Error correcting codes are used to automatically detect and correct errors in a received data signal. Generally, a data signal transmitter applies a selected encoding algorithm to a transmitted data signal. A receiver applies an appropriate decoder to determine whether the received signal was corrupted after transmission and to correct any errors detected. Low density parity check (“LDPC”) codes are one of a variety of error correcting codes.
LDPC decoders operate near the Shannon limit. When compared to the decoding of turbo codes, low density parity check decoders require simpler computational processing, and they are more suitable for parallelization and low complexity implementation. Low density parity check decoders are applicable for error correction coding in a variety of next generation communication and data storage systems.
LDPC decoders require simpler computational processing than other error coding schemes. While some parallel low density parity check decoder designs for randomly constructed low density parity check codes suffer from complex interconnect issues, various semi-parallel and parallel implementations, based on structured low density parity check codes, alleviate the interconnect complexity.
Because of their superior performance and suitability for hardware implementation, LDPC codes are considered to be a promising alternative to other coding schemes in telecommunication, magnetic storage, and other applications requiring forward error correction.
A variety of novel techniques for decoding low density parity check (“LDPC”) codes are herein disclosed. The techniques disclosed present a number of advantages over known decoders, for example, embodiments allow for a reduction both in message storage memory and message routing logic. In accordance with at least some embodiments, a decoder comprises a check node unit (“CNU”). The CNU comprises a set of comparators for comparing stored minimum values to a received variable message Q. The total number of comparators in the set is less than the check node degree. A first comparator of the set determines a first minimum value, M1, by comparing a first stored minimum value, M1PS, and the received variable message Q. A second comparator of the set determines a second minimum value, M2, by comparing a second stored minimum value, M1
In other embodiments, a method for decoding a LDPC code comprises comparing a received variable message to a first stored minimum value to determine a new first minimum value. The received variable message is further compared to a second stored minimum value to determine new second minimum value. Indicia of the location of the new first minimum value are also determined. The new first minimum value, the new second minimum value and the indicia of the new first minimum value location are stored in a partial state storage array and provided to produce a message to a variable node.
In other embodiments, an LDPC decoder comprises a plurality of CNU arrays, each array comprising a plurality of CNUs, and each array processing a block row of an LDPC parity check matrix. The CNUs of each array are interconnected to perform a cyclic shift characteristic of the block row processed by the array.
In other embodiments, a method for decoding a LDPC code comprises applying a log-likelihood ratio (“LLR”) as an initial variable message to a check node unit (“CNU”) array. An array of CNUs processes a layer of an LDPC parity check matrix. The CNUs of the array are interconnected, without active routers, to provide incremental shifts in accordance with the number of incremental shifts characteristic of the blocks of the layer.
In other embodiments, an LDPC decoder comprises an R select unit, a Q message first-in first-out (“FIFO”) memory, and a cyclic shifter. The R select unit provides an R message by selecting from a plurality of possible R message values. The Q message memory stores a Q message until an R message is generated by a CNU, the Q message and the R message are combined to provide a P message. The cyclic shifter shifts the P message.
In other embodiments, a method for decoding a LDPC code comprises selecting an R old message from a plurality of possible R old messages based on a message index value and a sign bit. A Q message is delayed in a FIFO memory until a CNU provides an R new message. The new R message and the delayed Q message are summed to produce a P message. The P message is cyclically shifted.
In other embodiments, an LDPC decoder comprises a first R select unit, a Q message generator, and a first cyclic shifter. The first R select unit provides an R message by selecting from a plurality of possible R message values. The Q message generator combines the R message with a P message to produce a Q message. The first cyclic shifter shifts the P message.
In other embodiments, a method for decoding a LDPC code comprises selecting a first R message from a plurality of previously generated R messages based on at least a message index value and a sign bit. A Q message is generated by combining the first R message with a P message. The P message is cyclically shifted.
In other embodiments, an LDPC decoder comprises an array of CNUs that performs block parallel processing. The array processes all the block columns of M, where M≤p, rows in a layer of an LDPC parity check matrix in one clock cycle.
In other embodiments, a method for decoding a LDPC code comprises performing block parallel processing wherein all the block columns of M, where M≤p, rows in a layer of an LDPC parity check matrix are processed in one clock cycle.
Certain terms are used throughout the following description and claims to refer to particular system components. As one skilled in the art will appreciate, entities may refer to a component by different names. This document does not intend to distinguish between components that differ in name but not function. In the following discussion and in the claims, the terms “including” and “comprising” and “e.g.” are used in an open-ended fashion, and thus should be interpreted to mean “including, but not limited to . . . ”. The term “couple” or “couples” is intended to mean either an indirect or direct connection. Thus, if a first component couples to a second component, that connection may be through a direct connection, or through an indirect connection via other components and connections. The term “system” refers to a collection of two or more hardware and/or software components, and may be used to refer to an electronic device or devices, or a sub-system thereof. Further, the term “software” includes any executable code capable of running on a processor, regardless of the media used to store the software. Thus, code stored in non-volatile memory, and sometimes referred to as “embedded firmware,” is included within the definition of software.
In the following detailed description, reference will be made to the accompanying drawings, in which:
The drawings show illustrative embodiments that will be described in detail. However, the description and accompanying drawings are not intended to limit the claimed invention to the illustrative embodiments, but to the contrary, the intention is to disclose and protect all modifications, equivalents, and alternatives falling within the spirit and scope of the appended claims.
I/O port 106 is adapted to detect the signal 116 from transmitter 106 as received via the selected transmission medium. I/O port 116 may include any suitable protocol for receiving encoded signal 116 from transmitter 102. For example, I/O port 106 may incorporate an Ethernet protocol for network based communications or incorporate a wireless protocol, such as IEEE 802.11 or IEEE 802.16. The encoded signal 116 detected by the I/O port 106 is provided to the LDPC decoder 110. The LDPC decoder 110 decodes the encoded signal 116 to extract the signal encoded by the transmitter 102. The LDPC decoder 110 detects and corrects errors introduced into the signal 116 as the signal 116 traversed the channel 118. The LDPC decoder 110 preferably includes on-the-fly computation of LDPC codes as disclosed herein to optimize decoding performance, hardware resource utilization and power consumption.
Processor 112 may be any suitable computer processor for executing code stored in memory 114. Processor 16 controls operations of I/O port 12 by inputting data in the form of coded messages from remote computing system 20. Memory 14 may be any suitable type of storage for computer related data and/or programming which may be, for example, volatile memory elements, such as random access memory (RAM), dynamic random access memory (DRAM), static random access memory (SRAM), or FLASH memory.
Some embodiments of receiver 104 comprise a hardware implementation of the LDPC decoder 110. For example the LDPC decoder 110 may be implemented in an application specific integrated circuit (“ASIC”) or a field programmable gate array (“FPGA”). Some embodiments of receiver 104 may provide the LDPC decoder 110 as software programming executed by processor 112. Some embodiments of receiver 104 may implement the LDPC decoder 110 as a combination of software programming executed by processor 112 and other electronic circuits.
While elements of system 100 are described in terms of data transmission and reception, system 100 is also applicable to other systems. For example, various embodiments may be applied to data storage systems where LDPC encoded data is stored on a storage medium (e.g., a magnetic disk). Thus, in such embodiments, the storage medium is represented by channel 118. Transmitter 102 provides media write systems, and receiver 104 provides media read systems.
LDPC codes are linear block codes described by an m×n sparse parity check matrix H. LDPC codes are well represented by bipartite graphs. One set of nodes, the variable or bit nodes correspond to elements of the code word and the other set of nodes, viz. check nodes, correspond to the set of parity check constraints satisfied by the code words. Typically the edge connections are chosen at random. The error correction capability of an LDPC code is improved if cycles of short length are avoided in the graph. In an (r, c) regular code, each of the n bit nodes (b1, b2 . . . , bn) has connections to r check nodes and each of the m check nodes (c1, c2, . . . , cm) has connections to c bit nodes. In an irregular LDPC code, the check node degree is not uniform. Similarly the variable node degree is not uniform. The present disclosure focuses on the construction which structures the parity check matrix H into blocks of p×p matrices such that: (1) a bit in a block participates in only one check equation in the block, and (2) each check equation in the block involves only one bit from the block. These LDPC codes are termed Quasi-cyclic (“QC”) LDPC codes because a cyclic shift of a code word by p results in another code word. Here p is the size of square matrix which is either a zero matrix or a circulant matrix. This is a generalization of a cyclic code in which a cyclic shift of a code word by 1 results in another code word. The block of p×p matrix can be a zero matrix or cyclically shifted identity matrix of size p×p. The Block LDPC codes having these blocks are referred as QC-LDPC codes. The block of p×p matrix can be a random permutation as in IEEE 802.3 Reed Solomon based LDPC codes. The present disclosure gives examples for QC-LDPC codes and it is straight forward for one skilled in the art to use the same embodiments for other Block LDPC codes with appropriate modification. To enable such modification, embodiments apply a permuter rather than a cyclic shifter.
An array low density parity check parity-check matrix for a regular quasi-cyclic LDPC code is specified by three parameters: a prime number p and two integers k (check-node degree) and j (variable-node degree) such that j,k≤p. This is given by
where I is a p×p identity matrix, and α is a p×p permutation matrix representing a single right cyclic shift (or equivalently up cyclic shift) of I. The exponent of α in H is called the shift coefficient and denotes multiple cyclic shifts, with the number of shifts given by the value of the exponent.
Rate-compatible array LDPC codes (i.e., irregular quasi-cyclic array LDPC codes) are modified versions of the above for efficient encoding and multi-rate compatibility. The H matrix of a rate-compatible array LDPC code has the following structure:
where O is the p×p null matrix. The LDPC codes defined by H in equation (2) have codeword length N=kp, number of parity-checks M=jp, and an information block length K=(k−j)p. A family of rate-compatible codes is obtained by successively puncturing the left most p columns, and the topmost p rows. According to this construction, a rate-compatible code within a family can be uniquely specified by a single parameter, for example, q with 0<q≤j−2. To provide a wide range of rate-compatible codes, j and p may be fixed, and different values for the parameter k selected. Since all the codes share the same base matrix size p; the same hardware decoder implementation can be used. Note that this specific form is suitable for efficient linear-time LDPC encoding. The systematic encoding procedure is carried out by associating the first N-K columns of H with parity bits, and the remaining K columns with information bits.
The block irregular LDPC codes have competitive performance and provide flexibility and low encoding/decoding complexity. The Block LDPC code is defined by a matrix H as:
where Pi,j is one of a set of z-by-z cyclically right shifted identity matrices or a z-by-z zero matrix. Each 1 in the base matrix Hb is replaced by a permuted identity matrix while each 0 in Hb is replaced by a negative value to denote a z-by-z zero matrix. The shift coefficient matrix S for the H matrix of a rate 2/3 irregular LDPC code adopted for the IEEE 802.16e standard is shown in
Considering now offset min-sum decoding of LDPC codes, assume binary phase shift keying (“BPSK”) modulation (a 1 is mapped to −1 and a 0 is mapped to 1) over an additive white Gaussian noise (“AWGN”) channel. The received values y are Gaussian with mean xn=±1 and variance σ2. The reliability messages used in a belief propagation (“BP”)-based offset min-sum (“OMS”) algorithm can be computed in two phases: (1) check-node processing and (2) variable-node processing. The two operations are repeated iteratively until the decoding criterion is satisfied. This is also referred to as standard message passing or two-phase message passing (“TPMP”). For the ith iteration, nm(i) is the message from variable node n to check node m, Rmn(i) is the message from check node m to variable node n, M(n) is the set of the neighboring check nodes for variable node n, and N(m) is the set of the neighboring variable nodes for check node m. The message passing for TPMP based on OMS is described in the following three steps to facilitate the discussion of turbo decoding message passing (“TDMP”) herein below:
Now Equation 5.1 becomes:
Since ∀n∈N(m), δmn(i) takes a value of either +1 or −1 and |Rmn(i)|takes only two values. So, equation (4) gives rise to only three possible values for the whole set Rmn(i)∀n∈N(m). In a VLSI implementation, this property significantly simplifies the logic and reduces the memory.
The sign of check-node message Rmn(i) is defined as:
A hard decision is taken by setting {circumflex over (x)}n=0 if Pn(xn)≥0, and {circumflex over (x)}n=1 if Pn(xn)<0. If {circumflex over (x)}HT=0, the decoding process is finished with {circumflex over (x)}n as the decoder output; otherwise, repeat steps 1-3. If the decoding process doesn't end within predefined maximum number of iterations, itmax, stop and output an error message flag and proceed to the decoding of the next data frame.
In TDMP, an array LDPC with j block rows can be viewed as a concatenation of j layers or constituent sub-codes. After the check-node processing is finished for one block row, the messages are immediately used to update the variable nodes (in step 2, above), whose results are then provided for processing the next block row of check nodes (in step 1, above). The vector equations for TDMP for array LDPC codes assuming that the H matrix has the structure in equation (1) are illustrated first. These equations are directly applicable to all other regular QC-LDPC codes (such as cyclotomic coset based LDPC). For rate compatible array LDPC codes and Block LDPC codes, minor modifications in the vector equations are necessary.
{right arrow over (R)}
l,n
(0)=0,{right arrow over (P)}n={right arrow over (L)}n(0) [Initialization for each new received data frame], (9)
∀i=1,2, . . . ,itmax [Iteration loop],
∀l=1,2, . . . ,j [Sub-iteration loop],
∀n=1,2, . . . ,k [Block column loop],
[l,n(i)]S(l,n)=[{right arrow over (P)}n]S(l,n)−{right arrow over (R)}l,n(i-1) (10)
{right arrow over (R)}
l,n
(i)=ƒ([]l,n′(i))S(l,n′),∀n′=1,2, . . . ,k), (11)
[{right arrow over (P)}n]S(l,n)=[l,n(i)]S(l,n)+{right arrow over (R)}l,n(i), (12)
where the vectors {right arrow over (R)}l,n(i) and l,n(i) represent all the R and messages in each p×p block of the H matrix, and s(l,n) denotes the shift coefficient for the block in ith block row and nth block column of the H matrix. [l,n(i)]S(l,n) denotes that the vector l,n(i) is cyclically shifted up by the amount s(l,n) and k is the check-node degree of the block row. A negative sign on s(l,n) indicates that it is a cyclic down shift (equivalent cyclic left shift). ƒ(⋅) denotes the check-node processing, which embodiments implement using, for example, a Bahl-Cocke-Jelinek-Raviv algorithm (“BCJR”) or sum-of-products (“SP”) or OMS. Some embodiments use OMS as defined in equations (4)-(6). In an embodiment that processes a block row in serial fashion using p check-node units, as in equation (11), the output of the CNU will also be in serial form. As soon as the output vector {right arrow over (R)}l,n(i) corresponding to each block column n in H matrix for a block row l is available, the output vector can be used to produce updated sum [{right arrow over (P)}n]S(l,n) (equation (12)). The updated sum can be immediately used in equation (10) to process block row l+1 except that the shift s(l,n) imposed on {right arrow over (P)}n has to be undone and a new shift s(l+1,n) has to be imposed. This re-shifting can be simply done by imposing a shift corresponding to the difference of s(l+1,n) and s(l,n).
Note that due to the slight irregularity in the array LDPC matrix defined in equation (2), each block row l has a node degree j−l+1. The variable-nodes in each block column n have a node degree equal to min(n,j). One way to simplify implementation is to assume that all the block rows have equal check-node degree and to set the check-node messages corresponding to null blocks in the H matrix to zero in order not to affect the variable-node processing. Similarly, the variable-node messages belonging to the null blocks are always set to positive infinity in order not to affect the check-node processing. For check-node update based on SP or OMS, the message with maximum reliability won't affect the CNU output. In the specific case of OMS, this is easily seen as the CNU magnitude is dependent on the two least minimum.
There are several null blocks in the Block LDPC codes defined by equation (3). So the above method for dealing with irregularity introduces significant idle clock cycles. Some embodiments deal with this check-node irregularity by setting the check-node degrees in a CNU processor unit based on the block row that is being processed. In addition, out-of-order processing is enforced in the generation of R messages as explained below.
The micro-architecture of an embodiment of a serial CNU for OMS is now considered. For each check node m, |Rmn(i)|∀n∈N(m) takes only two values, which are the two minimum of input magnitude values. Since ∀n∈N(m), δmn(i) takes a value of either +1 or −1 and |Rmn(i))|takes only 2 values, equation (4) gives rise to only three possible values for the whole set, Rmn(i)∀n∈N(m). In a very-large-scale integration (“VLSI”) implementation, this property significantly simplifies the logic and reduces the memory.
Cyclic shifters, generally, consume approximately 10%-20% of chip area based on the decoder's parallelization and constitute the critical path of the decoder. If all the block rows are assigned to different computational unit arrays of CNUs and serial CNU processing across block rows is employed, then embodiments use constant wiring to achieve any cyclic shift as each subsequent shift can be realized using the feedback of a previous shifted value. Embodiments thus eliminate both the forward router between CNU and VNU and the reverse router between VNU and CNU. This is possible because block-serial processing is employed and array codes have a constant incremental shift in each block row. For the first block row, the shift and incremental shift is 0. For the second block row, the shifts are [0,1,2, . . . ] and the incremental shift is 1. For the third block row, the shifts are [0, 2, . . . ] and the incremental shift is 2. In this TPMP architecture embodiment, the check node messages in the H matrix are produced block column wise so that all the variable messages in each block column can be produced on the fly. These variable-node messages can be immediately consumed by the partial state computation sub-units in the CNUs. Such scheduling results in savings in message passing memory that is needed to store intermediate messages. The savings in message passing memory due to scheduling are 80%, in some cases, as embodiments need to store only the sign bits of variable node messages. Forward and reverse routers are eliminated, reducing the number of multiplexers required.
CNU array block rows 2 and 3 (406, 408) are composed of dynamic CNUs 300. The variable node processing array 404 is composed of 61 parallel VNU units which can process 3×61 messages at each clock cycle. The sign bits will be stored in a first-in-first-out memory (“FIFO”) (implemented as RAM), however, there is no need to subject these values to shifts as these values are not modified in check node processing partial state processing. In the array 402 of simple serial CNU 200 that is designed to do check node processing for first block row in H matrix, the check node processing for each row in H matrix is done such that all the comparisons are performed locally within one CNU to update the partial state each clock cycle and transfer the partial state to final state d once every cycle.
As shown in
Initially the variable messages are available in row wise as they are set to soft log-likelihood information (“LLR”) of the bits coming from the channel. Q Init 410 is a RAM of size 2N and holds the channel LLR values of two different frames. Q Init 410 can supply p intrinsic values to the VNUs each clock cycle. The data path of the embodiment is set to 5 bits to provide the same bit error rate (“BER”) performance as that of a floating point sum of products algorithm with 0.1-0.2 dB SNR loss. Each iteration takes dc+3 clock cycles. For (3, 30) code this results in 6×33 clock cycles to process each frame when a maximum number of iterations set to 6. For (3, 6) code this results in 20×9 clock cycles to process each frame when the number of iterations is set to 20.
The CNU array 502 is composed of p computation units (CNU 200 described supra) that compute the partial state for each block row to produce the R messages 526 in block serial fashion. The final state of previous block rows, in which the compact information for CNU messages is stored, is needed for TDMP. The final state information is stored in register banks 504. There is one register bank 504 of depth j−1, which is 4 in this example, connected with each CNU 200. Each final state register bank 504 is the same as the final state register bank 226 in the CNU 200. In addition to the shifted Q messages 506, the CNU array 502 takes as input the sign information 508 from previously computed Q messages in order to perform an R selection operation. The R sign bits are stored in sign FIFO 510. The total length of sign FIFO 510 is k and each block row has p one bit sign FIFOs. Embodiments employ j−1 of such FIFO banks 510 in total.
Quantity p R select units 512 are used for generation of R old 516. An R select unit 512 generates the R messages for 25(=edges of a check-node from three possible values stored in a final state register associated with that particular check-node in a serial fashion. Its functionality and structure is the same as the block denoted as R select 216 in CNU 200. The R select unit 512 can be treated as a de-compressor of the check node edge information which is stored in compact form in FS registers 504. The generation of R messages 516 for all the layers in this way amounts to substantial memory savings.
The shifter 514 is constructed as cyclic up logarithmic shifter to achieve the cyclic shifts specified by the binary encoded value of the shift. The logarithmic shifter 514 is composed of log 2(p) stages of p switches. Since cyclic down shift is also needed in the operation of the decoder, cyclic down shift by u can be simply achieved by doing cyclic up shift with p−u on the vector of size p.
The decoding operation proceeds as per the vector equations (9)-(12). In the beginning of the decoding process, P vector 520 is set to receive channel values in the first k clock cycles (i.e. the first sub-iteration) as the channel values arrive in chunks of p, while the output vector 516 of R select unit 512 is set to a zero vector. In some embodiments, the multiplexer array 518 at the input of cyclic shifter 514 is used for this initialization. In other embodiments, a multiplexer at the input of Q message FIFO 524 selects channel values for FIFO storage during initialization.
The CNU array 502 takes the output of the cyclic shifter 514 serially, and the partial state stage 214 operates on these values. After k clock cycles, partial state processing will be complete and the final state stage 212 in CNU array 502 will produce the final state for each check-node in 2 clock cycles. Subsequently, R select unit 216 within each CNU unit 200 starts generating k values of check-node messages in serial fashion. The CNU array 502 thus produces the check-node messages in a block serial fashion as there are p CNUs 200 operating in parallel. The P vector 520 is computed by adding the delayed version of the Q vector (which is stored into a FIFO SRAM 524 until the serial CNU produces the output) to the output vector R 526 of the CNU 502. Note that the P vector 520 that is generated can be used immediately to generate the Q vector as the input to the CNU array 502 as CNU array 502 is ready to process the next block row. This is possible because CNU processing is split into three stages as shown in the pipeline diagrams 6A-6B and partial state stage 214 and final state stage 212 can operate simultaneously on two different block rows. The P message vector 520 will undergo a cyclic shift by the amount of difference of the shifts of the block row that is being processed, and the block row that was last processed. This shift value can be either positive or negative indicating respectively that the cyclic shifter needs to perform an up shift or down shift. The R message 516 is subtracted from the shifted P sum message to produce the shifted version of the Q message 506.
The snapshot of the pipeline of the decoder 500 is shown in
A family of rate-compatible codes is obtained by successively puncturing the left most p. columns and the topmost p rows in the H matrix defined in equation (2) q times. Changing q from 0 to 3(=j−2) gives the code rates of 0.8 to 0.909. Changing k values from 15 to 61 while fixing j=5 results in code rates from 0.666 to 0.91. The FIFO needs to be of maximum depth p as the k can take a maximum value equal to p Note that for Block LDPC codes, the Q FIFO may be replaced with a random access memory of the same size, as shown in
Note that the throughput of the architecture is increased by increasing p of the code, and scaling the hardware accordingly. While the complexity of computational units scales linearly with p, the complexity of the cyclic shifter increases with the factor (p/2)log2 p. So, it is necessary to change the architecture for large values of p. Alternatively it may be desirable to have low parallelization in low throughput applications. To suit this requirement, minor changes in the proposed architecture are necessary. Assume that the desired parallelization is M<p. For ease of implementation, choose M close to a power of 2. The cyclic shifter needed is M×M. Since a p×p cyclic shift is to be achieved with consecutive shifts of M×M, it is necessary for the complete vector of size p to be available in M banks with the depth s=(ceil(p/M)) and shifting is achieved in part by the cyclic shifter, and in part by address generation. In such embodiments, all the CNU and variable node processing is done in a time division multiplexed fashion for each sub-vector of length M, so as to process the vector of size p to mimic the pipeline in
An M×M permuter (i.e., cyclic shifter) 714 is used as described above. As explained, shifting of the vector P is accomplished by a combination of permuter 714 shifts and addressing of P buffer 718.
{right arrow over (R)}
l,n
(0)=0,{right arrow over (P)}n={right arrow over (L)}n(0) [Initialization for each new received data frame], (13)
∀i=1,2, . . . ,itmax [Iteration loop],
∀l=1,2, . . . ,j [Sub-iteration loop],
∀n=1,2, . . . ,k [Block column loop],
[]S(l,n)=[{right arrow over (P)}n]S(l,n)−{right arrow over (R)}l,n(i-1), (14)
{right arrow over (R)}
l,n
(i)=ƒ([]S(l,n),∀n′=1,2, . . . ,k), (15)
{right arrow over (P)}
n
={right arrow over (P)}
n
+[{right arrow over (R)}
l,n
(i)
−{right arrow over (R)}
l,n
(i-1)]−S(l,n′), (16)
where the various terms are as defined in regard to equations (9)-(12) above. The decoder 800 is illustrated as configured for the same code used to illustrate decoder 500, a regular array code of length 1525 described by equation (1), j=5, k=25 and p=61.
Decoder 800 includes a CNU array 502 and a sign FIFO array 510 as described above in regard to decoder 500. The final state array 804 is similar to array 504, but includes five rather than 4 register banks. Two R select units 812, 813 are included as are a cyclic down shifter 814 and a cyclic up shifter 815. The R select units 812, 813 are functionally equivalent to R selector 512 described above. Sign FIFO 824 delays application of sign bits to R select unit 813. In accordance with equation (14), shifted Q message 806, input to CNU array 502, is produced by subtracting the R old message 816 provided by the R selector unit 812 from the P message 820 shifted by the cyclic up shifter 815. The P message 820 is constructed by adding the difference of the R new message 826 from the CNU array 502 and the R prev message 832 provided by R selector unit 813 shifted by cyclic down shifter 814 to the P message 828 provided by P memory 830.
At the beginning of the decoding process, multiplexer 518, coupled to the input of the P memory 830, is set to provide channel values to P memory 830. The channel values serve as initial P messages to initialize the decoder 800.
{right arrow over (R)}
l,n
(0)=0,{right arrow over (P)}n={right arrow over (L)}n(0) [Initialization for each new received data frame], (17)
∀i=1,2, . . . ,itmax [Iteration loop],
∀l=1,2, . . . ,j [Sub-iteration loop],
∀n=1,2, . . . ,k [Block column loop],
[]S(l,n)=[{right arrow over (P)}n]S(l,n)−{right arrow over (R)}l,n(i-1), (18)
{right arrow over (R)}
l,n
(i)=ƒ([]S(l,n′),∀n′=1,2, . . . ,k), (19)
[{right arrow over (P)}n]S(l,n)=[{right arrow over (P)}n]S(l,n)+Rl,n(i)−Rl,n(i-1) (20)
where the various terms are as defined in regard to equations (9)-(12) above. The decoder 900 is illustrated as configured for the same code used to illustrate decoders 500 and 800, a regular array code of length 1525 described by equation (1), j=5, k=25 and p=61. Decoder 900 includes a CNU array 502 and a sign FIFO array 510 as described above in regard to decoder 500. The final state array 804, R select units 812, 813, cyclic shifters 814, 815, and sign FIFO 824 are as described above in regard to decoder 800. In accordance with equation (18), shifted Q message 906, input to CNU array 502, is produced by subtracting an R old message 932 provided by the R selector unit 812 from the shifted P message 920. The P message 920 is constructed (equation (20)) by adding the difference of the R new message 926 from the CNU array 502 and the R prev message 916 provided by R selector unit 813 to the P message provided by P memory 830 shifted by cyclic up shifter 900. The decoder 900 is initialized by selecting channel values for storage in P memory 830 using multiplexer 518 as described above in regard to decoder 800.
For the irregular block LDPC codes, the TDMP algorithm can be described with equations (21)-(24):
{right arrow over (R)}
l,n
(0)=0,{right arrow over (P)}n={right arrow over (L)}n(0) [Initialization for each new received data frame], (21)
∀i=1,2, . . . ,itmax [Iteration loop],
∀l=1,2, . . . ,j [Sub-iteration loop],
∀n=1,2, . . . ,k [Block column loop],
[]S(l,n)=[{right arrow over (P)}n]S(l,n)−{right arrow over (R)}l,n(i-1), (22)
{right arrow over (R)}
l,n
(i)=ƒ([]S(l,n′),∀n′=1,2, . . . ,k), (23)
[{right arrow over (P)}n]S(l,n)=[]S(l,n)+{right arrow over (R)}l,n(i), (24)
where the vectors {right arrow over (R)}l,n(i) and represent all the R and Q messages in each non-zero block of the H matrix, s(l,n) denotes the shift coefficient for the ith block row and nth non-zero block of the H matrix (note that null blocks in the H matrix need not be processed); [{right arrow over (R)}l,ni-1]S(l,n) denotes that the vector {right arrow over (R)}l,ni-1 is cyclically shifted up by the amount s(l,n), and k is the check-node degree of the block row or the layer. A negative sign on s(l,n) indicates that it is cyclic down shift (equivalent cyclic left shift). ƒ(⋅) denotes the check-node processing, which can be performed using BCJR, SP or MS.
To accommodate the irregularity in block LDPC codes, the R selection unit for selecting R old ({right arrow over (R)}l,n(i-1) in equation (22)) and partial state processing are executed in linear order for the current layer (i.e. first non-zero block, second non-zero block, etc. in a layer). The order of R generation for R new processing ({right arrow over (R)}l,n(i) in equation (23)), however, is determined by the non-zero blocks of the next layer to be processed because in equation (22) of the next layer is dependent on [{right arrow over (P)}n] in equation (24) of the last layer that is updated (this is not necessarily the previous layer in the H matrix because of the irregularity of the H matrix) which in turn depends on {right arrow over (R)}l,n(i) in equation (23) of the previous layer. Furthermore, since the check node degree of each layer in Irregular Block codes may vary widely, it is not efficient to process each layer for a number of clock cycles equal to the maximum check-node degree. Additionally, data dependencies may necessitate that the processing of the next layer be stalled. To address these inefficiencies, embodiments apply out-of-order processing on R new generation. The R select unit for R new may operate on any of the previous layers. R generation is independent of PS or FS processing, so, out-of-order R message generation imposes no any additional restriction on the architecture.
Based on the desired hardware implementation objectives, for example, the number of pipeline stages required in a hardware implementation without stall cycles and/or reducing the number of memory accesses, embodiments optimize the processing order of the layers in the H matrix. Such processing is referred to as reordering of layers. In an H matrix having 8 layers, there are factorial of 8 combinations to choose for the processing order. Embodiments generate a permutation such that two adjacent layers have many independent circulants and then generate the decoder scheduling parameters and determine if the desired processing objective is met. If the desired processing objective is not met, embodiments continue testing another permutation. A good optimized layer sequence is generally determined within the first 1000 or a limited set of trails. Note that reordering the H matrix does not change the LDPC code specification, thus, embodiments can decode data that is encoded by the original H matrix.
Embodiments first extract several code related parameters that aid in scheduling the decoding process. These parameters may be extracted from the S matrix, the H matrix or the base matrix Hb. Some embodiments use the base matrix Hb and the S matrix to obtain the following parameters. Based on the desired objectives (e.g., reducing pipeline stalls), embodiments optimize the processing order of the layers in the H matrix. For each ordering, embodiments generate the following parameters and see if the desired objective is met.
Check node degree of each layer in H matrix: This is defined as the number of entries in the corresponding row of S matrix, whose value is not equal to −1. This also can be defined as the number of non-zero entries in the corresponding row of the Hb matrix as shown in below equation (25),
Variable node degree of each block column in H matrix: This is defined as the number of entries in the corresponding column of the S matrix, whose value is not equal to −1. This also can be defined as the number of non-zero entries in the corresponding column of the Hb matrix as shown below in equation (26),
Circulant size, z: The size of the block or sub-block or circulant in the H matrix.
Block Number, bn: Each non-zero circulant in each layer of the H matrix is identified with a unique number.
Circulant Index, ci: Each non-zero circulant in the entire H matrix is identified with a unique number.
Block column bc: This is the block column of the specified non-zero circulant in the H matrix.
Dependent layer dl: This is the layer that supplies the last updated information of P message to the specified non-zero circulant.
Dependent non-zero circulant is the non-zero circulant that supplies the last updated information of P message to the specified non-zero circulant. The specified and the dependent circulant share the same block column.
Dependent block db: This is the block number of the non-zero circulant in the dependent layer (DL) that supplies the last updated information of P message to the specified non-zero circulant.
Dependent Circulant Index dci: This is the circulant index of the non-zero circulant in the dependent layer (DL) that supplies the last updated information of P message to the specified non-zero circulant.
Shift Matrix sm: This is the shift coefficient of the specified non-zero circulant.
Delta Shift Matrix dsm: This is the delta shift coefficient of the specified non-zero circulant. Delta Shift Matrix is equal to the difference of the sm of the specified non-zero circulant and sm of the dependent non-zero circulant.
Use Channel Value Flag ucvf: This is the flag of the specified non-zero circulant. If this flag is 1, it indicates that this is the first non-zero circulant that is updated in its block column bc. If this flag is 1 and the iteration is the first iteration, then the specified non-zero circulant gets the channel LLR value as a P message. In other cases, the non-zero circulant gets an updated P message from other non-zero circulants in its block column.
The matrices for the above variables for the complete H matrix are denoted with capital and italics of the same name. Note that some of the matrices need not be stored for some decoder configurations and decoder schedules. Embodiments apply the correction on variable node messages Q and the correction factor for each circulant is based on check node degree and variable node degree. These correction factors are stored in a matrix BETA that is indexed by check node degree and variable node degree of the specified circulant.
The following pseudo-code shows embodiments of 3 algorithms for extracting scheduling parameters from a given H matrix specified by the matrices S and Hb.
The matrix CI_temp are initialized to zero matrices of size Mb×dcmax. Due to the irregularity in check node degree (i.e., when dc(l)<dcmax), some of the last entries in some of the rows in these matrices remain at zero. As an example, B(i,j) represents the value in the B matrix at ith row and jth column.
Embodiments also extract the Use Channel Value Flag (UCVF).
The following are the parameters of the circulant 1508 marked with the circle (denote this as the specified circulant):
Referring now to
An embodiment can reorder block processing such that while processing layer 2, the blocks of layer 2 which depend on layer 1, for example block 1104, will be processed last to allow for latency in the processing pipeline. Thus, in regard to code 1100, the pipeline latency can be up to five without requiring the introduction of stall cycles which would impact throughput. The decoder scheduling parameters that facilitate the decoder functionality for the out of order PS processing and out of order R selection (referred to herein as “schedule 2”) are listed in
For implementations in which a pipeline depth greater than five is desirable, considering again code 1100, an embodiment can reorder the layers first as shown in
Embodiments obtain improved schedules by reordering based on other criterion and other matrices as well. For example, examination of the DL matrix of
As an illustration of above scheduling schemes, consider the following scenarios:
For cases in which a pipeline depth greater than six is desirable, considering again code 1100, an embodiment can process the blocks of layer 3 and higher layers that are independent of layers one and two. When the result from layer one is available, an embodiment can process the blocks in layers two and three that are dependent on layer one. When layer two results are also available, an embodiment can complete processing of layer three blocks dependent on layer 2. Thus embodiments perform out-of-order processing at the block level and process the independent blocks. Because embodiments partially process multiple layers partial state memory should be sized to accommodate the number of layers processed.
It is not possible to achieve cyclic shifts specified by s(l,n),(=0,1, . . . z−1) on a vector of length z with a cyclic shifter of size M×M if M is not an integer multiple of z. So, to accommodate the different shifts needed for WiMax LDPC codes, embodiments use a Benes network, which is of complexity 2 log 2(M)−1 stages of M 2-in-1 multiplexers. In some embodiments, a memory can be used to store control inputs needed for different shifts if supporting one expansion factor. The memory for providing control signals to the network is equal to
bits for every shift value that needs to be supported.
This results in a large memory requirement to support all the WiMax codes. To avoid the control memory requirement, embodiments employ a cyclic shifter constructed as a Master-slave Benes network to accommodate 114 different parity check matrices in run time for IEEE 802.16e. This approach eliminates the control memory requirements by generating the control signals for the slave data router with the help of a self routing master network. Note that the control memory savings are specific to an IEEE 802.16e decoder.
The following set of equations provide more details as to how equations (21)-(24) are processed in the decoder 1200. of
The TDMP can be described with the following equations:
old = s(bc);
new = Pnew_shifted − Rold
s(bc) = new;
mag = max(abs(Qnew) − β,0);
sign(bc) = sign(Qnew);
When the decoder 1200 processing starts for a received code word, the Qs memory 1224 is initialized with the channel LLR values as in (29). The processing is generally done from layer 1 to layer Mb and the variable l keeps track of which layer is being processed. However, to improve decoder 1200 efficiency, the layers of the H matrix are processed in a different order. The H matrix is reordered and all the decoder scheduling parameters are generated as explained in the previous sections for scheduling parameter generation. Note that this decoder 1200 structure supports out-of-order processing for R new messages, out-of-order processing for PS processing, and layer reordering.
The variable n keeps track of the number of circulants that are processed in each layer. If there is no out-of-order block processing of circulants (for PS processing), then bn=BN(l,n)=n; (i.e. in the nth clock of processing layer l, circulant with block number n). If there is out-of-order block processing of circulants (for PS processing), then bn=BN(l,n); (i.e. in the nth clock of processing layer l, circulant with block number indexed by BN(l,n) is processed). The equation (30a) loads the dc value of the layer that is being processed. The equations in (30b) initialize the partial state registers M1PS,M2PS,CSPS. The set of equations in (31) load the parameters for each circulant that need to be processed. Generally, these scheduling parameters are generated using a computer (e.g., a PC or workstation), or an embedded processor coexisting with the decoder on the same or a different integrated circuit. The computer or embedded processor executes a software embodiment of the parameter extraction algorithm and the required decoding schedule to produce the scheduling parameters. The generated schedule is loaded into decoder memory, for example Read Only Memory (“ROM”) or Random Access Memory (“RAM”). All of the scheduling parameters in matrices that are indexed by (l,n) are converted into vectors indexed by ((l−1)·DC(l)+n) after removing any invalid entries in each row of the matrix and are stored in decoder memory. However, for clarity, scheduling parameters are shown as accessed using two indices l and n.
The equation (32) represents a simple selection of a required shift coefficient based on the variable ucvf. All the other equations (33-47) are vector operations. The equation (35) represents the P update. The equation (36) represents the shift operation performed on the P message. The equation (38) represents the Q update. The equation (40) represents the correction operation on Q message. The set of equations (42-44) represent the check node partial state processing of finding M1PS,M2PS,Min_idPS,CSPS. The CSPS represents the cumulative XOR of sign messages of the Q messages processed so far in each row for all the rows in each layer. The CSFs represents the cumulative XOR of sign messages of the all the Q messages in each row for all the rows in each layer. The equations (33) and (37) represent the R new message processing and R old message processing respectively.
The decoder 1200 comprises internal memories to store the internal results or processing. The Q memory 1224 may be double buffered, thus enabling reception of an incoming code word while the decoder 1200 is processing another code word. Equations (29), (34) and (39) represent the read and write operations on Q memory 1224. The FS memory 1204 stores the FS message for all the layers. Equation (47) represents the write operation to FS memory 1204 (note that there is only one write operation per clock cycle). In equation (37), FS(l) represents the read operation from FS memory 1204 to access FS old message 1220 (FS message of the layer of the previous iteration). Note that there is only one read access for each layer as the read address is l inside each sub-iteration loop/layer processing loop.
The decoder contains a separate hard decision memory HD memory which is not shown in 1200. The hard decision bits are the sign bits of P message. The HD memory may also be double buffered, thus enabling processing of the incoming code while sending the decoder decisions to the output interface. The HD memory may have more than two buffers, thus enabling statistical processing of the incoming code words to provide a constant average throughput. This enables the decoder to buffer the hard decisions of the frames that were previously decoded. Since the output interface expects the frames in the same order as they are fed in at the input interface, the HD memory buffers the frames that were processed out-of-order and sends them in-order.
The Q memory 1224 may have more than two buffers, thus enabling statistical processing of the incoming code words to provide a constant average throughput. The incoming code words may differ in the number of errors contained, so the decoder may need a different number of iterations for each frame based on its quality. Allocation of the maximum number of LDPC decoder iterations for each frame can be chosen based on the number of failing LDPC check node constraints in the received frame.
When the LDPC decoder is used as part of an iterative detector in combination with an Inter-Symbol Interference (“ISI”) detector, the Q memory can be used to buffer the Channel LLRs from the ISI detector, Extrinsic messages from the LDPC decoder, and to serve as internal storage for the LDPC decoder's Q messages. Statistical buffering can be applied in this case also. In addition to the Q memory and HD memory, the input memory to the ISI detector is also statistically buffered. The input memory to the ISI detector stores the received samples from the previous block in the receiver chain, for example, a Finite Impulse Response filter. Since both the ISI detector the LDPC decoder work in an outer loop called global iteration, the statistical buffering of Q memory and input memory to the ISI detector would be on the same frames that are not yet decoded or not yet fully decoded (i.e., some of the frames are processed already, however they have not yet converged so further iterations are necessary). The statistical buffering of HD memory is to enable keeping the frames that are already decoded.
In decoder 1200, out-of-order processing for R new message generation is employed. In equation (33) FS(dl) represents the read operation from FS memory to access FS new message 1218 (FS message of the dependent layer of the currently processed circulant). Note that there can be as many as dc read accesses for each layer as the read address is dl inside each sub-iteration and each layer can have as many as min(dc,Mb) dependent layers.
The Q sign memory 1310 stores the signs 1308 of all the Q messages of all the circulants in the H matrix. The equation (59) represents the write operation to Q sign memory and the equation (67) represents the read operation from Q sign memory while generating the R new messages 1326. In decoder 1300, equation (55) is not needed because we are not storing the R old messages 1316.
The following set of equations provides more details as to how equations (21)-(24) are processed in the decoder 1300 of
new = Pnew_shifted − Rold
s(n) = new;
mag = max(abs(new) − β,0);
sign(bc) = sign(new);
old = s(n);
When the decoder 1300 processing starts for a received code word, the P memory 1330 is initialized with the channel LLR values as in equation (48). The processing is generally done from layer 1 to layer Mb and the variable l keeps track of which layer is being processed. However, to improve decoder 1200 efficiency, the layers of the H matrix are processed in a different order. The H matrix is reordered and all the decoder scheduling parameters are generated as explained in the previous sections for scheduling parameter generation. Since out-of-order processing for R new messages is not employed in the decoder 1300, there is no need for scheduling parameters DCI, DB, or DL. Note that the decoder 1300 supports out-of-order processing for PS processing and layer reordering.
The variable n keeps track of the number of circulants that are processed in each layer. If there is no out-of-order block processing of circulants (for PS processing), then bn=BN(l,n)=n; (i.e., in the nth clock of processing layer l, circulant with block number n). If there is out-of-order block processing of circulants (for PS processing), then bn=BN(l,n); (i.e., in the nth clock of processing layer l, circulant with block number indexed by BN(l,n) is processed). The equation (49a) loads the dc value of the layer that is being processed. The equations in (49b) initialize the partial state registers M1PS,M2PS,CSPS. The set of equations in (50) load the parameters for each circulant that needs to be processed. Generally, these scheduling parameters are generated using a computer (e.g., a PC or workstation), or an embedded processor coexisting with the decoder on the same or a different integrated circuit. The computer or embedded processor executes a software embodiment of the parameter extraction algorithm and the required decoding schedule to produce the scheduling parameters. The generated schedule is loaded into decoder memory, for example Read Only Memory (“ROM”) or Random Access Memory (“RAM”). All of the scheduling parameters in matrices that are indexed by (l,n) are converted into vectors indexed by ((l−1)·DC(l)+n) after removing any invalid entries in each row of the matrix and are stored in decoder memory. However, for clarity, scheduling parameters are shown as accessed using two indices l and n.
The equation (51) represents a simple selection of a required shift coefficient based on the variable ucvf. All the other equations (52-70) are vector operations. The equation (69) represents the P update. The equation (53) represents the shift operation performed on the P message. The equation (56) represents the Q update. The equation (58) represents the correction operation on the Q message. The set of equations (60-63) represent the check node partial state processing of finding M1PS,M2PS,Min_idPS,CSPS. The CSPS represents the cumulative XOR of signs of the Q messages processed so far in each row for all the rows in each layer. The CSFs represents the cumulative XOR of signs of the all the Q messages in each row for all the rows in each layer. The equations (54) and (67) represent the R new message processing and R old message processing.
The decoder 1300 comprises internal memories to store the internal results of processing. The P memory 1330 may be double buffered, thus enabling reception of an incoming code word while the decoder 1300 is processing another code word. Equations (48), (52) and (70) represent the read and write operations on P memory 1330. Note that in a hardware implementation all the vector processing in the set of equations from (66)-(70) are done on the previously processed layer while the set of equations (52)-(65) are done on the currently processed layer l. Note further that the read operation of equation (52) may create a conflict if the write operation of equation (70) to the same block column in the previously processed layer is not complete. Such read before write conflicts may be handled through insertion of stall cycles. However, embodiments employ a better solution by applying out-of-order processing on PS processing (as in schedule 2 which provides 5 pipeline stages without any stall cycles), and in layer reordering and out-of-order processing on PS processing (as in schedule 3 which provides 6 pipeline stages without any stall cycles).
The FS memory 1304 stores the FS message for all the layers (“m” in
The Q FIFO 1324 stores the Q messages 1306 that are sent as inputs to the CNU 1302 and stores them till the CNU processing is complete. Equation (57) represents the write to the Q FIFO 1324 and equation (68) represents the read from Q FIFO 1324.
In decoder 1300, out-of-order processing for R new message 1326 generation is not employed. So there are no read accesses for FS memory 1304 in this decoder configuration for the R new message 1326 generation. The R new messages 1326 are generated in-order as is done in the layered decoder 500 of
The Q sign memory 1310 stores the signs 1308 of all the Q messages of all the circulants in the H matrix. The equation (41) represents the write operation to Q sign memory and the equation (33) represents the read operation from Q sign memory while generating the R new messages 1326. In decoder 1300, equation (55) is not needed because we are not storing the R old messages 1316.
The set of equations (48)-(65) and the set of equations below provide more details as to how equations (21)-(24) are processed in the decoder 1400 of
When constructing the LDPC code matrix itself, layer ordering and block ordering requirements can be taken into account. Independence between adjacent layers can be maximized so that while processing the current layer, the next layer has few dependencies on the current layer.
Some embodiments use scheduled layered approximation as described herein below. In the case of regular LDPC codes with no null matrices, it is not possible to gain any benefit from out-of-order block processing in the block serial decoder 500 of
The semi-parallel decoder architecture, as shown in
The disclosed decoder architecture can be accelerated by further pipelining. The data path may be pipelined at the stages of CNU (2 stages), P computation, Q subtraction, R select units. Memory accesses may be assigned 2 clock cycles. In some embodiments, a pipeline depth of 10 is employed to achieve a target frequency of 400 MHz. Pipelining, however, incurs additional complexity to the decoder. Note in the above case, the logic pipeline depth is about 5 and the pipeline depth related to memory accesses is 5. Whenever the computation of a layer is started, the decoder needs to wait until the pipeline processing of a previous layer is complete. This incurs a penalty of clock cycles equal to the number of hardware pipeline stages for logic which is denoted as V. In the above example, V is 5. To avoid the 5 stall cycle penalty due to memory accesses, some embodiments employ a result bypass technique with local register cache+prefetching for P and hard decision bits and a pre-fetching technique for FS and Qsign memories (or equivalently pre-execution for R old). As a result, the penalty for each iteration measured in number of clock cycle is
This can be significant penalty on throughput if V is not small compared to ceil(p/M).
Code Design Constraint: The maximum logic pipeline depth NPmax that can be achieved without any stall cycle penalty can be computed for the quasi-cyclic codes as follows. As mentioned earlier, the pipeline depth needed for distant memory access can be dealt with the bypass technique/result forwarding using local register cache-so embodiments need not worry about number of pipeline stages needed in the communication between memories and logic. Some embodiments employ pipelining of no more than 6 to 10 stages for the memory communication as local register cache overhead proportional to the number of memory pipeline stages is provided. If the shifts on the p×p block are specified as left cyclic shift (down cyclic shift):
ΔSm,n=shift_diff(s(m,n)−s(m_prev,n))∀m=1,2 . . . j;n=1,2 . . . k.
If the shifts on the p×p block are specified as right cyclic shift (up cyclic shift):
ΔSm,n=shift_diff(s(m_prev,n)−s(m,n))∀m=1,2 . . . j;n=1,2 . . . k.
Assuming that the layers are numbered from 1 to j, if the current layer is m, denote the next layer to be processed as m_next and the layer that was processed before layer m as m_prev. Because the layers are processed in a linear order in a block parallel layered decoder, m_prev and m_next can be given as follows. Note that for block serial decoders, the layers may be processed in a reordered fashion.
m_prev=m−1 if m>1
m_prev=j if m=1
m_next=m+1 if m<j
m_next=1 if m=j
shift_diff(x,y)=x−y if x≥y
shift_diff(x,y)=x−y+p if x<y
Assuming that the desired parallelization M is 1:
NP
m,n
=ΔS
m,n−1 if ΔSm,n>0
NP
m,n
=p if ΔSm,n=0
For the general case of 1≤M≤p, the above equations can be written as:
The number of stall cycles while processing a layer m can be computed as follows:
NS_LAYERm=min(v−NP_MAX_LAYERm,0)
If v is less than or equal to NP_MAX, then there are no stall cycles and the number of clock cycles per each iteration is given by:
Calculation of Pipeline Depth for option 1, general permutation matrices, and random LDPC codes: Num_Last_Overlapped_rowsm=Number of independent rows in the current layer m, which does not depend on the last Np rows of the previous layer m_prev. Assuming that the desired parallelization M is 1:
NP_MAX_LAYERm=Num_Last_Overlapped_rowsm
For the general case of 1≤M≤p, the above equations can be written as
If v is less than or equal to NP_MAX, then there are no stall cycles and the number of clock cycles per each iteration is given by:
Given the above equations, the LDPC codes may be designed such that NP_MAX is equal to or greater than the desired NP_MAX. For array codes specified with the permutation blocks with the right (up) cyclic shift, the NP_MAX is given as
Re-ordering of rows with in a layer for Option 2: If the code is not designed to satisfy the pipeline constrain in option 1, as is the case of 10-GB LDPC codes, 802.11n and 802.16e LDPC codes, embodiments may apply a shift offset to each layer such that NP_MAX is maximized. So essentially all the rows in each layer may be re-ordered subject to the constraint that each block in the matrix still has groups of M rows for the ease of parallelization. As an example, consider the array codes specified with the permutation blocks with the left (down) cyclic shift. NP_MAX=0. However, a shift offset of down shift of p on all the blocks in all the layers will make it the same as array code with the permutation blocks with the right (up) cyclic shift for decoding purposes. In this case, the relevant equations listed for QC-LDPC codes in the above paragraphs show that
However because of reordering due to shift offset, the P values from the buffer have to be read in a fashion accounting for the re-ordering.
Because the check node degree can vary for different mother matrices, to provide the same level of throughput at different check node degrees, embodiments can process a variable number of rows for different mother matrices. Accordingly, the CNU (as discussed herein) can be highly configurable with varying number of inputs. For instance to, support the mother matrices with (dc=40 and dc=20) with edge parallelization of 400, the CNU can selectably process 10 rows in one clock cycle corresponding to dc=40 and 20 rows in one clock cycle corresponding to dc=20. A decoder may include 20 parallel CNUs with number of inputs that is equal to 20. In the case of split processing, a decoder may include 40 parallel CNUs with number of inputs equal to 10 to support the same edge parallelization throughput requirement and to support odd and even block column processing.
Some embodiments provide more reconfigurability: for instance to support the mother matrices with (dc=36, dc=24 and dc=12) with edge parallelization of 216, an embodiment can process 6 rows in one clock cycle corresponding to dc=36; 9 rows in one clock cycle corresponding to dc=24; 18 rows in one clock cycle corresponding to dc=12. Accordingly, a decoder may include 18 parallel CNUs with number of inputs equal to 12. To support mother matrices with dc less than 36 and above 24, an embodiment can process only 6 rows leading to reduced edge parallelization. To support mother matrices with dc less than 24 but above 12, an embodiment can process 9 rows leading to reduced edge parallelization. To support mother matrices with dc less than 12, an embodiment can process 18 rows leading to reduced edge parallelization.
The block serial decoder architecture (e.g., as shown in
Similarly,
Embodiments may apply any of a variety of LDPC Min-Sum Correction Methods. The different correction methods disclosed herein are suitable for efficient hardware implementation for regular and irregular codes for the min-sum decoding algorithm.
While illustrative embodiments of this invention have been shown and described, modifications thereof can be made by one skilled in the art without departing from the spirit or teaching of this invention. The embodiments described herein are illustrative and are not limiting. Many variations and modifications of the methods and apparatus are possible and are within the scope of the invention. Generally, embodiments encompass any system incorporating forward error correction. Accordingly, the scope of protection is not limited to the embodiments described herein, but is only limited by the claims which follow, the scope of which shall include all equivalents of the subject matter of the claims.
This application is a continuation of U.S. patent application Ser. No. 17/744,576, filed May 13, 2022, titled “Low Density Parity Check Decoder,” which is a continuation of U.S. patent application Ser. No. 17/084,564, filed Oct. 29, 2020 (now U.S. Pat. No. 11,368,168), titled “Low Density Parity Check Decoder,” which is a continuation of U.S. patent application Ser. No. 15/373,822, filed Dec. 9, 2016 (now U.S. Pat. No. 10,951,235), titled “Low Density Parity Check Decoder,” which is a continuation of U.S. patent application Ser. No. 14/792,982, filed Jul. 7, 2015 (now U.S. Pat. No. 10,141,950), titled “Low Density Parity Check Decoder,” which is a continuation of U.S. patent application Ser. No. 14/141,508, filed Dec. 27, 2013 (now U.S. Pat. No. 9,112,530), titled “Low Density Parity Check Decoder,” which is a continuation of U.S. patent application Ser. No. 13/693,650, filed Dec. 4, 2012 (now U.S. Pat. No. 8,656,250), titled “Low Density Parity Check Decoder for Regular LDPC Codes,” which is a continuation of U.S. patent application Ser. No. 12/113,729, filed May 1, 2008 (now U.S. Pat. No. 8,359,522), titled “Low Density Parity Check Decoder for Regular LDPC Codes,” which claims priority from U.S. provisional patent application Ser. No. 60/915,320, filed May 1, 2007 and U.S. provisional patent application Ser. No. 60/988,680, filed Nov. 16, 2007. The disclosures of said applications are hereby incorporated herein by reference in their entireties.
Number | Date | Country | |
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60988680 | Nov 2007 | US | |
60915320 | May 2007 | US |
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Parent | 17744576 | May 2022 | US |
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Parent | 17084564 | Oct 2020 | US |
Child | 17744576 | US | |
Parent | 15373822 | Dec 2016 | US |
Child | 17084564 | US | |
Parent | 14792982 | Jul 2015 | US |
Child | 15373822 | US | |
Parent | 14141508 | Dec 2013 | US |
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Parent | 13693650 | Dec 2012 | US |
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Parent | 12113729 | May 2008 | US |
Child | 13693650 | US |