This application is a 35 U.S.C. § 371 national stage application of PCT International Application No. PCT/SE2017/051324 filed on Dec. 21, 2017, the disclosure and content of which is incorporated by reference herein in its entirety.
The present disclosure relates generally to the field of wireless communication. More particularly, it relates to an orthogonal code suitable for wireless communication.
Design of signals with a limited dynamic range and amenable to linear (or more generally low complexity) equalization is an area of active research.
Low complexity equalization is often used to achieve high data rates with good performance; for example in communications systems applying OFDM (orthogonal frequency division multiplexing) such as downlink communication of LTE (long term evolution) and communications compliant with IEEE802.11a/n/g/ac/ax.
A limited signal dynamic range, as measured for example by the Peak to Average Power Ratio (PAPR) or Cubic Metric (CM), is beneficial for power efficiency and extended coverage. For example, uplink communications of LTE utilizes DFT-s-OFDM (discrete Fourier transform spread OFDM), also known as SC-FDMA (Single Carrier frequency division multiple access), to generate signals with lower PAPR/CM than OFDM, while still achieving good performance with low complexity frequency domain equalization.
Recent technologies, such as NR (new radio) and VLC (visible light communications), introduce challenges in the generation of signals that offer the benefits of multicarrier technologies in terms of high data rates and multi-user multiplexing, as well as the benefits of single carrier modulations in terms of limited dynamic range. Known approaches (such as DFT-s-OFDM) are not flexible enough and/or have serious drawbacks which limit their applicability, e.g. to NR and VLC.
For example, DFT-s-OFDM is not flexible enough to design a 1-symbol short NR-PUCCH (new radio physical uplink control channel) for coverage extension, which may result in ad-hoc designs as exemplified in R1-1707169, “NR short PUCCH structure for more than 2-bit UCI” by ZTE, 3GPP TSG RAN WG1 Meeting #89, Hangzhou, China, May 15-19, 2017.
In another example, the PAPR that can be obtained by application of DFT-s-OFDM in VLC is not as low as the PAPR of DFT-s-OFDM as employed in RF (radio frequency) communications systems, due to the restriction that VLC waveforms must be real-valued (see e.g. Chaopei Wu, Hua Zhang, Wei Xu; “On visible light communication using LED array with DFT-spread OFDM”, IEEE ICC 2014 Optical Networks and Systems, pp. 3325-3330).
Therefore, there is a need for alternative approaches to signal design. Preferably, such approaches provide for generation of signal waveforms that have low PAPR/CM and are well suited for high data rate systems. Also preferably, such approaches are flexible and/or generally applicable.
It should be emphasized that the term “comprises/comprising” when used in this specification is taken to specify the presence of stated features, integers, steps, or components, but does not preclude the presence or addition of one or more other features, integers, steps, components, or groups thereof. As used herein, the singular forms “a”, “an” and “the” are intended to include the plural forms as well, unless the context clearly indicates otherwise.
It is an object of some embodiments to solve or mitigate, alleviate, or eliminate at least some of the above or other disadvantages.
According to a first aspect, this is achieved by an orthogonal code defined by an encoding matrix CK having N rows and N−P+1 columns, wherein N=P□2K, K is a positive integer and P is an odd positive integer. In the encoding matrix, no column is equal to another column.
Exactly one of the columns of the encoding matrix comprises N elements having the same real non-zero value, and each of the other columns of the encoding matrix comprises exactly (N−L) elements having zero value and exactly L elements having real, non-zero, alternating positive and negative values of the same magnitude wherein L∈{2K, 2K−1, . . . , 22, 21}. For each of the other columns, the elements of each adjacent pair of the L elements are separated by (N−L)/L elements having zero value.
In some embodiments, the exactly one of the columns is the first column of the encoding matrix.
In some embodiments, the same real non-zero value is a positive value. For example, the positive value may be equal to 1/√{square root over (N)}.
In some embodiments, the same magnitude is equal to √{square root over (1/L)}.
According to some embodiments, a number of columns comprising exactly L elements having non-zero values is equal to N/L.
For each column, any cyclic shift of the column may be identical to one of the other columns or to one of the other columns with opposite sign for each of the non-zero values according to some embodiments.
A second aspect is a method of constructing an orthogonal code defined by an encoding matrix CK. The method comprises defining the encoding matrix as having N rows and N−P+1 columns, wherein N=P□2K, K is a positive integer and P is an odd positive integer.
The method also comprises letting exactly one of the columns of the encoding matrix comprise N elements having the same real non-zero value, and letting each of the other columns of the encoding matrix comprise exactly (N−L) elements having zero value and exactly L elements having real, non-zero, alternating positive and negative values of the same magnitude wherein L∈{2K, 2K−1, . . . , 22, 21}. For each of the other columns, the elements of each adjacent pair of the L elements are separated by (N−L)/L elements having a zero value.
The method further comprises, for each of the columns, prohibiting the column from being equal to another column.
In some embodiments, the defining step comprises selecting a code word length, N, and factoring N to determine K and P. In some embodiments, the letting steps and the prohibiting step comprise forming an initial matrix C0 having P rows and 1 column, wherein each element is equal to 1/√{square root over (P)}, and recursively determining an extended matrix Cn as
for n=1, 2, 3, . . . , K to provide the encoding matrix CK, wherein IP·2
In some embodiments, the method may further comprise constructing K+1 mutually orthogonal code subspaces Sm, m=0, 1, 2, . . . , K, of the orthogonal code by selecting:
for the subspace S0: the first column of the encoding matrix CK as a basis vector to span S0, and
for each of the subspaces Sm, m=1, 2, . . . , K: P□2m−1 consecutive columns of the encoding matrix CK as basis vectors to span Sm,
wherein none of the columns of the encoding matrix CK is selected as a basis vector for two different subspaces.
A third aspect is a method for generation of a signal to be transmitted using the orthogonal code according to any the first aspect. The method comprises partitioning a sequence of transmission resources into blocks, each block comprising B transmission resources, where 1<B≤N−P+1, and partitioning each block into 1≤k≤K+1 sub-blocks, each sub-block comprising an amount of transmission resources, wherein the amount is selected from the set {1,P□20,P□21, . . . , P□2K−1}, and wherein no amont of the set is selected more than once for each block.
The method also comprises assigning each sub-block to transmission of a corresponding signal content, associating each sub-block with a corresponding code subspace, Sm, of the orthogonal code, wherein the code subspaces Sm, m=0, 1, 2, . . . , K, are mutually orthogonal, spreading each symbol of the corresponding signal content using a column of the encoding matrix CK, which column is a basis vector of the corresponding associated code subspace, and combining the spread symbols of the sub-blocks in each block to generate the signal to be transmitted.
A fourth aspect is a computer program product comprising a non-transitory computer readable medium, having thereon a computer program comprising program instructions. The computer program is loadable into a data processing unit and configured to cause execution of the method according to any of the second and third aspects when the computer program is run by the data processing unit.
A fifth aspect is an arrangement for generation of a signal to be transmitted using the orthogonal code according to the first aspect. The arrangement comprises controlling circuitry configured to cause partitioning of a sequence of transmission resources into blocks, each block comprising B transmission resources, where 1≤B≤N−P+1, and partitioning of each block into 1≤k≤K+1 sub-blocks, each sub-block comprising an amount of transmission resources, wherein the amount is selected from the set {1,P□20,P□21, . . . , P□2K−1}, and wherein no amont of the set is selected more than once for each block.
The controlling circuitry is also configured to cause assignment of each sub-block to transmission of a corresponding signal content, association of each sub-block with a corresponding code subspace, Sm, of the orthogonal code, wherein the code subspaces Sm, mC=0, 1, 2, . . . , K, are mutually orthogonal, spreading of each symbol of the corresponding signal content using a column of the encoding matrix CK, which column is a basis vector of the corresponding associated code subspace, and combining of the spread symbols of the sub-blocks in each block to generate the signal to be transmitted.
A sixth aspect is a wireless communication transmitter comprising the arrangement of the fifth aspect.
In some embodiments, any of the above aspects may additionally have features identical with or corresponding to any of the various features as explained above for any of the other aspects.
An advantage of some embodiments is that alternative approaches to signal design are provided.
Another advantage of some embodiments is that signal waveforms that have low PAPR/CM and are well suited for high data rate systems may be generated. Yet an advantage of some embodiments is that the approaches are flexible and/or generally applicable.
Further objects, features and advantages will appear from the following detailed description of embodiments, with reference being made to the accompanying drawings. The drawings are not necessarily to scale, emphasis instead being placed upon illustrating the example embodiments.
As already mentioned above, it should be emphasized that the term “comprises/comprising” when used in this specification is taken to specify the presence of stated features, integers, steps, or components, but does not preclude the presence or addition of one or more other features, integers, steps, components, or groups thereof. As used herein, the singular forms “a”, “an” and “the” are intended to include the plural forms as well, unless the context clearly indicates otherwise.
Embodiments of the present disclosure will be described and exemplified more fully hereinafter with reference to the accompanying drawings. The solutions disclosed herein can, however, be realized in many different forms and should not be construed as being limited to the embodiments set forth herein. In the following, embodiments will be described where an orthogonal code having particular characteristics may be used for signal generation.
Generally, such an orthogonal code may be defined by an encoding matrix CK having N rows and N−P+1 columns, wherein N=P□2K, K is a positive integer and P is an odd positive integer. Typically, no column of the encoding matrix is equal to another column of the encoding matrix.
Among the columns of the encoding matrix exactly one may comprise N elements having the same real non-zero value and each of the other columns may comprise exactly (N−L) elements having zero value and exactly L elements having real, non-zero, alternating positive and negative values of the same magnitude wherein L∈{2K,2K−1, . . . , 22, 21}. In each of the other columns, the elements of each adjacent pair of the L elements may be separated by (N−L)/L elements having zero value.
The first column 101 of the encoding matrix 100 has N elements, each equal to 1/√{square root over (96)} (i.e. the same real non-zero value). Generally, the same real non-zero value may typically be a positive value, for example equal to 1/√{square root over (N)}.
Each of the other columns 102 of the encoding matrix 100 comprises exactly (96−L) elements having zero value and exactly L elements having real, non-zero, alternating positive and negative values of the same magnitude. The elements having non-zero values are indicated in
For each of the second to fourth columns 121 there are 25=32 elements having non-zero values, for each of the fifth to tenth columns 122 there are 24=16 elements having non-zero values, for each of the eleventh to twenty-second columns 123 there are 23=8 elements having non-zero values, for each of the twenty-third to forty-seventh columns 124 there are 22=4 elements having non-zero values, and for each of the forty-eighth to ninety-fourth columns 125 there are 21=2 elements having non-zero values. Thus there are 96/32=3 columns having 32 non-zero elements, 96/16=6 columns having 16 non-zero elements, 96/8=12 columns having 8 non-zero elements, 96/4=24 columns having 4 non-zero elements, and 96/2=48 columns having 2 non-zero elements. Generally, the number of columns comprising exactly L elements having non-zero values may be equal to N/L.
That the non-zero values are alternating positive and negative values of the same magnitude (not visible in
Continuing the example of column 115, it can be seen that each adjacent pair of non-zero elements (e.g. the pair of elements 111 and 112) are separated by a number, (N−L)/L, of zero-valued elements 110. The remaining zero-valued elements are located in one or more of the respective ends of the column such that the diagonal pattern of non-zero valued elements shown in
The encoding matrix illustrated in
For moderate to large values of K, the encoding matrix CK is sparse, in the sense that it has few non-zero elements compared to its total number of elements. For example, sparseness may be defined as the ratio of the number of non-zero elements to the total number of elements falling below a sparseness threshold value. Examples of such sparseness threshold values may for example, lie in any of the intervals [0,0.1], [0,0.2], and [0,0.3]. For example, an example sparseness threshold value may be 0.1 or 0.25.
The number nK of non-zero elements in CK obeys the recursive relation n0=2P, nm=2nm−1+P2m, 1≤m≤K, from which it follows that nK=(K+1)N. Hence, the ratio of non-zero elements to the total number of elements in CK is
This is of practical interest because it implies that multiplication by the matrix CK has lower complexity than ordinary matrix multiplication, since a large percentage of its elements are zero-valued.
In step 210, the encoding matrix CK is defined as having N rows and N−P+1 columns, wherein N=P.2K, K is a positive integer and P is an odd positive integer. For example, step 210 may comprise selecting a code word length, N, and factoring N to determine K and P. In step 220, the encoding matrix is constructed by:
letting exactly one of the columns of the encoding matrix comprise N elements having the same real non-zero value (220a, compare with 101 of
letting each of the other columns of the encoding matrix comprise exactly (N−L) elements having zero value and exactly L elements having real, non-zero, alternating positive and negative values of the same magnitude wherein L∈{2K2K−1, . . . , 22, 21}, and wherein (for each column) the elements of each adjacent pair of the L elements are separated by (N−L)/L elements having a zero value (220b, compare with 121, 122, 123, 124, 125 of
(for each of the columns) prohibiting the column from being equal to another column (220c, compare with 101, 121, 122, 123, 124, 125 of
Typically, step 220 may further comprise fulfilling some or all of the requirements described above in connection to
For example, step 220 may comprise setting a counter n to zero as illustrated in 221 and forming an initial matrix C0 as illustrated by step 222. In a typical example, the initial matrix C0 has P rows and 1 column, and each element of C0 is equal to 1/√{square root over (P)}, which may be seen as a normalization factor.
Then, the encoding matrix CK may be provided by recursively determining an extended matrix Cn as
for n=1, 2, 3, . . . , K to the encoding matrix CK, wherein IP·2n−1 is an identity matrix having P□2n−1 rows and P□2n−1 columns, and wherein 1/√{square root over (2)} provides normalization. In
When N=96 in the process described by steps 221-225, the method results in an encoding matrix as illustrated in
The encoding matrix CK as disclosed herein has properties that enable it to span K+1 mutually orthogonal code subspaces Sm, m=0, 1, 2, . . . , K. Orthogonality is defined in the code domain, which may translate to orthogonality in frequency domain as will be seen later on.
By definition, a linear subspace of a vector space (the code space or code domain) is spanned by the vectors {v0, . . . , VM−1} if any vector in the subspace can be expressed as a linear combination of v0, . . . , vM−1; Σk=0M−1ckvk with complex coefficients ck. Such a subspace may be denoted by span {v0, . . . , vM−1}.
In a matrix A of dimension N×M wherein the M columns are numbered from 0 to M−1, any column of A can be considered as a vector in the vector space CN consisting of N-tuples of complex numbers and the m-th column of A may be denoted A(:,m). If n<m are integers, then the sequence of numbers n,n+1, . . . , m−1, m may be written as n:m, if m is multiple of a the sequence of numbers n,n+α,n+2α, . . . , m−α,m may be written as n:α:m, and if m is not a multiple of α then n:α:m may denote the sequence n,n+α,n+2α, . . . , n+kα, where k satisfies m−α<n+kα<m. The linear subspace spanned by the columns A(:,n), A(:,n+1), . . . , A(:,m) is denoted span {A(:,n:m)}.
For the example encoding matrix created via steps 221-225 of
0=span{ CK(:,0)}, a one dimensional complex vector space spanned by the first column of CK, and
m=span{CK(:, im−1+1: im)}, m=1, 2, . . . , K m, respective vector spaces spanned by dm consecutive columns of CK, where the indices dm and im are defined as:
It is clear that each column of CK belongs to some m, 0≤m≤K, since iK=dK+iK−1=dK+dK−1+iK−2= . . . =dK+ . . . +d1=P Σm=1K2m−1=P(2K−1)=N−P.
Hence, although not illustrated in
for the subspace S0: the first column of the encoding matrix CK as a basis vectors to span S0 (compare with 101 of
for each of the subspaces Sm, m=1, 2, . . . , K: P□2m−1 consecutive columns of the encoding matrix CK as basis vectors to span Sm (compare with the sets of columns 121, 122, 123, 124, 125 of
These linear subspaces have a number of useful and interesting properties that make them well suited for application to transmitter and receiver technology in wireless communication:
They are mutually orthogonal, m≠n→m⊥n, which follows immediately from that the encoding matrix is orthogonal.
The dimensionality of m is dim(m)=dm since is spanned by dm columns and these columns are linearly independent due to that the encoding matrix is orthogonal.
The dm columns that span m are closely related to each other in that any of these columns can be obtained by a cyclic shift of any other column in m.
If FN is the DFT matrix of size N×N, then 0=span{FN(:,0)} and m=span{FN(:,2K−m:2K−m+1:N)}, m>0.
The last property implies that there is a one-to-one correspondence between linear subspaces spanned by columns of CK and linear subspaces spanned by columns of the DFT matrix. In particular, the DFT of a vector ν∈m has at most dm non-zero entries, and these correspond to the subcarrier numbers 2K−m: 2K−m+1:N. Also, if ν∈m and u ∈n then u and ν are orthogonal in the frequency domain.
This property is exemplified in
The linear subspace S1 is spanned by columns 1-3 of CK as emphasized in
The association between the encoding matrix CK and the DFT matrix FN as exemplified by Tables 1a and 1b may be used to generate signals having at least some of the desirable properties discussed earlier herein. Furthermore, flexible multiplexing may be achieved since the different subspaces may be used to separate different signal parts such as different users. In the receiver of such signals, (linear) equalization may be simplified due to the sparseness of the code. For example, the information carried by constellation symbols (e.g. quadrature amplitude modulation, QAM, symbols) can be recovered by multiplication of the received samples by the transpose of the code matrix, since this matrix is orthogonal. Because of the sparseness, matrix multiplication can be implemented efficiently, since scalar multiplications by the terms with zero values may be skipped.
Thus, the signal design is based on an orthogonal code as explained herein. The signal constellation symbols (e.g. pulse amplitude modulation, PAM, or quadrature amplitude modulation, QAM) may be spread by multiplication of each symbol with a corresponding code word (a.k.a. a column of the encoding matrix or a basis vector of a subspace). The length of the code words may be equal to the minimum size of FFT (fast Fourier transform) and/or DFT required at the receiver side in order to perform frequency domain equalization (compensating the effect of the channel by means of frequency domain processing).
Furthermore, the signal parts can be separated at the receiver by means of the DFT, since the components of the signal corresponding to different subspaces are carried by orthogonal frequency domain subcarriers.
Embodiments may also be employed in OFDM-based systems in which case there are one or more pre-defined FFT sizes. In NR, a typical FFT size is N=96 and in IEEE802.11ax, a typical FFT size is N=256 (P=1, K=8).
In step 310, a sequence of transmission resources (e.g. symbols) is partitioned into blocks, each block comprising B transmission resources, where 1≤B≤N−P+1, and in step 320 each block is partitioned into 1≤k≤K+1 sub-blocks, each sub-block comprising an amount of transmission resources, wherein the amount is selected from the set {1,P□20,P□21, . . . P□2K−1}, and wherein no amont of the set is selected more than once for each block. Thus, the size of each of the sub-blocks corresponds to the dimensionality of a corresponding sub-space of CK.
In step 330, each sub-block is assigned to transmission of a corresponding signal content, e.g. to a particular user, reference symbols, etc., and instep 340, each sub-block is associated with a corresponding code subspace, Sm, of the orthogonal code.
In step 350, each symbol of the corresponding signal content is spread using a column of the encoding matrix CK, which column is a basis vector of the corresponding associated code subspace, and in step 360 the spread symbols of the sub-blocks in each block are combined to generate the signal to be transmitted. The method may also comprise transmitting the generated signal as illustrated by step 370.
A few example applications of the method described in
This example relates to signal generation for a single transmitter (TX) chain and a single user. As will be seen below, the principles may be generalized to other scenarios, e.g. for multiple users and/or multiple transmitter chains.
The bit stream to be transmitted is mapped to complex-valued or real-valued symbols drawn from a symbol constellation (e.g. QAM, PAM, or PSK-phase shift keying). The constellation symbols are grouped (partitioned) into blocks of size B, e.g. blocks having maximum size B=N−P+1. If a block consists of less than N−P+1 constellation symbols, it may be filled up to contain exactly N−P+1 symbols by adding zeros.
Each block is further partitioned into K+1 sub-blocks, each having size dm (by construction, Σm=0KdmB=N−P+1, the total number of columns in CK). The symbols partitioned into each sub-block may serve some specific purpose, which may differ from sub-block to sub-block. For example, one sub-block may comprise pilot symbols or reference symbols for channel estimation, channel tracking, or phase tracking, while another sub-block may comprise data symbols.
Each of the constellation symbols in the sub-block of size dm is spread over a corresponding basis vector of m (one symbol per basis vector) and the result is combined by vector addition over the sub-space m to generate a resulting vector xm. By definition xm∈m and xm and xn are orthogonal in the frequency domain for n≠m. If the constellation symbols are considered as a vector νm=[νi
A transmission symbol x of size N, i.e. the digital baseband signal corresponding to one modulation symbol (sampled at the symbol rate), is obtained by combining the vectors xi, using vector addition: x=Σm=0Kxm. Alternatively, if the constellation symbols are stacked into a vector ν=[ν0 . . . νK]T then x can be generated by applying the matrix CK as a linear transform to the intput vector of constellation symbols: x=CK□ν. The transmission symbol x are concatenated (possibly after addition of a cyclic prefix), forwarded to an ADC (analog-to-digital converter), up-converted to RF, amplified and transmitted.
Multi-user multiplexing can be performed in the code domain, in the frequency domain, or simultaneously in both. For example, one or more subspaces can be assigned to one user, so that its baseband signal xm belongs to m, and other orthogonal subspaces can be assigned to different users, whereby up to K users can be orthogonally multiplexed.
When multiple TX ports are available, it may be advantageous to map different antenna ports to different subspaces. If the linear subspace m is mapped to a particular TX antenna port, then the component xm of the baseband signal is transmitted through that antenna. This approach may result in higher power efficiency at the transmitter than if this approach was not used.
Taking VLC systems as an example, a photodetector is typically thousands of wavelengths in linear size (and millions of square wavelengths in area), and therefore gives spatial diversity that prevents multi-path fading. A photodetector functions as an antenna array with a large amount of antenna elements, wherein the received signal at the antenna elements are squared, filtered, and added. Hence, a mapping from linear subspaces to antenna ports that yields a low PAPR at each TX port may result in increased power efficiency in the sense of increased SNR at the receiver, when compared to traditional RF diversity techniques.
Reduction of the PAPR can be achieved by introducing subspace specific rotations. That is, it may be advantageous to select angles θm such that the digital baseband signal x=Σm=0Kejθ
Moving on from these examples to
To this end the controlling circuitry may comprise or be otherwise associated with storing circuitry (CODE, e.g. a memory) 411 configured to store information indicative of the encoding matrix CK. Possibly, but not necessarily, the controlling circuitry may also be configured to cause construction of (e.g. construct) the encoding matrix CK.
The controlling circuitry may also comprise or be otherwise associated with partitioning circuitry (PART, e.g. a practitioner) 413 configured to partition a sequence of transmission resources into blocks and each block into sub-blocks, as described above.
The controlling circuitry may also comprise or be otherwise associated with assignment circuitry (ASSI, e.g. an assigner) 414 configured to assign each sub-block to transmission of a corresponding signal content.
The controlling circuitry may also comprise or be otherwise associated with association circuitry (ASSO, e.g. an associator) 412 configured to associate each sub-block with a corresponding code subspace of the orthogonal code.
The controlling circuitry may also comprise or be otherwise associated with spreading circuitry (SPR, e.g. a spreader) 420 configured to spread each symbol of the corresponding signal content using a column of the encoding matrix CK as described above.
The controlling circuitry may also comprise or be otherwise associated with combining circuitry (COMB, e.g. a combiner) 430 configured to combine the spread symbols of the sub-blocks in each block to generate the signal to be transmitted.
The controlling circuitry may also comprise or be otherwise associated with transmitting circuitry (e.g. a transmitter; here illustrated as part of a transceiver TX/RX) 430 configured to transmit the generated signal.
In various embodiments one or more of the storing circuitry, the partitioning circuitry, the assignment circuitry, the association circuitry, the spreading circuitry, the combining circuitry and the transmitting circuitry may also be comprised in the arrangement 400.
Thus, a sparse orthogonal code is introduced which may be used in signal generation such that the modulation symbols are spread over orthogonal code words. Because of the sparsity, the resulting time-domain waveform resembles a waveform generated by single carrier modulation, with low PAPR/CM.
The code words correspond to basis vectors that can be grouped to generate orthogonal subspaces. The subspaces are also orthogonal in the frequency domain, which provides for frequency domain multiplexing, code domain multiplexing, or a combination.
Suitable receiver algorithms are very similar to those employed in an FFT-based DFT-s-OFDM receiver with frequency domain equalization; and have similar complexity. In one example, the receiver may comprise cyclic prefix removal, FFT, frequency domain equalization, IFFT (inverse FFT), correlation with the encoding matrix CK (i.e. de-spreading), modulation symbol de-mapping and channel decoding. All of these blocks may be re-used from a DFT-s-OFDM receiver, with exception of the correlation with the encoding matrix. If the vector r contains the received signal sampled at the symbol rate after equalization, then the de-spreading comprises correlating r with the basis vectors of the code (i.e. the columns of the code matrix CK), which can be expressed as CKTr.
When the signal is generated such that the baseband signal component xm is modulated only by reference symbols, then a frequency domain channel estimate can be generated by projection of the received samples onto a linear subspace, time domain channel estimation (e.g. least squares estimation) and application of FFT. More generally, the reference symbols may modulate several components of the baseband signal, say xm, xn . . . , xq, wherein the projection operation projects the received signal into the union of the subspaces m, n, . . . , q.
Various embodiments described herein may be suitable for use in NR to design 1-symbol short NR-PUCCH for coverage extension and/or in VLC to generate waveforms appropriate for dimmable lights or other applications requiring high SNR (signal-to-noise ratio) and low output power.
The described embodiments and their equivalents may be realized in software or hardware or a combination thereof. The embodiments may be performed by general purpose circuitry. Examples of general purpose circuitry include digital signal processors (DSP), central processing units (CPU), co-processor units, field programmable gate arrays (FPGA) and other programmable hardware. Alternatively or additionally, the embodiments may be performed by specialized circuitry, such as application specific integrated circuits (ASIC). The general purpose circuitry and/or the specialized circuitry may, for example, be associated with or comprised in an apparatus such as a wireless communication transmitter.
Embodiments may appear within an electronic apparatus (such as a wireless communication transmitter) comprising arrangements, circuitry, and/or logic according to any of the embodiments described herein. Alternatively or additionally, an electronic apparatus (such as a wireless communication transmitter) may be configured to perform methods according to any of the embodiments described herein.
According to some embodiments, a computer program product comprises a computer readable medium such as, for example a universal serial bus (USB) memory, a plug-in card, an embedded drive or a read only memory (ROM).
According to some embodiments, the computer program may, when loaded into and run by the data processing unit, cause execution of method steps according to, for example, any of the methods illustrated in
Generally, all terms used herein are to be interpreted according to their ordinary meaning in the relevant technical field, unless a different meaning is clearly given and/or is implied from the context in which it is used.
Reference has been made herein to various embodiments. However, a person skilled in the art would recognize numerous variations to the described embodiments that would still fall within the scope of the claims.
For example, the method embodiments described herein discloses example methods through steps being performed in a certain order. However, it is recognized that these sequences of events may take place in another order without departing from the scope of the claims. Furthermore, some method steps may be performed in parallel even though they have been described as being performed in sequence. Thus, the steps of any methods disclosed herein do not have to be performed in the exact order disclosed, unless a step is explicitly described as following or preceding another step and/or where it is implicit that a step must follow or precede another step.
In the same manner, it should be noted that in the description of embodiments, the partition of functional blocks into particular units is by no means intended as limiting. Contrarily, these partitions are merely examples. Functional blocks described herein as one unit may be split into two or more units. Furthermore, functional blocks described herein as being implemented as two or more units may be merged into fewer (e.g. a single) unit.
Any feature of any of the embodiments disclosed herein may be applied to any other embodiment, wherever suitable. Likewise, any advantage of any of the embodiments may apply to any other embodiments, and vice versa.
Hence, it should be understood that the details of the described embodiments are merely examples brought forward for illustrative purposes, and that all variations that fall within the scope of the claims are intended to be embraced therein.
Filing Document | Filing Date | Country | Kind |
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PCT/SE2017/051324 | 12/21/2017 | WO |
Publishing Document | Publishing Date | Country | Kind |
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WO2019/125253 | 6/27/2019 | WO | A |
Number | Name | Date | Kind |
---|---|---|---|
7609749 | Hall et al. | Oct 2009 | B1 |
8837270 | Zhang | Sep 2014 | B2 |
9112643 | Zhang | Aug 2015 | B2 |
9264164 | Wang | Feb 2016 | B2 |
9379857 | Zhang | Jun 2016 | B2 |
9602259 | Zhang | Mar 2017 | B2 |
9948421 | Zhang | Apr 2018 | B2 |
10142082 | Shattil | Nov 2018 | B1 |
20120093139 | Hooli | Apr 2012 | A1 |
20160254889 | Shattil | Sep 2016 | A1 |
Entry |
---|
Supplementary European Search Report dated Dec. 2, 2020 for European Patent Application No. 17935759.5, 4 pages. |
Wu, Di et al., “Adaptive Rate QS-CDMA UWB Systems Using Ternary OVSF Codes with a Zero-Correlation Zone”, Wireless Communications and Networking Conference, Apr. 3-6, 2006, Piscataway, NJ, USA, pp. 1068-1073 (6 pages). |
Rintakoski, Timo et al., “Hardware Unit for OVSF/Walsh/Hadamard Code Generation”, System-On-Chip, International Symposium on Tampere, Nov. 16-18, 2004, Piscataway, NJ, USA, pp. 143-145 (3 pages). |
International Search Report and Written Opinion of the International Searching Authority for International Application No. PCT/SE2017/051324, dated Nov. 9, 2018. |
Gerakoulis et al., “Extended Orthogonal Code Designs with Applications in CDMA,” Spread Spectrum Techniques and Applications, 2000 IEEE Sixth International Symposium on Sep. 6-8, 2000, vol. 2, pp. 657-661. |
Tai-Kuo Woo, “Orthogonal Variable Spreading Codes for Wide-Band CDMA,” IEEE Transactions on Vehicular Technology, vol. 51, No. 4, Jul. 2002, pp. 700-709. |
Cheon et al., “Sparse orthogonal matrices,” Linear Algebra and Its Applications, vol. 373, 2003, pp. 211-222. |
Benner et al., “SR and SZ algorithms for the symplectic (butterfly) eigenproblem,” Linear Algebra and Its Applications, vol. 287, No. 1, 1999, pp. 41-76. |
Wu et al., “On Visible Light Communication Using LED Array with DFT-Spread OFDM,” IEEE ICC 2014—Optical Networks and Systems, pp. 3325-3330. |
ZTE, “NR short PUCCH structure for more than 2-bit UCI,” 3GPP TSG RAN WG1 Meeting #89, Hangzhou, P.R. China, May 15-19, 2017, R1-1707169, pp. 1-8. |
Number | Date | Country | |
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20200374024 A1 | Nov 2020 | US |