The present invention is related to the field of communication in general, and wireless communication, in particular.
Advances in integrated circuit, microprocessor, networking, telecommunication and other related technologies have led to wide spread adoption of wireless communication, e.g. mobile wireless “cell” phones. In the case of wireless communication, such as mobile wireless “cell” phones, typically, a mobile wireless “cell” phone (also referred to as a mobile handset), communicates with a “nearby” service station (also referred to as a base station), which relays the communication signals for the mobile handset. The service/base station provides the relay service for all mobile handset in its coverage area (its “cell”). Thus, a service/base station typically receives and processes communication signals from a number of mobile handsets in its “cell” concurrently.
Use of multiple antennas at the service/base station for receiving the communication signals from the mobile handsets have become popular, as it has several advantages in terms of enhancing the capacity and throughput of the wireless communication system. Various signal processing techniques are employed to process the received communication signals, including but not limited to “space-time” processing techniques.
Among the space-time processing techniques, beamforming is one of the promising areas of interest for enhancing the strength of signals received from a desired direction. One known technique is the employment of a known training sequence to estimate the optimum weights (e.g. using least mean square (LMS)), for beamforming to a desirable direction. Other known techniques for estimating the directions of arrival (DOAS) include employment of the Bartlett processor or the MUSIC (Multiple Signal Classification) technique.
Training has the disadvantage of incurring overhead in the throughput of the system, and convergence may take longer time than the time available to make the determination. The latter techniques require a large number of snapshots of the received signals to provide a good estimate of a correlation matrix reflective of the correlation (or the lack thereof) of the received signals from the independent signal sources.
Additionally, while each communication signal typically has a number of multipaths, due to environmental factors, such as reflection off structures and so forth, these techniques typically estimate the DOA based only on the most dominant multipath of a signal.
Embodiments of the present invention will be described by way of the accompanying drawings in which like references denote similar elements, and in which:
Embodiments of the present invention include but are not limited to methods and apparatuses for determining the direction of arrivals of a number of signals wirelessly transmitted. Embodiments of the present invention also include methods and apparatuses for determining the direction of arrivals of multipaths of a number of signals wirelessly transmitted.
In the following description, various aspects of embodiments of the present invention will be described. However, it will be apparent to those skilled in the art that other embodiments may be practiced with only some or all of the described aspects. For purposes of explanation, specific numbers, materials and configurations are set forth in order to provide a thorough understanding of the embodiments. However, it will be apparent to one skilled in the art that other embodiments may be practiced without the specific details. In other instances, well-known features are omitted or simplified in order not to obscure the description.
Various operations will be described as multiple discrete operations in turn, in a manner that is most helpful in understanding the embodiments, however, the order of description should not be construed as to imply that these operations are necessarily order dependent. In particular, these operations need not be performed in the order of presentation.
The phrase “in one embodiment” is used repeatedly. The phrase generally does not refer to the same embodiment, however, it may. The terms “comprising”, “having” and “including” are synonymous, unless the context dictates otherwise.
Referring now to
For the embodiment, base station 106 includes N antennas 108a-108n, RF unit 110, and signal processing unit 110, coupled to each other as shown (RF=Radio Frequency). Antennas 108a-108n are employed to transmit to, and receive signals from mobile handsets 102a-102j. Additionally, antennas 108a-108n may be employed for other purposes. Antennas 108a-108n may also be referred to as sensors. For the purpose of this application, the two terms are synonymous.
RF unit 110 is employed to down convert RF signals received by antennas 108a-108n into baseband signals, or up convert baseband signals into RF signals for transmission by antennas 108a-108n.
Signal processing unit 110 is employed to process the down converted baseband signals, and process outbound signals for up conversion. For the embodiment, signal processing unit 110, includes in particular DOA Estimation unit 112 and Beamforming unit 114, coupled to each other and to RF unit 110 as shown.
In various embodiments, DOA Estimation unit 112 estimates the DOAs of the J signals (J being an integer), to be described more fully below referencing
In other embodiments, DOA Estimation unit 112 estimates the DOAs of the L multipaths (L being an integer) of the J signals, to be described more fully referencing
For the latter embodiments, Beamforming unit 114 forms the corresponding output signals based at least in part on the DOAs of the L multipaths of the J signals estimated by DOA Estimation unit 112. More specifically, Beamforming unit 114 determines a number of corresponding weights and forms the corresponding output signals based at least in part on weighted contributions of the L multipaths of the J signals estimated by DOA Estimation unit 112.
Except for the advantageous manners base station 106 acquires signals 104a-104j, mobile handsets 102a-102j and RF units 110 represent a broad range of these elements. A computer system suitable for hosting a software implementation of DOA Estimation unit 112 and Beamforming unit 114 will be further described below referencing
For the remaining descriptions to follow, and for the claims, the following conventions are employed:
Referring now to
The J independent signals impinge on the N antenna array in J distinct directions θ1, . . . θJ, where the angles θj are measured with respect to the endfire direction.
The output signal vector for a single snapshot of the received signal is given by
x(t)=As(t)+n(t)
Thus, x(t) is the linear combination of J-linearly independent Vandermonde vectors, each corresponding to a source direction, and x(t) may be considered as
x(t)=a(θ1)s1(t)+ . . . +a(θJ)sJ(t) (6)
In Equation (3), matrix A represents a basis that spans a J-dimensional subspace, to which x(t) belongs. Accordingly, x(t) in its decomposition has one of the directional vectors as its element.
Hence, there exists a correlation such that the intersection of the one-dimensional subspace spanned by x(t) (output signal vector for a single snapshot) and any of it's J-signal directional vectors is non-zero.
Therefore, if θi does not correspond to one of true source directions i.e. θi∉(θ1, . . . ,θJ), the intersection between x(t) and a(θi) will be zero.
Accordingly, the computational problem is formulated as
x(t)∩a(θi)=0, for θi∉(θ1, . . . ,θJ) (7)
x(t)∩a(θi)≠0 for θi∈(θ1, . . . ,θJ) (8)
The N×2-matrix formulated as D(t)=[x(t),a(θi)] will have rank deficiency or close to rank deficiency if θi∈(θ1, . . . ,θJ).
Hence, in determining the DOA of the J signals θ1, . . . θJ, the process of
On selecting a trial direction, the process proceeds to compute
On computing the first coefficient and the first orthonormal vector, the process proceeds to compute
Then, the process proceeds to evaluating a function
At block 210, the process determines whether additional directions are to be determined. If so, the process returns to block 202, and continues from there as earlier described. If not, the process terminates.
Referring now to
The signal corresponding to jth source and L coherent multipaths at the base station is given by
Extending the above equation for N-element antenna array, the following relationship is obtained.
is the array response vector for jl-th multipath component. The notations in the above have the following meanings.
Under the assumption that multipath delay spread
T=max(τjl)−min(τjl)<<1/B,
Further, all multipaths from the mobile arrive at the base station array uniformly within ± around the mean angle of the arrival θj.
Further, assuming the signals are narrowband, the complex baseband signal vector can be written as
Further letting
be an Array Response vector for L number of coherent multipaths corresponding to j'th source.
Use of the conventional algorithms like MUSIC leads to the estimation of the same direction
Hence θjl may be replaced by θj.
In such a case the above equation can be approximated as
For J-users the signal vector at the array is given by
Averaging is denoted by E.
It's size is J×J, where J is the number of sources. Noise covariance is given by
E[n(t)nH(t)]=σn2I (22)
So, letting the eigenvalues of R, be arranged in descending order, and denoted by λ1≧λ2≧, . . . ≧λN, as well as letting u1, . . . ,uN be the corresponding eigenvectors, where the eigenvalues λn are given by
The embodiment assumes that the subspace spanned by the estimated eigenvectors Us=[u1, . . . , uJ] corresponds to the space spanned by the J-true source directions. It should be noted that j-th eigenvector corresponds to L-coherent multipaths due to the j-th source. Estimation of the j-th source direction θj can be done by any well known method like MUSIC. The embodiment searches within the direction range θj+, centered on the determined DOA of the j-th source θj, to determine the L multipaths for j-th source.
Thus, signal vector xj(t) can be considered as
xj(t)=[v(θjl)v(θj2) . . . v(θjL)]{tilde over (s)}jl (24)
Thus, as illustrated in ),l=1,2, . . . ,L, starts with the process first selecting a trial direction set Θ=(θjk
The processing of finding Θ=Θj, that is,
First, the process selects randomly a set (θjk
Second, the process forms the following matrix
D(θ)=[v(θjk)
Third, the process computes the following relationships
r11=∥v(θjk
Similarly, for following coefficients and vectors, the process computes
is performed until I=L+1, that is obtaining rL+1,L+1.
Then, at block 308, the process computes the function
If the result of B(Θj) yields a “new” set of peak values, the trial direction set Θ is set as the directions of arrival of the L strong multipaths.
At block 310, a determination is made whether the process is to be repeated. The number of trials to repeat may be predetermined, for operating efficiency, or based on a predetermined threshold of diminishing marginal improvements.
If another trial set is to be evaluated, the process returns to block 302.
Eventually, the criteria to terminate estimation process is met, and the process terminates. The then current estimates of the L multipath directions {circumflex over (Θ)}j={{circumflex over (θ)}j1, . . . ,{circumflex over (θ)}jL} are used to obtain the combined signal z(t) (See
In other words, after estimation of the L-multipath directional set in DOA Estimation Unit 112 for j-th source, the received signals at the antenna elements are appropriately weighted as given in the equation (32).
This process is repeated for all J signal sources received at the antenna elements with each source signal weighted by coefficients corresponding to L-multipaths.
Referring now to
Processor 402 is employed to execute software implementations of DOA Estimation 112 and/or Beamforming 114. Processor 402 may be any one of a number of processors known in the art or to be designed. Examples of suitable processors include but are not limited microprocessors available from Intel Corp of Santa Clara, Calif.
System memory 404 is employed to store working copies of Estimation 112 and/or Beamforming 114 and operating system services. System memory 404 may be Dynamic Random Access Memory (DRAM), Synchronous DRAM (SDRAM) or other memory devices of the like.
Mass storage devices 406 are employed to persistently store data, including e.g. a persistent copy of Estimation 112 and/or Beamforming 114. Examples of mass storage devices 406 include but are not limited to hard disks, CDROM, DVDROM, and so forth.
Other I/O devices 408 are employed to facilitate other aspects of input/output. Examples of other I/O devices 408 include but are not limited to keypads, cursor control, video display and so forth.
Network communication interface 410 is employed to facilitate network communication with other devices. Network communication interface 410 may be wired based or wireless. In various embodiments, network communication interface 410 may support any one of a wide range of networking protocols.
In alternate embodiments, computing system may be a multi-processor systems, a cluster of networked computers, including an array of massively parallel computing nodes.
Accordingly, various novel methods and apparatus for determining the DOA of J signals, and/or determining the DOA of L multipaths of J signals, the J signals being wireless transmitted by their sources.
While the present invention has been described in terms of the foregoing embodiments, those skilled in the art will recognize that the invention is not limited to the embodiments described. Other embodiments may be practiced with modification and alteration within the spirit and scope of the appended claims. Accordingly, the description is to be regarded as illustrative instead of restrictive.