A Cross-Mode Universal Digital Pre-Distortion Technology for Low-Sidelobe Active Antenna Arrays in 5G and Satellite Communications

: A cross-mode universal digital pre-distortion (CMUDPD) technology is proposed here to linearize low-sidelobe active antenna arrays with non-uniform ﬁxed power levels for each branch, which are desired in satellite communications with stringent requirements to minimize interference. In low-sidelobe arrays formed by nonuniform amplitude excitation, conventional digital pre-distortion (DPD) techniques require multiple feedback paths for either one-to-one or average linearization of the PAs, which increases system complexity and is infeasible for large-scale arrays. This is because the power ampliﬁers (PAs) usually operate in different modes where the supply voltages, bias voltages, and input power levels are different. The proposed CMUDPD method aims at solving this issue by intentionally arranging the PAs to work in different modes but with shared nonlinear characteristics. Based on the nonlinear correlation established among the PAs’ different operating modes, a single feedback path is sufﬁcient to capture the common nonlinearity of all the PAs and determine the parameters of the CMUDPD module. The concept is explained in theory and validated by simulations and experiments using GaN PAs operating with three signiﬁcantly different output power levels and two orthogonal frequency division multiplexing (OFDM) signal bandwidths.


Introduction
Active antenna arrays are the most critical enablers in the development of highperformance 5G and satellite communication systems owing to their beam-steering capability of confining power emissions produced by radio-frequency (RF) power amplifiers (PAs) [1][2][3].In order to improve the efficiency of PAs, the PAs are commonly driven to their saturation modes, which features high nonlinearities and may lead to severe distortion of the signals.Moreover, to meet the need to increase spectrum capacity and multiplexing, advanced modulation schemes, such as orthogonal frequency division multiplexing (OFDM) and similar derivatives, are being used for next-generation high throughput satellite communication systems [4].These signals usually feature a high peak-to-average power ratio (PAPR) and are sensitive to the inherent nonlinearity distortions caused by RF PAs [1].
Several technologies for the linearization of uniform arrays, which can be categorized into two groups.One group of conventional one-to-one array digital pre-distortion (DPD) techniques is illustrated in Figure 1a, where each PA has a separatedfeedback path.The number of feedback paths equals the number of PAs [5].This is acceptable for small-scale arrays with a few PAs, but it would be extremely challenging for large-scale arrays that consist of hundreds or thousands of PAs [6].The linearization of arrays consumes abundant amounts of operation power and makes the system unnecessarily complex, since both a analog-to-digital converter (ADC) and coupler are essential components for each feedback path [7,8], as shown in Figure 1a.Additionally, nowadays, active arrays tend to be more integrated and compact [9], making one-to-one pre-distortion of PAs infeasible.[5], (b) average DPD [10], and (c) the proposed cross-mode universal digital pre-distortion (CMUDPD).
To reduce the feedback-path quantity, the average DPD system with one feedback path was proposed to linearize the active array, as shown in Figure 1b [10].Only one ADC component remains in the average DPD system, which reduce sits ADC power consumption compared with Figure 1a.However, the linearization performance is highly dependent on the consistency of PAs, specifically the gain factor, which is used to synthesize the pre-distortion function.Moreover, a large amount of couplers is still mandatory.Various authors [11][12][13][14][15][16] attempted to model and pre-distort the non-uniform active arrays.However, only conditions with different input power levels (leading to various operation regimes) were considered in these works, while optimizations of supply voltages and bias voltages were not covered.This means that several PAs will not operate in their compression regions.Accordingly, these PAs operating in low power levels or even linear regions cannot reach their optimum efficiency.Therefore, the power efficiency achieved by [11][12][13][14][15][16] may be limited.
Additionally, for multi-antenna systems in satellite communications, the consistency of PAs in an active array cannot be guaranteed [17].Power amplifiers tend to operate in different modes due to their imperfections (e.g., the manufacturing tolerance) and different local environmental conditions (e.g., the operating temperature).However, the sidelobe level is an essential specification of satellite antenna arrays, as it characterizes the capability of arrays to suppress the interference.In order to realize low sidelobes while maintaining high power efficiency, PAs can be intentionally arranged to operate in different saturation modes with desired power levels [18][19][20][21][22].However, it is infeasible to directly apply the existing DPD methods designed for signal PA or uniform power antenna arrays to linearize low-sidelobe active antenna arrays with non uniform power distribution [23][24][25][26][27][28].Therefore, an effective linearization technique for low-sidelobe active antenna arrays is needed.
In this paper, a cross-mode universal digital pre-distortion (CMUDPD) technique is proposed to linearize low-sidelobe active antenna arrays, as depicted in Figure 1c.For the proposed CMUDPD, a single feedback path is utilized, which is sufficient to capture the nonlinear correlation of all PAs.Notably, PAs operate in different modes while at the same compression point, where the supply voltages, bias voltages, and input power levels are different.
In Table 1, the proposed CMUDPD is compared with several representative state-ofthe-art DPD methods.Several DPD technologies studied in [5,10,12,24] consider uniform arrays.Although parametric variations in P in are involved in [10,12], their amplitudes are relatively small compared to those in low-sidelobe arrays.In [10], the resultant average DPD coefficients were obtained by training a set of random amplitude and phase data following the normal distribution.For the array DPD method studied in [20] for lowsidelobe arrays, it is mandatory to synthesize all PAs' outputs by two steps, i.e., linearizing the higher driven PAs, followed by cancelling compression by the lower driven PAs, to form a single feedback signal.Consequently, its linearization performance is highly dependent on the consistency of the PAs, and a large amount of couplers is required.Compared with [20], the proposed CMUDPD does not require the synthesis of all PAs' outputs, and an arbitrary PA's output can be used as the feedback signal.Moreover, different operation modes with variations in PA supply voltage V DD , bias voltage V GG , and input power P in can be fully linearized using the proposed CMUDPD.Compared to our conference publication [29], this paper presents the theoretical foundation explaining why the proposed CMUDPD can linearize different PA operation modes, as explained in Section 2.Moreover, experimental results are presented to show that the proposed CMUDPD can achieve an averaged adjacent channel power ratio (ACPR) suppression of 13 dB.One-to-one DPD [5] Uniform N N Not required − Average DPD [10] Uniform 1 1 Required P in BO-DPD [12] Uniform 1< n <N 1 Required P in Adaptive DPD [24] Uniform 1 1 Required − Array DPD [20] Low-sidelobe This paper is organized into five sections.Section 2 introduces the principle of the proposed CMUDPD scheme.The simulation setup and results are illustrated in Section 3. Section 4 presents the experimental results and discussion.Finally, the conclusion of this work is proided in Section 5.

Principle of the CMUDPD Technique
Understanding the physical distortion generation mechanisms is critical to designing a linear low-sidelobe antenna array.In this section, the structure of CMUDPD for a lowsidelobe active antenna array is described in detail.
The methods for generating a low-sidelobe active array antenna include using attenuators cascaded following power amplifiers to obtain the desired power levels, or using a nonuniform amplitude feed network [30,31].In the first case, attenuators are located at the output side of each PA.It is obvious that the attenuators may consume a large amount of power, and they also increase the risk of failure due to heat generation.The available space on a satellite is very limited, and it is highly desired to use fewer feedback paths to achieve the linearization of a low-sidelobe antenna array.The existing low-sidelobe array antenna adopts the aperture amplitude weighted design process [32][33][34][35].The unequal microstrip amplitude feed network is designed to achieve the low-sidelobe characteristics of an array.
The method aims to drive the PAs with different input power levels.From the energy point of view, this situation, at least, does not waste a large amount of power.Therefore, a structure using a small signal unequal power divider is considered in the subsequent analysis, as shown in Figure 2.
PA mode estimation and DPD parameters determination Only use single feedback path DAC Unequal-Div PA mode estimation and DPD parameters determination Only use single feedback path The input-output relationship of the power amplifier is mainly reflected in the inherent static nonlinear characteristics and memory effects [36,37].In Figure 3a, PA i and PA j represent two PAs in a phased array operating at the 1 dB compression point under mode i and mode j, respectively.The actual input-output relationship of PA i can be expressed as where G i is a constant complex number and indicates expected gain values of PA i .It should be noted that g i (•) represents the shape function of the gain curve, and g −1 i (•) is the inversion of the gain curve g i (•).Then, the ideal pre-distortion signal to PA i , i.e., x i_DPD (t), can be expressed as So, the output signal after the pre-distortion, i.e., y i_DPD , can be obtained as follows: which indicates that PA i is linearized.The simulation and experiment results show that PA i and PA j can have similar characteristics by properly tuning their supply and bias voltages.The similar characteristics mean that the gain vs. input power curve of PA i can be replicated by moving that of PA j vertically and horizontally, as shown in Figure 3b.In other words, the gain vs. input power curves of PA i and PA j have a similar shape, and the gains of PA i and PA j (i.e., G i and G j ) feature the following relationship: where α is a vertical constant as indicated in Figure 3b.In this situation, the actual output of PA j can be written as where β is the horizontal constant as indicated in Figure 3b.The pre-distortion signal of PA j , x j_DPD (t) can be obtained by shifting the power level of x i_DPD (t) by 10 β/20 , which provides Substituting ( 6) into ( 5), PA j 's output after the pre-distortion, y j_DPD (t), can be written as where G j is a constant, then PA j is linearized.
The two terms 10 β/20 and 10 −β/20 from ( 7) are mutually eliminated.It also means that PA j can be linearized by PA i 's pre-distortion signal x i_DPD (t).Meanwhile, the output power of PA i is α dB higher than that of PA j .When the relationship demonstrated by ( 7) is satisfied between different operating modes, a cross-mode universal digital pre-distortion (CMUDPD) is achieved, which means that PA i and PA j have similar nonlinear characteristics, and the pre-distortion signal for each PA can be used to predistort each other.It should be noted that the shape function g i (•) can be realized by any PA model, e.g., memory polynomial (MPM), general MPM, neural networks, etc. [38].In this article, the popular MPM PA model is used.

Simulation Validation
The power amplifiers operating at different modes was studied through a system simulation using the Advanced Design System (ADS) and MATLAB ® .The schematic diagram of the simulation circuit is illustrated in Figure 4.A commercially available GaN PA, i.e., CGH40006P from CREE [39], was chosen for the validation as it allows operation in both Class A and Class AB with a wide range of supply and bias voltages.This provides benefits to thoroughly validate the proposed technique through a broad range of operation modes (Class AB and Class A cases) [40].Cases with various combinations of supply voltage V DD and bias voltage V GG were simulated.According to the suggestion in the data sheet of CGH40006P [39], three supply voltages (i.e., V DD = 28, 20, and 12 V) and five bias voltages (i.e., V GG = −3.1,−2.9, −2.7, −2.5 and −2.3 V) were chosen in the simulation cases.The ADS-obtained AM/AM curves with V GG = 28, 20, and 12 V are exhibited in Figure 5a-c, respectively.The AM/PM curves with V GG = 28, 20 and 12 V are presented in Figure 5d-f, respectively.Based on the different operation modes, the validation can be categorized into Group A for class AB operation modes and Group B for class A operation modes.In Group A, a constant V GG (−2.9 V) and varied V DD (28,20, and 12 V) are chosen; in Group B, variations in both V GG (−2.3, −2.5, and −2.7 V) and V DD (28,20, and 12 V) are applied.Then, in the next step, the CMUDPD simulations were conducted based on the two groups, as mentioned above.A 10 MHz LTE signal with a carrier frequency of 3.5 GHz was used as the input signal.The average input power P in was set to the 1 dB compression point of the selected modes.The error vector magnitude (EVM) and adjacent channel power ratio (ACPR) were used to evaluate the in-band and out-band distortions, respectively.The definition of EVM is given by where P error represents the average power of the error vector and P reference represents the average power of the reference signal [27].The ACPR is defined as where P main is the main channel power, and P adjacent is the average power of the lower adjacent channel and upper adjacent channel [41].The simulated drain efficiency values are shown in Table 2, where the values were calculated as an average of 10,000 samples.It can be seen that the drain efficiencies of all studied operation modes improved after the CMUDPD.The detailed simulation procedures were as follows: • Step 1: Drive the PAs to one of the different operation modes while working at the 1 dB compression point.

•
Step 2: Select an operation mode i in the low-sidelobe active antenna array, as shown in Figure 2, to obtain the output signal for pre-distortion.

•
Step 3: According to the output signal obtained in step 2, model the PAs in the array in MATLAB.Collect the coefficient of CMUDPD using MPM, and the obtain pre-distorted input signal.

•
Step 4: Load the pre-distorted signal into the CMUDPD block of ADS.Then change the PA's operating mode according to Table 2.After the CMUDPD, obtain the linearized outputs of PAs.

•
Step 5: Plot the normalized power spectral density (PSD) and calculate EVM and ACPR.In step 3, a traditional MPM was used to model the power amplifier, which can be expressed as follows: where M, K, and a mk denote the memory depth, the order of memory polynomial, and the coefficient of memory polynomial, respectively.Assuming that the length of the input original standard signal data stream x(n) is L, the linear gain of PA can be written as Then, the input signal for training, X train , can be written as The output signal of (10) can be written as an array Y that is amplified by the power amplifier with a memory depth of M: where i ∈ (1 : M) and y(:, i) represent the ith column of the output matrix as exhibited in (15), . . .
Based on ( 12) and ( 13), the coefficient matrix of the obtained memory polynomial inversion can be written as Furthermore, the model input obtained by inverting the MPM is calculated as The error between the model input X model and the trained input X train reflects the accuracy of the memory polynomial modeling of the PA.In order to quantify the error, a mean square error ε is introduced by When ε reaches the required linearization requirement, the output model of the PA is obtained.Subsequent simulations and experiments showed that when ε reaches approximately −45 dB, the linearization performance meets the satellite communication linearity requirements [42][43][44].The effect of CMUDPD is highly dependent on the accuracy of the PA model.
where G linear denotes the linear gain of the PA, as defined in (11).Then, the pre-distorted input signal of the PA can be obtained by Bringing X MPM into PA produces a linear convergence gain G CMUDPD , as shown in Figure 6, where G model can be represented by X MPM as It can be seen that different operation modes for each group (i.e., modes a1, a2, and a3 for Group A; and modes b1, b2, and b3 for Group B) exhibit insignificant PSD differences.Thereby, the parameter ε defined in (18) can be utilized to identify the degree of similarity in terms of nonlinearities among different operation modes.

Group A: CMUDPD of PAs Operating in Class AB
In this group, the PAs are working in Class AB with a constant bias voltage V GG (−2.9 V) and varied supply voltage V DD (28, 20, and 12 V), as shown in Figure 8.The 1 dB compression point (indicated by arrows) of these three gain curves was selected as the input power of each mode.At first, the PAs containing operation modes a1, a2, and a3 were simulated by ADS, and the output signal before pre-distortion was obtained.By injecting these output signals into MATLAB, the coefficients a mk of CMUDPD were obtained through the memory polynomial (M = 7, K = 5).Then, the pre-distortion signal obtained by inverting the MPM was loaded into the CMUDPD block.Finally, the PSDs with and without CMUDPD1, CMUDPD2, and CMUDPD3 are shown in Figure 9a-c, respectively, where CMUDPD1, CMUDPD2, and CMUDPD3 represent the pre-distortion results when the outputs of mode a1, a2, and a3 are used as the feedback paths, respectively.Figure 9a shows that the pre-distortion signals generated by mode a1 can successfully linearize modes a1, a2, and a3.Similarly, the pre-distortion signals from modes a2 and a3 can also be used to linearize all these three modes, which can be concluded from Figure 9b,c.It can be obtained from Table 2 that, in group A, the mean square errors ε of the three operation modes are comparable.The memory polynomial (M = 7, K = 5) can fit any of the three modes, and any of the three modes can be used as the feedback mode to extract the pre-distortion input for the whole group of modes.The best pre-distortion performance for the three operation modes in Group A can be obtained when mode a2 is used as the feedback mode.This can be explained by the ε value of mode a2 (−53.82dB) being in between these values of modes a1 (−52.40 dB) and a3 (−54.84 dB).

Group B: CMUDPD of PAs Operating in Class A
As shown in Figure 10, Group B has both varying supply voltages V DD (28,20, and 12 V) and bias voltages V GG (−2.3, −2.5, and −2.7 V).The input powers of the corresponding modes are set at the 1 dB compression point (indicated by arrows).The similarities in the nonlinearities among the three modes are indicated by ε in Table 2. Compared with Group A, the values of ε in Group B are relatively higher.Nevertheless, this does not significantly affect the pre-distortion performance of CMUDPD.In Group B, the PAs are in higher output power and greater bias voltage, so there is a higher probability for third-order inter-modulation compared to Group A. In group B, the memory polynomial (M = 7, K = 3) can fit any of the three modes, and any of the three modes can be used as a feedback mode to extract the pre-distortion input for the entire mode group.
The simulated linearization performances of Group B are depicted in Figure 9d-f, where CMUDPD1, CMUDPD2, and CMUDPD3 represent the pre-distortion results when the outputs of mode b1, b2, and b3 are used as the feedback paths, respectively.An analogous conclusion can also be drawn for Group B, where using b2 as the feedback mode produces superior pre-distortion performance.Group A's overall linearization performance is superior to that in Group B since the values of ε in Group A are lower than those in Group B. This indicates that the overall pre-distortion effects are determined by the accuracy of the memory polynomial model.

Comparison between Group A and Group B
First, the differences between the simulation setup are shown in Table 2.For Group A, the bias voltage is constant and the supply voltage is varied.The operation modes are different, but they all belong to Class AB.For Group B, both bias voltage and supply voltage are varied, with more significant differences between the operating modes.By adjusting the bias voltage and supply voltage, the PA will operate in Class AB or Class A. Then, the nonlinear characteristics of Class AB and A are shown in Figures 8 and 10. Figure 8a,b depicts the AM/AM curves and AM/PM curves of Class AB, respectively.Moreover, Figure 10a,b is the AM/AM curves and AM/PM curves of Class A, respectively.As can be seen from Figure 8b, the AM/PM curve shapes among modes a1, a2, and a3 are similar.Nevertheless, in Figure 10b, the AM/PM curves of Class A cross each other under a larger input power P in .It can be concluded from Figure 9b,e that the normalized PSDs with the CMUDPDs (a2 and b2 as feedback modes) can be suppressed by 13 dB on average.It can also be seen from Figure 11a-d that AM/AM and AM/PM with CMUDPDs become significantly convergent compared to those without CMUDPDs.Moreover, the results using an arbitrary mode as feedback to linearize other modes are summarized in Table 3.Other modes with CMUDPD, e.g., a1, a3, b1, and b3, can also achieve ACPR suppressions above 11 dB.For both Group A and Group B, the values of the error vector magnitudes (EVMs) with CMUDPD are reduced by one order of magnitude compared to those without CMUDPDs.

Experimental Setup and Results Analysis
The experimental setup is shown in Figure 12.A computer was used to upload the base-band input signal to a signal generator (R&S SMBV100A).Subsequently, the base-band I/Q output signals from the signal analyzer (R&S FSQ26) were recorded by the computer.Table 3 gives the cases where all modes are used as the feedback operation modes.The experiment steps were as follows: • Generate the input signal and record the output signal under different operation modes.Load an LTE signal with a bandwidth of 10 MHz, x(n), from the computer to the signal generator.Excite the PA using the modulated signal and record the output, y(n), from the signal analyzer to the computer.

•
Calculate the pre-distorted signal by MPM.When testing Group A, generate the pre-distorted signal, x DPD (n), by the MPM with a memory depth of 7 and an order of 5 using the recorded x(n) and y(n).When testing Group B, generate the pre-distorted signal, x DPD (n), by the MPM with a memory depth of 7 and an order of 3 using the recorded x(n) and y(n).

•
Load the pre-distorted signal x DPD (n) from the computer into the signal generator and excite the PA using x DPD (n) under different modes.Record the corresponding pre-distorted output signals and calculate PSD, EVM, and ACPR.
When testing and verifying Group A, V DD was set to 28, 20, and 12 V, and the input power level iwass selected as the 1 dB compression point, which was calculated based on the simulation.The performance metrics of the experimental linearization, i.e., EVM and ACPR, are also listed in Table 3.It can be seen that the experimental results satisfactorily match the simulations.For both groups, the experimental EVM after the CMUDPD reduced by an order of magnitude.The experimental ACPR is lower than −45 dB on average, and an averaged ACPR suppression of 13 dB was achieved.As CMUDPD2 achieved superior performance for both groups in Table 3, the experimental PSDs with CMUDPD2 for Group A and B are demonstrated in Figure 13a,b, respectively.The pre-distortion performance is consistent with the simulation results.As shown in Figure 13b, the proposed CMUDPD provides effective linearization performance even under severe out-band distortion conditions.In order to strengthen the usefulness of the proposed CMUDPD, the experiment setup with multiple PAs was built as exhibited in Figure 14.Four identical PAs were used, denominated as PA 1 , PA 2 , PA 3 , and PA 4 from left to right.A ventilation fan was installed on the heatsink to dissipate the heat generated by the PAs.Due to the limitation due to the unequal power divider lacking in the laboratory, it was not possible to accurately feed different input powers to the PA array in a single trial.Nevertheless, an equal power divider was implemented in the experiment to excite the PAs, and the different input power levels were achieved by multiple trials.First, the output of PA 1 (operating in mode a1) was recorded from the signal analyzer.The pre-distorted signal was calculated by the aforementioned MPM method.Then, the pre-distorted signal was loaded to the signal generator, which in turn excited PA 2 , PA 3 , and PA 4 , which operated in mode a1, a2, and a3, respectively.The experimental PSD results are shown in Figure 15, where PA 2 with CMUDPD exhibits superior performance due to operating in the identical mode as PA 1 .It can be concluded from Figure 15 that PA 2 , PA 3 , and PA 4 with CMUDPD exhibit satisfactory results considering the manufacturing tolerance of practical PA products.

Wide Band Validation
The validation of the proposed CMUDPD technique with 30 MHz OFDM signals was also conducted.The PSD results (with and without CMUDPD) are depicted in Figure 16a,b, where CMUDPD1, CMUDPD2, and CMUDPD3 represent the pre-distortion results when the outputs of modes a1/b1, a2/b2, and a3/b3 wer used as feedback paths, respectively.It can be seen from Figure 16 that the proposed CMUDPD works well, achieving an ACPR reduction of 11 dB in Class AB and 13 dB in Class A. Due to the limitation of the available LTE OFDM modulation signal templates and capability of uploading wide-band predistortion signals in the used signal generator, the validation was performed by simulation using the nonlinear equivalent circuit model of the same PA in the experimental validation.However, we think that the proposed technique has potential for even wider band signals, e.g., 100 MHz, which may be an interesting topic for future investigation.In this work, the used a CGH40006P PA from CREE, which features a frequency range of 2-6 GHz.Hence, the 3.5 GHz center frequency was chosen for the experimental validation, and the peripheral impedance matching circuit was specifically designed based on 3.5 GHz.Nevertheless, the proposed CMUDPD method is not frequency-dependent, as can be seen in (7), and hence is applicable to other frequency ranges.Furthermore, the simulation and experimental validations were conducted using a GaN HEMT in this study.In future works, the proposed CMUDPD principle is expected to be applied to other types of transistors/PAs.

The Drain Current Deviations Tolerance Capability of CMUDPD
The PA operation modes in the actual antenna array system may involved several complicated situations, e.g., the PA is not a standard class AB or class A and has inconsistent operation modes.Therefore, an ADS simulation was conducted by manually introducing the drain current deviation to verify the tolerance capability of CMUDPD.The drain current deviation was caused by increasing the bias current by 10% or decreasing the bias current by 10%.The three different operation modes' PSDs without and with CMUDPD are shown in Figure 17 (i.e., a1 W/O DPD, a2 W/O DPD, a3 W/O DPD, a1 W CMUDPD2, a2 W CMUDPD2, and a3 W CMUDPD2).For comparison, the light-colored lines represent the PSDs of the pre-distortion outputs with the drain current deviations (i.e., a1 W I D1 * 1.1, a2 W I D2 * 1.1, a3 W I D3 * 1.1, a1 W I D1 * 0.9, a2 W I D2 * 0.9, a3 W I D3 * 0.9).It can be seen that the CMUDPD can still reduce the PSD to below −45 dB.Even though the ±10% drain current deviation was introduced, the proposed CMUDPD still exhibited satisfactory results.

Conclusions
This paper revealed the possibility to achieve nonlinearity correlations between PAs operating in different saturation modes with different desired output power levels.Based on this finding, the main contribution, a cross-mode universal pre-distortion (CMUDPD) technique is proposed for the linearization of PAs in low-sidelobe active antenna arrays.With the achieved nonlinearity correlation, a single pre-distortion feedback path is sufficient for linearizing the PAs in the whole antenna array using the proposed technique.Extensive simulation and experimental validations were conducted covering a broad range of operation specifications, including two PA classes (i.e., Class A and Class AB) and two signal bandwidths (i.e., 10 and 30 MHz).The validation results showed that the proposed technique can successfully achieve an averaged ACPR suppression of 13 dB for multiple GaN PAs operating with different output power levels desired in low-sidelobe arrays.Compared with other existing linearization techniques, the proposed CMUDPD technology reduces the complexity of the system and the power consumption and hence shows the potential to be applied to satellite communication systems and 5G/6G networks, which exhibit stringent requirements on power efficiency and system linearity.

Figure 2 .
Figure 2. The system architecture of non-uniform amplitude excitation arrays with the proposed CMUDPD linearization technique.

Figure 3 .
Figure 3. (a) Simulated circuit example used to illustrate theoretical principle of the proposed CMUDPD technique.(b) Gain curve versus input power in different PA operation modes.

Figure 4 .
Figure 4. Schematic diagram of the simulation circuit.

Figure 6 .
Figure 6.The gain compensation of CMUDPD.The output PSDs of all operation modes obtained by ADS simulations are shown in Figure 7 (i.e., a1 W/O DPD, a2 W/O DPD, a3 W/O DPD, b1 W/O DPD, b2 W/O DPD, and b3 W/O DPD).For comparison, Figure 7 also depicts the output PSDs of all nonlinear models calculated by MATLAB (a1 model, a2 model, a3 model, b1 model, b2 model, and b3 model).It can be seen that different operation modes for each group (i.e., modes a1, a2, and a3 for Group A; and modes b1, b2, and b3 for Group B) exhibit insignificant PSD differences.Thereby, the parameter ε defined in(18) can be utilized to identify the degree of similarity in terms of nonlinearities among different operation modes.

Figure 8 .
Figure 8. Nonlinear characteristics of Class AB.(a) Gain curves versus input power at Class AB.(b) AM/PM characteristic of Class AB.

Figure 10 .
Figure 10.Nonlinear characteristics of Class A. (a) Gain curves versus input power for Class A. (b) AM/PM characteristic of Class A.

Figure 11 .
Figure 11.Simulated AM/AM and AM/PM curves.(a) Group A's AM/AM curves with (W) and without (W/O) CMUDPD2.(b) Group A's AM/PM curves W and W/O CMUDPD2.(c) Group B's AM/AM curves W and W/O CMUDPD2.(d) Group B's AM/PM curves W and W/O CMUDPD2.

Figure 14 .
Figure 14.The experiment setup with multiple PAs.

Figure 16 .
Figure 16.Simulation results of PSDs under an experimentally generated 30 MHz bandwidth signal with (W) and without (W/O) CMUDPD.(a) Class AB W and W/O CMUDPD.(b) Class A W and W/O CMUDPD.

Table 1 .
The comparison of the proposed solution with the state-of-the art methods.N: number of antenna elements, P in : input power, V DD : PA supply volage, V GG : PA bias voltage.

Table 2 .
Different modes setup of Group A (mode a1, mode a2, and mode a3) and Group B (mode b1, mode b2, and mode b3).Format of the drain efficiency (eff.)column: without CMUDPD and with CMUDPD.