The present subject matter described herein, in general, relates to frequency offset and channel estimation in wireless systems. More particularly, the invention relates to training sequence design for frequency offset and channel estimation in distributed wireless systems.
In wireless communication systems, joint estimation of frequency offsets and channel gains is computationally complex. Generally, estimation in modern wireless communication is performed by sending a known template of signal called the training sequences and comparing the received training sequence with known pattern of training at the receiver. However, communication systems with multiple transmit and receive antennas require the estimation of frequency offset and channel matrix with dimension equal to the number of transmit and receive antennas. Cooperative communications or Distributed Multiple-Input Multiple-Output (DMIMO) systems have been emerging as a viable option for energy-efficient wireless networks because of its inherent merits of system coverage extension and capacity enhancement along with combating the limitations related to conventional collocated MIMO. The distributed MIMO architecture may be utilized for relaying the source message to a destination resulting in extension of cell coverage, and QoS enhancement through cooperative communication via virtual antenna array (VAA) structure.
On the other hand, orthogonal frequency division multiplexing (OFDM) is a well-known paradigm to support high data rate communications. Accordingly, DMIMO-OFDM system has emerged as a strong candidate for beyond fourth generation mobile communications. The reliable communication of DMIMO-OFDM system largely depends on estimating channel characteristics and multiple carrier frequency offsets (MCFOs) for each transmit-receive antenna pair. The joint estimation process is difficult and computationally complex in high data rate application in practice.
Cooperative or distributed multi-input multi-output (DMIMO) communication system is a key enabler of small-cell deployment, coverage extension, and capacity enhancement by composing an intelligent network with the wireless collaborative nodes. Orthogonal frequency division multiplexing (OFDM) is a strong paradigm because of its inherent robustness to frequency-selective channel. The benefits of DMIMO-OFDM system are maximized when all channels between the transmit antennas and the receive antennas are perfectly known. Imperfect knowledge of channel state information (CSI) causes reduction of capacity and bit error rate (BER) of DMIMO systems.
Performance of DMIMO systems also largely depends on multiple carrier frequency offsets (MCFOs) resulting from individual oscillator of each distributed transmitting nodes and multiple antenna interference (MAI) between received signals. MAI makes MCFOs estimation more difficult. Hence, the knowledge of MCFOs and channel gains are required for coherent deployment of DMIMO-OFDM systems. In practice, joint estimation process is carried out by two techniques; Blind-based and training sequences (TS) based. Blind estimation does not exploit the knowledge of training symbols, and focus on deterministic or stochastic properties of the system. Hence, it does not provide robust estimation for a scenario like DMIMO systems as the wireless nodes are distributed over a geographical area. In training sequence (TS) based method, the TS may be superimposed with information symbols in order to save the transmission bandwidth. The accuracy in such method severely suffers from the interference of information symbols. In contrast, TS and information bearing symbols may be sent in different time slots in time division multiplexing (TDM) mode.
In TDM, the estimation process is dependent on optimal TS design. Accordingly, there is a need to design joint optimal training sequence (TS) for estimating spatially correlated channel characteristics and multiple carrier frequency offsets (MCFOs) in DMIMO-OFDM system in association with its method of generation and apparatus.
For existing documents related to training sequence design for joint channel and frequency offsets estimation in wireless system, reference is made to a non-patent literature “Optimized Training Sequences for Spatially Correlated MIMO-OFDM”—Hoang D. and et. al., IEEE Trans. on Wireless Commun., vol. 9, no. 9, pp. 2768-2778, 2010, wherein collocated MIMO-OFDM system is considered and optimization criterion is based on particular channel estimator (MMSE).
Reference is also made to document, “Optimal Training Design for Channel Estimation in Decode-and-Forward Relay Networks with Individual and Total Power Constraints”—Feifei Gao and et. al., IEEE Trans. on Signal Process. vol. 56, no. 12, pp. 5937-5949, 2008, wherein spatial correlation has not taken into account and optimization criterion is based on minimization of particular estimator's performance (maximum likelihood (ML) and MMSE).
Reference is also made to document, “Optimal Superimposed Training Design for Spatially Correlated Fading MIMO Channels” IEEE Trans on Wireless Commun. vol. 7, no. 8, pp. 3206-3217, 2008, wherein collocated MIMO systems is considered and MMSE channel estimation is the optimization objective function.
Reference is also made to document, “Robust Training Sequence Design for Spatially Correlated MIMO Channel Estimation”—Nafiseh Shariati and et. al., IEEE Trans. on Vehicular Tech. vol. 60, no. 7, pp. 2882-2894, 2011, wherein collocated MIMO system is considered and optimization criterion is based on MMSE channel estimation.
Reference is further made to document, “Joint CFO and Channel Estimation for Multiuser MIMO-OFDM Systems with Optimal Training Sequences”-Jianwu Chen and et. al., IEEE Trans. on Signal Process. vol. 56, no. 8, pp. 4008-4019, 2008, wherein Collocated MIMO system is considered and spatially correlated channel is not considered.
Reference is further made to document US20030016621, entitled “Optimum training sequences for wireless systems” wherein the effect of spatial correlation is not exploited.
Reference is also made to document US20060280266 A1, entitled “Optimum training sequences for wireless systems” wherein spatially correlated channel is not considered.
Reference is also made to document US20040062211 A1, entitled “Assigning training sequences based on spatial channels in a wireless communications system” wherein spatially correlated channel is not considered and joint training sequence design is also not considered.
Reference is further made to document US 20120300644A1, entitled “Method and device for estimating carrier frequency offsets” wherein estimation of frequency offsets is considered while training sequence design is not considered.
To summarize the drawbacks of the prior art: (a) Single parameter estimation method is considered for Collocated MIMO-OFDM system. (b) Optimization criterion is based on particular channel estimator's performance. (c) Spatial correlated channel is not taken into account.
Thus, modern wireless communication approaches towards 5G technology and also demands very high speed energy-efficient communications. Distributed multi-input multi-output (DMIMO) systems reinforce all the need of 5G communications by composing an intelligent network with the wireless collaborative nodes. The coherent deployment of DMIMO systems are based on the proper knowledge of channel state information (CSI), multiple carrier frequency offset (MCFO). Knowledge of such impairments may be obtained by sending a known sequence to the receiver resulting in a need of design of optimal training sequence (TS). The method of training sequence design in this patent provides a spectrally effective way of retrieving CSI and MCFO.
Accordingly, there is a need to develop a system and method for joint optimal Training Sequences design for spatially correlated channel estimation and frequency synchronization of distributed wireless systems that enables a spectrally effective way of jointly retrieving the information of MCFOs and channel gains in DMIMO-OFDM systems.
The following presents a simplified summary of the invention in order to provide a basic understanding of some aspects of the invention. This summary is not an extensive overview of the present invention. It is not intended to identify the key/critical elements of the invention or to delineate the scope of the invention. Its sole purpose is to present some concept of the invention in a simplified form as a prelude to a more detailed description of the invention presented later.
An objective of the present invention is to provide a system and a method of generation and utilization of optimal training sequences for joint channel and frequency offset estimation in distributed multiple-input multiple-output (DMIMO) orthogonal frequency division multiplexing (OFDM) systems over spatially correlated channel.
Another objective of the present invention is to provide an optimal method of training sequence design for collocated and distributed communication systems with multiple antenna node structure.
Accordingly, in one aspect, the present invention provides a method of generation and utilization of optimal training sequences (TSs) for joint channel and frequency offset estimation in distributed multiple-input multiple-output (DMIMO) orthogonal frequency division multiplexing (OFDM) system over spatially correlated channel in a wireless communication network, wherein said method comprising:
In another aspect, there is provided a system for generation and utilization of optimal training sequences (TSs) according to the method steps as mentioned above, for joint channel and frequency offset estimation in distributed multiple-input multiple-output (DMIMO) orthogonal frequency division multiplexing (OFDM) system with plurality of antennas over spatially correlated channel, wherein said system comprising: plurality of source node, a common central unit (CCU), and a plurality of destination nodes;
In both aspects, the destination estimates channel, calculates channel covariance matrix, noise covariance matrix and measures received signal power (RSSI). The destination sends RSSI, received signal, channel and noise covariance matrices to CCU.
In both aspects, the CCU allocates power budget for all source-destination pair link given the RSSI information.
In both aspects, the CCU defines a threshold on power budget.
In both aspects, the CCU configured to shut down a source-destination pair link if said power budget is less than said threshold.
In both aspects, if said power budget is more than said threshold, said CCU configured to generates MtR numbers of said optimal training sequences (TSs), where Mt defines the number of transmitting antennas and R is the number of source nodes.
In both aspects, the CCU broadcasts a look-up table (LUT) containing the updated optimal training sequences, to said source-destination pair and multicast row number of LUT for next transmission.
In both aspects, the CCU multicasts row number of said LUT, node identification number, antenna number and threshold of MSE of channel estimation to each source-destination pair.
In both aspects, the source node transmits said OFDM packets to said destination node by using said optimal TSs selected as per said row number as instructed by CCU.
In both aspects, the destination node computes mean square error (MSE) of channel estimation.
In both aspects, if said MSE is greater than threshold, said destination node sends RSSI, received signal to CCU.
In both aspects, for the last packet transmission, said destination node configured to update said CCU about a last training sequence used, noise and channel covariance matrices.
In both aspects, for generation of TSs CCU computes hybrid Cramer-Rao bound (HCRB) for channel and frequency offsets.
In both aspects, HCRB for channel estimation is obtained by computing hybrid information matrix (HIM).
In both aspects, the HIM is obtained by taking the addition of expected value of Fisher information matrix (FIM) and prior information matrix (PIM).
In both aspects, the PIM is obtained from precomputed channel covariance matrix in the destination which was feed backed to CCU.
In both aspects, the PIM is constituted as
where in Rh is the channel covariance matrix with other entries zero as frequency offset is considered to be deterministic.
In both aspects, the frequency offset-channel coefficient correlation terms of expected matrix are reduced to zero due to consideration of zero mean value of channel pdf.
In both aspects, the HCRB of channel is computed by taking the inverse of HIMhh.
In both aspects, the HCRB for frequency offset estimation is obtained from HIMee.
In both aspects, the CCU computes singular values of HCRB of channel estimation matrix by eigen value decomposition.
In both aspects, the CCU computes singular values of HCRB of frequency offset estimation matrix by eigen value decomposition.
In both aspects, the CCU computes singular values of channel covariance matrix by eigen value decomposition.
In both aspects, the optimized singular value of training sequence (σC,i) for channel estimation is obtained by minimizing the singular value of HCRB of channel estimation summation over all the antennas subject to the total power constraint (P) and allocated power constraint for the typical source-destination link (pi).
In both aspects, the method is non-linear. The optimal σC,i of TS is obtained from the algorithm, where in ground and ceiling power levels for each transmit-receive link, calculated in CCU.
In both aspects, the ground power levels for each link is obtained by ½ of inverse of singular values of channel covariance matrix.
In both aspects, the ceiling power level for each link is obtained by addition of ½ of inverse of singular values of channel covariance matrix and allotted power budget of that link computed by CCU.
In both aspects, the source-destination link (Mk) is selected for transmission from the set of MtR (Mk≤MtR) such that summation of ground power levels over Mk is less than or equal to the ceiling level of the typical link k.
In both aspects, the CCU calculates expected power level by performing the following calculation (ceiling power level of kth path-summation of ground levels over Mk)−(ceiling power level of kth path-summation of ceiling levels over all paths).
In both aspects, if expected power level is equal to overall power (P) of the system, CCU computes the power depth (γ) by the ceiling power level.
In both aspects, if expected power level is greater than overall power (P) of the system, CCU calculates the power depth (γ) (by Eq. (21) as mentioned in the following section).
In both aspects, if γ is greater than ceiling power level of the kth link, CCU saturates kth link, no more power is poured to the typical link.
In both aspects, CCU distributes remaining power to other links with the power depth γ.
In both aspects, optimal singular value of TS is obtained by subtracting between power depth (γ) and ground power level of the particular kth link.
In both aspects, if expected power is less than overall system power (P), Mk is updated for (k+1)th link.
In both aspects, the optimized singular value of training sequence (σC,i) for frequency offset estimation is obtained by minimizing the singular value of HCRB of frequency offset estimation summation over all the antennas subject to the total power constraint (P) and allocated power constraint for the typical source-destination link (pi).
In both aspects, the method is non-linear. The optimal σC,i of TS is obtained from the proposed algorithm, where, CCU initializes variables j and kj to zero.
In both aspects, the source-destination link (Mk) is selected such that summation of allotted power level for each link over Mk is less than overall system power (Σk=1M
In both aspects, the CCU computes two power levels (WL1 and WL2) for each transmit-receive link.
In both aspects, one power level WL1 is computed by taking summation of X over t where kj+1≤t≤Mk. X is obtained as multiplication of power allotted for each link (pi) with square root of singular value of channel covariance matrix.
In both aspects, another power level WL2 is computed by following manner (total overall system power-summation of pi over kj+1)×(summation of square root of singular value of channel covariance matrix over all links).
In both aspects, if WL1 is greater than WL2, CCU calculates optimal σC,i of TS (using Eq. (25) as mentioned in the following section).
In both aspects, if WL1 is less than WL2, CCU sets kj+1=t and calculates optimal σC,i of TS (using Eq. (26) as mentioned in the following section).
In both aspects, if kj+1 is equal to Mk, increase kj to kj+1 and CCU calculates optimal σC,i of TS (using Eq. (25) as mentioned in the following section).
In both aspects, the optimal TS is designed by arranging the optimal singular values diagonally with other entries of the matrix zero (which is also shown using Eq. (27) as mentioned in the following section).
In both aspects, the length of designed optimal training sequences are equal to number of transmit antennas which have maximum power content multiplied with number of channel paths resulting in minimum length of training sequences.
Other aspects, advantages, and salient features of the invention will become apparent to those skilled in the art from the following detailed description, which, taken in conjunction with the annexed drawings, discloses exemplary embodiments of the invention.
The above and other aspects, features, and advantages of certain exemplary embodiments of the present invention will be more apparent from the following description taken in conjunction with the accompanying drawings in which:
Persons skilled in the art will appreciate that elements in the figures are illustrated for simplicity and clarity and may have not been drawn to scale. For example, the dimensions of some of the elements in the figure may be exaggerated relative to other elements to help to improve understanding of various exemplary embodiments of the present disclosure. Throughout the drawings, it should be noted that like reference numbers are used to depict the same or similar elements, features, and structures.
The following description with reference to the accompanying drawings is provided to assist in a comprehensive understanding of exemplary embodiments of the invention. It includes various specific details to assist in that understanding but these are to be regarded as merely exemplary.
Accordingly, those of ordinary skill in the art will recognize that various changes and modifications of the embodiments described herein can be made without departing from the scope of the invention. In addition, descriptions of well-known functions and constructions are omitted for clarity and conciseness.
The terms and words used in the following description and claims are not limited to the bibliographical meanings, but, are merely used by the inventor to enable a clear and consistent understanding of the invention. Accordingly, it should be apparent to those skilled in the art that the following description of exemplary embodiments of the present invention are provided for illustration purpose only and not for the purpose of limiting the invention as defined by the appended claims and their equivalents.
It is to be understood that the singular forms “a,” “an,” and “the” include plural referents unless the context clearly dictates otherwise.
By the term “substantially” it is meant that the recited characteristic, parameter, or value need not be achieved exactly, but that deviations or variations, including for example, tolerances, measurement error, measurement accuracy limitations and other factors known to those of skill in the art, may occur in amounts that do not preclude the effect the characteristic was intended to provide.
Features that are described and/or illustrated with respect to one embodiment may be used in the same way or in a similar way in one or more other embodiments and/or in combination with or instead of the features of the other embodiments.
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.
The present invention is related to the development of a system and method for joint optimal training sequences design for spatially correlated channel estimation and frequency synchronization in Distributed multi-input multi-output (DMIMO)-OFDM systems.
Distributed multi-input multi-output (DMIMO) OFDM communication systems have a key enabler of small-cell deployment, capacity enhancement. In such network, the signal received at the destination node is characterized by multiple carrier frequency offsets (MCFOs) due to independent oscillators of the transmitting nodes and improper channel state information (CSI) as receiver does not know the channel. Hence, the knowledge of offsets and channel gains are required for coherent deployment of DMIMO-OFDM systems. In this patent, joint training sequence (TSs) design method is proposed for joint estimation of MCFOs and channel estimation over spatially correlated channel. The proposed TSs are short length, hence spectrally efficient.
In one implementation,
In one implementation,
In one implementation,
In one implementation,
In the implementation, the source nodes choose optimally designed TS as the preamble according to the LUT, add data payloads, guard symbols to produce OFDM packet as shown in the
(1) Training Sequence Design Method:
In one implementation,
grl=Rrl1/2grwl(Rtl1/2)T 1
where, the elements of grwl∈CMr×Mt are uncorrelated independent and identically distributed as CN(0, I). Rrl∈CMr×Mr and Rtl∈CMt×Mt are receive and transmit correlation matrices, respectively. The vector of channel coefficients from rth node to destination may be represented as hr=[vec(gr0), vec(gr1), . . . , vec(gr(Lh−1))]∈CLhMtMr, where, Lh is the length of channel. ϵr is the frequency offset corresponding to rth node. Let, for K number of subcarriers, the training sequence is s(k), k=0, 1, . . . , (K−1) or equivalently,
Sr=[S(0),S(1), . . . ,S(K−1)]T∈CK×M
S=[S1. . . SR] 3
Let, Mr(S(k))=[WKk,0SrT(k) WKk,1SrT(k) . . . WKk, (L
where, y=[y(0) y(1) . . . y(K−1)]T ∈KM
Mr(Sr)=[Mr(s(0))Mr(s(1)) . . . Mr(s(K−1))]T=[F0s F1s . . . FL−1s]⊗IM
Γ(ϵr)=diag{e(j2πϵ
Rewriting Eq. (3) as
y=Ωh+n 5
where, Ω=[Γ(ϵ1)M1(S) . . . Γ(ϵR)MR(S)] and h=[h1 . . . hR]T. The received signal vector y is circularly symmetric complex Gaussian random variable, i.e., y˜CN(μy, Σy), with mean μy Ωh and covariance matrix Σy=σn2×IK. The parameter vector of interest for joint estimation of frequency offset and frequency-selective complex channel gains is given by
Δ=[Re{h},Im{h}]T 6
where, ϵ=[ϵ1, . . . , ϵR]T. The elements of Fisher information matrix (FIM) (Step III in
Ω and X are obtained by taking the derivative of y with respect to h and ϵ. The hybrid Cramer-Raobound (HCRB) is a lower bound on the joint estimation of random and deterministic parameters and not a function of the random parameters. To ensure generality, frequency offset is assumed to be deterministic and unknown parameters that can assume any value within the specified range. Channel is assumed to be random with zero mean and covariance matrix Rh Gaussian distribution. The first step in determining the HCRB is to formulate the parameter vector of interest λ[λr λd]. The hybrid information matrix (HIM) (Step VII in
HIM=Eλ
where, PIM is the prior information matrix of random variable. The expected value of all the elements of FIM w·r·tλr (Step IV in
Eλ
and
Eλ
Hence,
The FIMex for the real and imaginary part of channel coefficients are correlated with each other. So,
where, channel correlation matrix
Also the correlation matrix of the channel vector hr corresponding to the rth node is
Hence, HIM is obtained as
HCRB for frequency offset (Step VIII in
HCRB for complex channel gains (Step VIII in
Optimization Framework for Training Sequence Design of Channel Estimation:
In one implementation, optimization framework for training sequence design of channel estimation is disclosed. It is desirable to generate FDM training sequence such that cross correlation between any two training sequences is essentially zero, i.e. SH FlHFmS=0 when 0≤l≠m≤Lh−1. The optimal training sequence design is to find S∈K×M
Case 1: For frequency-flat channel Lh=1. Suppose, eigenvalue decomposition (Step XII in
For any positive definite matrix ΩHΩ, the diagonal elements are considered. diag{ΩHΩ}=diag(σC,1, σC,2, . . . , σC,M
Case II: For frequency selective channel, the diagonal elements of Rt,l, Rr,l for lth channel path are Λl=diag(λl1, . . . , ΛlM
For lth channel path and the positive definite matrix ΩHΩ, the optimal solution is obtained when the singular values are diagonally aligned. i.e. {tilde over (Z)}=diag (σC,1, σC,2, . . . , σC,M
A method of generating the training sequence for frequency-selective channel can be obtained from Eq. (19). Therefore, the CCU calculates the ground, ceiling power level, and σC,k for each lth channel coefficients according to the algorithm stated below. Repeat the algorithm for lh number of times.
Obtained Training Sequence for Channel Estimation:
In one implementation, the process of generating training sequence is described in
(Step XIII in
of kth patch (step XIV in
where, Mk is such that
(Step XVI in
(Step XVIII in
If Ek=P, calculate γ using,
If the ceiling level is less than γ, then the corresponding kth patch is saturated (Step XXI in
If Ek<P, calculate the optimum Mk for k=(k+1)th patch. Repeat the above stated algorithm to get the optimum training sequences.
Optimization Framework for Training Sequence Design of Frequency Synchronization:
Case I: For frequency-flat channel Lh=1. Suppose, eigenvalue decomposition (Step XXVII in
For any positive definite matrix ΩHΩ, the diagonal elements are considered. Diag{ΩHΩ}=diag(σC,1, σC,2, . . . , σC,MtR). Optimal σC,i (Step VIII in
Case II: For frequency selective channel, the diagonal elements of Rt,l, Rr,l for lth channel path are Λl=diag(λl1, . . . , λlM
For lth channel path and the positive definite matrix ΩHΩ, the optimal solution is obtained when the singular values are diagonally aligned. i.e. {tilde over (Z)}=diag(σC,1, σC,2, . . . , σC,M
Obtained Training Sequence for Frequency Synchronization:
In one implementation, the process of generating training sequence for frequency synchronization is described as shown in
Otherwise, if WL1 gives the lowest power level, set kj+1=t (Step XXXI in
If kj+1=Mt then set j=j+1, and again CCU calculates σC,k using Eq. (25). Otherwise set j=j+1, and repeat the training sequence generation process again (Step XXXIII in
A total P amount of power has been poured into all paths. The power levels of all paths will increase simultaneously. If the power level of any path reaches its maximum value, then no power has poured into this path. The remaining amount of power will be distributed into other paths. The final power level of each path is described by the value of σC,k.
After generating the singular values σC,k, the training sequence can be recovered back from Z by
with unitary matrix QKK×K. A further advantage in designing training sequences according above stated technique is that, SHFlHFmS=0 when 0≤l≠m≤Lh−1. This ensures the orthogonality between the training sequences. A joint estimator estimating various impairments (MCFOs and channel gains) using these training sequences and can effectively attain theoretical lower bound. Accordingly, such sets of training symbols can enable estimator in achieving theoretical bound.
In one implementation, a system for estimation of channel and frequency offsets, after getting the optimum training sequence is disclosed. CCU prepares a look-up-table (LUT) which contains all the generated optimal TSs. CCU broadcast the LUT to all nodes and multicast row number of LUT to source antenna-destination pair. After receiving that information from CCU, source nodes use the sequence of the corresponding row number, which is sent by CCU. Node antennas transmit OFDM data payloads along with training sequence. The receiver estimates the frequency offset and channel characteristics from the received training sequences.
After getting the optimum training sequence, the receiver uses those sequences to estimate the channel and frequency offsets.
zr=Γ(ϵr)Mr(Sr)hr+wr (29)
The log-likelihood generator generates a log-likelihood function (LLF) which in turn fed to expectation block. The expectation of the LLF given the parameters to be estimated, is given as
N(θ|{circumflex over (θ)}[m])≙E{log f(z|θ)|y,{circumflex over (θ)}[m]} (30)
The maximization block provides an output of θ at the (m+1)th step, which can be written as
The updated MCFOs {circumflex over (ϵ)}[m+1] is obtained as
where, Ω=Σr=1RΓ(ϵr)Mr(Sr) The updated channel coefficient ĥ[m+1] is obtained as
ĥr[m+1]=(ΩHΩ)−1ΩHzr (33)
Destination calculates MSE for frequency offset and channel gains. If computed MSE for channel estimation is greater than predefined threshold received from CCU, then destination again sends RSSI and received signal. CCU reallocates the power budget for the said source-destination pair. If the computed power budget is less than some threshold, then CCU shuts down the corresponding source-destination path and informs related node about the updated row number and other source destination pairs, if necessary.
Performance Analysis
In one exemplary implementation, simulation results are presented in order to evaluate the performance of proposed system and methods. Without loss of generality, it is assumed that
Normalized frequency offset at the destination, ϵm
In one implementation, the MSE for the estimation of a parameter, timing offset, is defined as the average MSE over 1000 simulations, i.e. Σfrane=1100Σro=110({circumflex over (ϵ)}−ϵr)2/1000.
In one implementation,
Some of the noteworthy features of the present invention are:
Some of the non-limiting advantages of the present invention are:
Although a system and a method for optimal training sequence generation for joint channel and frequency offsets estimation in DMIMO-OFDM systems have been described in language specific to structural features, it is to be understood that the embodiments disclosed in the above section are not necessarily limited to the specific methods or devices described herein. Rather, the specific features are disclosed as examples of implementations of the system and method for optimal training sequence generation for joint channel and frequency offsets estimation in DMIMO-OFDM systems.
Number | Date | Country | Kind |
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201731030425 | Aug 2017 | IN | national |
Number | Name | Date | Kind |
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20030016621 | Li | Jan 2003 | A1 |
20040062211 | Uhlik | Apr 2004 | A1 |
20060280266 | Li | Dec 2006 | A1 |
20100008221 | Hong | Jan 2010 | A1 |
20120300644 | Fung et al. | Nov 2012 | A1 |
20180152966 | Goldhamer | May 2018 | A1 |
20190020381 | Tooher | Jan 2019 | A1 |
Entry |
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“Optimized Training Sequences for Spatially Correlated MIMO-OFDM”—Hoang D. and et. al., IEEE Trans. on Wireless Commun., vol. 9, No. 9, pp. 2768-2778, 2010. |
“Optimal Training Design for Channel Estimation in Decode-and-Forward Relay Networks with Individual and Total Power Constraints”—Feifei Gao and et. al., IEEE Trans. on Signal Process. vol. 56, No. 12, pp. 5937-5949, 2008. |
“Optimal Superimposed Training Design for Spatially Correlated Fading MIMO Channels” IEEE Trans on Wireless Commun. vol. 7, No. 8, pp. 3206-3217, 2008. |
“Robust Training Sequence Design for Spatially Correlated MIMO Channel Estimation”—Nafiseh Shariati and et. al., IEEE Trans. on Vehicular Tech. vol. 60, No. 7, pp. 2882-2894, 2011. |
“Joint CFO and Channel Estimation for Multiuser MIMO-OFDM Systems with Optimal Training Sequences”—Jianwu Chen and et. al., IEEE Trans. on Signal Process. vol. 56, No. 8, pp. 4008-4019, 2008. |
Number | Date | Country | |
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20190068426 A1 | Feb 2019 | US |