Equalizers are an important element in many diverse digital information applications, such as voice, data, and video communications. These applications employ a variety of transmission media. Although the various media have differing transmission characteristics, none of them is perfect. That is, every medium induces variation into the transmitted signal, such as frequency-dependent phase and amplitude distortion, multi-path reception, other kinds of ghosting, such as voice echoes, and Rayleigh fading. In addition to channel distortion, virtually every sort of transmission also suffers from noise, such as additive white gausian noise (“AWGN”). Equalizers are therefore used as acoustic echo cancelers (for example in full-duplex speakerphones), video deghosters (for example in digital television or digital cable transmissions), signal conditioners for wireless modems and telephony, and other such applications.
One important source of error is intersymbol interference (“ISI”). ISI occurs when pulsed information, such as an amplitude modulated digital transmission, is transmitted over an analog channel, such as, for example, a phone line or an aerial broadcast. The original signal begins as a reasonable approximation of a discrete time sequence, but the received signal is a continuous time signal. The shape of the impulse train is smeared or spread by the transmission into a differentiable signal whose peaks relate to the amplitudes of the original pulses. This signal is read by digital hardware, which periodically samples the received signal.
Each pulse produces a signal that typically approximates a sinc wave. Those skilled in the art will appreciate that a sinc wave is characterized by a series of peaks centered about a central peak, with the amplitude of the peaks monotonically decreasing as the distance from the central peak increases. Similarly, the sinc wave has a series of troughs having a monotonically decreasing amplitude with increasing distance from the central peak. Typically, the period of these peaks is on the order of the sampling rate of the receiving hardware. Therefore, the amplitude at one sampling point in the signal is affected not only by the amplitude of a pulse corresponding to that point in the transmitted signal, but by contributions from pulses corresponding to other bits in the transmission stream. In other words, the portion of a signal created to correspond to one symbol in the transmission stream tends to make unwanted contributions to the portion of the received signal corresponding to other symbols in the transmission stream.
This effect can theoretically be eliminated by proper shaping of the pulses, for example by generating pulses that have zero values at regular intervals corresponding to the sampling rate. However, this pulse shaping will be defeated by the channel distortion, which will smear or spread the pulses during transmission. Consequently, another means of error control is necessary. Most digital applications therefore employ equalization in order to filter out ISI and channel distortion.
Generally, two types of equalization are employed to achieve this goal: automatic synthesis and adaptation. In automatic synthesis methods, the equalizer typically compares a received time-domain reference signal to a stored copy of the undistorted training signal. By comparing the two, a time-domain error signal is determined that may be used to calculate the coefficient of an inverse function (filter). The formulation of this inverse function may be accomplished strictly in the time domain, as is done in Zero Forcing Equalization (“ZFE”) and Least Mean Square (“LMS”) systems. Other methods involve conversion of the received training signal to a spectral representation. A spectral inverse response can then be calculated to compensate for the channel distortion. This inverse spectrum is then converted back to a time-domain representation so that filter tap weights can be extracted.
In adaptive equalization the equalizer attempts to minimize an error signal based on the difference between the output of the equalizer and the estimate of the transmitted signal, which is generated by a “decision device.” In other words, the equalizer filter outputs a sample, and the decision device determines what value was most likely transmitted. The adaptation logic attempts to keep the difference between the two small. The main idea is that the receiver takes advantage of the knowledge of the discrete levels possible in the transmitted pulses. When the decision device quantizes the equalizer output, it is essentially discarding received noise. A crucial distinction between adaptive and automatic synthesis equalization is that adaptive equalization does not require a training signal.
Error control coding generally falls into one of two major categories: convolutional coding and block coding (such as Reed-Solomon and Golay coding). At least one purpose of equalization is to permit the generation of a mathematical “filter” that is the inverse function of the channel distortion, so that the received signal can be converted back to something more closely approximating the transmitted signal. By encoding the data into additional symbols, additional information can be included in the transmitted signal that the decoder can use to improve the accuracy of the interpretation of the received signal. Of course, this additional accuracy is achieved either at the cost of the additional bandwidth necessary to transmit the additional characters, or of the additional energy necessary to transmit at a higher frequency.
A convolutional encoder comprises a K-stage shift register into which data is clocked. The value K is called the “constraint length” of the code. The shift register is tapped at various points according to the code polynomials chosen. Several tap sets are chosen according to the code rate. The code rate is expressed as a fraction. For example, a ½ rate convolutional encoder produces an output having exactly twice as many symbols as the input. Typically, the set of tapped data is summed modulo-2 (i.e., the XOR operation is applied) to create one of the encoded output symbols. For example, a simple K=3,½ rate convolutional encoder might form one bit of the output by modulo-2-summing the first and third bits in the 3-stage shift register, and form another bit by modulo-2-summing all three bits.
A convolutional decoder typically works by generating hypotheses about the originally transmitted data, running those hypotheses through a copy of the appropriate convolutional encoder, and comparing the encoded results with the encoded signal (including noise) that was received. The decoder generates a “metric” for each hypothesis it considers. The “metric” is a numerical value corresponding to the degree of confidence the decoder has in the corresponding hypothesis. A decoder can be either serial or parallel—that is, it can pursue either one hypothesis at a time, or several.
One important advantage of convolutional encoding over block encoding is that convolutional decoders can easily use “soft decision” information. “Soft decision” information essentially means producing output that retains information about the metrics, rather than simply selecting one hypothesis as the “correct” answer. For an overly-simplistic example, if a single symbol is determined by the decoder to have an 80% likelihood of having been a “1” in the transmission signal, and only a 20% chance of having been a “0”, a “hard decision” would simply return a value of 1 for that symbol. However, a “soft decision” would return a value of 0.8, or perhaps some other value corresponding to that distribution of probabilities, in order to permit other hardware downstream to make further decisions based on that degree of confidence.
Block coding, on the other hand, has a greater ability to handle larger data blocks, and a greater ability to handle burst errors.
The decision device 226 is typically a hard decision device, such as a slicer. For example, in an 8VSB system, the slicer can be a decision device based upon the received signal magnitude, with decision values of 0, ±2, ±4, and ±6, in order to sort the input into symbols corresponding to the normalized signal values of ±1, ±3, ±5, and ±7. For another example, the slicer can be multi-dimensional, such as those used in quadrature amplitude modulation (“QAM”) systems.
The controller 228 receives the input data and the output data and generates filter coefficients for both the FIR filter 222 and the decision feedback filter 224. Those skilled in the art will appreciate that there are numerous methods suitable for generating these coefficients, including LMS and RLS algorithms.
Typically, the trellis decoder 350 uses a Viterbi algorithm to decode the signal encoded by the 8VSB trellis encoder 400. Typically, the trellis decoder 350 has a large number of stages-most often 16 or 24. The decoded output 229 is deinterleaved by the de-interleaver 140, and then sent to the outer decoder 150.
As can be seen in
What is needed is an equalizer in which the gain of the trellis decoder 350 is superior to what is produced when the data is sliced before decoding. In addition, an equalizer is needed in which the DFE does not rely on undecoded data. The present invention is directed towards meeting these needs, as well as providing other advantages over prior equalizers.
A first embodiment adaptive equalizer comprises: a trellis decoder; a mapper coupled to the output of the trellis decoder; and a decision feedback equalizer coupled to the output of the mapper, the decision feedback equalizer having fewer than 16 taps. Each of the taps receives as input via the mapper output from a different one of the 16 stages of the trellis decoder.
A second embodiment adaptive equalizer comprises: a Viterbi decoder having 16 stages; a mapper coupled to the output of the Viterbi decoder; and a decision feedback equalizer coupled to the output of the mapper, the decision feedback equalizer having more than 16 taps. 16 of the taps each receive as input via the mapper output from a different one of the 16 stages of the Viterbi decoder.
A third embodiment adaptive equalizer comprises: a Viterbi decoder having 16 stages; a mapper coupled to the output of the Viterbi decoder; and a decision feedback equalizer coupled to the output of the mapper, the decision feedback equalizer having fewer than 16 taps. Each of the taps receives as input via the mapper output from a different one of the 16 stages of the Viterbi decoder.
A fourth embodiment adaptive equalizer comprises a decision feedback equalizer and a trellis decoder, wherein the decision feedback equalizer receives as input information from the trellis decoder.
A fifth embodiment adaptive equalizer consists of: an FIR filter; a trellis decoder coupled to the FIR filter; and a decision feedback equalizer coupled to the FIR filter and to the trellis encoder via a mapper. An output of the trellis decoder is mapped and scaled by the mapper and used by the equalizer to generate an error signal.
For the purposes of promoting an understanding of the principles of the invention, reference will now be made to the embodiment illustrated in the drawings and specific language will be used to describe the same. It will nevertheless be understood that no limitation of the scope of the invention is thereby intended, and alterations and modifications in the illustrated device, and further applications of the principles of the invention as illustrated therein are herein contemplated as would normally occur to one skilled in the art to which the invention relates. In particular, although the invention is discussed in terms of an 8VSB system, it is contemplated that the invention can be used with other types of modulation coding, including, for example, QAM and offset-QAM.
In certain other embodiments the trellis decoder 350 has some other number of stages “n,” and the DFE 850 has M taps. In these embodiments, the decision feedback equalizer 850 has the same structure from the (n+1)th tap up to the Mth tap, and from the 1st tap to the nth tap the inputs to the DFE 850 are the mapped and scaled output from the trellis decoder 350 from the 1st to the nth stage, respectively.
It will be appreciated that the current survive path can change based on the decoding process with each new input symbol, so the survive path may not be the same (though shifted one symbol) from one sample time to the next. Thus, all the inputs to the DFE 850 can vary from symbol to symbol. This is different from prior art DFEs 224, in which the input to the next stage in the DFE 224 is the delayed symbol from the previous stage.
In certain of these embodiments the equalizer taps are generated as shown in
Preferably, the equalizer taps are generated differently, as shown in
In certain other embodiments, the error signal is taken by subtracting a delayed version of the input to the trellis decoder 350 from a mapped and scaled output 803 of one of the stages of the trellis decoder 350.
Those skilled in the art will appreciate that some encoding schemes have multiple independent encoders running in parallel, including the 8VSB system (which employs 12 such parallel encoders). Typically, trellis code intrasegment interleaving is used in such systems. This uses a corresponding number of identical trellis encoders and precoders operating on interleaved data symbols. In a system with 12 parallel encoders, for example, the code interleaving is accomplished by encoding the 0th, 12th, 24th . . . symbols as one group, the 1st, 13th, 25th . . . symbols as a second group, the 2nd, 14th, 26th . . . symbols as a third group, and so on for a total of 12 groups.
Those skilled in the art will appreciate that any number of parallel encoders and decoders may be used in a decision feedback equalizer according to the present invention. For example, a decision feedback equalizer having 16 parallel encoders and decoders, the trellis code interleaver and de-interleaver will have essentially the same structure as shown in
It will also be appreciated that a decision feedback equalizer according to the present invention can have fewer taps than the total trellis decoder decoding length. For example, if the decision feedback equalizer has 96 taps, while the trellis decoder has 12 parallel encoders and decoders and 16 decoding stages, the decision feedback equalizer can take the mapped and scaled output from the first 8 trellis decoder stages. There will be a total of 96 delay elements. The error signal is preferably generated from the mapped and scaled output of the last decoding stage.
It will be appreciated that the error signal in an equalizer according to the present invention is generated with a short delay. If the error signal is generated after 16 decoding stages in an 8VSB system, for example, the delay is 192 symbols, as shown in
Furthermore, if the number of parallel encoders and decoders is sufficiently large so that the total delay is long enough to harm the tracking of varying channel distortion, the error signal can be generated at earlier decoding stages. The earlier stages have higher error rate than the last decoding stage, so this is preferable only when necessary to reduce the delay in error signal generation. However, even the earlier decoding stages have a significant gain. Therefore, the result will still be a substantially improved decoding gain over a system in which, for example, the input to the trellis decoder is a sliced signal.
Because the output 229 of the trellis decoder 350 more closely corresponds to the transmitted signal, the coefficient taps are more accurately updated. Thus, the decoding gain of the trellis decoder 350 is propagated through the error feedback, further improving the performance of the trellis decoder 350. Also, because the decoded output 229 of the trellis decoder has fewer bits than its input, simpler hardware may be used.
Those skilled in the art will appreciate that an equalizer according to the present invention has advantages over prior art equalizers. The input to the decision feedback equalizer has fewer errors, because it is taken from the mapped and scaled output of the trellis decoder. The lower error rate in the trellis decoder's input makes the equalizer more stable, and causes it to converge more rapidly. Also, the lower error rate in the trellis decoder's input results in a much lower error rate in its output, resulting in a better equalized signal. Furthermore, the equalizer more effectively eliminates long post-ghosts because there is increasing gain from the trellis decoder from stage to stage. There is significant gain starting from the first trellis decoding stage, so that the decision feedback equalizer is benefited at start-up. Also, since the trellis decoded output is more reliable and accurate, the input to the decision feedback equalizer can have fewer bits. This permits a reduction in hardware complexity.
It will further be appreciated that these advantages can be achieved without the use of additional hardware, except for a delay line for generating error signals from the decoder output. A standard trellis decoder employing a standard Viterbi algorithm can be used.
While the invention has been illustrated and described in detail in the drawings and foregoing description, the same is to be considered as illustrative and not restrictive in character, it being understood that only the preferred embodiment has been shown and described and that all changes and modifications that come within the spirit of the invention are desired to be protected.
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