1. Field of the Invention
The invention relates generally to low density parity check decoders.
2. Background Information
Low density parity check (LDPC) codes are a class of linear error correction codes (ECCs) that can be decoded efficiently with iterative decoders. The decoders can be represented by Tanner graphs, in which variable nodes that correspond to code word symbols, or vectors of symbols, and parity constraint nodes that correspond to parity constraints are interconnected by edges that represent the inclusion of the code word symbols in the respective parity constraints. The LDPC codes can be referred to by variable node degree distributions, which relate to the number of edges connecting to the respective variable nodes. For example, a code may have a variable node degree distribution in which x percent of the variable nodes are degree three and 100-x percent are degree four. The degrees of the respective variable nodes in the example indicate that corresponding code word symbols are associated with three or four parity constraints. An LDPC code has a higher variable node degree distribution if it has a larger number of higher degree variable nodes.
The parity constraint nodes are also denoted by degrees, which indicate the number of code word symbols that are included in associated parity check equations. The LDPC code could instead be represented by a parity check H matrix.
When contrasted with other linear ECCs, such as Reed Solomon codes, the LDPC codes have good dB performance, that is, perform well in low signal-to-noise situations. However, the LDPCs also have relatively high error floors, or sector failure rates, that remain relatively constant even at higher signal-to-noise ratios. In the channels of interest, error floors are lower for LDPC codes that have higher degree variable nodes. There is thus a trade off involve in optimizing either for better dB performance or lower error floors. Generally, data storage systems must meet prescribed sector failure rate minimums, and the LDPC codes are selected based on their error floors. The same trade off occurs with respect to the burst error correction capabilities of the LDPC codes.
A decoding system comprises an iterative decoder that is characterized by a plurality of variable nodes and a plurality of parity constraint nodes, and a processor that at respective iterations disables one or more selected parity constraint nodes to operate the iterative decoder with a selected variable node degree distribution code and at other iterations enables one or more of the selected parity constraint nodes to operate the iterative decoder with one or more higher variable node degree distribution codes.
A decoding method comprises the steps of disabling one or more selected parity constraint nodes and operating an iterative decoder with a selected variable node degree distribution code, performing a number of iterations, enabling one or more of the selected parity constraint nodes and operating the iterative decoder with one or more higher variable node degree distribution codes.
A decoding system comprises an iterative decoder that utilizes parity constraints to iteratively decode a block of data that consists of multiple code words, and a processor that controls the iterative decoder to selectively remove a subset of the parity constraints for a number of decoder iterations and include one or more of the selectively removed parity constraints in other decoder iterations.
The invention description below refers to the accompanying drawings, of which:
Referring to
The LDPC decoder 104, under the control of the processor 106, performs up to a predetermined number of decoder iterations using the selected variable node degree distribution LDPC code. If the code word data do not converge, the decoder supply updated soft information to the detector 102. The detector then operates in a known manner to further update the soft information and provide the further updated information to the decoder 104.
The processor controls the LDPC decoder 104, such that the decoder performs a predetermined number of further decoder iterations using the same selected variable node degree distribution LDPC code or, as appropriate, one or more different variable node degree distribution LDPC codes. If the code word data still do not converge, the decoder may again supply updated soft information to the detector, which repeats its detecting and updating operations and supplies the results to the decoder. The processor 106 then determines the variable node degree distribution of the LDPC code or codes to be used in the next decoder iterations, and the decoder performs the iterations. The exchange of updated soft information between the decoder and the detector continues, as do the decoder iterations performed by the decoder under the control of the processor 106, until the data converges or a stop condition is met. The operations of the processor are discussed in more detail below.
Before discussing the operations of the processor 106, we discuss the selectable variable node degree distribution LDPC codes with reference to
The LDPC code further includes several degree five constraint nodes 2041, 2042 . . . 204n−1 and one or more higher degree parity constraint nodes 204n, 204n+1 . . . 204n+t. Note that edges interconnect each of the variable nodes 202 with one or more of the higher degree constraint nodes. While variable node degree distribution codes having degree three variable nodes and degree two variable nodes are shown in
In certain applications, for example, lower variable node degree distribution LDPC codes outperform higher variable node degree distribution LDPC codes. One such application is magnetic recording channels, with the lower variable node degree distribution code having better dB performance even when the code uses fewer parity constraints than the higher variable node degree distribution code. For such applications, the processor 106 disables the higher degree constraint nodes 204n, 204n+1 . . . 204n+1 to operate first with the lower variable node degree distribution code
With reference to
In the example discussed above, the decoder 104 performs a predetermined number of decoder iterations using the lower variable node degree distribution LDPC code, and checks for convergence. If the code word data do not converge, the decoder may send updated soft information to the detector 102. The detector then further updates the soft information and returns the information to the decoder in a known manner.
For the next decoder iterations or later decoder iterations, the processor 106 enables the disabled constraint nodes 204n, 204n+1 . . . 204n+t, and the decoder then performs the decoder iterations using the higher variable node degree distribution LDPC code. The system thus takes advantage of the lower error floor of the higher variable node degree distribution code for the next decoder iterations. The decoder performs up to a predetermined number of decoder iterations with the higher variable node degree distribution code, and again checks for convergence. The decoder may, as appropriate, provide updated soft information to the detector, and so forth.
In another example, the processor 106 may enable the disabled constraint nodes 204n, 204n+1 . . . 204n+t after a predetermined number of decoder iterations, e.g., after 15 out of 20 iterations, have been performed with the lower variable node degree distribution code. The decoder 104 then completes its decoder iterations using the higher variable node degree distribution code. Thereafter, the decoder may exchange updated soft information with the detector 102, to begin a next number of decoder iterations. Thus, the different variable node degree distribution codes may be used between global iterations, i.e., between decoder/detector iterations, in a system with a synchronous detector, or while the detector updates in a system with an asynchronous detector.
Alternatively, the processor 106 may enable the disabled constraint nodes 204n, 204n+1 . . . 204n+t when the code word convergence rate is above a predetermined rate.
The processor 106 may selectively enable or disable subsets of the constraint nodes 204n, 204n+1 . . . 204n+t, such that the decoder 104 operates with various variable node degree distribution codes during respective decoder iterations. The processor 106 may selectively enable or disable selected constraint nodes to utilize an LDPC code that provides desired capabilities, such as better burst error performance when, for example, burst errors are indicated during error recovery operations. Alternatively, the system may enable the disabled constraint nodes only during re-read or error recovery operations and decode on the fly with the lower variable node degree distribution code.
Referring now to
For a predetermined number of decoder iterations or until an appropriate code word convergence rate is achieved, the processor 106 operates the decoder 104 with the SPC parity constraint node 404 disabled, such that the decoder uses only the LDPC code. The processor then enables the SPC parity constraint node, such that the decoder then uses both the LDPC and the SPC codes in the decoder iterations. Note that the decoder utilizes a lower density code or codes first, and higher density code or codes in later decoder iterations.
Separate decoder hardware may be employed if the higher variable node degree distribution code includes an outer linear code. Thus, as illustrated in
Alternatively, the SPC decoder 505 may be included in the ISI detector 104, with the processor enabling the SPC decoder at the start of the global iterations or at a later iteration when, for example, the code word convergence rate is sufficiently high. The SPC decoder is utilized in the global iterations, before updated soft information is provided from the detector to the LDPC decoder 504.
Referring again to
The processors or functions described herein can be implemented in software, firmware and/or hardware. The respective processors or functions may be performed by individual processors or groups of processors. Further, the processors or functions described or depicted separately may be combined in one or more processors or functions. Also, the codes described as one or more SPCs may be other codes that in combination with the LDPC code or codes result in higher density codes.
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