{right arrow over (α)}(k) Eq. 3
In the arrangement of
As may be seen in
{right arrow over (r)}postcomp(k)={right arrow over (r)}(k)−{right arrow over (r)}(k) Eq. 4
In the arrangement of
In both pre- and post-compensation scenarios, the practicality of compensating intra-channel interference (and especially NLI such as self-phase modulation) largely depends upon the computational complexity involved in the evaluation of Δ{right arrow over (α)}(k). This, in turn, is a function of the channel memory. For example, it can be shown that for practical optical fiber links of between 1000 and 2000 km in length, the evaluation of Eq. 2A above may require the summation of over 10000 terms.
In accordance with the present technique, Δ{right arrow over (a)}(k) can be evaluated using a parallel series of linear convolutional filters operating on a set of the doublets {right arrow over (D)}m,n(k), each doublet defined as the product {right arrow over (d)}H(k+m+n){right arrow over (d)}(k+n) of transmit symbol vectors {right arrow over (d)}(k). With this arrangement, an equivalent of 15 complex multiplies per symbol to evaluate Δ{right arrow over (a)}(k) can be achieved for channel memories of ˜100 UI through appropriate quantization of the Cmn coefficients. This represents a reduction in complexity equivalent to a factor of 13 relative to the calculation of the double summation involved in Eq. 2A above.
In the typical case where the coefficients have Cmn=C*m,−n symmetry, the required number of linear filters is reduced by a factor of ˜2.
In embodiments in which the coefficients Cmn are quantized to a sufficiently small number of discrete levels, the linear convolutional filters can be replaced by summations without significantly reducing system performance. This technique can yield satisfactory performance when the coefficients cmn are quantized to 4 discrete levels or less.
In dispersion uncompensated networks, the memory length of the optical channel is minimized with 50% electronic CD pre-compensation applied through appropriate DSP at the transmitter. In this case, the required number of linear filters is reduced by a factor of ˜2. Further, when the electronic CD pre-compensation is optimized in systems with arbitrary optical dispersion compensation, the coefficients Cmn are (approximately) imaginary valued. Under these conditions, the required number of complex operations is also reduced by a factor of ˜2.
In networks with a high degree of optical dispersion compensation, Nfilter may range from Nfilter=1 to Nfilter=4.
As may be appreciated, the above techniques may be implemented individually or in combination. In some embodiments, Δ{right arrow over (α)}(k) may be evaluated in the optical transmitter, and used to pre-compensate the optical signal prior to transmission. In other embodiments, Δ{right arrow over (α)}(k) may be evaluated in the optical receiver, and used to post-compensate the optical signal received through the link 12.
As noted above, the filter taps can be realized by additions instead of multiplications. An example of this is illustrated in
The paragraphs above describe techniques for pre- and post-compensation of nonlinear impairments using a simplified time-domain evaluation of the intra-channel nonlinear interference field, Δ{right arrow over (α)}(k). In some embodiments, these techniques may be used in conjunction with electronic Chromatic Dispersion (CD) pre- and/or post-compensation. In some embodiments, approximately 50% of the link CD may be compensated in each of the transmitter and receiver. In particular, in the case of dispersion uncompensated systems with 50% electronic CD pre-compensation, the fiber link can be considered to be the concatenation of two constituent sub-links as shown in
For the case in which the total length of the link is 1040 km, the Cmn, coefficients for the entire link can be calculated as:
Cmn(1040 km)=Cmn(520 km,−β2)+Cmn(520 km,β2)
Ignoring the effects of attenuation, the coefficients of the two constituent sub-links satisfy Cmn(520 km, −β2)=C*mn(520 km, β2) and, consequently, the final Cmn(1040 km) coefficients are purely imaginary. Moreover, Cmn(1040 km) are concentrated near the m=0 and n=0 axes, implying that the required number of terms in Eq. 2A can be significantly reduced while maintaining equivalent system performance. Further, with optimum electronic CD pre-compensation, the Cmn coefficients can be quantized to ≤4 discrete levels with <0.2 dB reduction in system performance.
The above paragraphs describe embodiments in which the NLI field, Δ{right arrow over (α)}(k), is evaluated in the time domain using 2·(M+N)+1 successive dual-polarization transmit symbol vectors, {right arrow over (d)}(k). If desired, the NLI field may be evaluated using an array of band-pass filters that separate the modulated optical field, {right arrow over (A)}(t), into a number of spectral sub-bands, NSB. The intra-sub-band and inter-sub-band NLI fields are evaluated for each sub-band and the results recombined to obtain the total NLI field estimate associated with {right arrow over (A)}(t). Letting {right arrow over (A)}(ω) be the frequency-domain representation of {right arrow over (A)}(t), the modulated optical field is decomposed into NSB sub-bands, {right arrow over (B)}l(ω), so that
{right arrow over (A)}(ω)=Σl=1N
Here, Ωl denotes the center frequency of the l:th sub-band, while, in what follows, {right arrow over (B)}l(t) is the time-domain representation of {right arrow over (B)}l(ω). Including both intra- and inter-sub-band nonlinear interactions, the NLI field, Δ{right arrow over (α)}l(tj), of the l:th sub-band at sampling instant tj, is estimated as
involving {right arrow over (B)}l(tj) of differing sub-bands, weighted by a complex number, Cmn(l1,l2), that characterizes the efficiency of the nonlinear interaction. For example, in Eq. 6 the intra-sub-band nonlinear field is described by those terms with (l1≠0, l2≠0), while the largest contributions to the inter-sub-band nonlinear field occur whenever (l1≠0, l2≠0) or (l1≠0, l2=0). Terms appearing in Eq. 6 with (l1≠0, l2≠0) are associated with four-wave-mixing processes, and are typically negligible in optical fibers with non-zero chromatic dispersion. The number of samples that interact through chromatic dispersion, described by M1 and N1, in general depend upon the sub-band index l.
The total NLI field estimate, Δ{right arrow over (α)}(tj), is obtained from Δ{right arrow over (α)}l(tj) by evaluating Δ{right arrow over (α)}l(ωn) at the discrete sample-frequency ωn through an appropriate Discrete Fourier Transform (DFT) of Δ{right arrow over (α)}l(tj). A filter Hl(ωn) is selected to limit the spectral extent of Δ{right arrow over (α)}l(ωn) and the total nonlinear field
Δ{right arrow over (α)}(ωn)=Σl=1N
is computed. The time-domain received optical field, {right arrow over (R)}(tj), incident upon the receiver 14 is then related to the corresponding transmitted optical field, {right arrow over (A)}(tj), through
{right arrow over (R)}(tj)≈{right arrow over (A)}(tj)+Δ{right arrow over (α)}(tj)+{right arrow over (n)}(tj) Eq. 8
where Δ{right arrow over (α)}(tj) is the inverse-DFT of Δ{right arrow over (α)}(ωn) and {right arrow over (n)}(tj) represents any additional sources of additive noise or distortion.
In accordance with the present technique, Eq. 6 can be evaluated using a parallel series of linear convolutional filters operating on the terms {right arrow over (B)}Hl+l
It is known in the art that modulating data onto multiple optical subcarriers, with Nyquist or near-Nyquist subcarrier frequency separation, can increase tolerance to nonlinear interference, particularly when the total modulation bandwidth exceeds ˜50 GHz. In this embodiment, {right arrow over (B)}l(tj) and Δ{right arrow over (α)}l(tj) in Eq. 6 are identified as the modulated optical field and NLI field of the l:th optical subcarrier, respectively.
For the special case in which the sampling rate is equal to the subcarrier symbol rate then, at appropriate sampling phase, the sample vectors {right arrow over (B)}l(tj) and Δ{right arrow over (α)}l(tj) correspond with the symbol vectors {right arrow over (d)}l(k) and Δ{right arrow over (α)}l(k), respectively, and Eq. 6 above can be reformulated as:
where NSC is the number of modulated subcarriers. The received symbol vector {right arrow over (r)}l(k) of the l:th subcarrier detected by the receiver 14 can be related to its corresponding transmitted symbol vector {right arrow over (d)}l(k) as
{right arrow over (r)}l(k)≈{right arrow over (d)}l(k)+Δ{right arrow over (α)}l(k)+{right arrow over (n)}l(k) Eq. 10
where {right arrow over (n)}l(k) represents any additional sources of additive noise or distortion.
Pre-compensation or post-compensation of intra- and inter-subcarrier NLI is realized by subtracting the estimate Δ{right arrow over (α)}l(k) from either the transmit, {right arrow over (d)}l(k), or received, {right arrow over (r)}l(k), symbol vectors, respectively.
The above paragraphs describe embodiments in which Δ{right arrow over (α)}(k) is evaluated in the time domain using 2·(M+N)+1 successive dual-polarization transmit symbol vectors {right arrow over (d)}(k). If desired, the nonlinear interference may also be evaluated in the frequency domain.
Δ{right arrow over (A)}(ωk)≈Σm=−MMΣn=−NN{tilde over (C)}mn{right arrow over (A)}H(ωk+m+n){right arrow over (A)}(ωk+n){right arrow over (A)}(ωk+m) Eq. 11
in which {right arrow over (A)}H is the Hermitian conjugate (i.e. the adjoint) of {right arrow over (A)} and ωk is the k:th sample frequency of {right arrow over (A)}(ω) or {right arrow over (A)}H(ω), as applicable. The coefficient, {tilde over (C)}mn, is a complex number characterizing the efficiency of the frequency domain nonlinear interaction. The summation ranges over the frequency bins within a (provisionable) bandwidth Δω. The summation can be implemented as a parallel series of linear filters, as may be seen in
The performance of the frequency domain NL pre-compensation improves with increasing bandwidth Δω and approaches a limiting value for some ΔωNL, termed the nonlinear bandwidth, which is related to fiber type and link length. For high net dispersion systems, ΔωNL is generally less than 2πFS where FS is the transmitter modulation bandwidth. It follows that the NL pre-compensation can be applied within a window of spectral width ΔωNL centered on the k:th discrete sample-frequency, ωk, as shown in
As may be appreciated, complexity of the Frequency Domain evaluator also depends on the length of the DFT employed within the FT block. For NL pre-compensation, the channel memory within each spectral window ωk−½ΔωNL<ω<ωk+½ΔωNL is linearly proportional to the modulation bandwidth. Accordingly, the DFT length in the FT block must also increase in proportion to the modulation bandwidth. However, since the number of linear filters required to implement the NL pre-compensation is determined solely by ΔωNL, the implementation complexity per frequency sample ωk is again independent of modulation bandwidth.
In the preceding description, for purposes of explanation, numerous details are set forth in order to provide a thorough understanding of the embodiments of the invention. However, it will be apparent to one skilled in the art that these specific details are not required in order to practice the invention. In other instances, well-known electrical and/or optical structures and circuits are shown in block diagram form in order not to obscure the invention. For example, specific details are not provided as to whether the embodiments of the invention described herein are implemented as a software routine, hardware circuit, firmware, or a combination thereof.
Embodiments of the invention can be represented as a software product stored in a machine-readable medium (also referred to as a computer-readable medium, a processor-readable medium, or a computer usable medium having a computer-readable program code embodied therein). The machine-readable medium can be any suitable tangible medium, including magnetic, optical, or electrical storage medium including a diskette, compact disk read only memory (CD-ROM), memory device (volatile or non-volatile), or similar storage mechanism. The machine-readable medium can contain various sets of instructions, code sequences, configuration information, or other data, which, when executed, cause a processor to perform steps in a method according to an embodiment of the invention. Those of ordinary skill in the art will appreciate that other instructions and operations necessary to implement the described invention can also be stored on the machine-readable medium. Software running from the machine-readable medium can interface with circuitry to perform the described tasks.
The above-described embodiments of the invention are intended to be examples only. Alterations, modifications and variations can be effected to the particular embodiments by those of skill in the art without departing from the scope of the invention, which is defined solely by the claims appended hereto.
This application based on, and claims benefit of, U.S. application Ser. No. 14/480,739 filed Sep. 9, 2014, which in turn, is based on and claims benefit of, U.S. provisional application No. 61/875,381 filed Sep. 9, 2013. The entire content of these applications is hereby incorporated by reference.
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Parent | 14480739 | Sep 2014 | US |
Child | 15131798 | US |