1. Field of the Invention
The present invention relates to a wireless communication system, and more particularly, to MIMO communication system.
2. Description of the Prior Art
Multiple-Input Multiple-Output (MIMO) technology utilizes antenna array to receive and transmit signals, which increases channel capacity with present spectrum resource, prevents signal loss caused by multiple-path, and meanwhile increases communication coverage. The present wireless communication standards, such as IEEE 802.11n used by wireless local area network, IEEE 802.16 used by WiMax, and long term evolution (LTE) initiated by the 3rd Generation Partnership Project (3GPP) all utilize MIMO technology to increase transmission throughput. On the other hand, high order quadrature amplitude modulation (QAM) technology is widespread applied in the abovementioned wireless communication standards.
A NT×NR MIMO system has NT transmitted antennas and NR received antennas. A transmitted signal is represented as x=└x1, x2, . . . xj, . . . , xN
The prior art provides various MIMO detection methods. Following is a brief introduction. Linear MIMO detection method, such as zero-forcing (ZF) algorithm and minimum mean square error (MMSE) algorithm, performs inverse matrix operation for an estimated channel matrix to extract the transmitted signal. An operation of ZF algorithm can be regarded as a filter, which can remove inter-symbol interference (ISI), but enhance noise. On the other hand, MMSE algorithm cannot remove ISI completely, but does not enhance noise. Both methods are simple to be implemented, but have limited efficiency In addition, nonlinear MIMO detection method includes vertical bell laboratories layered space time (V-BLAST) algorithm, maximum likelihood (ML) algorithm, sphere decoding (SD) algorithm, etc. The V-BLAST algorithm utilizes QR decomposition of matrix operation for successive interference cancellation. Compared to ZF and MMSE algorithm, V-BLAST algorithm has better performance. The maximum likelihood (ML) algorithm compares a received symbol vector and symbol vectors in transmitted signal space one by one, to detect the most possible symbol vector for transmission. ML algorithm has the best performance, but has the most complexity of all the algorithms. SD algorithm reduces the number of candidate symbol vectors and the complexity according to the setting of a search range, and has optimal performance with ML algorithm. However, a channel effect affects a process of determining a search radius of SD algorithm under the condition of low signal-to-noise ratio (SNR), and increases the complexity.
Besides the abovementioned algorithms, some methods use N-dimension QAM constellation with multilevel structure for decreasing the search range, to reduce the complexity. A brief description of the multilevel structure of N-QAM constellation is as following. An N-QAM constellation can be recursive partitioned to L levels, where L=log4 N. A mean symbol vector set Sl at level l is
Sl={sil},i=1,2, . . . ,Nl,Nl=41−l×N.
Please refer to
Ss,il−1 is a subset of a mean symbol set Sl−1, which includes four mean symbols coupled to the mean symbol sil. The transmitted signal of the NT×NR MIMO system is represented as xl=[x1l,x2l, . . . ,xN
Xl={xl,i},i=1,2, . . . ,NlN
Take 4×4 MIMO system 10 in
Cl,i={xil−1|x1l−1∈Sσ,1l−1,x2l−1∈Sσ,2l−1, . . . ,xN
Assume that the received signal y is a result of the transmitted signal x passed through the channel matrix H, a mean symbol vector xl in the mean symbol vector set at the lth level has the minimum distance with the transmitted signal x. A Euclidean distance of an error vector between the transmitted signal x and the mean symbol vector xl passed through the channel is
∥Hx−Hxl∥2=∥H(x−xl)∥2=(x−xl)HHHH(x−xl).
Since each channel of the MIMO system affects each other, the abovementioned equation can only confirm that HHH diagonal element is a positive real number. Therefore, ∥Hx−Hxl∥2 may not be proportion to ∥(x−xl)∥2. In other words, after the mean symbol vector xl which is the nearest to the transmitted signal x in the transmitted signal space are transmitted through the channel, the mean symbol vector xl may not be a mean symbol vector which is the nearest to the received signal y in the received signal space, and system error occurs.
The method published in “Depth-First and Breadth-First Search Based Multilevel SGA Algorithms for Near Optimal Symbol Detection in MIMO Systems” provides depth-first search or breadth-first search to extract possible transmitted signals by sequential Gaussian approximation (SGA) algorithm which uses ZF algorithm, causing performance degradation. On the other hand, U.S. Pat. No. 7,308,047 discloses a method for detecting the most similar signal to the transmitted signal in the received signal space without performing the inverse matrix operation of the channel matrix. However, the method disclosed by the U.S. Pat. No. 7,308,047 causes serious system error and error floor effect at low bit error rate (BER).
Although the abovementioned multilevel structure of the QAM technology for detecting transmitted signal can reduce the system complexity, a problem of system error is still needed to conquer, for enhance accuracy of the MIMO detection. The MIMO detection method has to be improved constantly for adapting an amount of data transmission, and meanwhile takes low complexity and high performance into account.
Therefore, the present invention provides a MIMO detection method utilized in a receiver of a MIMO system and related MIMO detector, for reducing the complexity of the MIMO system.
The present invention discloses a MIMO, an abbreviation of multiple-input multiple-output, detection method for a receiver in a MIMO system using N-QAM, an abbreviation of quadrature amplitude modulation. The MIMO detection method includes generating a plurality of symbol vector sets and a plurality of search radiuses, each symbol vector set and search radius correspond to one level of a multilevel structure of N-QAM constellation, selecting a candidate symbol vector set at a highest level of the multilevel structure of N-QAM constellation, generating a search space at a lower level of the multilevel structure according to the candidate symbol vector set, confirming which level the search space corresponds to, and generating a detection signal according to the search space when the level of the search space is the lowest level of the multilevel structure.
These and other objectives of the present invention will no doubt become obvious to those of ordinary skill in the art after reading the following detailed description of the preferred embodiment that is illustrated in the various figures and drawings.
As abovementioned, N-QAM constellation has a characteristic of a multilevel structure, and thereby the present invention discloses a MIMO detection method which performs two-stage search in a received signal space. The first stage is called “cluster matching” which is a breadth-first search, and the second stage is called “detail matching”. Cluster matching begins at the highest level (namely the Lth level, where L=log4 N) of the multilevel structure of N-QAM constellation. A mean symbol vector set XL at the Lth level is considered as an initial search space, and cluster matching is performed for each of (L−1) levels for reducing the search space, so as to find a cluster whose symbol vectors have minimal distances with the transmitted signal. Detail matching is performed at the lowest level of the multilevel structure of N-QAM constellation, namely the first level (which is also the lowest level), to find a symbol vector which has a minimal distance with the transmitted signal, also the most possible symbol vector for being the transmitted signal.
Firstly, a NT×NR MIMO system is defined in the present invention, where a transmitter includes NT transmitted antennas and a receiver includes NR received antennas. N-QAM is utilized for modulating a transmitted data stream. A transmitted signal is indicated as x=└x1, x2, . . . xj, . . . , xN
Please refer to
Step 100: Start.
Step 102: Generate (L−1) mean symbol vector sets and (L−1) search radiuses, each mean symbol vector set and search radius corresponding to one level of the multilevel structure of N-QAM constellation excluding the lowest level, where L=log4 N.
Step 104: Select a first candidate symbol vector set conformed to an initial constraint in an initial search space formed by a mean symbol vector set at the highest level of the multilevel structure of N-QAM constellation.
Step 106: Generate a first search space at a lower level of the multilevel structure of N-QAM constellation according to the first candidate symbol vector set.
Step 108: Confirm which level of the multilevel structure of N-QAM constellation the first search space corresponds to. Perform step 112 if the level is the lowest level of the multilevel structure of N-QAM constellation; otherwise perform step 110.
Step 110: Select a second candidate symbol vector set conformed to a constraint in the first search space and return to step 106.
Step 112: Generate a detection signal according to the first search space.
Step 114: End.
Cluster matching stage is illustrated with step 104 to step 110, wherein step 106 to step 110 are performed as a loop for cluster matching level by level. Step 108 is utilized for confirming whether cluster matching stage is completed. Step 112 illustrates the detail matching stage at the lowest level. The initial search space corresponds to a mean symbol vector set XL at the Lth level of the multilevel structure of N-QAM constellation. Take a 4×4 MIMO system as an example. If 64-QAM is used, the initial search space, ΠL=x3={x3,i}, i=1,2, . . . ,256, includes 256 mean symbol vectors. The meaning of an initial constraint of cluster matching at the highest level is the same with constraints of the following cluster matching at each level. A constraint of a search space Πl is used for selecting those mean symbol vectors in the search space Πl, namely a candidate symbol vector set Ωl, in which each mean symbol vector xl,i corresponds to an error vector between the received signal y and the mean symbol vector xl,i passed through the channel, each error vector having a Euclidean distance smaller than a search radiuses γl. Cluster matching at each level may use different search radiuses whose detailed description of setting method can be referred to the following statement. The constraint used by cluster matching at the lth level (1<l≦L) is expressed by the following inequality (1), and the candidate symbol vector set Ωl is defined by (2):
∥y−Hxl,i∥<γl; (1)
Ωl:{xl,i|xl,i ∈Πl,∥y−Hxl,i∥<γl}, Ωl ⊂Πl, Πl ⊂Xl. (2)
In step 104, the MIMO detection method 10 performs cluster matching at the highest level, to search the candidate symbol vector set ΩL conformed to the initial constraint, ∥y−HxL,i∥<γL. Step 106 to step 110 illustrates cluster matching level by level, and uses the lth level for explanation herein. In step 106, the MIMO detection method 10 generates a search space Πl−1 at the (l−1)th level which is one level lower than the Lth level of the multilevel structure of N-QAM constellation according to the candidate symbol vector set ΩL. A set of 4N
In step 108, the MIMO detection method 10 confirms a level of the search space Πl−1, for confirming whether cluster matching stage is completed. If (l−1)=1, the level of the search space Πl−1 is the lowest level of the multilevel structure of N-QAM constellation, which indicates cluster matching stage is completed. If (l−1)≠1, the level of the search space Πl−1 is not the lowest level of the multilevel structure of N-QAM constellation. In this situation, the MIMO detection method 10 returns to step 106, and performs loop operation of step 106 to step 110 until the search space at the lowest level is generated. In cluster matching stage, the MIMO detection method 10 utilizes the constraint for searching candidate symbol vector set Ωl. The Euclidean distance of an error vector between each mean symbol vector of the candidate symbol vector set Ωl passed through channels and the received signal y is smaller than the search radius γl. From the above, the MIMO detection method 10 eliminates mean symbol vectors which are not conformed to the constraint for reducing the search space level by level.
The MIMO detection method 10 enters detail matching stage when the cluster matching is performed at the lowest level, for generating the MIMO detection output signal that is an estimated transmitted signal. Step 112 further includes two ways for generating the output signal, which can be a hard-decision output signal or a soft-decision output signal. For generating a hard-decision output signal, step 114 utilizes maximum likelihood algorithm in the search space Πl at the lowest level, for selecting a symbol vector {circumflex over (x)} which satisfies a condition that a Euclidean distance of an error vector between the symbol vector {circumflex over (x)} passed through channels and the received signal y is the minimum, namely a hard-decision output signal. The selected symbol vector {circumflex over (x)} is
On the other hand, the present invention can generate a soft-decision output signal for coordinating a back end, Viterbi decoder, of the MIMO detector. In this situation, step 112 calculates a Euclidean distance of an error vector between each symbol vector in the search space Πl passed through channels and the received signal y, sorts all symbol vectors in search space Πl in order according to values of Euclidean distances of all error vectors, and selects K symbol vectors which is corresponded to K error vectors with minimal Euclidean distances, for generating the soft-decision output signal. For example, the embodiment of the present invention selects four symbol vectors (x1,1, x1,2, x1,3, x1,4) corresponding to four minimal Euclidean distances (d1, d2, d3, d4) of Euclidean distances of all error vectors. The soft-decision output signal {circumflex over (x)} is generated by the giving different weightings to the four symbol vectors (x1,1, x1,2, x1,3, x1,4), given as following equations:
Please refer to
The setting method of search radius in the MIMO detection method 10 is illustrated as following. Firstly, a constraint vector is defined as vl,c=(x1,c−xl,i), where xl,i is a mean symbol vector at the lth level of the multilevel structure of N-QAM constellation and corresponds to the ith partition of the lowest level of N-QAM constellation, and x1,c is a symbol vector, where c=1,2, . . . 4N
∥z∥=∥y−Hxl,i∥=∥Hx1,k−Hxl,i∥=∥H(x1,k−xl,i)∥≦∥Hvl,c∥. (7)
In the transmitted signal space, lengths of constraint vectors vl,c corresponding to the mean symbol vector xl,i are equal. However, each channel of the MIMO system has different gain, so the lengths of constraint vectors vl,c in received signal space are no longer the same. A maximum value dl of Euclidean distance of the error vector z is
dl=max{∥Hvl,c∥},c=1,2, . . . ,4N
The present invention further considers an effect of noise, and defines the search radius γl of cluster matching at the lth level being the product of the largest value dl of Euclidean distances of error vector z, and a noise reduction parameter αl, that is γl=αl·dl, where αl is a real number greater than 1. The higher level of cluster matching uses the larger search radius, and the noise reduction parameter enhances the efficiency of MIMO detection more obviously.
Note that, the MIMO detection method 10 selects mean symbol vectors xl,i at the lth level conformed to constraint ∥y−Hxl,i∥<γl by calculating a full Euclidean distance of each error vector z for determining whether the mean symbol vector xl,i is conformed to the constraint. In a case of a large number of transmitted antennas, calculation of the full Euclidean distance increases the loading of the MIMO system certainly. Therefore, the present invention provides a branch and bound method for reducing the search space quickly, which calculates a partial Euclidean distance of the error vector z for eliminating the mean symbol vector xl,i which is not conformed to the constraint. Mathematic principle of the branch and bound method is summarized as following. Firstly, the present invention utilizes QR decomposition to decompose the channel matrix H into a product of a unitary matrix Q and a upper triangular matrix R. Euclidean distance of the error vector z is
∥z∥=∥y−Hxl,i∥=∥y−QRxl,i∥=∥y′−Rxl,i∥<γl. (9)
In equation (9), z=y′−Rxl,i expressed with matrix:
In equation (10), a Euclidean distance of each element of the error vector z is
A partial error vector z(j) and the corresponding partial Euclidean distance are
As can be seen in equation (9) and equation (13), the mean symbol vector xl,i conformed to the constraint makes the following equations true:
∥z(N
∥z(N
∥z(N
∥z(1)∥2=∥z1∥2+∥z2∥2+. . . +∥zN
As can be seen, the branch and bound method performs search at NR levels. Please refer to
Step 200: Start.
Step 202: Perform a partial Euclidean distance calculation process to calculate a partial Euclidean distance of an error vector between a mean symbol vector passed through channels in the search space and a received signal.
Step 204: Compare the partial Euclidean distance and a search radius, for generating a comparing result. If the comparing result indicates that the partial Euclidean distance is larger than the search radius, perform step 206; otherwise, perform step 208.
Step 206: Suspend the partial Euclidean distance calculation process and exclude the mean symbol vector from the candidate symbol vector set.
Step 208: Determine whether the partial Euclidean distance calculation process is performed to calculate a full Euclidean distance. If yes, perform step 210; otherwise, return step 202, and add an element of the error vector to the partial Euclidean distance calculation process.
Step 210: Select the mean symbol vector as a candidate symbol vector of the candidate symbol vector set.
Step 212: End.
Instep 202, the branch and bound method 20 performs the partial Euclidean distance calculation process to a mean symbol vector xl,i in the search space Πl, which calculates the partial Euclidean distance ∥z(j)∥ of an error vector z between the mean symbol vector xl,i passed through channels and the received signal y, as shown in equation (13). Please note that, the embodiment of the preset invention initiates calculations from the minimal partial Euclidean distance, and increases a number of elements of the partial Euclidean distance gradually when the partial Euclidean distance calculation process is performed.
Firstly, the branch and bound method 20 calculates the partial Euclidean distance ∥z(N
Note that, the branch and bound method 20 is used for illustrating the partial Euclidean distance calculation process corresponding to a single mean symbol vector. In reality, the present invention applies breadth-first manner to perform the partial Euclidean distance calculation process to all mean symbol vectors in the search space Πl, and finally generates the candidate symbol vector set Ωl. Since the branch and bound method 20 can determine whether the mean symbol vector xl,i is conformed to the constraint only by calculating the partial Euclidean distance of the error vector, the complexity of system calculation and the search space can be reduced.
For the branch and bound method 20, since a value of the candidate symbol vector set is not a constant value at each level of cluster matching, the complexity of the system is still needed to be improved. The present invention further sorts all mean symbol vectors of the candidate symbol vector set generated by the branch and bound method 20 in order according to Euclidean distances of error vectors corresponding to all mean symbol vectors, and then selects K mean symbol vectors corresponding to error vectors with minimal Euclidean distances, for forming an optimum candidate symbol vector set. Briefly, the present invention selects K mean symbol vectors from the remained mean symbol vectors, to effectively reduce the complexity of system. A value of K at each level of cluster matching stage can be different in other embodiments of the present invention.
In the MIMO detection method 10, cluster matching at the each of preceding (L−1) levels utilizes the constraint to search the candidate symbol vector set. The present invention further provides a phase decision method which can greatly reduce the complexity based on a phase of the transmitted signal to determine a result of cluster matching at the highest level. Please refer to
Step 300: Start.
Step 302: Generate (L−1) mean symbol vector sets and (L−1) search radiuses, each mean symbol vector set and search radius corresponding to one level of the multilevel structure of N-QAM constellation excluding the lowest level, where L=log4 N.
Step 304: Obtain an estimated transmitted signal and a phase of the estimated transmitted signal by processing a received signal according to a minimum mean square error algorithm.
Step 306: Select a first candidate symbol vector set at a highest level of the multilevel structure of N-QAM constellation according to the phase of the estimated transmitted signal.
Step 308: Generate a first search space at a lower level of the multilevel structure of N-QAM constellation according to the first candidate symbol vector set.
Step 310: Confirm which level of the multilevel structure of N-QAM constellation the first search space corresponds to. Perform step 314 if the level is the lowest level of the multilevel structure of N-QAM constellation; otherwise perform step 312.
Step 312: Select a second candidate symbol vector set conformed to a constraint in the first search space and return to step 308.
Step 314: Generate a detection signal according to the first search space.
Step 316: End.
Step 304 to step 312 illustrate cluster matching stage, wherein the step 304 and step 306 illustrate cluster matching at the highest level, the step 308 to step 312 are performed as a loop for cluster matching level by level, and step 310 is used for conforming whether the cluster matching stage is completed. Step 314 illustrates detail matching stage at the lowest level. The phase decision method is divided into two stages, such as shown in step 304 and step 306. In step 304, the phase decision method processes the received signal y by minimum mean square error algorithm for obtaining the estimated transmitted signal {circumflex over (x)}MMSE, and calculates phase θ({circumflex over (x)}MMSE) of each element of the transmitted signal {circumflex over (x)}MMSE, where {circumflex over (x)}MMSE and θ({circumflex over (x)}MMSE) are expressed as:
{circumflex over (x)}MMSE=(HHH+σ2I)−1HHy=[{circumflex over (x)}1, {circumflex over (x)}2, . . . , {circumflex over (x)}j, . . . , {circumflex over (x)}N
θ({circumflex over (x)}MMSE)=(θ({circumflex over (x)}1), θ({circumflex over (x)}2), . . . , θ({circumflex over (x)}j), . . . , θ({circumflex over (x)}N
In equation (18), I is an identity matrix, σ2 is a variance of noise, and the element {circumflex over (x)}j of the estimated transmitted signal {circumflex over (x)}MMSE corresponds to the jth transmitted antenna. For an element corresponding to an antenna, the mean symbol vector set at the highest level of the multilevel structure of N-QAM constellation is indicated as A, B, C, and D according to four quadrants of I-Q plane. In step 308, the phase decision method selects a candidate symbol vector set ΩL according to the phase θ({circumflex over (x)}MMSE) of the estimated transmitted signal. Moreover, the phase decision method selects two or three mean symbol vectors from the mean symbol vector set {A, B, C, D} as possible values of an element xjL,i of a mean symbol vector xL,i=└x1L,i, x2L,i, . . . , xN
As can be seen in equation (20), each element of mean symbol vector xL,i of candidate symbol vector set ΩL can be an element of a combination of Δ2(xjL,i) if the present invention uses two-phase decision method to select candidate symbol vector set ΩL. Therefore, candidate symbol vector set ΩL includes 2N
A difference between The MIMO detection method 10 and the MIMO detection method 10 is a way of the highest level cluster matching. For the MIMO detection method 10, the highest level cluster matching includes step 104, and for the MIMO detection method 30, the highest level cluster matching includes step 304 and step 306, which are both utilized for selecting the candidate symbol vector set at the highest level of the multilevel structure of N-QAM constellation.
Please refer to
The receiving terminal 400 is used for receiving received signal y indicated as y=└y1, y2, . . . yj, . . . , yN
The cluster matching circuit 406 is used for performing the cluster matching stage, which includes a candidate symbol vector set generating circuit 410, a search space generating circuit 412, and a confirmation circuit 414. The candidate symbol vector set generating circuit 410 is coupled to the receiving terminal 400, the mean symbol vector set generating circuit 402, the search radius generating circuit 404, the channel estimation circuit 42, the confirmation circuit 414, and the search space generating circuit 412. The candidate symbol vector set generating circuit 410 is used for performing step 104 and step 110, selecting a candidate symbol vector set Ωl conformed to a constraint in search space Πl at the lth level of the multilevel structure of N-QAM constellation, which can bean initial search space ΠL=XL and a search space Πl, where 1<l≦L. The search space generating circuit 412 is coupled to the mean symbol vector set generating circuit 402 and the candidate symbol vector set generating circuit 410, and is used for performing step 106 for generating a search space Πl−1 one level lower than the search space Πl according to the candidate symbol vector set Ωl. The confirmation circuit 414 is coupled to the search space generating circuit 412, and is used for performing step 108 to confirm a level of the search space, for determining to enter the detail matching stage or a lower level cluster matching. The detail matching circuit 408 is coupled to the receiving terminal 100, the channel estimation circuit 42, and the confirmation circuit 414, and is used for performing the detail matching and generating a detection signal according to the search space when the confirmation circuit 414 confirms a level of the search space Πl−1 is the lowest level (l−1=1).
Moreover, circuits included in the candidate symbol vector set generating circuit 410 can be used for performing the abovementioned branch and bound method 20. The candidate symbol vector set generating circuit 410 includes a partial Euclidean distance calculation circuit 420, a comparing circuit 422, a determination circuit 424, a first selecting circuit 426, and a second selecting circuit 428. The partial Euclidean distance calculation circuit 420 is coupled to the receiving terminal 400, the mean symbol vector set generating circuit 402, the channel estimation circuit 42 and the confirmation circuit 414, and is used for performing step 202 of the branch and bound method 20, for calculating the partial Euclidean distance of the error vector. The comparing circuit 422 is coupled to the partial Euclidean distance calculation circuit 420 and the search radius generating circuit 404, and is used for perform step 204, for comparing the partial Euclidean distance ∥z(j)∥ and the search radius γl for generating a comparing result. The determination circuit 424 is coupled to the partial Euclidean distance calculation circuit 420, and is used for performing step 206, for determining whether the partial Euclidean distance calculation circuit 420 is performed to calculate the full Euclidean distance ∥z(1)∥, for generating a determined result. The first selecting circuit 426 is coupled to the comparing circuit 422 and determination circuit 424, and is used for selecting the candidate symbol vector set Ωl according to the comparing result and determined result. The second selecting circuit 428 is coupled to the first selecting circuit 426, and is used for selecting K mean symbol vectors corresponding to error vectors with minimal Euclidean distances from the candidate symbol vector set Ωl, to form an optimum candidate symbol vector set.
In addition, upon hardware implementation of the MIMO detection method 30, please refer to
In conclusion, the MIMO detection method and the MIMO detector of the present invention utilizes a characteristic of the multilevel structure of N-QAM constellation for performing multilevel cluster matching in the received signal space to reduce the search space quickly, and generating the detection signal by the lowest level detail matching for a back end decoding. In addition, the present invention provides the branch and bound method, a method of selecting the optimum K candidate symbol vectors, and phase decision method, which can reduce the complexity of cluster matching and enhance the efficiency of MIMO detection.
Those skilled in the art will readily observe that numerous modifications and alterations of the device and method may be made while retaining the teachings of the invention. Accordingly, the above disclosure should be construed as limited only by the metes and bounds of the appended claims.
This application claims the benefit of U.S. Provisional Application No. 61/093,355, filed on Aug. 31, 2008 and entitled “Multilevel Cluster-Based MIMO Detection”, the contents of which are incorporated herein.
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20100054365 A1 | Mar 2010 | US |
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61093355 | Aug 2008 | US |