Techniques described herein relate to a wireless communication system in general, and more particularly, to a method and system for detecting a desired signal and reducing types of interference such as multi-user inter-symbol-interference (MU-ISI), multi-code interference (MCI), or inter network interference (INI).
A wireless communication involves a cellular structure where a call control and management device such as a base station is placed at the center of a cell and communicate with a number of terminals such as handsets or other communication devices using a predetermined frequency band. As such, the wireless communication network can serve multiple users. For the purpose of discussion, the term “terminal” is used interchangeably with the term “user” as each one terminal must have at least one user.
As it is well known, when the base station transmits signals to the terminal, the communication is referred to as a downlink communication. Similarly, when the terminal transmits signals back to the base station, it is known as an uplink communication. During both the uplink and downlink communications, the receivers of base stations or terminals receive the combination of the signals of interest and interfering communication interference signals such as multi-user inter-symbol-interference (MU-ISI), multi-code interference (MCI) and inter network interference (INI).
To support high speed internet access and multimedia communications, CDMA is extended to function as both access and variable rate modulation scheme. In this case, multiple codes can be assigned to a single user in response to dynamic communication traffic. So each user may be characterized by multiple code signatures. As is well known, the capacity of a CDMA system is largely limited by the multiple code interference (MCI) due to non-orthogonality among user signature waveforms as well as multi-user inter-symbol interference (MU-ISI) due to signature overlapping caused by channel dispersion. In synchronous communication systems, spreading codes are chosen to be mutually orthogonal. However, channel distortion, physical multipath or imperfect timing, can destroy this ideal property and introduce signature dispersion which causes the MCI and MU-ISI. The MU-ISI can be removed by inserting guard chips between symbols which causes low spectrum efficiency. The MCI and MU-ISI can also be mitigated by method of equalization which is effective only in the single user case. In addition to aforementioned intracell interference, other communications in the vicinity of the cell wherein the desired communication is carried out generate interference. All such types of interference are collectively referred to as the inter-network interference (INI). High INI also limits the system capacity.
In summary, the interference issue most likely arises in the following scenarios: (1) when air links suffer dispersive multipath with delay spread larger than the inversion of signal bandwidth and/or when timing is not perfect, the ideal orthogonality among spreading codes is destroyed, and the MCI and MU-ISI occurred; (2) when any undesired communications in the neighborhood of the cell generate the INI; (3) when non-orthogonal spreading codes are used by design to increase system utilization and throughput.
Smart antennas and joint detection are two powerful techniques proposed to suppress the above described types of interference in the space and time domain respectively. Smart antennas system employs antenna array at the base station to provide beamforming gain and/or diversity gain against interference and fading, thereby greatly enhancing signal-to-interference ratio at both the base station and mobile site. Further enhancement can be achieved in a multi-cell environment by explicitly making use of discrepancy in the spatial signatures between desired users and interfering sources. On the other hand, multiuser detection exploits the distinction in the temporal signature waveforms of multiple accessing users and applies either linear nulling and/or nonlinear soft/hard decision based cancellation to extract user information in a significantly more efficient way than conventional methods.
A big challenge of incorporating space-time processing into a base station is how to achieve both spatial and temporal diversity gain and capacity improvement in a multi-interference environment with reasonable computational complexity. In order to avail coherent detection, accurate and fast estimation of space-time channel response for multiple users is required in an interference prone and mobile environment.
What is needed is an improved method and system for offering all desired gains by employing multiple antennas and codes with reasonable complexity for detecting desired signals and canceling the various undesirable types of interference.
The present disclosure provides a low complexity, high performance hybrid space-time joint detector amenable for real-time implementation. It integrates symbol-by-symbol linear MMSE projection, nonlinear soft/hard decision based cancellations and adaptive antenna array combining/nulling inside a unified multi-carrier wireless system with smart antenna. The low complexity is achieved by concatenation of reduction of spatial dimension and reduction of temporal dimension. The high performance is achieved by employing nonlinear interference cancellation along both code and symbol directions. For both uplink and downlink, different sources of interference induced by multipath propagation are mitigated by linear projection and interference cancellation. The undesired co-channel transmission such as inter-network interference is suppressed by beamforming or spatial nulling. Simultaneous multi-user channel identification is employed to generate user specific spatial signatures, joint detection order and joint detection matrices.
The present disclosure uses, as an example, a synchronous code division multiple access (CDMA) system employing smart antennal at the base-station, which is subjected to multipath induced MCI, MU-ISI, and IN!. It is understood that other wireless communication systems suffering from these types of interference can use the same technique to improve their qualities.
Generally speaking, a multichannel transceiver array, or simply, an antenna array, at the base station comprises a plurality of antennas and a plurality of transceivers. The array is adapted for receiving combinations of multichannel uplink signals from the terminals and transmitting multichannel downlink signals towards the terminals. The antenna array is adapted for receiving the combinations of multichannel uplink signals from the terminals during a first time frame and is adapted for transmitting the multichannel downlink signals towards the terminals during a second time frame. The antenna array or the base station may have processors for performing baseband operations such as spatial parameter estimation, uplink and downlink beamforming and CDMA modulation and demodulation, etc. In some examples, one or more baseband processors may be used which includes one or more digital signal processors (DSPs) and memory devices. Different tasks may be realized using dedicated DSPs or by task-sharing. It is noted that the baseband processing may be implemented in various other manners, such as using one or more general purpose processors, one or more programmed microcontrollers, discrete logic, or a combination thereof.
Some of the processors may be referred to specifically as spatial processors. The functions of the spatial processor include estimating the spatial signatures, determining uplink power and timing offset of the terminals, and calculating the uplink and downlink beamforming matrices or vectors. In the present disclosure, the term “matrices” is intended to include both matrices and vectors, and the terms vectors and matrices may be used interchangeably. The spatial signature estimates comprise the transfer function or transfer characteristics between a respective terminal and the antenna array. There may be demodulators in the base station that constructively combine signals from each terminal and recover the uplink messages using uplink beamforming matrices and other information provided by the spatial processor.
In the base station, there are components for downlink communications. Downlink beamforming matrices may be calculated based on previous spatial signature estimates provided by the spatial processor to a modulator. The modulator modulates all downlink messages and generates mixed multichannel downlink signals to be transmitted by the antenna array. Modulation may involve code modulation of each signal after downlink beamforming.
For the demodulator, despreaders are used to despread uplink signals for each terminal using a code sequence provided by the code generator. The outputs of the despreaders are symbol sequences for different terminals. For each terminal, an uplink beamformer is coupled to the despreader that provides a symbol sequence for this terminal. The uplink beamformer obtains enhanced signals by combining the corresponding symbol sequence using its associated uplink beamforming matrix. The beamforming outputs are then passed along to detectors where message data from the terminals are detected.
For the purpose of illustration, it is assumed that the number of active users in each sub-carrier is Nu, the number of antennas at the base station is M, the number of antennas at each user is one, the spreading factor is N and the maximum channel order is L. It is also understood that each sub-carrier may use multiple code channels. For both the uplink and downlink, the data sequence sent for the ith (i=1, . . . , Nu) user may be a quadrature amplitude modulated (QAM) symbol sequence, denoted by si[n]. It is assumed that the ith user occupies Nci code channels and is assigned a N×Nci code matrix Ci=[c1, . . . , CN
From this point on, it is assumed that the channel response of all users is available for both downlink and uplink communications. The channel response can be estimated through a first part of the incoming signal frame. The estimation is carried out employing either training sequence aided approach or non-data aided approach. The channel response matrix seen by the all M antennas for ith user is denoted as
Assuming the frame length in terms of symbol is Q, then after analog-to-digital conversion and sampling the received (NQ+L)×1 uplink discrete-time traffic signal vector for mth base-station antenna is:
where vm is NQ×1 receiver thermal noise vector and zm is NQ×1 interference vector. si=[si[0], . . . , si[Q−1]]T is the transmitted data sequence for the whole frame and Gmi is (NQ+L−pi)×NQ composite channel response matrix for the channel between the ith antenna and the ith user given by,
where Hmip
The output streams of the filters 104 are switched to a user and sub-carrier specific spatial combiner 108. Either non-data-aided scheme or training sequence aided scheme can be designed to estimate the user and sub-carrier specific spatial signatures and produce spatial weights, which in turn are applied to the incoming data after the code correlation to complete linear spatial combining in block 110. After that, the per user and per sub-carrier data are fed into a slicer 112 for detection. The above described conventional method provides a low complexity space-time approach. In essence, for each carrier, the data of a whole frame are segmented into Q consecutive blocks of length N chips and a space-time linear combiner is applied to each block of dimension M×N to complete the symbol detection. To be more specific, after the code correlation, the corresponding symbol level space-time data model can be represented as
Ĥi[0]=[CiHT0iH1i0Ci, . . . , CiHT0iH1j0Ci]T, Ĥi[1]=[CiHT1iH1i0Ci, . . . , CiHT1iH1i0Ci]T and Ĥi[−1]=[CiHT−1iH1i0Ci, . . . , CiHT0iH−1i0Ci]T.
In the above expressions, Tki, k=−1, 0, 1, i=1, . . . , Nu are truncating matrices defined as follows
In order to preserve low or reasonable complexity while maintaining the high performance, a symbol-by-symbol space-time MMSE joint detector with interference cancellation is disclosed.
The uplink channel estimation process applied to the first part of the incoming signal frame. It is designed to extract a channel response matrix of all users and all antennas. As will be discussed later, it is understood that the uplink channel estimation process can also be used to aid downlink transmission for time division duplex (TDD) mode. One embodiment of the channel estimation process employs one or more training sequence. The training sequence may be an orthogonal circulant sequence of length Nt, denoted by t[n], n=0, . . . , Nt−1. The orthogonal property is expressed as
where (•)N
THT=IN
where T is a Nt×Nt circulant matrix formed with t[n], i.e.,
The training sequences are assigned in such a way that the ith user sends the [(i−1)Ns+1]th column of T preceded by its cyclic prefix of length L. Ns may satisfy Nt=NsN and Ns>L. In one example, based on a finite impulse response (FIR) channel model, hmi=[hm0i, . . . , hmLi] would represent the channel response of the ith user at the mth antenna. Noting that Nu=N in each sub-carrier of interest, and by properly truncating the data at the mth receiver, the received signal rm can be expressed by
rm=Thm+vm+zm (10)
where vm is thermal noise vector, zm is interference vector and hm is given by
hm=[[(hm1)H01×(N
Assuming both vm and zm are Gaussian, the maximum likelihood (ML) estimation of hm is given by
{tilde over (h)}m=THrm (12)
In one example, a fast joint channel estimation is achieved by choosing Nt to be a power of 2. If the circulant matrix T can be further decomposed as T=FHΦF, where F is a normalized Fast Fourier Transform (FFT) matrix and Φis a diagonal matrix with non-zeros elements, which are complex numbers of unit amplitude, then equation (12) can be carried out employing FFT operations represented by {tilde over (h)}m=FHΦHFrm. In the antenna array and the base station, the above operation may be carried out at each antenna as a part of chip data processing. In a later stage, a predetermined spatial combining process can be employed to remove interference term zm. As also will be discussed later, for downlink communications, a similar operation is carried out only once since spatial processing is most likely done at the base station.
For illustration purposes, the following assumptions are made for both uplink and downlink to facilitate further analysis. First, all signals are synchronously received symbols and the network system is fully loaded. Second, the channel delay spread is smaller than one symbol period. Third, the channel coefficients remain constant over the whole frame and the carrier phase is compensated. The above assumptions localize the MU-ISI to only immediately adjacent symbols and the channel estimation obtained based on the training sequence at the beginning of the frame is able to be applied to the traffic data following the training sequence within the frame.
It can be shown that given a channel response matrix Hi for the ith user, the spatial signature satisfying above criterion is the left singular vector corresponding to the largest singular value of Hi. The following singular value decomposition relates to the spatial signature.
Hi=UΣVH, ai=U(:,1) (14)
Under the maximum ratio combining criterion, the uplink spatial weight is equal to the spatial signature, i.e., wi=ai. When applying the spatial weights in the spatial combiner, the complex conjugate of the spatial signature is used for maximizing the signal-to-noise ratio (SNR).
In an interference prone environment such as frequency reuse wireless networks, constrained minimum output energy (MOE) criterion leads to good performance and the spatial weight is referred to as the null steering weight since it tries to null out signals coming from all other directions except the desired direction,
The solution of (16) is given by
Accordingly, the above weight maximizes the signal-to-noise-plus-interference ratio (SINR). Therefore, the weights of all Nu users form a N×NM beamforming matrix
W=[w1e1, . . . , wN
where ek is a N×1 vector with 1 on the kth element and 0 on others. denotes kronecker product.
Referring back to
d[n]=WH{circumflex over (r)}[n] (18)
and d[n] is fed into a joint detector 214.
Using the model represented by equation (5), first in the spatial combiner, a spatial combining is performed as shown in (18), the resulting data model is given by
d[n]=F0s[n]+F0s[n−1]+F−1s[n+1]+vF[n]+zF[n] (19)
where s[n]=[s1T[n], . . . , sN
Since F0s[n] carries the information for the data to be detected, F1s[n−1] denotes the interference induced from previous symbols of all users, F−1s[n+1] denotes the interference induced from next symbols of all users. vF and zF are the thermal noise and interference after beamfoming respectively. If a nulling process is employed in an adaptive beamforming algorithm and the correlation between desired user and interference is below some threshold, the interference can be cancelled significantly without enhancing thermal noise. For symbol-by-symbol detection, the detection order is determined by relative total energy carried by F1 and F−1. Assuming ∥F1∥2>∥F−1∥2, then the previous symbol interference dominates and a better detection should go along with an increasing order of n and the detected data during the previous symbol period can be employed to cancel out interference contributed by previous symbols of all users.
A linear combiner matrix A is derived under the MMSE criterion in which interference from the next symbol period is treated as noise and the detection of previous symbol is assumed to be perfect, namely,
The solution of (21) is given by
A=F0H(F0F0H+Rvz+F−1F−1H)−1 (22)
Note from (22) that both A and the matrix to be inverted are of a dimension N×N, thus a huge amount of computation has been saved especially when a short length code is employed. For example, the traffic data processing requires only O(MNQ+N2Q) in contrast to O(MN2Q2). The saving is very significant especially when Q is large. It is noted that both the linear combiner matrix A and the channel matrix Fj can be collective referred to as the joint detection matrix or JD matrix, and they are both fed into the joint detector.
The basic symbol-by-symbol joint detection (JD) algorithm is given as follows assuming the first symbol does not suffer interference from previous symbol period,
ŝ[1]=D{Ad[1]}
ŝ[n]=D{A(d[n]−F1ŝ[n−1])}, n=2, . . . , Q (23)
D{•} denotes slicing or hard decision performed on each component of a symbol vector based on respective modulation scheme. The above scheme accommodates adaptive carrier phase recovery to be integrated. In addition, combination of multiple modulation schemes can be employed for s[n], i.e., different user employs different modulation scheme depending on respective link quality and traffic intensity.
The aforementioned algorithm employs hard decision feedback to subtract interference from previous symbol vector and perform linear processing to null out MCI in the current symbol period. In case F1 and F−1 carry comparable energy, the performance can be further improved by integrating iterative forward-backward vector ISI subtraction and successive MCI cancellation. If a perfect power control is available, successive cancellation can cause asymmetric performance along codes and the error propagation can be harmful. However in the multipath scenario, even if all code energies are the same, code signatures may carry quite different energies with non-orthogonality among them. As a result, the channel matrix F0 can have bad condition that enhances noise when the linear nulling is performed. Code ordered successive detection helps to overcome such bad condition of the channel matrix F0 induced by those unfriendly channels.
In order to deal with both the past and future interference, a two-or-more-pass iterative forward-backward vector ISI subtraction method can be used in the joint detector. After the symbol vector s[n+1] is detected, s[n] is detected again by subtracting both F1ŝ[n−1] and F−1ŝ[n+1]. Thus interference from both the previous symbol and next symbol is mitigated and the improvement becomes bigger if more passes are integrated. More passes is feasible by allow increased complexity. The two-pass algorithm is demonstrated as follows:
ŝ(1)[0]=0; ŝ(0)[1]=D{Ad[1]}
ŝ(0)[2]=D{A(d[2]−F1ŝ(0)[1])}
ŝ(1)[1]=D{A(d[1]−F−1ŝ(0)[2])}
for n=3 to Q
ŝ(0)[n]=D{A(d[n]−F1ŝ(0)[n−1])}
ŝ(1)[n−1]=D{A(d[n]−F1ŝ(1)[n−2]−F−1ŝ(0)[n])} (24)
end
As an alternative to the MMSE linear combiner 402 in
d(i)[n]=F0(i)s(i)[n]+vF[n]+zF[n], i=0, . . . , N−1 (25)
where s(0)[n]=s[n] and d(0)[n]=d[n]. At ith iteration, after a component symbol sk(i)[n] is detected where k(i) is the code index for the detection, the k(i)th component of s(i−1)[n] is removed to get the reduced signal vector s(i)[n]. F0(i) is the deflated matrix with respect to F0(i−1) by removing the k(i)th column of F0(i). The data model (25) is updated accordingly. The detection order is determined by performing linear MMSE detection on the undetected symbols according to the updated data model. The symbol with maximum signal-to-noise ratio will be detected first and its hard decision is utilized to cancel its contribution to the received signal to obtain updated d(i)[n]. Instead of computing a single MMSE matrix A, a ordered linear nulling vector sequence is computed a(i), i=0, . . . , N−1. Then linear nulling and nonlinear cancellation are applied to the received data alternatively and sequentially in an optimized order to detect symbols. Like the iterative forward-backward algorithm, the above described successive cancellation is an add-on algorithm which replaces the MMSE linear combination by a hybrid linear/nonlinear processing method. This additional part for the nth symbol interval is shown as follows
d(0)[n]=d[n]
Differences between the downlink and uplink system should be noted as follows: (1) the beamforming is carried out at the transmission site and the downlink receiver sees effective channels in time domain only; (2) signals of all users are sent out synchronously and timing synchronization is conducted at the receiver; (3) the receiver may not have the entire profile such as modulation order, number of channels for all users in the same carrier. For any receiver, only profile information of itself is timely delivered to the receiver to save protocol overhead. However, energy of each code channel can be derived from downlink channel estimation and can be employed to determine the number of significant channels to be included in the joint detection algorithm. In addition, since downlink receiver does not know of the modulation order of channels other than those occupied by itself, hard decision cannot be used to perform decision feedback based joint detection or successive code channel cancellation. Instead, amplitude-limited soft decision (ALSD) is employed to perform aforementioned nonlinear processing. Amplitude limiting constrains the received symbols from other channels to the average symbol amplitude per channel irrespective of the true constellation and keeps the phase information unchanged. This operation reduces the noise contributing to the signal amplitude. It is understood that all two previous discussed joint detection algorithms can use the ALSD to perform detection.
To elaborate the downlink joint detection algorithm, the same channel notion is used for the downlink communication since the TDD uplink channel is the same as downlink channel assuming the frame is short in time. The receiver does not perform code despreading, but still perform channel estimation for all channels in the sub-carrier. The received data 502 is cut into Q overlapping segments r[n], n−1, . . . , Q. Each r[n]is a(N+L)×1 vector. The last L chips of r[n] are overlapped by the first L chips of r[n+1]. To be exact, the received signal for the kth user of the whole frame is given by
where wim is the downlink spatial weight for the mth antenna and Jmk is the composite channel response matrix given by
The downlink composite channel response matrix Jmk is different from uplink in the first diagonal block matrix due to different synchronization mechanism. After segmentation, the (N+L)×1 data vector is given by
dk[n]=P0ks[n]+P1ks[n−1]+P−1ks[n+1]+vF[n]+zF[n] (29)
(29) is the same as the uplink model (5) except that the channel matrix formation is different in its truncating matrices which are given by
To detect data for the kth user, it needs to be known which of other code channels should be included into the joint detection along with code channels of the user, i.e., determine the order of the joint detection. The energies of other code channels relative to that of the kth user are utilized to make such decision. The channels concerned here are spatial combined channels given by
and ∥Hi(:,1)∥2 gives the total energy of the ith user. The inclusion criterion is given by
where δ is the prescribed threshold. Note however that the decision is made on a code channel basis instead of user basis since the receiver does not have the profile of other users in the same carrier. Code channel with small energy below the threshold will be omitted from the solution and be treated as noise. After the joint detection order is determined, a data model similar to (29) is obtained shown below.
The difference between (32) and (29) is that (1) the dimension of
where Bi is the amplitude prescribed for ith code channel and Sj is the index set of the code channel occupied by the jth user. Then (23), (24) and (26) become the corresponding downlink joint detection algorithms by replacing D{•} by {tilde over (D)}{•}.
The above disclosure provides several different embodiments, or examples, for implementing different features of the disclosure. Also, specific examples of components, and processes are described to help clarify the disclosure. These are, of course, merely examples and are not intended to limit the disclosure from that described in the claims.
While the disclosure has been particularly shown and described with reference to the preferred embodiment thereof, it will be understood by those skilled in the art that various changes in form and detail may be made therein without departing from the spirit and scope of the disclosure.
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