Field of the Invention
The present invention relates to wireless communication systems, and more particularly, to a system and method for performing initial synchronization during wireless sector searches.
Related Art
Timing error correction and carrier frequency offset (“CFO”) compensation are important for initial synchronization in any wireless communication application. When a mobile station (e.g., smartphone or other cellular device) either turns on or experiences a handover process, the mobile station must search for a base station (“BS”) and determine which sector in the BS can provide satisfactory service. This process, called cell search, usually employs the synchronization signals that are transmitted periodically from surrounding BSs. The sector search must be completed first in the cell search process. Specific tasks that are conducted in the sector search of third-generation partnership project (“3GPP”) long-term evolution (“LTE”) communication systems include (1) coarse timing alignment, (2) estimation of the residual timing error (“RTE”) and the fractional frequency offset (“FFO”), (3) integral frequency offset (“IFO”) detection, and (4) sector identification (“SID”). In orthogonal-frequency-division-multiplexing (“OFDM”) communication, the RTE is a timing error smaller than the length of a normal cyclic prefix (“CP”) length; the CFO is often normalized by the subcarrier spacing Δf, the FFO, whose value is in (−½, ½), is the fractional part of the normalized CFO, and the IFO is the integer part of the normalized CFO.
Due to rising interest in carrier aggregation and coordinated multi-point techniques, accurate estimation of the timing error and the CFO upon initial synchronization as a component of the sector search process are of increasing importance. In practice, a mobile station receives signals coming from surrounding BSs. However, current methods of initial synchronization do not take multi-sector reception into account. Moreover, many current methods do not consider multipath reception. In addition, diversity is usually not exploited until after synchronization and channel estimation have been achieved.
For example, the first task conducted in the sector search of 3GPP LTE communication systems employs either autocorrelation of the received signal that is extracted on a fixed lag, or cross-correlation between the received signal and a local primary synchronization sequence (“PSS”) for coarse timing alignment between the received signal and the local reference.
The autocorrelation technique often exploits a differential correlator to search for the location of the PSS using the periodic occurrence of PSS signals. The CFO can be estimated by exploiting the phase at the output of the differential correlator. However, the differential correlator can only be applied to timing error estimation and cannot be applied to CFO estimation because two identical PSSs are far apart, i.e., one half of an LTE frame, so that the range of a CFO estimator based on the arctan(⋅) function becomes too narrow and impractical. Thus, current methods employing the autocorrelation technique only work for CFO estimation when the differential correlation is evaluated on two contiguous sequences in which a very limited CFO occurs. Furthermore, the differential correlator does not work well in environments with low signal-to-noise ratios (“SNRs”) because it creates two noise×signal terms and one noise×noise term. Therefore, the differential correlator suffers from significant noise and unavoidable interference.
The cross-correlation technique often jointly estimates the timing error and the CFO by exploiting a pseudo-noise (“PN”) matched filter (“MF”). Although this technique may have better SNR performance than the autocorrelation technique based on the differential correlator, it suffers from the accumulation of undesired phase increments for a non-negligible CFO. Further, employing multi-sector reception increases the complexity of the MF technique by at least a factor of three because the MFs must individually match the three possible PSSs conveyed in the received signal.
The second task conducted in the sector search is to estimate the FFO and the RTE. Current methods can employ an estimator that is similar to a joint maximum-likelihood (“ML”) estimator. These methods can also employ averaging across a few OFDM symbols in the estimation of the CFO. However, because of the phase wrapping problem, these methods can only deal with the FFO. In order to overcome this limitation, some methods determine the IFO by means of the secondary synchronization sequence (“SSS”) in the frequency domain (“FD”).
For example, according to some methods, it is difficult to directly apply the ML estimation approach to CFO estimation by using two neighboring PSSs because the PSSs are too far apart so that the range of a CFO estimator based on the arctan(⋅) function becomes too narrow and impractical. Upon PSS acquisition, the CFO can actually be as high as ±3Δf.
For the third and fourth tasks (IFO detection and SID, respectively), some methods have determined the IFO by means of the PSS in the FD. However, the IFO determination methods suffer from severe inter-carrier interference (“ICI”) if a non-negligible FFO is present.
Accordingly, what would be desirable, but has not yet been provided, is a system and method for performing initial synchronization during wireless sector searches, which addresses the foregoing shortcomings of existing initial synchronization approaches.
A system and method for performing initial synchronization during wireless sector searches is provided. The present disclosure provides an initial synchronization process during the sector search process in third-generation partnership project (3GPP) long-term evolution (LTE) communications. The present disclosure includes three subsystems for providing coarse timing alignment, joint estimation of residual timing error and fractional frequency offset, and joint detection of integral frequency offset and sector identification, and can account for intercell interference, inter-carrier interference and multipath fading with assistance from inherent diversity. Outage and detection probabilities can be derived by taking multi-sector diversity into account in coarse timing alignment. A long-lag differential correlator can achieve signal-to-noise ratio gains in the primary synchronization sequence acquisition probability. Joint estimation of the residual timing error and the fractional frequency offset can be achieved by evaluating the short-lag autocorrelation at an orthogonal frequency division multiplexing (OFDM) symbol duration. Mean-square errors obtained via simulations can be compared with modified Cramér-Rao lower bounds. Joint detection of integral frequency offset and sector identification is accomplished by exploiting a frequency-domain matched filter to account for frequency selectivity. According to some aspects of the present disclosure, differential detection on a segmental frequency-domain matched filter is applied in frequency-selective environments.
The foregoing features of the invention will be apparent from the following Detailed Description of the Invention, taken in connection with the accompanying drawings, in which:
The present disclosure relates to a system and method for performing initial synchronization during wireless sector searches, including a first subsystem for coarse timing alignment including a decimator to reduce computational complexity and a long-lag differential correlator, a second subsystem for jointly estimating RTE and FFO utilizing a short-lag differential correlator, and a third subsystem for jointly detecting IFO and SID utilizing segmental FD MFs. Unlike the methods described above, the system and method of the present disclosure takes intercell interference, ICI, and multipath fading into consideration with assistance from inherent diversity. A mobile station implementing the system and method of the present disclosure exhibits enhanced coverage, lower outage probability, rapid initial synchronization, and rapid handover. These benefits are particularly evident at corners, or on edges, between cells, e.g., areas of strong intercell interference and low SNRs.
As described above, when a mobile station turns on, or experiences a handover process, the mobile station must search for a BS and determine which sector in the BS can provide satisfactory service. This process utilizes synchronization signals that are transmitted from surrounding BSs. Accordingly, the frame structure of an LTE communication system is described hereinbelow.
One frame on an LTE downlink transmission spans 10 ms. Each frame consists of ten 1-ms subframes. Each subframe is composed of two 0.5-ms slots. Each slot consists of 7 OFDM symbols, with N=2048 samples each, 160 CP samples prefixed to the first symbol and 144 CP samples prefixed to each of the remaining six symbols. The occupied bandwidth is 20 MHz, the sampling rate is
the sampling period is Ts=32.552 ns, the fast Fourier transform (“FFT”) size is N, the subcarrier spacing is
and the FFT window spans T=NTs. Only the central MSS=72 subcarriers of all 2043 subcarriers are used to accommodate the synchronization signals. In both boundaries of the band that accommodates the synchronization signals, there are five null subcarriers serving as guard bands that limit the CFO tolerance. The synchronization signals are inserted in M2=62 active subcarriers that are indexed as N−M1, N−M1+1, . . . , N−1, 1, 2 . . . , M1 and M1=31. Because LTE communication adopts a carrier frequency of fc=2 GHz and the oscillator instability tolerance at a mobile station is up to ±20 ppm of fc, the worst-case CFO is evaluated to be ρ=40 kHz. The normalized CFO can be expressed as
In the worst case, the normalized CFO is εT=±2.6667, the IFO is εI=±3, and the FFO is εF=∓0.3333.
An LTE communication network can support 504 different cell identifications (“CIDs”). These CIDs are categorized into 163 CID groups (“CIDGs”), which are indexed as V∈{0, 1, . . . , 167}. Each CIDG consists of three SIDs, which are indexed as ν∈{0, 1, 2}, each for a sector. Therefore, a CID can be determined completely by NCID=3V+ν. The PSS and SSS are arranged in the two last OFDM symbols in the first slots of subframes 0 and 5. The PSS signalling is the same in both slots, thus providing a coarse timing reference for frame delineation. The PSS signalling in the time domain (“TD”) is obtained by taking the inverse FFT (“IFFT”) of one of three candidate Zadoff-Chu (“ZC”) sequences. Each root index urt[ν] of the family of ZC sequences represents an SID ν; i.e., urt[ν]=25.29, and 34 for ν=0, 1 and 2, respectively. The subcarriers are modulated by the employed ZC sequence using the following mapping relation:
where n is the subcarrier index. The TD PSS can be expressed as
and the resulting signal {tilde over (s)}ν(t) then propagates through a channel. The transmit filter g(t) can be in the form of a square-root raised cosine filter or even an ideal LPF
Considering the cellular structure depicted in
where ρ and ϕν are the CFO in Hz and the initial phase error that unavoidably occur in the front-end noncoherent down-conversion process, respectively; τ is the timing error; α′ν is a channel weight that models signal attenuation and fading occurring with the signals from surrounding sectors indexed ν; and {tilde over (w)}(t) is additive white Gaussian noise (“AWGN”) with power spectral density (“PSD”) N0 W/Hz. In accordance with the central limit theorem (“CLT”), α′ν usually can be modeled as a zero-mean circularly symmetric complex Gaussian random variable (“RV”) for Rayleigh fading because any component {tilde over (s)}ν(⋅), ν=0, 1, 2 is composed of signals that are transmitted from several surrounding BSs and then reflected by many objects surrounding the mobile station. Furthermore, αν=α′νexp(jϕν), {tilde over (s)}ν(t)=AΣk=0N-1pν[k]g(t−kTs),
and Es is the energy per sample. Only frequency-flat Rayleigh fading is considered in equation (2) because the multipath components are unresolvable compared with the reciprocal of the processing rate at the first subsystem. In equation (2), different sectors provide signals corrupted by independent channel weights and different initial phase errors, but a common CFO ρ and a common timing error τ. The differences among the timing errors occurring in the PSS signals from different cells are negligible, and their effects can be taken into account by the initial phase errors ϕν, ν=0, 1, 2, because the carrier frequency fc is usually very high. Then ejϕ
The received signal is sampled at rate
to generate the sample stream
{tilde over (r)}[q]=r(qTs)=ej2πρqT
where the variance of the noise {tilde over (w)}[q] is
For simplicity, the transmit and receive filters are both set to be ideal LPFs without loss of generality. These filters can be substituted by any filters that obey the Nyquist pulse shaping criterion.
Referring back to
In step 110, the system 100 of the present disclosure performs a coarse search for timing alignment, which includes downsampling of and application of a long-lag differential correlation to the received sample stream. The sample stream {tilde over (r)}[q] can be downsampled by D times because the synchronization sequences occupy only the central MSS=72: subcarriers, which occupy a bandwidth
even if their spectra are moved by a tolerable CFO
Hence, D can be chosen to be less than or equal to
to ensure no essential loss on the received PSS, where └⋅┘ represents the floor operator that takes the greatest integer less than or equal to its argument. Downsampling can be implemented by a digital LPF with effective bandwidth π/D whose impulse response (“IR”) is denoted as hlp[q] followed by a D-point decimator. Therefore, the sample stream fed into the long-lag differential correlator can be written as
r[l]={circumflex over (r)}[lD]=exp(j2πρDl)Σν=02ανsν[l;τ]+q[l], l=0,1, . . . ,M−1, (4)
where {circumflex over (r)}[q]={tilde over (r)}[q]*hlp[q]; * is the convolution operator; TD=DTs is the sample period in the process; ρD=ρTD;
s
ν[l]=ŝν[lD], l=0,1, . . . ,M−1,
ŝν[q]={tilde over (s)}ν[q]*hlp[q], q=0,1, . . . ;
represent the decimation operation and the lowpass filtering process, respectively;
w[l]=ŵ[lD], l=0,1, . . . ,M−1,
ŵ[q]={tilde over (w)}[q]*hlp[q], q=0,1, . . . ;
and w[l] has variance
The differential correlator according to the present disclosure effectively overcomes the phase increment problem that occurs in the PN MF, discussed hereinabove. In accordance with the PN MF method, taking intercell interference into account, three banks of PN MFs, corresponding to p1[⋅], p1[⋅], and p2[⋅], are required in a single timing alignment mechanism. However, it is not necessary that the sector search process accurately estimates α0, α1, and α2; only the maximum among |α0|, |α1|, and |α2| suffices. The initial synchronizer need not resolve the PSS from the intercell interference, and the three banks of PN MFs are therefore unnecessary.
The coarse timing alignment of the present disclosure employs a differential correlator. It can extract the autocorrelation between two OFDM symbols that are separated by one half of a frame. The coarse timing alignment can thus be conducted based on the peak search of the autocorrelation evaluated at a long lag of MHF, i.e.,
where the superscript * denotes the complex conjugate; MHF=└Nslot·Lslot/D┘ is the number of samples within half a frame that is the separation of two identical PSSs; Nslot=10 is the number of slots in half a frame; Lslot is the number of samples in a slot, which is NsymbLsymb+16; Lsymb is the number of samples in an OFDM symbol with a CP of length L=144, which is N+L; the length difference between the extended CP and the normal CP is 160−144=16; and Nsymb=7 is the number of symbols in a slot. Coarse search of the PSS can be expressed as {circumflex over (ç)}=argmaxl{|Ξ[l]|2}. From equation (5), Ξ[l] can be rewritten as
Ξ[l]=ΞS×S,1[l]+ΞS×S,2[l]+ΞS×N,1[l]+ΞS×N,2[l]+ΞN×N[l], (6)
where
The first S×S term, ΞS×S,1[l], is the desired term to search for the location of peak autocorrelation. Thus, ΞS×S,1[l] dictates that the coarse timing alignment method of the present disclosure utilizes maximum ratio combining (“MRC”) on multi-sector reception. The second S×S term, ΞS×S,2[l] is the self-interference term and is negligible at SNRs lower than 30 dB. At moderate SNRs, the two S×N terms, ΞS×N,1[l] and ΞS×N,2[l], dominate, and thus, the differential correlator suffers from a 3 dB degradation in SNR. At low SNRs, the N×N term, ΞN×N[l] dominates and the threshold effect occurs around SNR=0 dB.
With continuing reference to
In equation (7), 70 CPs are used to extract the autocorrelation at a fixed short lag N. ξ[q] employs {tilde over (r)}[q], instead of r[l] it because all subchannels contribute to {tilde over (r)}[q] and thus support the repetition property of {tilde over (r)}[q] with CPs. Therefore, the RTE estimation based on ξ[q] can be accurate to the level of a sample duration Ts. When searching for a peak magnitude of ξ[q], the estimates of the common RTE and the common FFO can be evaluated as
where ι is the RTE
[⋅]R is the rounding operator, and {circumflex over (ι)} is the estimate of ι; {⋅} and {⋅} denote the real and imaginary parts of their arguments, respectively; and εF is the FFO and is within
because the principal range (−π, π] is used for the arctan(⋅) function. The interference and noise can be significantly reduced by averaging over the 70 CPs. The coherence time of the fading channel can be evaluated as
ms for a mobile speed 30 to 300 km/h, where fm denotes the maximum Doppler frequency. The joint estimator of the present disclosure extracts the short-lag autocorrelations on a symbol-by-symbol basis during one half of an LTE frame (i.e., 5 ms), therefore exploiting time diversity. Because the employed CPs have been buffered in the coarse timing alignment subsystem, the moving-average filter does not lead to an additional delay. Furthermore, because the channel varies over time, the estimators can arrive at the stable, common estimates of the RTE and the FFO.
With continuing reference to
After εF has been estimated and then compensated for in the preceding step, the IFO and the SID can be jointly detected by performing ZC acquisition on the ICI-free condition. The received signal is first transformed into the FD by an FFT. The resulting FD replica of the received PSS signal {tilde over (R)}[⋅] is used to perform cross-correlation with the three candidate ZC sequences by the corresponding FD PN MFs, i.e.,
where {x}lN denotes x modulo N; {tilde over (R)}[k] is the kth subcarrier value of the N-point FFT of the FFO-compensated and timing-aligned replica of the received signal {tilde over (r)}[q], i.e.,
Δ is a shift of the subcarrier index; k is the subcarrier index; and subcarrier O is disabled. The joint detection of the IFO and the SID can be written as
where the superscript (⋅)T denotes the vector transpose. The method mentioned above applies under a frequency flat assumption because the summation in equation (9) requires to coherently accumulate the products on a subcarrier-by-subcarrier basis.
In practice, frequency selective fading must be considered, and it may harm the aforementioned FD PN MF method because the FD PN MF accumulates cross-correlations that are weighted by the complex-valued frequency-selective channel fades. A differentially coherent detection technique can overcome the frequency selectivity and can therefore achieve lower probabilities of false-alarm and miss occurrences. Initially, the locally generated ZC sequence and {tilde over (R)}[⋅] are individually taken into the differential operation. The resulting sequences are then cross-correlated with each other. The FD PN MF based on the subcarrier-level differentially coherent detection can be written as
The joint detection of the IFO and the SID can be written as
The above two-dimensional (2D) likelihood functions, Ψ0[Δ, ν] in (9) and Ψ1[Δ, ν] in equation (11), can be considered as two opposite extremes. Ψ0[Δ, ν] requires the channel to be as frequency flat as possible so that the cross-correlations can be accumulated coherently. Moreover, because Ψ0[Δ, ν] has the best noise suppression ability, the maximum-likelihood detection (“MLD”) in equation (10) has the highest detection probability in a noise-dominant environment. On the other hand, Ψ1[Δ, ν] can deal with the worst frequency selectivity, but the detection performance of equation (12) would be significantly degraded by the heavy noise and non-negligible ICI inevitably resulting from Doppler spread. Between these two extremes, other 2D likelihood functions are available. First, the IR of the FD PN MFs can be segmented and piecewise cross-correlated with {tilde over (R)}[{k+N}lN] to generate partial correlations (“PARCORs”), in which each segment covers a few subchannels. Then, the segmental MF (“SMF”) outputs, i.e., the extracted PARCORs, are fed to the FD differential correlator to exploit the frequency diversity, i.e.,
is the SMF output (i.e., the lth PARLOR) with S=2, 4, 8, 16 representing the SMF IR length. The joint detection of the IFO and the SID can be written as
When S=1, Ψ2[Δ, ν] degenerates to Ψ1[Δ, ν]. The maximizations in equations (10), (12), and (14) can be readily conducted via grid search because only 21 possible choices are available.
Statistical evaluations were performed, which examined the coarse timing alignment and the joint RTE and FFO estimation in the presence of intercell interference.
The instantaneous SNR of the signal from sectors indexed by ν can be expressed as
Because Rayleigh fading is assumed, Γν, ν=0, 1, 2 are independent exponential RVs that have probability density functions (“PDFs”) and cumulative distribution functions (“CDFs”)
respectively, where
fΓ
FΓ
where
If α0, α1, and α2 have an identical distribution, equation (18) does not hold due to the region of convergence for the MGF. Under an independent and identically distributed (IID) condition, ΓMRC is a χ2 RV with six degrees of freedom (DoFs), i.e.,
where (⋅) denotes the factorial operator and
Because PSS acquisition cannot be completed when Γ≤ΓTH, the PSS acquisition process must be re-started. In the LTE specification, ΓTH=−6.4 dB. The probability of a PSS being missed due to deep fades can be expressed as
where
and Γ(b)=∫0∞tb-1e−dt represent Pearson's incomplete gamma function and the gamma function, respectively [31]; Γ=[Γ0Γ1Γ2]T; and
PMRC;Det(Γ,ΓTH)=1−PMRC;Outage(Γ,ΓTH). (21)
A method of accounting for intercell interference with no exploitation of multi-sector diversity employs the highest correlator output and can be considered a selection combining (“SC”) method. The instantaneous SNR of SC reception can be expressed as
The CDF of ΓSC can be written as FΓ
Therefore, the outage probability and the PSS detection probability obtained using SC can be written as
PSC;Outage(
PSC;Det(
Using step-by-step estimation, the RTE r is first estimated by considering the FFO and channel gains as nuisance parameters. Through the derivations in the appendix, the MCRLBs of the RTE estimations on MRC and SC receptions can be expressed as
where
ν=0, 1, 2, denotes the mean-square (MS) bandwidth of the PSS signal {tilde over (s)}ν(t);
ET=∫−∞∞|Sν(f)|2dt=∫T|{tilde over (s)}ν(t)|2dt≈TDΣl=0M-1|sν[l]|2≈TSΣq=0N-1|{tilde over (s)}ν[q]|2; and
Sν(f)=∫T{tilde over (s)}ν(t)e−j2πftdt is the Fourier transform of sν(t),ν=0,1,2.
The error variances of the FFO ρ estimations on MRC and SC receptions are bounded by
where
is the MS duration of the PSS signal {tilde over (s)}ν(t), ν=0, 1, 2.
Software simulations were also conducted to verify the improvements achieved by the system of the present disclosure. The parameters employed herein are mainly obtained from the LTE specification. The Rayleigh fading channel is generated with Jakes' fading simulator, and the mobile speed is set to 30 and 300 km/h to test the proposed methods in frequency-selective and frequency-flat fading channels, respectively. A tapped-delay-line (“TDL”) was also used to model the frequency-selective fading channel, and the tap-weighting coefficients are modeled with uncorrelated Jakes' Rayleigh faders. Four active propagation paths are equally separated over 96Ts=3.125 μs, which is slightly shorter than a normal CP (i.e., 144Ts), and all paths are of equal power. There are 97 taps in the TDL channel model, but only four tap-weighting coefficients are active. Thus, the root-mean-square (“rms”) delay spread is στ=16√{square root over (5)}Ts=1.1646 μs, and the coherence bandwidth can be calculated as
To simulate the intercell interference in practical environments, the three PSS signals are transmitted simultaneously with equal powers, and the signals individually propagate through mutually independent fading. This scenario models a mobile station experiencing a handover process at a corner among three adjacent cells. Meanwhile, all data subchannels are also occupied by random data, instead of being blank.
Only the central MSS subcarriers of the N total subcarriers are employed to transmit the PSS signals. The other subcarriers inevitably introduce interference and noise to the sector search process. Although an ideal LPF can effectively reject the interference and noise, its long IR may harm the accuracy of timing error estimation. A high-order LPF can effectively suppress the interference and noise with high hardware complexity. For system feasibility, a first-order IIR LPF is suggested here that has transfer function
After the LPF, the received signal can be downsampled by D times with no essential loss. Therefore, the coarse timing alignment can be performed at the lower sampling rate, which can significantly reduce the computational complexity.
Combining the multi-sector signals via MRC reception can achieve higher probabilities of the PSS detection. The statistical analysis results (21) and (22) are also shown to serve as theoretical benchmarks. As can be seen in
dB and σT=1.1646 μs.
The MCRLBs obtained using the MRC and the SC methods are also demonstrated in
With further reference to
Accordingly, what is disclosed herein is a system and method for performing initial synchronization during wireless sector searches. Disclosed methods include utilization of autocorrelation, cyclic-extension correlation, and differential cross-correlation to acquire the symbol timing, the frequency offset, and the SID. The system and method of the present disclosure effectively addresses frequency selectivity, time selectivity, and intercell interference. The system and method of the present disclosure can also reduce computational/hardware complexity by effective lowpass filtering and downsampling. Simulation results in conjunction with derivations of the PSS detection probability and MCRLBs have been presented to demonstrate the improvements achieved using the disclosed system and method. The system and method of the present disclosure inherently exploits the multi-sector diversity, the time diversity, and the frequency diversity.
MCRLBs of the RTE and CFO Estimation are provided hereinbelow for reference:
From equation (4), the conditional LLF of ΘD=[τρD]T can be formulated as
where ΘN=[α0α1α2]T denotes the nuisance parameter. The second partial derivative of ΛL,D(Θn) with respect to τ can be written as
Element I1,1 of the Fisher information matrix (“FIM”) I (ΘD) can be found as
In accordance with the Cauchy-Schwarz Inequality,
Because σw2=N0BD, (31) can be rewritten as
Because
MCRLBMRC;τ(
MCRLBSC;τ(
equations (23) and (24) can be obtained.
Suppose that the timing error estimation is completed and that the timing error can be significantly reduced; then, the LLF of ρD can be modified from equation (28) and written as
where r′[l] is the timing-error-free replica of r[l]. By taking twice partial derivatives of ΛL,1(ρD) with respect to ρD, we have
The Fisher information of ρD can be written as
where ∫Tt2|{tilde over (s)}ν(t)|2dt=TmsET, ν=0, 1, 2, As a result, (33) can be rewritten as
The frequency offset ρD is estimated by considering the channel gains as nuisance parameters. As a result, the MCRLBs of the frequency offset estimation derived for MRC and SC receptions can be expressed as
Thus, (25) and (26) can be obtained.
Having thus described the invention in detail, it is to be understood that the foregoing description is not intended to limit the spirit or scope thereof. What is desired to be protected is set forth in the following claims.
This application claims priority to U.S. Provisional Patent Application No. 62/269,224 filed on Dec. 18, 2015, the entire disclosure of the application hereby expressly incorporated by reference.
This invention was made with government support under Grant No. CNS-1456793 and No. ECCS-1343210 awarded by the National Science Foundation. The government has certain rights in the invention.
Number | Name | Date | Kind |
---|---|---|---|
7693129 | Kishore | Apr 2010 | B1 |
9893925 | Patel | Feb 2018 | B1 |
20040062300 | McDonough | Apr 2004 | A1 |
20060029017 | Mudulodu | Feb 2006 | A1 |
20070183391 | Akita | Aug 2007 | A1 |
20080075212 | Chun | Mar 2008 | A1 |
20080080439 | Aziz | Apr 2008 | A1 |
20090067517 | Hung | Mar 2009 | A1 |
20090135977 | Sheu | May 2009 | A1 |
20090147873 | Li | Jun 2009 | A1 |
20090156214 | Lee | Jun 2009 | A1 |
20090175394 | Park | Jul 2009 | A1 |
20090323793 | Chang | Dec 2009 | A1 |
20100029295 | Touboul | Feb 2010 | A1 |
20100040043 | Li | Feb 2010 | A1 |
20100296611 | Maltsev | Nov 2010 | A1 |
20110306341 | Klein | Dec 2011 | A1 |
20120134398 | Gamage | May 2012 | A1 |
20150280849 | Tsai | Oct 2015 | A1 |
20160218821 | Adhikary | Jul 2016 | A1 |
20160234454 | Kwon | Aug 2016 | A1 |
20160270015 | Lin | Sep 2016 | A1 |
20160337105 | Lawton | Nov 2016 | A1 |
20170034798 | Lin | Feb 2017 | A1 |
20170093540 | Lei | Mar 2017 | A1 |
20180184390 | Wu | Jun 2018 | A1 |
Entry |
---|
Tsai, et al., “Cell Search in 3GPP Long-Term Evolution Systems,” IEEE Vehicular Technology Magazine, vol. 2, pp. 23-29, Jun. 2007 (7 pages). |
Chen, et al.. “Symbol Timing Estimation and Sector Detection Algorithm Based on LTE TDD System,” in Proc. IEEE International Conference on Network Infrastructure and Digital Content Conference (IC-NIDC 2009), pp. 828-832, Nov. 2009 (5 pages). |
Manolakis, et al., “A Closed Concept for Synchronization and Cell Search in 3GPP LTE Systems,” in Proc. IEEE Wireless Communications and Networking Conference (WCNC 2009) pp. 1-6, Apr. 2009 (6 page). |
Su, et al., “Joint Sector Identity and Integer Part of Carrier Frequency Offset Detection by Phase-Difference in Long Term Evolution Cell Search Process,” IET Communications, vol. 7, Iss. 10, pp. 950-959, 2013 (10 pages). |
Kim, et al., “Synchronization and Cell-Search Technique Using Preamble for OFDM Cellular Systems,” IEEE Transactions on Vehicular Technology, vol. 56, No. 6, pp. 3469-3485, Nov. 2007 (17 pages). |
Kim, et al., “SSS Detection Method for Initial Cell Search in 3GPP LTE FDD/TDD Dual Mode Receiver,” in Proc. 9th International Symposium Communication and Information Technologies (ISCIT 2009) Sep. 28-30, 2009, pp. 199-203 (5 pages). |
Setiawan, et al., “A Low Complexity Physical-Layer Identity Detection for 3GPP Long Term Evolution Systems,” in Proc. 12th International Conference on Advanced Communication Technologies (ICACT 2010), Feb. 7-10, 2010, pp. 8-13 (6 pages). |
Hao, et al., “An Area-Efficient Implementation of Primary Synchronization Signal Detection in LTE,” in Proc. 12th International Conference on Communication Technologies (ICCT 2010), Nov. 11-14, 2010, pp. 722-725 (4 pages). |
Yang, et al., “Efficient Implementation of Primary Synchronization Signal Detection in 3GPP LTE Downlink,” IET Electronics Letters, vol. 46, No. 5, pp. 376-377, Mar. 2010 (2 pages). |
Tsai, et al., “A New Cell Search Scheme in 3GPP Long Term Evolution Downlink OFDMA Systems,” in Proc. 12th International Conference on Wireless Communications and Signal Processing (WCSP 2009), Nov. 13-15, 2009, pp. 1-5 (5 pages). |
Kim, et al., “An Efficient Synchronization Signal Structure for OFDM-Based Cellular Systems,” IEEE Transactions on Wireless Communications, vol. 9, No. 1, pp. 99-105, Jan. 2010 (7 pages). |
Golnari, et al., “A Low Complexity Architecture for the Cell Search Applied to the LTE Systems,” in Proc. 19th IEEE International Conference on Electronics, Circuits and Systems (ICECS 2012) Dec. 9-12, 2012, pp. 300-303 (4 pages). |
Elsherif, et al., “Adaptive Primary Synchronization Signal Detection for 3GPP Long Term Evolution,” in Proc. 9th International Wireless Communications and Mobile Computing Conference (IWCMC 2013) Jul. 1-5, 2013, pp. 1716-1721 (6 pages). |
Lin, et al., Initial Synchronization Exploiting Inherent Diversity for the LTE Sector Search Process, IEEE Transactions on Wireless Communications., vol. 15, No. 2, pp. 1114-1128, Feb. 2015 (15 pages). |
Lin, et al., “Initial Synchronization Assisted from Inherent Diversity on LTE Sector Search Process,” in Proc. 2015 IEEE Wireless Communications and Networking Conference (WCNC 2015)—Track 1: PHY and Fundamentals, pp. 311-315, Mar. 2015 (5 pages). |
Number | Date | Country | |
---|---|---|---|
20170195158 A1 | Jul 2017 | US |
Number | Date | Country | |
---|---|---|---|
62269224 | Dec 2015 | US |