The present invention relates to the field of communication systems. More particularly, the invention relates to a method and system for providing enhanced equalization of a data channel with heavily ISI-induced signals, based on a combination of reduced complexity MLSE and linear equalizer.
Digital modem links with reduced bandwidth include Inter Symbol Interference (ISI), which requires using a Linear Equalizer (LE) to invert the channel and reverse the Inter Symbol Interference (ISI) effect. However, a major drawback of using a Linear Equalizer is the effect of noise enhancement, which occurs due to the channel inversion. An alternative solution is to decode the received signal by using an MLSE (Maximum-Likelihood Sequence Estimation) equalizer (rather than a Linear Equalizer), which is non-linear and therefore, does not enhance the noise at the receiver's input. However, the implementation of an MLSE equalizer is more complex compared to an LE, since it requires longer memory to process many taps backwards.
It is therefore an object of the present invention to provide a method and system for the equalization of a data channel with heavily ISI-induced signals, using a nonlinear equalizer with reduced complexity.
It is another object of the present invention to provide a method and system for the equalization of a data channel with heavily ISI-induced signals, which does not enhance the noise at the receiver's input.
Other objects and advantages of the invention will become apparent as the description proceeds.
The present invention is directed to a system for digitally equalizing a data channel with heavily ISI-induced signals received after passing a data communication channel using a combination of a linear equalizer and a nonlinear equalizer, which comprises:
a) an ADC, for sampling a received signal and converting it to a digital form;
b) a Linear Equalizer for pre-processing the received signal, the Linear Equalizer is adapted to:
b.1) pre-process a first group consisting of echoes/channel taps of the induced ISI, which are not equalized by the nonlinear equalizer, by eliminating the echoes/channel taps of the first group;
b.2) pre-process a second group consisting of the combination of the entire echoes/channel taps of the induced ISI, by eliminating the echoes/channel taps of the second group; and
c) a nonlinear equalizer (such as an RC-MLSE) for receiving the signals preprocessed by the Linear Equalizer and for further processing the preprocessed signals and eliminating the echoes/channel taps of the induced ISI to be equalized by the nonlinear equalizer, thereby compensating for the entire ISI induced by the channel.
The system may further comprise a linear feedback circuitry for continuously adapting the filter taps of the Linear Equalizer, including:
The system may be adapted to equalize received signals with high order modulations, including:
The system may be also adapted to perform digital equalization of data channels in data networks, including:
The present invention is also directed to a method for digitally equalizing a data channel with heavily ISI-induced signals received after passing a data communication channel, comprising:
The above and other characteristics and advantages of the invention will be better understood through the following illustrative and non-limitative detailed description of preferred embodiments thereof, with reference to the appended drawings, wherein:
The present invention suggests a digital equalization mechanism, which is combined with a Maximum Likelihood Sequence Estimator (MLSE) in digital communication links. The proposed equalization mechanism includes a receiver, which uses a combination of an LE and a Reduced Complexity MLSE (RC-MLSE) to implement a receiver with low implementation complexity and lower noise enhancement. The advantage is that an RC-MLSE requires less computations and less power and is more simple to implement than a regular MLSE.
The Relation Between Reduced Bandwidth and ISI
Generally, channels with reduced bandwidth introduce ISI. If the transmitted signal is given by:
y(t)=Σkαk·δ(t−k·Tsym) [Eq. 1]
where
an—The transmitted symbol.
h(t)—The overall impulse response from transmitter (before DAC) to receiver (after ADC)
Tsym—The baud interval (Sec)
Then the received signal (before sampling) could be written as:
r(t)=y(t)*h(t)+w(t) [Eq. 2]
r(t)=Σk·αk·h(t−k·Tsym)+w(t) [Eq. 8]
Assuming perfect timing reconstruction, the sampling instances will be:
t=n·T
sym
Under these conditions, the sampled version of the received signal could be written as:
where,
an·h(0) is the desired part of the signal
Σk≠nαk·h((n−k)·Tsym) is the inter symbol interference (ISI) term
wn is the additive noise.
A Linear Equalizer based on the Minimum Mean Squared Error (MMSE) criteria tries to minimize the error caused by both the residual ISI and by the (enhanced) noise. On the other hand, an MLSE decoder does not try to invert the channel (i.e., to zero the ISI) but rather, it uses the echoes as a wanted signal for decoding the transmitted symbol sequence (the echoes are ‘wanted signals’ for consecutive symbols). An MLSE decoder that uses the echoes as wanted signals is required to implement decoding functionality which is proportional to:
C∝M
(N
+1) [Eq. 5]
where M is the symbol modulation order (i.e., for PAM-4, M=4 etc.) and NISI is the number of echoes used for sequence decoding.
If an RC-MLSE decoder implementation uses NISI which is smaller than the channel unwanted ISI (to save implementation complexity), then the residual ISI will reduce the performance of the decoding algorithm.
For the example of
The decoding process is based on the following combined processing: At the first step, the echoes/channel taps of the induced ISI are reduced by using a Linear Equalizer 22, in order not to be covered by the reduced complexity MLSE (RC-MLSE) 23. At the next step, the signal at the linear equalizer's output is decoded (using standard decoding) by the RC-MLSE 23. This decoding process is described in
In the example of
According to the present invention, the filter taps of Linear Equalizer are continuously adapted by constructing an error signal for the LE tap adaptation.
The received signal rn an after sampling (at point 1) could be written as:
r
n=Σkak·h(n−k)+wn [Eq. 6]
The channel estimation block 41 receives the received signal rn (point 1) at one input and the decoded symbols from the output of the RC-MLSE 23 (point 3) at the other input, to estimate the channel's impulse response signal h[n].
The channel estimation block 41 provides to the FIR block 42 a signal (point 4) which includes the channel taps that are covered by the RC-MLSE 23: hk(k∈MLSE Taps). The FIR block 42 also receives the decoded symbols from the output of the RC-MLSE 23 (point 3) and from the output of the channel estimation block 41 (point 4), constructs the signal at the output of the FIR block 42 (point 5) which is given by:
x5n=ρk∈MLSETapsak·h(n−k) [Eq. 7]
The signal at point 6, which is the difference between the signals at the output of Linear Equalizer 22 (point 2) and the output of the FIR block 42 (point 5), represents the error signal x6n (at point 6):
x6n=x2n−x5n [Eq. 8]
The tap adaptation block 43 receives the error signal at point 6 and minimizes it. When this will happen (while neglecting the noise and assuming the minimal value is zero), the signal at point 2 will be equal to the signal at point 5 so the signal at point 2 could be written as:
x2n=Σk∈MLSETapsak·h(n−k)+{tilde over (w)}n [Eq. 9]
In such a case (steady state), the input to the RC-MLSE 23 includes only taps which are covered by the RC-MLSE 23.
In practice, FIR block 42 is fed by the channel estimation block 41, which represents the linear model (assumption) of the channel. Therefore, FIR block 42 will have a reshaped impulse response, which generates the error signal (at point 6), according to which the tap adaptation block 43 updates the taps of the LE 22.
The implementation of the linear feedback circuitry 44 of
In this example, the channel impulse response was:
h=[0.00011351 0.021874 0.23321 0.46527 0.25063 0.030095 −0.0014694];
Graph 51 represents the Symbol Error Rate (SER) for a hard slicer decoder over an Additive white Gaussian noise (AWGN) channel with no ISI. Graph 52 represents receiver performance over the ISI channel, which uses only a nonlinear equalization of the RC-MLSE 23 (NISI=2). Graph 53 represents the receiver performance over the ISI channel, using the combination of an LE 22 and an RC-MLSE 23. It can be seen that the SER obtained by using the proposed combination of an LE 22 for linear preprocessing and an RC-MLSE 23 for nonlinear processing provides a reasonable SER, with much less implementation complexity.
The above examples and description have of course been provided only for the purpose of illustration, and are not intended to limit the invention in any way. As will be appreciated by the skilled person, the invention can be carried out in a great variety of ways, employing more than one technique from those described above, other than used in the description, all without exceeding the scope of the invention.
Number | Date | Country | |
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61946960 | Mar 2014 | US |