Radio transmitters amplify input signals. It is desired that the gain of such transmitters be linear for the entire range of input signals. Memoryless linearization of signal transmitters and, in particular, of radio transmitters is closely related to the problem of power amplifier linearization using baseband techniques, which is considered to be of the greatest significance for achieving effective and economical minimization of transmission-related signal distortions in digital communication systems.
Despite a big diversity of existing approaches aimed at improving the quality of RF power amplification, many of the older solutions are constrained to usage with specific discrete-level signaling formats, and, thus have a limited relevance to contemporary wideband communication standards. Development of general solutions of a particular practical value that are invariant with respect to the transmitted signal has been simulated in the past decade, pointing out the usefulness of a single-argument complex gain function of the input power for the modeling of memoryless distortions in baseband power amplifier linearizers.
Compared to the previously demonstrated general approach using two-dimensional mapping of the amplifier output against the phase and magnitude signal values at its input, the gain-based nonlinear model has a substantially lower computational complexity for the same performance that is instrumental in the design of hardware-efficient digital linearization systems.
A common architecture of recently proposed baseband power amplifier linearizers includes a digital nonlinear gain block, usually called a predistortion block, inserted in the transmitter chain prior to upconversion stages. The predistortion block may be continuously adapted to approximate as closely as possible the inverse nonlinear complex gain of the following transmitter stages up to the power amplifier. Depending on the coordinate system in which the transmitter gain estimation is conducted, two main types of baseband linearization approaches can be distinguished: (1) orthogonal-coordinate, where the complex gain function is defined by a pair of real and imaginary functions, and (2) polar-coordinate, where the complex gain function is defined by a magnitude and a phase function. Since in Quadrature Amplitude Modulation (QAM) schemes the signals are typically represented by in-phase and quadrature-phase components, i.e. in orthogonal coordinates, the realization of the second approach involves additional complexity to provide for coordinate system transformation of the estimation data. On the other hand, more sophisticated predistorter architectures and adaptation algorithms may be required for the implementation of unconditionally convergent and robust baseband linearization in orthogonal coordinates to account for high-power memory effects as a function of the input signal bandwidth and dynamic-range.
In the following description, reference is made to the accompanying drawings that form a part hereof, and in which is shown by way of illustration specific embodiments which may be practiced. These embodiments are described in sufficient detail to enable those skilled in the art to practice the invention, and it is to be understood that other embodiments may be utilized and that structural, logical and electrical changes may be made without departing from the scope of the present invention. The following description of example embodiments is, therefore, not to be taken in a limited sense, and the scope of the present invention is defined by the appended claims.
The functions or algorithms described herein are implemented in software or a combination of software and human implemented procedures in one embodiment. The software may consist of computer executable instructions stored on computer readable media such as memory or other type of storage devices. The term “computer readable media” is also used to represent any means by which the computer readable instructions may be received by the computer, such as by different forms of wireless transmissions. Further, such functions correspond to modules, which are software, hardware, firmware or any combination thereof. Multiple functions are performed in one or more modules as desired, and the embodiments described are merely examples. The software may be executed on a FPGA, ASIC, digital signal processor, microprocessor, or other type of processor operating on a computer system, such as a personal computer, server or other computer system.
Linearization of signal transmitters with memory effects is performed by an adaptive control system using inverse Volterra-series modeling. The signal transmitter may be a baseband transmitter for cellular communications implementing various protocols, such as CDMA, UMTS and WiMAX as well as others. A modular architecture is described for a linearizer and an associated controller allowing higher order Volterra approximation terms to be added with minimal impact on complexity. A system utilizes a novel representation of the Volterra-series polynomials which is compatible with an efficient look-up table (LUT) implementation, such as in digital hardware. Compared to existing approaches, the disclosed method and system may provide improved performance by realizing a larger number of higher order Volterra terms for the same processing complexity, structural flexibility of the inverse model by software re-configurability of the Volterra terms order, and implementation efficiency by utilizing uniform sets of dual-port RAMs used as LUTs to modify and accumulate processing elements to implement Volterra terms.
A LUT-based Volterra-series linearizer 100 can implement arbitrary order Main Terms of the Volterra-series expansion as shown in
In one embodiment, Volterra tap 125 is a main Volterra tap at time offset 0, corresponding to present time. Volterra tap 130 is a main Volterra tap at time offset −N or N samples before the present time.
The outputs of all multipliers are added together at summation block 155 to provide a predistorted version of the input sample that is provided to a non-linear (NL) transmitter 160. This signal as well as xn and yn (an output signal from transmitter 160) may be digital waveforms or digitized versions of analog waveforms undergone analog-to-digital conversion (i.e. yn). The NL transmitter 160 may include digital-to-analog conversion, modulation, frequency translation, filtering or power amplification subsystems and utilize a linear feedback receiver to provide digitized samples on line 165 for error formation at an error bock 170 at a given point or points of the transmitter line-up.
Error block 170 also receives the input signal with propagation delay compensation provided by block 175 to produce an error signal from a comparison of the output signal to the input signal. An obvious sampling point of output signal yn is the power amplifier output at 165, which may be provided by a directional coupler or other means. The error signal is provided to a set of tap controllers or adaptive controller 180. Adaptive controller 180 is described in further detail with reference to
The linear tap-delay line 138 represents an innovative look at the classic Volterra series definition using sets of non-linear (a.k.a. “polynomial”) filters. Polynomial filters may be difficult to implement since the signal samples have to be raised to power before being passed through a tap-delay line and weighed prior to summation. The structure described in
Main X-Terms can be created as shown in
Secondary X-Terms (of higher order and potentially smaller significance) can be created by adding single-input LUT's performing power functions in the data paths from the delay line to the complex multipliers while forcing fi( ) to be power functions. Since the order and complexity of such terms increases exponentially, this definition has no intent to be comprehensive but only exemplary.
The adaptive controller 180, as shown in further detail in
The error signal 330 from error block 170 is common for all controllers. The adaptive signals xn-iN-D and xn-jN-D, used respectively to process/normalize the error signal prior to LUT update and to select the location of the update, are created by passing the input signal (with accounted closed-loop system propagation delay, D) through an adaptation tap-delay line similar to the one defined earlier. A tap controller 310 modifies a LUT Volterra tap 320 value by: (1) reading its current value, (2) modifying it with a processed error, and (3) writing the new value to the same LUT location. For example an LMS update operation can be described as:
Yik=Yik-1+μi·errinorm
where Yk-1i is the existing LUT contents of tap i at the discrete time instant n; the real-valued parameter μi is the “adaptation step” which may be different for each tap; and errinorm is a version of the common complex-valued Error signal which is phase- and magnitude-normalized differently for each tap.
The address information about the location may be derived from the same adaptive tap-delay line. The Main Terms and X-Terms adaptation differs only in the choice of LUT location (i.e. updated LUT address). For j=i, Main Terms are adapted, otherwise Main X-Terms are adapted.
The Main Terms and Main X-Terms differ only by which tap-delay line outputs are connected to the I-st Volterra tap ports (see
The input signal, xn, follows two different paths in
Volterra tap 435 has two ports. A first port receives and processes the real time signals. A second port does not disturb the first port input, but operates to update the contents of the lookup table. The update may be formed as a function of future values of the input signal in various embodiments.
Performance can be maximized through configuration of the Tap Delay Line Matrix so as to implement only Volterra Taps of highest significance.
One example implementation of the predistortion section of a Tap-delay Line Matrix 510 is shown in
Matching of the signal bandwidth to the inverse Volterra model bandwidth is allowed by changing the tap-delay line spacing N for Main Terms and X for X-Terms and implementing a fractionally spaced non-linear equalizer. Programming of the tap spacing can be done empirically during operation or configuration stages.
Adding an extra delay to the error path, causality delay 460 allows shifting of the location of the present tap by a desired number of samples back in time and virtually creating non-causal inverse models which work on past, present and future samples.
Various embodiments of the LUT-based Volterra-series linearizer provides an efficient modular design of the Volterra terms and their adaptive circuits without the need for power functions and polynomials. Use of a pair of dual-port LUTs and a complex multiplier to implement a Volterra term of arbitrary power at a given time offset is referred to as a Volterra tap. Each LUT pair can be independently attached to an adaptive block (e.g. LMS, RLS, etc.). An extendable flexible structure is provided. A change of memory span may be performed by addition or removal of a time-offset block and a Volterra tap. Main Terms and Main X-Terms may be equally extendable as only the signal addressing the LUTs in Volterra taps has to change.
Causality and anti-causality can be enforced or allowed by appropriately delaying the error signal input to the adaptive circuits. Further embodiments of LUT-based Volterra-series linearizers have an upgradeable distributed structure (enabled by modular design). Local change of the adaptive circuit attached to a LUT may result in a new optimization algorithm. Operation of the adaptive block may be transparent for sequential, parallel or semi-parallel adaptation scheme of the Volterra model, while preserving the main properties of prior predistortion methods.
In one embodiment, no coordinate system or format transformations of the input signals for implementation of the control algorithms need be performed. Further, division operations involving the input, feedback or error signals need not be performed. Some embodiments provide a reduced dependence on the statistics of the input signal. Special calibration or tuning sequences before or during transmission may also be avoided in various embodiments.
The adaptive control system described may be applied to improve the performance, efficiency and size of signal transmitters in different fields such as, but not limited to, RF transmission, Hi-Fi audio, Hi-Fi video, optical transmission and, generally, in systems where high-quality of electrical/electro-mechanical/electro-optical/electro-magnetic signal transformation is desired.
The Abstract is provided to comply with 37 C.F.R. §1.72(b) to allow the reader to quickly ascertain the nature and gist of the technical disclosure. The Abstract is submitted with the understanding that it will not be used to interpret or limit the scope or meaning of the claims.
This application is a continuation of and claims the benefit of priority under 35 U.S.C. 120 to U.S. patent application Ser. No. 11/689,374 (entitled Signal Transmitter Linearization, filed Mar. 21, 2007) which claims the benefit of priority under 35 U.S.C. 119(e) of U.S. Provisional Application Ser. No. 60/788,970 (entitled Adaptive Look-Up Based Volterra-series Linearization of Signal Transmitters, filed Apr. 4, 2006) the benefit of priority of each of which is claimed hereby, and each of which are incorporated by reference herein in its entirety.
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Number | Date | Country | |
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Parent | 11689374 | Mar 2007 | US |
Child | 12858998 | US |