The present disclosure relates to multiband predistortion.
In many modern applications, there is a desire for concurrent multi-band transmitters that are capable of transmitting concurrent multi-band signals. As used herein, a concurrent multi-band signal is a signal that occupies multiple distinct frequency bands. More specifically, a concurrent multi-band signal contains frequency components occupying a different continuous bandwidth for each of multiple frequency bands. The concurrent multi-band signal contains no frequency components between adjacent frequency bands. One example of a concurrent multi-band signal is a concurrent dual-band signal. One exemplary application for concurrent multi-band signals that is of particular interest is a multi-standard cellular communications system. A base station in a multi-standard cellular communications system may be required to simultaneously, or concurrently, transmit multiple signals for multiple different cellular communications protocols or standards (i.e., transmit a multi-band signal). Similarly, in some scenarios, a base station in a Long Term Evolution (LTE) cellular communications protocol may be required to simultaneously transmit signals in separate frequency bands.
A concurrent multi-band transmitter includes a multi-band power amplifier that operates to amplify a concurrent multi-band signal to be transmitted to a desired power level. Like their single-band counterparts, multi-band power amplifiers are configured to achieve maximum efficiency, which results in poor linearity. For single-band transmitters, digital predistortion of a digital input signal of the single-band transmitter is typically used to predistort the digital input signal using an inverse model of the nonlinearity of the power amplifier to thereby compensate, or counter-act, the nonlinearity of the power amplifier. By doing so, an overall response of the single-band transmitter is linearized.
In order to determine the compensation to use for the digital predistortion for a single band, a system that includes a transmitter includes a Transmit Observation Receiver (TOR). In operation, a digital transmit signal is predistorted by the digital predistortion subsystem to provide a predistorted transmit signal. The digital predistortion subsystem is adaptively configured to compensate for a nonlinearity of the transmitter and, in particular, a nonlinearity of the PA.
The system includes a feedback path including the TOR that is utilized to adaptively configure the digital predistortion subsystem. The TOR, using an Analog-to-Digital Converter (ADC), samples the downconverted signal at a desired sampling rate to provide a digital TOR output signal. The digital TOR output signal is compared to the transmitted signal to determine an error signal. The digital predistortion subsystem is calibrated based on the error signal. In particular, the digital predistortion subsystem is adaptively configured to minimize, or at least substantially reduce, the error signal.
In multiband predistortion, with N Component Carriers (CC), conventional transmitters require N training engines (TEs), two sets each of N sets of basis functions (one set of N sets of basis functions for the forward path and one set of N sets of basis functions for the adaptation path), and N TORs. This leads to increased complexity and computational resources. As such, improvements are needed for multiband predistortion systems.
Systems and methods for providing multiband predistortion using a time-shared adaptation loop are disclosed. In some embodiments, a multiband predistortion system includes a multiband power amplifier for amplifying N separate bands, a predistortion system including N Digital Predistorters (DPDs), and a single adaptation loop capable of providing predistorter adaptation for the N separate bands. The single adaptation loop includes at least one Training Engine (TE) module where the number of TE modules is less than N, and at least one Transmission Observation Receiver (TOR) module where the number of TOR modules is less than N. In this way, the cost and complexity of the multiband predistortion system can be reduced.
In some embodiments, the N separate bands are N Component Carriers (CCs) of a carrier aggregated signal. The single adaptation loop is shared by the N CCs, and the N DPDs are trained selectively as determined by a band selection module. In some embodiments, an order of adaptation of the N DPDs is configurable through the band selection module. In some embodiments, an order of adaptation of the N DPDs is sequential. In some embodiments, an order of adaptation of the N DPDs is based on an Error Vector Magnitude (EVM) performance in each of the N separate bands. In some embodiments, an order of adaptation of the N DPDs is based on an Adjacent Channel Leakage Ratio (ACLR) performance in each of the N separate bands. In some embodiments, an order of adaptation of the N DPDs is based on a Normalized Mean Square Error (NMSE) performance in each of the N separate bands.
In some embodiments, the single adaptation loop also includes a single Basis Function Generator (BFG) module which generates N sets of basis functions for both a forward path of the multiband predistortion system and an adaptation path of the multiband predistortion system. In some embodiments, the single adaptation loop also includes a first BFG module which generates N sets of basis functions for a forward path of the multiband predistortion system and a second BFG module which generates N sets of basis functions for an adaptation path of the multiband predistortion system.
In some embodiments, the single adaptation loop implements an efficient multiband iterative algorithm in the TE module. In some embodiments, the efficient multiband iterative algorithm is a Recursive Least Squares (RLS) algorithm. In some embodiments, the single adaptation loop uses a Model-Reference Adaptive Control (MRAC) learning approach.
In some embodiments, a required amount of feedback information for providing predistorter adaptation for the N separate bands is less than a required amount of feedback information for a multiband predistortion system with N TOR modules. In some embodiments, a required amount of feedback information for providing predistorter adaptation for the N separate bands is less than a required amount of feedback information for a multiband predistortion system with N TE modules.
In some embodiments, N equals two and the multiband predistortion system is a dual-band predistortion system. In some embodiments, the single adaptation loop implements an iterative dual-band estimator in the single TE module. In some embodiments, N is greater than two.
In some embodiments, each band of the N separate bands is a Long Term Evolution (LTE) band. In some embodiments, each band of the N separate bands is a Wideband Code Division Multiple Access (WCDMA) band. In some embodiments, at least two bands of the N separate bands are bands of different Radio Access Technologies (RATs).
Those skilled in the art will appreciate the scope of the present disclosure and realize additional aspects thereof after reading the following detailed description of the embodiments in association with the accompanying drawing figures.
The accompanying drawing figures incorporated in and forming a part of this specification illustrate several aspects of the disclosure, and together with the description serve to explain the principles of the disclosure.
The embodiments set forth below represent information to enable those skilled in the art to practice the embodiments and illustrate the best mode of practicing the embodiments. Upon reading the following description in light of the accompanying drawing figures, those skilled in the art will understand the concepts of the disclosure and will recognize applications of these concepts not particularly addressed herein. It should be understood that these concepts and applications fall within the scope of the disclosure and the accompanying claims.
Real-time predistortion adaptation is performed based on monitoring and capturing Power Amplifier (PA) output in a transmitter observation path. To minimize the PA's output distortion, a Training Engine (TE) compares feedback signals with reference input signals and implements a control algorithm to update Digital Predistorter (DPD) coefficients.
In multiband predistortion, with N Component Carriers (CC), conventional transmitters require N TEs, two sets each of N sets of basis functions (one set of N sets of basis functions for the forward path and one set of N sets of basis functions for the adaptation path), and N Transmit Observation Receivers (TORs). This leads to increased complexity and computational resources. As such, improvements are needed for multiband predistortion systems.
Many prior art attempts use a self-tuning regulator (STR) learning approach. This approach consists of comparing an output signal from the DPD to the output signal from the PA in order to generate a predistorted signal. A fundamental requirement for the STR learning approach is the simultaneous capture of the different component carriers' outputs.
Systems and methods for providing multiband predistortion using a time-shared adaptation loop are disclosed. In some embodiments, a multiband predistortion system includes a multiband power amplifier for amplifying N separate bands, a predistortion system including N DPDs, and a single adaptation loop capable of providing predistorter adaptation for the N separate bands. The single adaptation loop includes at least one TE module where a number of TE modules is less than N, and at least one TOR module where a number of TOR modules is less than N. In this way, the cost and complexity of the multiband predistortion system can be reduced.
In some embodiments, the multiband predistortion system adopts a different learning approach fundamentally avoiding the limitation of STR learning approaches, namely, a Model-Reference Adaptive Control (MRAC) learning approach. MRAC has the advantage of requiring only one component carrier output at a time.
In some embodiments, the MRAC learning approach enables a single-TE, single-Basis Function Generator (BFG), single-TOR adaptation loop architecture effectively time-shared between the different CCs and their respective DPD branches, as shown in
As shown in
The multiband predistortion system 10 of
TOR 20 is shown as including two filters 26-1 and 26-2 that correspond to the two separate bands. As shown in
The digital outputs of the predistortion system 14 are converted to the correct frequency by upconverters 34-1 and 34-2 before being combined for amplification by the multiband power amplifier 12.
In
where N1 and J1 represent the nonlinearity orders of the first CC, N2 and J2 represent the nonlinearity orders of the second CC, M1 and V1 represent the memory depths of the first CC, and M2 and V2 represent the memory depths of the second CC. âi,j,m,v1, and âi,j,m,v2 are the model's coefficients for the first and second CCs, respectively. â1 is a vector comprising all the coefficients' values of âi,j,m,v1. â2 is a vector comprising all the coefficients' values of âi,j,m,v2. φi,j,m,n1, and φi,j,m,n2 are the model's sets of basis functions for the first and second CCs, respectively. X1(n) is a vector comprising all basis function values of φi,j,m,n1. X2(n) is a vector comprising all basis function values of φi,j,m,n2. X1(n) and X2(n) are computed in the Basis Function Set 1 and Basis Function Set 2 modules, respectively, as shown in
Band Selection Module:
This module implements the band selection strategy to control the allocation of the single-TE and single-TOR between the different CCs. In one embodiment, the band selection module 24 can switch alternatingly between the different CCs. In one embodiment, the band selection module 24 can switch based on the Error Vector Magnitude (EVM) performance in each band. In one embodiment, the band selection module 24 can switch based on Adjacent Channel Leakage Ratio (ACLR) performance in each band. In one embodiment, the band selection module 24 can switch based on Normalized Mean Square Error (NMSE) performance in each band.
Single-TE Module:
The TE module 18 is used to train the DPD module of the BUL selected by the band selection module 24. In some embodiments, the TE module 18 implements the algorithm described below. In FIG. {tilde over (x)}BUL is the input signal envelope of the band under linearization (BUL). It is the band selected by the band select module shown in
Single-TOR Module:
The single-TOR module is used to monitor and capture one CC output envelope signal at a time. The TOR 20 output, ŷBUL, is connected to the TE module 18. The band selection module 24 configures the TOR 20 (e.g., local oscillators, filters, etc.) to select the appropriate band, the BUL.
Single-BFG Module:
The proposed approach enables the reuse of the sets of basis functions X1(n) and X2(n) in both the DPD branch and training branch. Hence, they are computed only in the forward branch and sent to the TE module 18. XBUL(n) is the set of basis functions vector for the BUL. XBUL(n) could be either X1(n) or X2(n) based on the selection of the band selection module 24.
In some embodiments, the single-TOR 20, single-TE 18 architecture may be enhanced with design of a robust estimator. Yet the estimator should also be convenient for real-time applications with manageable complexity. In some embodiments, including the examples disclosed herein, a Recursive Least Squares (RLS) algorithm is used.
The coefficient identification process can be made adaptive by setting the RLS algorithm to run iteratively. With each iteration, the algorithm begins with the coefficients identified in the last iteration, âi, then uses newly captured data points to estimate the error in the coefficients, Δa, and finally computes the new coefficient set, âi+1 which is related to the old set through the forgetting factor, γ, as shown below:
â
i+1
=â
i
−γ·Δa
The RLS algorithm for the case of dual-band transmission is shown below.
Algorithm I:
In operation, the different CCs are distorted simultaneously. However, the single-TOR 20, single-TE 18 architecture observes and trains the different CCs in different time frames. A successful implementation of such architecture is contingent on an efficient band selection strategy that is implemented in the band selection module 24. In the proof of concept of this work, a band alternating approach is implemented and experimentally validated.
In a multiband case, i.e., with more than two CCs, a multiband predistortion system 36 is shown in
As shown in
The multiband predistortion system 36 of
TOR 20 shown in
The digital outputs of the predistortion system 40 are converted to the correct frequency by the upconverters 34-1 through 34-N before being combined for amplification by the multiband power amplifier 38.
In
where N1 and J1 represent the nonlinearity orders of the first CC, N2 and J2 represent the nonlinearity orders of the second CC, NN and JN represent the nonlinearity orders of the Nth CC, M1 and V1 represent the memory depths of the first CC, M2 and V2 represent the memory depths of the second CC, and MN and VN represent the memory depths of the Nth CC. âi,j,m,v1, âi,j,m,v2 and âi,j,m,vN are the model's coefficients for the first, second and Nth CCs, respectively. â1 is a vector comprising all the coefficients' values of âi,j,m,v1. â2 is a vector comprising all the coefficients' values of âi,j,m,v2. âN is a vector comprising all the coefficients' values of âi,j,m,vN. φi,j,m,n1; φi,j,m,n2 and φi,j,m,nN are the model's sets of basis functions for the first, second and Nth CCs, respectively. X1(n) is a vector comprising all basis function values of φi,j,m,n1. X2(n) is a vector comprising all basis function values of φi,j,m,n2. XN(n) is a vector comprising all basis function values of φi,j,m,nN. X1(n), X2(n), and XN(n) are computed in Basis Function Set 1, Basis Function Set 2, and Basis Function Set N modules, respectively, as shown in
The RLS algorithm is also extended to the multiband case, as follows:
Algorithm II: RLS Algorithm Applied to MRAC Learning Approach—Dual-Band Case:
In the above algorithm, XBUL(n) is the set of basis functions vector for the BUL. XBUL(n) could be either X1(n), X2(n), or XN(n) based on the selection of the band selection module 24.
While the multiband predistortion system 36 shows only a single-TE module 18 and TOR 20, in some embodiments, there may be more than one TE module 18 or TOR 20 as long as the number of TE modules 18 is less than N and the number of TORs 20 is less than N. In such embodiments, one or more band selection modules 24 may control the operation of one or more TE modules 18 and TORs 20. For instance, in an embodiment with five separate bands, the first two bands may be controlled by a first TE module 18 and a first TOR 20 while the remaining three bands are controlled by a second TE module 18 and a second TOR 20.
To assess the performance of the proposed technique, it was used to model and linearize a high power dual-band Radio Frequency (RF) PA. The Device Under Test (DUT) was a 20 Watt class F Doherty PA driven by carrier aggregated signals. The proposed solution was implemented and validated under experimental measurements for dual-band systems.
As a first test, an inter-band carrier aggregated signal formed by a 101 Wideband Code Division Multiple Access (WCDMA) signal @ 1.8 GHz and a 15 MHz Long Term Evolution (LTE) signal @ 2.1 GHz was synthesized and fed to the DUT. The resultant signals were subsequently used to feed the dual-band Baseband Equivalent (BBE) Volterra DPD stage. The DPD model's nonlinearity order was set equal to 7, and the memory depth of the different distortion components was set to M1=3, M3,s=M3,d=1, M5,s=M5,d1=M5,d2=M7=0. The model was also extended with 5 even powered terms and required 30 coefficients overall. Linearization results are shown in
As a second test, an intra-band carrier aggregated signal driven by a 1001 WCDMA signal @ 1.96 GHz, and a 20 MHz LTE signal @ 2.035 GHz was synthesized and fed to the DUT. The same above linearization procedure was applied. Linearization results are shown in
For the two measurement cases, the proposed linearization method, i.e., the single-TOR 20 and a single-TE 18 architecture implementing RLS/MRAC learning approach, was compared to the conventional linearization method, i.e., the 2-TOR, 2-TE architecture implementing a Least Square Error (LSE)/STR-indirect learning approach. The two methods showed similar linearization results. Note that the proposed approach used 8 iterations to converge while the conventional one converged with only 2 iterations. However, the RLS algorithm's simpler arithmetic and fast convergence rate when compared to the LSE algorithm balances out the difference in iteration count.
The following acronyms are used throughout this disclosure.
Those skilled in the art will recognize improvements and modifications to the embodiments of the present disclosure. All such improvements and modifications are considered within the scope of the concepts disclosed herein and the claims that follow.
This application claims the benefit of provisional patent application Ser. No. 62/138,863, filed Mar. 26, 2015, the disclosure of which is hereby incorporated herein by reference in its entirety.
Number | Date | Country | |
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62138863 | Mar 2015 | US |