1. Field of the Invention
The invention relates to a candidate list augmentation apparatus and method for channel coding system, and more particularly, a candidate list augmentation apparatus which is able to detect signal with dynamic compensation in the multi-input multi-output (MIMO) channel coding systems.
2. Description of the Related Art
Multiple input multiple output (MIMO) technology draws great attention due to its ability to improve transmission efficiency. Among several MIMO detection schemes, maximum likelihood (ML) detection is one of the most well known in the art which is being commonly used to fully utilize the diversity gain. With an additive white Gaussian channel noise assumption, ML detection can be reduced to a closest-point-search problem in a given lattice. Moreover, although MIMO system performance is boosted by the diversity gain, channel coding is often employed to provide extra coding gain such that systems are allowed to perform better in case of lower signal-to-noise-ratio (SNR). Since exhaustive search is infeasible for large number of antennas or high level signal modulation, sphere decoding has been proposed to perform exhaustive search after confining the search range by a radius. With properly chosen radius, sphere decoding has been proved to approach the performance of ML detection.
Please refer to
After mapping the signal, the transmit device 106 transmits through the complex signal based on the transmitted vector {tilde over (s)}(t) and the receive device 108 receives the real signal according to the received vector {tilde over (y)}(t). The relation between the transmitted vector {tilde over (s)}(t) and the received vector {tilde over (y)}(t) can be expressed by:
{tilde over (y)}(t)={tilde over (H)}(t){tilde over (s)}(t)+ñ(t) (1)
where the channel {tilde over (H)}(t) is an Nr×Nt matrix of independent and identically distributed (i.i.d.) complex Gaussian random variables; ñ(t) is an Nr×1 i.i.d. complex Gaussian noise vector. The complex model in the equation (1) can be further rewritten as:
where R{•} and L{•} refer to the real and the imaginary parts, respectively, of the complex signal s(t). Thus, the Nt-dimensional complex M2-QAM signals s(t) are transformed into 2Nt-dimensional real M-PAM signals y(t). For simpler notation, the time index t will be omitted hereafter.
Based on the equation (2), ML solution can be derived by searching all over the 2Nt-dimensional constellation space Ω2Nt for the minimizer:
where the cost function ∥•∥2 refers to Euclidean norm. As shown in the equation (3), the exhaustive search for the minimizer ŝML becomes infeasible since the computation grows exponentially with Nt and L. Therefore, the sphere decoder 110 in the conventional MIMO system utilizes sphere decoding algorithm as a means to solve the closest-lattice-point searching problem.
The sphere decoder 110 first confines the search range by a predefined radius r; and only the path metric of the s′ in the hypersphere ∥y−Hs′∥2≦r2 will be compared. That is, the equation (2) can be computed by:
Here, if the radius r is chosen properly such that at least one path s′ satisfies the radius constraint.
Next, the sphere decoder 110 will preprocess on y to transform the equation (4) into a tree-search problem. By QR-decomposition, for instance, the channel matrix is decomposed by H=QR where QTQ=I2Nr, an identity matrix of size 2Nr, and R is a 2Nt×2Nt upper triangular matrix. By multiplying y with QT, the sphere decoder 110 can transformed the equation (4) into:
where q=[q1, q2, . . . , q2Nt]=QTy. Each s′ in Ω2Nt is defined as a “path” that traverses from the root to the leaf of the search tree. Every path consists of 2Nt nodes representing the 2Nt points of the 2Nt-layered tree. Moreover, the cost function of each path, i.e. ∥q−Rs′∥2, will be referred to “path metric” and can be calculated by:
where s(i) represents the i-th to 2Nt-th elements of s′, that is, s(i)=[si, si+1, . . . , s2Nt]T. Moreover, the partial Euclidean distance (PED) of s(i), T(s(i)), is defined by:
Based on this conventional sphere decoding algorithm, the minimizer ŝML can be found as long as each path has been searched. However, the traditional sphere decoding algorithm remains a major challenge in acquiring accurate probabilistic information. Limited by the complex computation of sphere decoding, and inconstant decoding throughput could cause inefficient VLSI implementation.
Different from the sphere decoding algorithm that outputs only the ML path, the conventional MIMO system utilizes the modified list sphere decoding algorithm to deliver a candidate list L that consists of the most reliable paths. Please refer to
Let M(•) denote the M-PAM mapping function such that sk=M(xk,1, xk,2, . . . , xk,Mc). For any path s′ε L, the soft value of xk,j is defined by its “a posteriori” probabilities:
The first term in the equation (9), which is the “a priori” information, is zero for the ML detection or can be computed by the extrinsic information provided by the channel decoder in an iterative detection decoding process. The second term in the equation (9) can be computed by:
Where σ2 is the noise variance, and Ωj,b is the set of all path s′ having xk,j=b for b=0, 1. That is, Ωj,0 represents the set of all s′ having xk,j=0, and Ωj,0 represents the set of all s′ having xk,j=1. Usually, the candidate list generation device 212 will generate a sufficiently large list to ensure a high probability in finding the true minimizer in the equation (11) with (12). With preprocessing, the equation (12) will be replaced by:
However, when one of the sets Ωj,0 and Ωj,0 can not find the path s′ in the list L (i.e. Ωj,0∩L=0 or Ωj,1∩L=0), it is impossible to find the minimizer in an empty set, and the minima is often approximated by a predefined large constant. Being the soft input signals to the subsequent channel decoder 216, the additional interference resulted from the approximation inaccuracy can degrade the error performance. Although the degradation can be mitigated by increasing the list size to reduce the probability of Ωj,0∩L (or Ωj,1∩L), being an empty set, the computation complexity in generating the candidate list also increases.
Therefore, to solve the above-mentioned problems, the present invention proposes a novel candidate list augmentation apparatus for channel coding system and method thereof along with dynamic compensation to improve the efficiency and performance of the coded MIMO systems.
It is therefore one of the many objectives of the claimed invention to provide candidate list augmentation apparatus and method thereof along with dynamic compensation to improve the efficiency and performance of the coded MIMO systems.
According to the claimed invention, a candidate list augmentation device is disclosed. The candidate list augmentation device includes a candidate list generation device for receiving an input signal within a coded MIMO system and generating a candidate list according to said input signal; a path augmentation device, coupled to said candidate list generation device, for augmenting paths in the candidate list according to said candidate list and generate an augmented list; and a soft value generation device, coupled to said candidate list generation device and said path augmentation device, for comparing said input signal and said augmented list and generating a soft value according to said input signal, said candidate list and said augmented list, wherein said soft value is utilized for error correcting in decoding said input signal.
Also according to the claimed invention, a candidate list augmentation method with low-complexity soft value generation for the coded MIMO systems is disclosed. The candidate list augmentation method includes (1) receiving an input signal and generating a candidate list according to said input signal; (2) generating an augmented list according to said candidate list; and (3) comparing said input signal and said augmented list and generating a soft value according to said input signal, said candidate list and said augmented list, wherein said soft value is utilized for error correcting in decoding said input signal.
Below, the embodiments of the present invention are described in detail in cooperation with the attached drawings to make easily understood the objectives, technical contents, characteristics and accomplishments of the present invention.
The present invention provides a candidate list augmentation device and method thereof for channel coding systems with dynamic compensation to improve the efficiency and performance of the channel coding system especially coded MIMO systems
Please refer to
For the soft value L(xk,j) computation, the path augmentation device 316 will expand each path s′ in L to M paths by first duplicating s′ M−1 times. Next, each the k-th element of the M identical paths is replaced by a distinct ωj from Ω={ωj|j=0, 1, . . . ,M−1}, the M symbols of M-PAM constellation. This duplicating-and-replacing procedure continues until all the paths in L are examined. As a result, L is expended to Lk and |Lk|=M×|L|. Although identical paths may be found in Lk, Ωj,0∩Lk or Ωj,1∩Lk will never be empty sets since the augmented list contains all constellation points at the k-th layer. Besides, the paths in L are believed to be more reliable, and the augmented list is supposed to be reliable as well. It can be inferred that:
Moreover, the path metric of the j-th expanded path from s′ can be computed by
where Δj=sk−ωj for j=0, 1, . . . , M−1.
For example, please refer to
The above-mentioned procedure needs to be performed 2Nt times for decoding s, and the equation (16) is the major computation overhead. Note that Δj have limited values and ranges, and they can be realized by a simple look up table or a decoder. Please note that, in this embodiment, the path s′ can be expanded to unlimited M paths. However, considering the overhead from the path augmentation device 316, Lk can also be augmented partially. That is, the soft values can be generated by the |L|×M most reliable paths for 0<M<1. The value M can provide a tradeoff between complexity and error performance.
Moreover, the path augmentation device 316 in the present invention can further perform the dynamic compensation by introducing an additive correction term to improve the approximation accuracy of the channel decoder 318 and to improve the error performance. Here, let n0 and n1 denote the sizes of Ωj,0∩Lk and Ωj,1∩Lk respectively, and n0+n1=|L|. Moreover, let
And the path augmentation device 316 can express the equation (10) in the conventional list sphere decoding algorithm as follows:
where {m0, a1, a2, . . . , an0−1}={T(s′)}|∀s′εΩj,0∩L}, and {m1, b1, b2, . . . , bn1−1}={T(s′)}|∀s′εΩj,1∩L}. For sufficiently large list size,
which is the intrinsic information required by an maximum “a posteriori” (MAP) detector.
The second term in (19) and the intrinsic information can be combined as
where
is modified to
to avoid logarithm of zero or infinity. Ultimately, the soft value generated by the soft value generation device 314 will be:
where β is a normalization factor, and n1=|L|−n0. From the equation (21), the computation overhead resulted from the dynamic compensation
are one multiplication, two logarithms, and at most |L|+1 additions for accumulating n0. Moreover, m0 (or m1) will be estimated by the maximum path metric in L if Ωj,0∩Lk (or Ωj,1∩Lk) is empty set. Please note that, in this embodiment, the calculation of the soft value L(xk,j) in the equation (21) and (22) is the estimated value suitable for current model. However, the calculation of the soft value L(xk,j) is not limited to the above definition. That is, in other embodiments, the soft value L(xk,j) can be assigned by different conditions depending on design requirements. For example, for simplicity, the soft value generation device 314 can alternatively generate the soft value L(xk,j) by:
L(xk,j)≈m1−m2 (23)
Please refer to
Based on the present invention, the path augmentation algorithm in the present invention guarantees a low probability of failing to find the minimizers. Actually, the computation overhead from list expansion by the path augmentation device 316 is usually smaller as compared to direct generation of a larger candidate list in the conventional MIMO system. Moreover, the path augmentation algorithm in the present invention can be applied in different decoding algorithm, for instance, sphere decoding, list decoding, M-algorithm, T-algorithm, or K-best algorithm. Besides, an additive correction term is introduced to dynamically compensate the approximation loss in the conventional list sphere decoding scheme. Combining the two proposed schemes, the MIMO system with candidate list augmentation scheme in the present invention significantly reduce the calculation complex and perceive improvement in error performance.
Those described above are only the preferred embodiments to exemplify the present invention but not to limit the scope of the present invention. Any equivalent modification or variation according to the shapes, structures, features and spirit disclosed in the specification is to be also included within the scope of the present invention.
Number | Name | Date | Kind |
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7720169 | Reuven et al. | May 2010 | B2 |
20050210039 | Garrett | Sep 2005 | A1 |
Number | Date | Country | |
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20100031113 A1 | Feb 2010 | US |