A signal transmitted over a wireless communication channel may be subject to channel noise such as additive white Gaussian noise (AWGN), Rayleigh fading or even blockage. Therefore, many wireless communication systems transmit multiple bit-streams that represent the same information over different time periods, frequencies, or spatially separated antennas to introduce time diversity, frequency diversity, or spatial diversity, respectively, in order to maximize the chance of detecting the information correctly at the receiver. In particular, the multiple streams may be encoded using channel encoders of different rates and with different amounts of redundancies. At the receiver, transmitted bit-streams that are corrupted by noise in the communication channels have to be combined appropriately to maximize the chances that the decoder can reconstruct the original information in the data bit-stream correctly.
A wireless system may transmit multiple bit streams representing the same information but with the coded bits being transmitted with different repeat transmission factors. The receiver may identify the repeated coded bits with a repeat factor N and derive appropriate combining metrics to optimize decoder performance. A decoder in the receiver may decode the combined coded bits using a decision metrics that is a factor of N.
The receiver may utilize different soft combining metrics for different bit-to-symbols mappings and types of channels, e.g., additive white Gaussian noise (AWGN) and Rayleigh fading channels. For example, for an AWGN channel using QPSK bit-to-symbol mapping, the decision metric may be a branch metric, and for 16-QAM and higher constellation mappings, the decision metric may be a bit metric. Similarly, for a Rayleigh fading channel using QPSK bit-to-symbol mapping, the decision metric may be a branch metric, and for 16-QAM and higher constellation mappings, the decision metric may be a bit metric.
A wireless communication system may transmit multiple bit-streams that represent the same information over different time periods, frequencies, or spatially separated antennas to introduce time diversity, frequency diversity, or spatial diversity, respectively, in order to maximize the chance of detecting the information correctly at the receiver. The multiple streams may be encoded using channel encoders of different rates and with different amounts of redundancies. At the receiver, transmitted bit-streams that are corrupted by noise in the communication channels have to be combined appropriately to maximize the chances that the decoder can reconstruct the original information in the data bit-stream correctly.
In an embodiment, soft combining metrics may be derived for these multiple transmitted bit-streams encoded using channel encoders of different rates with different amounts of redundancies to maximize the chances that a decoder such as a hard-decision decoder or a Viterbi decoder can decode the data bit-stream correctly.
In an embodiment, the soft combining metrics may be derived for a multi-rate multi-stream transmission scheme, such as an In-Band On-Channel (IBOC)-frequency modulation (FM) system.
The channel encoder 106 in the transmitter may encode bit-streams using a rate-1/3, rate-2/5, rate-1/2, or rate-2/7 convolutional code. The rate used for a particular input data bit-stream may be dependent on the service mode. For primary service modes such as MP5, the bit-stream contained in the logical channel P1302 is encoded using both a rate-2/5 convolutional encoder 304 and a rate-1/2 convolutional encoder 306, as shown in
The rate-1/2 and 2/5 convolutional encoders are shown in
The decoder is commonly implemented using the Viterbi algorithm, which is an efficient way to perform maximum-likelihood sequence estimation. In an embodiment, soft combining metrics are derived and implemented to optimize the performance of the Viterbi decoder and also introduce efficient implementation methods.
Soft Combining Metrics for Symbols Transmitted in AWGN Channels
In the following description, the received noisy symbols corresponding to the rate-2/5 convolutional encoded bit-stream are denoted as
In this example, the rate-2/5 and the rate-1/2 convolutional encoders are derived from the same rate-1/3 “mother code” with the same generator polynomials “133”, “171” and “165”. Furthermore, symbols such as
and
where n1,0 and n1,0′ and E(n2)=E((n′)2)=σ−2. By adding the two soft symbols,
z1,0=
Thus, the corresponding branch metric in the Viterbi decoder is (z1,0−2g1,0)2. The noise power corresponding to this metric is 2σ2. On the other hand, for the coded bits that are transmitted once, such as bit g2,0, the conventional branch metric, (
for the two symbols corresponding to the same output bits from the same generating polynomial of the same data bit sequence. In this case, the expected power of the branch metric (zi,j−2g2,0)2 is σ2.
This concept may be generalized for normalized branch metrics for bits with varying repeat transmission factor. Consider a coded bit that is transmitted N times. The N received symbols that have gone through N independent AWGN channels may be denoted as
The branch metrics corresponding to these symbols are,
Branch metric=(z−√{square root over (N)}a)2, (6)
where a is the encoded bit associated with the branch for which the branch metric is to be computed. For example, aε{±1} for QPSK, and aε{±1, ±3} for 16-QAM.
The
normalization factor is necessary only if some of the coded bits are transmitted only once while the others are repeated N times. Therefore, the expected noise power contained in each branch of the branch metrics may be different unless proper normalization is applied. In the conventional repeat transmission scheme where all the bits in a coded bit sequence are transmitted N times, no normalization factor is required since the branch metric computed from the sum of the N received soft symbols for every coded bit will contain the same expected noise power, albeit N times larger.
In practice, multiplying the soft, combined values with a factor of √{square root over (N)} can be complex to implement. However, in an embodiment, these multiplications may be avoided and the branch metric computation can be simplified without loss in performance. A combining module 250 (
The branch metric in Equation 6 can be expanded as
Branch metric=z2−2√{square root over (N)}za+Na2. (7)
Since z2 is common to all the branch metrics to be compared in the Viterbi decoder, this term can be eliminated without affecting the comparison result. By substituting Equation 5 to Equation 7 and eliminating the z2 term,
Therefore, by combining the soft symbols without multiplying with the normalization factor,
the equivalent branch metric for bits that are transmitted N times becomes
Branch metric=−2ay+Na2. (10)
Thus, no multiplication with √{square root over (N)} is required if y is formed and Equation 10 is used. For QPSK, aε{±1}, and the branch metrics can be simplified further to
Branch metric for QPSK=−ay. (11)
For systems using higher modulation schemes such as 16-QAM and 64-QAM, each one-dimensional symbol corresponds to two or more coded bits. For example, two coded bits are mapped to each dimension of a 16-QAM symbol. For such systems, the bit metric may be computed for each bit rather than the branch metric for one symbol. This way, if only one of the coded bits in a constellation symbol is repeatedly transmitted, the bit metric for that bit can be computed before combining it with the bit metrics of the other bits that are mapped to the same symbol to form the branch metric for that symbol. Even if all the coded bits mapped to a constellation symbol are transmitted the same number of times, bit-metric computation is typically simpler to implement than branch metric computation, albeit with potential performance loss.
The bit metrics can be derived by extending a bit-by-bit linear piecewise approximation approach. For illustration, a 16-QAM bit-to-symbol mapping 500 is shown in
Branch metric=±y. (12)
Extending this to bit metrics, the slope of the bit metric is either +1 or −1 and the constellation points should be placed at Na where aε{±1, ±3} for 16-QAM. The bit metric computation for bits b0 and b1 in a 16-QAM constellation are shown in
BM=(|y|−Nm)sign(b1), (13)
where mε{±2} and N is the number of repeat transmissions. The bits-to-symbol mapping is system dependent. Thus, the sign of a bit metric should be modified accordingly. For example, if one uses another Gray mapping scheme that maps the symbols ±1 to b1=−1 and symbols ±3 to b1=1, the bit metric will become,
BM=−(|y|−Nm)sign(b1). (14)
Similar to the 16-QAM case, one can extend the conventional bit metric computation for a 64-QAM constellation and the piece-wise bit metric for b1 and b2 will be of the form
BM=±(|y|−Nm) (15)
where mε{±2, ±4} and N is the number of repeat transmissions. That is, slicing and linear distances are used for the bit metrics. No multiplications are required to implement the operations because Nm may be implemented using shift-and-add operations in hardware rather than multiplications. This may be simpler to compute than the conventional metrics given in Equations 6 and 10. Given the derivation of a 16-QAM constellation presented in this section, the bit metrics can be derived for larger constellations.
Soft Decoding Metrics for Symbols Transmitted Over Rayleigh Fading Channels
This section derives bit metrics for symbols transmitted over a Rayleigh fading channel. For a constellation symbol x that is transmitted over a Rayleigh fading channel, one can model the received symbol
q=Hx+n, (16)
where H is Rayleigh distributed and n is the AWGN. For a symbol that is transmitted over N independent channels let zk denote the k-th received symbol for k=0, 1, 2, . . . , N−1, and Hk denote the channel response of Rayleigh fading channel k. Then, maximum ratio combining (MRC) can be used to form a combined received symbol. Denoting the combined symbol using MRC as w,
However, as is discussed above in the AWGN case, in order to normalize the noise power, the soft combining metrics should be,
Again, similar to the derivation for Equations 9 and 10, and assuming that the channel estimates at the receiver are perfect, the symbols zk can be demodulated using
and the branch metric expression can be derived to be
After demodulation, the phase rotation effect due to the channel is undone and the I-dimension and Q-dimension of y can be processed separately on a per dimension basis. For QPSK, the branch metric is
Branch metric=−ay. (21)
The bit metric derivation can be extended for higher modulation schemes as described above regarding Equations 12 to 15 for the AWGN channel given in the previous section. That is, the bit metrics for bits transmitted over N Rayleigh fading channels will be of the form
BM=±y (22)
or
BM=±(|y|−
where
and mε{±2} for 16-QAM and mε{±2, ±4} for 64-QAM. Bit metrics for larger constellations can be derived accordingly.
Soft Combining Bit Metrics for BICM
For systems that use bit-interleaved convolutional modulation (BICM) such as the IBOC-FM system, a coded bit at the output of a convolutional encoder may be mapped to different bit positions of a constellation symbol because there is an interleaver between the channel encoder and the bit-to-symbol mapping. For example, g1,0 may be mapped to b0 and ƒ1,0 that corresponds to the same coded bit may be mapped to b1 of a 16-QAM constellation symbol. In this case, the bit metric has to be computed separately by setting N=1. The bit metric corresponding to bit g1,0 is added to that of ƒ1,0 to form the combined bit metric that is used in a Viterbi decoder. To generalize, consider a coded bit q that is mapped to the same bit position, denoted bi, of a constellation symbol that is transmitted N1 times. Suppose that q is also mapped to another bit position bj (i≠j) of a constellation symbol that is transmitted N2 times. Then the N1 received symbols corresponding to the bits that are mapped to bit bi should be combined and the bit metric may be computed with a repeat factor N1, using either Equations 12 and 15 or Equations 22 and 23, depending on the channel. Similarly, the N2 received symbols corresponding to the bits that are mapped to bit bj should be combined to compute the bit metric. The sum of the computed bit metrics is the bit metric for the coded bit q.
A number of embodiments have been described. Nevertheless, it will be understood that various modifications may be made without departing from the spirit and scope of the invention. For example, blocks in the flowchart may be skipped or performed out of order and still produce desirable results. Accordingly, other embodiments are within the scope of the following claims.
This application claims priority to U.S. Provisional Application Ser. No. 60/562,757, filed on Apr. 16, 2004.
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