The invention refers to a method and to an arrangement for signal processing in a communication system (e.g. an optical communication system).
In order to meet the growing demand for internet bandwidth with traffic growth rates around 40-50% per year, telecommunication component providers face the task of increasing the spectral efficiency of fiber utilization. After 10 Gbit/s systems became successful in the 1990's, solutions for 40 Gbit/s became available in the last years. Standardization and research are now focused on the development of 100 Gbit/s systems with coherent Polarization Multiplexed (PolMux) Quadrature Phase Shift Keying (QPSK). Since polarization multiplexing utilizes both light polarizations, it is possible to send the signal at a rate of ˜25-28 Gsymbols per second, thus fitting nicely into the standard 50 GHz grid for DWDM optical systems. Coherent reception makes it possible to compensate for most linear transmission impairments, like Chromatic Dispersion (CD) and Polarization-Mode Dispersion (PMD) after sampling in the digital domain.
A much simpler way to combat cycle slips can be obtained by introducing differential encoding to the signal. In conventional differential formats, the bit information is modulated onto the phase difference between two or more subsequent symbols. For example, in differentially encoded Binary Phase-Shift Keying (BPSK) systems a binary “1” may be transmitted by adding 180° to the current phase and a binary “0” by adding 0° to the current phase. In differentially encoded QPSK, the phase-shifts are 0°, 90°, 180°, −90° corresponding to data “00”, “01”, “11”, “10”. If a cycle slip occurs, it leads to a single symbol error only, since it's the differential phase which carries the information.
However, binary differential decoding may lead to a performance loss, as every bit error in the coherent domain is translated to two bit errors after differential decoding at relevant signal-to-noise ratio (SNR) values. The binary decoding algorithm can be given by:
z
I(t)=Re {sgn(r(t))sgn(r*(t−T))}; zQ(t)=Im {sgn(r(t))sgn(r*(t−T))} (1)
where r(t) is the coherent complex signal and z(t) is the complex differentially decoded signal with zI(t) being the real part or the in-phase, zQ(t) being the imaginary part or the quadrature, and T is the symbol duration.
The output signal of the DQPSK decoder is given by:
z
I(t)=Re {r(t)r*(t−T)}; zQ(t)=Im {r(t)r*(t−T)} (2)
Binary differential decoding of QPSK has a limited decoding penalty, less than soft differential decoding, but suffers a performance loss in combination with hard-decision FEC that is inferior to soft-decision counterparts. Another possibility would be to avoid differential encoding altogether. However this approach would require stable lasers and generally leads to increased system costs.
In the wireless systems literature it has been shown that the differential encoding penalty of general PSK modulation formats can be completely compensated using iterative decoding. Cited for example are D. Marsland, P. T. Mathiopoulos, “On the Performance of Iterative Noncoherent Detection of Coded M-PSK Signals”, IEEE Transactions on Communications, vol. 48, no. 4, pp. 588-596, April 2000; Peter Hoeher, Senior Member, IEEE, and John Lodge, ““Turbo DPSK”: Iterative Differential PSK Demodulation and Channel Decoding”, IEEE Transactions on Communications, vol. 47, no. 6, pp. 837-843, June 1999; and H. Arslan, G. E. Bottomley, R. Ramesh, G. Brismark, “Coherent MAP Detection of DQPSK Signals in non-ISI Channels”, Wireless Communications and Networking Conference, 1999. WCNC. 1999 IEEE. In the cited documents the differential decoder is regarded as the inner code of a serially concatenated code structure. The outer code is a convolutional code with error correction capabilities. Using the turbo principle, soft information is iterated between the differential decoder and the outer code employing an interleaver in between. The soft decision is computed according to the maximum a posteriori (MAP) principle. In principle, it is possible to replace the convolutional code by a soft output low density parity check (LDPC) or turbo code with a low overhead, as they are typically used in fiber optics, in order to compensate for the differential penalty. However, this has neither been demonstrated in fiber optic literature, nor has an assessment of the complexity increase taken place. Further examples for the mitigation of the differential encoding are given in L. Lampe et al., “Coded Modulation for DPSK on Fading Channels”, Globecom 99, where multi-level coding is used in combination with convolutional codes, and in H. Leib et al., “Data-Aided Noncoherent Demodulation of DPSK”, IEEE Trans. Comm. Vol. 43 (1995), pp. 722 and S. Calabrò et al., “Improved Detection of differential Phase Shift Keying through Multi-Symbol Phase Estimation”, ECOC 2005, where recursive structures are employed that however cannot be implemented in parallelized receivers.
The problem to be solved is to avoid the disadvantage mentioned above and in particular to reduce the performance loss of the soft differential decoding of QPSK in the combination with Forward error Correction (FEC). A cost efficient technique is needed that approaches the optimal performance of soft differential decoding of QPSK in the combination with Forward error Correction (FEC) without the complexity of MAP computation and iterative decoding, and which can be easily implemented in parallelized receivers.
In order to overcome the above-described need in the art, the present invention discloses a signal processing method for coherent receivers, comprising the steps of receiving a coherent complex signal, extracting orthogonal in-phase and quadrature signal components from the coherent complex signal, quantizing the orthogonal signal components independently, combining the quantized orthogonal signal components obtaining a first signal (in particular, a complex signal), and soft differential decoding the first signal obtaining a second signal.
It is also an embodiment, that the first signal (61) includes a real part (693) and an imaginary part.
In a further embodiment, the signal processing method further comprises the step of feeding the second signal to a forward error correction unit.
In other embodiments of the present invention, the coherent complex signal is fed by a carrier recovery unit.
In a further embodiment, the step of soft differential decoding the first signal obtaining a second signal includes the steps of time-delaying the first signal obtaining a third signal, complex conjugating the third signal obtaining a fourth signal, multiplying the fourth signal with the first signal obtaining a fifth signal, and phase shifting the fifth signal obtaining the second signal.
In a next embodiment, the coherent complex signal includes a Quadrature Phase Shift Keying (QPSK) signal.
It is also an embodiment, that the signal processing method further comprises the step of clipping the orthogonal signal components independently.
In a further embodiment, the step of quantizing the orthogonal signal components independently includes linear quantization of the orthogonal signal components.
In an alternative embodiment, the step of quantizing the orthogonal signal components independently includes non linear quantization of the signal components.
In other embodiments of the present invention, the non linear quantization of the orthogonal signal components includes compression of the orthogonal signal components.
In a next embodiment of the invention, the non linear quantization of the orthogonal signal components includes expansion of the orthogonal signal components.
The problem stated above is also solved by a signal processing arrangement for coherent receivers, comprising means for receiving a coherent complex signal, means for extracting orthogonal in-phase and quadrature signal components from the coherent complex signal, means for quantizing the orthogonal signal components independently, means for combining the quantized orthogonal signal components obtaining a first signal, wherein the first signal includes a real part and an imaginary part, and means for soft differential decoding the first signal obtaining a second signal.
In a next embodiment, the means for quantizing the orthogonal signal components independently include a quantization and clipping unit.
In other embodiments of the present invention, the means for quantizing the orthogonal signal components independently include a compressor unit configured to perform compression of the orthogonal signal components.
In a next embodiment, the means for quantizing the orthogonal signal components independently include an expander unit configured to perform expansion of the orthogonal signal components.
The problem stated above is also solved by a receiver of a communication system including the signal processing arrangement described above.
The invention is explained by way of example in more detail below with the aid of the attached drawings.
As regards the description of
Illustrative embodiments will now be described with reference to the accompanying drawings to disclose the teachings of the present invention. While the present invention is described herein with reference to illustrative embodiments for particular applications, it should be understood that the invention is not limited thereto. Those having ordinary skill in the art and access to the teachings provided herein will recognize additional modifications, applications, and embodiments within the scope thereof and additional fields in which the present invention would be of significant utility.
In another embodiment of the invention, also shown in
According to an embodiment of the invention the quantization units 58 and 59 perform a linear quantization.
In another embodiment of the invention, also shown in
Only the performance of the inner soft-code is evaluated, since it is sufficient to describe the overall code performance. The penalty 81 after forward error correction (FEC) decoding is ˜0.7 dB at 3 bits of quantization and is thus identical to the penalty caused by binary differential decoding. This is the minimum possible penalty that can be achieved without using iterative concatenated convolution codes as discussed before. Decoding with 2 bits quantization gives a penalty of ˜0.7 dB as well, although it is not shown in
The described method, according to an embodiment of the invention, makes it possible to compute soft information after differential decoding, while having the minimum differential loss of binary decoding.
The described method, according to an embodiment of the invention, can be implemented on an integrated circuit in the digital domain, for example on an application-specific integrated circuit (ASIC), field-programmable gate array (FPGA) or similar technologies. The parameters of quantization in the soft differential decoding algorithm have to be optimized with respect to the given FEC algorithm. The quantization levels in the differential decoder have to be adjusted to the quantization levels of the FEC. No iterations between the differential decoding and FEC are required and they can function in a strictly feed-forward setting.
The present invention is not limited to the details of the above described principles. The scope of the invention is defined by the appended claims and all changes and modifications as fall within the equivalents of the scope of the claims are therefore to be embraced by the invention. Mathematical conversions or equivalent calculations of the signal values based on the inventive method or the use of analogue signals instead of digital values are also incorporated.
Number | Date | Country | Kind |
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101 61 450 | Apr 2010 | EP | regional |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/EP11/56619 | 4/27/2011 | WO | 00 | 10/29/2012 |