WO2007081705A2 - Method of characterizing nonlinear behavior of amplifiers using loadpull measurements - Google Patents

Method of characterizing nonlinear behavior of amplifiers using loadpull measurements Download PDF

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WO2007081705A2
WO2007081705A2 PCT/US2007/000071 US2007000071W WO2007081705A2 WO 2007081705 A2 WO2007081705 A2 WO 2007081705A2 US 2007000071 W US2007000071 W US 2007000071W WO 2007081705 A2 WO2007081705 A2 WO 2007081705A2
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model
loadpull
signal
behavioral
simulated
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PCT/US2007/000071
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French (fr)
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WO2007081705A3 (en
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Jiang Liu
Lawrence P. Dunleavy
Jan Vespecht
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University Of South Florida
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    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F30/00Computer-aided design [CAD]
    • G06F30/30Circuit design
    • G06F30/36Circuit design at the analogue level
    • G06F30/367Design verification, e.g. using simulation, simulation program with integrated circuit emphasis [SPICE], direct methods or relaxation methods

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  • This invention relates to radio frequency and microwave technology. More specifically, this invention relates to the characterization of the nonlinear behavior of amplifiers and other devices using loadpull measurement.
  • Radio frequency (RF) and microwave devices exhibit linear signal behavior that is generally characterized by S-parameters.
  • S-parameter approach was satisfactory for characterizing the signal behavior of most RF and microwave devices and applications.
  • more and more demands are generated for nonlinear operation of devices and amplifiers to get better transmission efficiency and less power consumption. This causes distortion effects, such as harmonics and spectral regrowth.
  • the classical S- parameter theory is no longer suitable for this situation.
  • a behavioral modeling technique is provided that is based directly on the loadpull gain and phase compression measurements. Developed from the large-signal scattering function theory, this technique shows the possibility to generate the large- signal scattering function model using traditional loadpull measurement systems. The large-signal scattering function theory is presented and the analogy between the LSNA and the loadpull measurement systems is drawn. A detailed analysis of the model generation process is further taught herein. BRIEF DESCRIPTION OF THE DRAWINGS
  • FIG. I is a diagram illustrating a two port network with the voltage and current definition.
  • FIG. 2 illustrates the input and output variables for a two-port network used in the large- signal scattering function are composed of the fundamental tones as well as the harmonics for both the incident and reflected waves.
  • FIG. 3 is a diagram illustrating the functional block of the LSNA.
  • FIG. 4 illustrates the interpolation and extrapolation problem due to the insufficient testing points with the file-based model.
  • FIG. 5 is a diagram of a two-port network with a voltage source of E s and source impedance of Z s .
  • the load impedance is Z L .
  • FIG. 6 is a flowchart of the Matlab program created for the behavioral model optimization based on the loadpull AM-AM and AM-PM datasets.
  • FIG. 7 is an illustration of the MAXIM 2373 LNA sample.
  • FIG. 8 is a graph illustrating a comparison of the measured and simulated gain and phase compression at 50 ohm.
  • FIG. 9 illustrates the simulated output power contours compared with the measurements.
  • the input power is at -3OdBm.
  • FIG. 10 illustrates a comparison of simulated and measured output power contours.
  • the new model and the large-S21 model are compared side by side, showing the improvement of the new model to predict the changing optimal load impedance.
  • FIG. 1 1 illustrates a comparison of the measured and simulated IP3 using the large- signal behavioral model.
  • FIG. 12 is an illustration of the six load impedance examples on the Smith Chart. The six loads spread in a large area, showing the robustness of this model to predict the nonlinear effect in a wide load range.
  • FIG. 13 is a set of graphs illustrating a comparison of the measured and simulated Pout and IM3 at 6 load impedances.
  • FIG. 14 is a graph illustrating the errors of the simulated fundamental tone at 6 loads.
  • the brackets on the right illustrate the plots associated with the newly developed model and the large-S21 model as indicated.
  • the new model presents better performance, compared with the large-S21 model.
  • FIG. 15 is a graph illustrating the errors of the simulated 3rd order intermodulation product at 6 loads.
  • the brackets on the right illustrate the plots associated with the newly developed model and the large-S21 model as indicated.
  • the new model presents better performance, compared with the large-S21 model.
  • FIG. 16 is an illustration of the ISL3984 power amplifier sample.
  • FIG. 17 is a pair of graphs illustrating a comparison of the simulated and measured gain and phase compression in 50 ohm.
  • FIG. 18 is an illustration showing a comparison of the simulated output power contour with the measured dataset.
  • FIG. 19 is an illustration showing a comparison of the simulated IM3 contour using the behavioral model with the measured dataset.
  • FIG. 20 is an illustration of the six load impedance examples used to test the behavioral model developed for the ISL3984 on the Smith Chart. The six loads spread in a large area, showing the robustness of this model to predict the nonlinear effect in a wide load range.
  • FIG. 21 is a set of graphs showing a comparison of the measured and simulated Pout and IM3 at 6 load impedances.
  • FIG. 22 is a graph illustrating the errors of the simulated fundamental tone at 6 loads. The brackets on the right illustrate the plots associated with the newly developed model and the large-S2l model as indicated. The new model presents better performance, compared with the large-S21 model.
  • FIG. 23 is a graph illustrating the errors of the simulated 3rd order intermodulation product at 6 loads are plotted. The brackets on the right illustrate the plots associated with the newly developed model and the large-S21 model as indicated. The new model presents better performance, compared with theInventge-S21 model.
  • FIG. 24 is a pair of graphs illustrating a comparison of the simulated gain and phase compression under 50 ohm condition: behavioral model vs. circuit model.
  • FIG. 25 is an illustration showing a comparison of the simulated Pout contours from the behavioral model and the circuit model at constant Pin of 10 dBm.
  • FIG. 26 is an illustration showing a comparison of the simulated Pout contours from the behavioral model and the circuit model at constant Pin of 30 dBm.
  • FIG. 27 is an illustration showing a comparison of the simulated IM3 contours from behavioral models: one optimized with loadpull AM-PM information and one without.
  • FIG. 28 is an illustration showing a comparison of the simulated IM3 contours from the behavioral and circuit models.
  • FIG. 29 is a pair of graphs illustrating a comparison of the simulated IM3 from the circuit model and the behavioral models.
  • Behavioral model 1 is created with the loadpull AM-PM information, while behavioral model 2 isn't.
  • the simulated IM3 Behavioral model 2 shows a fake sweet spot, showing the importance to have the loadpull AM-PM information in the model generation process.
  • the T L is at -0.80213 - j * 0.08629.
  • Large-signal scattering function theory is proposed to address limitations in the S- parameter approach. In general, this theory extends the small-signal theory to take into account not only the fundamental, but also harmonics at different ports. The contribution of all these spectral components is formulated into nonlinear functions, therefore, making it possible to characterize the nonlinearities.
  • a specific measurement system called a large-signal network analyzer (LSNA) is required to measure and derive this type of large-signal behavioral model. This theory hasn't been widely applied due to the limited access to such specialized (and costly) systems.
  • LSNA large-signal network analyzer
  • the disclosed modeling technique also provides a solution to fully utilize the loadpull measurement dataset.
  • the loadpull measurement has been widely applied in power devices (or amplifiers) characterization and design, derivation of an accurate behavioral model from the dataset still presents as a huge challenge.
  • the loadpull measurement datasets are only used for observation of the optimal load points or as a verification for the device modeling.
  • the method disclosed shows an analytical way to exploit the datasets and presents significant advantages over the existing approaches.
  • An N-port linear network can be fully characterized by capturing the relationship between the current and voltage at each port.
  • a two port network as shown in FIG. 1, can be fully described through Z, Y, ABCD or S-parameters.
  • Equation 1 the Y parameter for this two-port network is given in Equation 1:
  • i n and v n are the current and voltage at port n
  • y mn is the admittance from port n to port m with port m shorted.
  • the Y-parameter can be determined using short circuited outputs, i.e. the y, can be determined through Equation 2 by shorting the port i:
  • Equation 3 Z parameter is defined in Equation 3.
  • Equation 4 open circuited outputs are required, as indicated in Equation 4.
  • the ingoing wave a and outgoing wave b are defined as:
  • the S-parameter is defined in Equation 6, as a function of frequency/.
  • the S-parameter can be determined by terminating all other ports instead of port j with matched loads to avoid reflection and interference.
  • the Z, Y or S-parameters can be considered as behavioral models, since they deal with only the port variables and don't require information about the internal structure of the network. All the network parameter sets have one important assumption, that is the network is linear and superposition is valid. When the network shows nonlinear effects, typically through the generation of new frequencies (harmonics or mixing products), the Z, Y or S-parameters are no longer valid and more advanced methods are required to characterize the network.
  • the large-signal scattering function can be considered as a linearization that relates the incident and reflected wave coefficients of a weakly nonlinear, time-invariant device (J. Verspecht, M. V. Bossche, and F. Verbeyst, "Characterizing components under large signal excitation: defining sensible 'large signal s-parameters' ?! in 9th ARFTG Conference Digest, June 1997, pp. 109-117.; J. Verspecht, D. F. Williams, D. Schreurs, K. A. Remley, and M. D. McKinley, "Linearization of large-signal scattering functions," IEEE. Transactions on microwave theory and techniques, vol. 53, pp.
  • the input and output variables are defined in the frequency domain as depicted in FIG. 2.
  • a ij denotes the complex number representing the J th spectral component of the incident voltage wave at port "i" and By denotes in a similar manner the scattered voltage waves.
  • Equation 8 The relationship between the input and output wave signals can be described by Equation 8, with all the spectral components normalized to An in phase.
  • the Sy is called "large-signal scattering function". It is a complex multi-dimensional nonlinear function. If there is only one large tone present at the input and all other harmonic signals are relatively small, it is possible to simplify (or linearize) the multidimensional nonlinear function S ij . Based on this assumption, the superposition principle holds for the harmonics, which can be expressed in Equation 9:
  • Equation 10 is required to include the fundamental tones in Equation 9.
  • Siqjl and TiqJl are dependent on the magnitude of the A 11 that models the nonlinear performance of the amplifiers or devices. Creation of the large-signal scattering function model
  • the large-signal scattering function of a device can be derived from measurement results using LSNA.
  • a LSNA sometimes called vector nonlinear network analyzer, or VNNA
  • VNNA vector nonlinear network analyzer
  • the source 1 is a signal generator that can generate CW signals as well as modulated signals, if required.
  • Source 2 provides the perturbation signal to port 1 or 2 through the switch. This signal simulates the small perturbation signal presented in the model.
  • the measurement system requires specific multi-tone phase calibration, in addition to the traditional VNA calibration (such as the SOLT or LRM calibration) and absolute power calibration.
  • the phase calibration normalizes all the fundamental and harmonic spectral components to the phase of A11, the dominant tone at the port 1.
  • the 7 coefficients can be determined thereafter.
  • a table for the 7 coefficients corresponding to each input signal amplitude can be produced.
  • either a look-up-table (LUT) model or an fitting function e.g. ANN model
  • LUT look-up-table
  • ANN model fitting function
  • Some commercial microwave simulation software packages provide the capabilities to read the loadpull data files into the simulator for linear or nonlinear simulation (Advanced Design System from Agilent Technologies, Inc., CA, USA, www.agilent.com.; Microwave Office from Applied Wave Research, Inc.,CA, USA, www.microwaveoffice.com.).
  • Advanced Design System from Agilent Technologies, Inc., CA, USA, www.agilent.com.
  • Microwave Office from Applied Wave Research, Inc.,CA, USA, www.microwaveoffice.com.
  • file-based modeling As the name suggests, the file-based techniques provide a solution to directly access the loadpull data file through some indexing design to find out the device performance according to a set of rules.
  • Advanced Design System from Agilent Technologies, Inc. Microwave Office from Applied Wave Research, Inc., Olah & Gupta, and Carlson belong to this category (Advanced Design System from Agilent Technologies, Inc., CA, USA, www.agilent.com.; Microwave Office from Applied Wave Research, Inc.,CA, USA, www.microwaveoffice.com.; J. Olah and S. Gupta, "Power amplifier design using measured loadpull data," Microwave Engineering Europe, Aug. 2003.; R. L. Carlson, "Meld load-pull test with eda tools," Microwave and RF, Apr. 2003.)
  • Carlson described a method to integrate the loadpull dataset in microwave simulation software for optimization of the load condition for different goals (e.g. output power or IP3) (R. L. Carlson, "Meld load-pull test with eda tools," Microwave and RF, Apr. 2003.). Instead of sweeping the amplitude and phase of the reflection coefficient of the load T L , it was proposed to sweep the resistance and capacitance based on the observation of the small-signal S22 seen at the output port of the DUT. This method can capture the frequency effect through the capacitance, which makes the data processing easier. However, this method has its limitation in that it only provides a way, to observe the loadpull data file and find the optimal load points for specific goals. It doesn't provide a usable behavioral model for general simulation purposes.
  • IP3 output power or IP3
  • Olah et al. introduced a systematic method to create behavioral models based on the loadpull data file (J. Olah and S. Gupta, "Power amplifier design using measured loadpull data,” Microwave Engineering Europe, Aug. 2003.). The method has three steps:
  • triangulation is used to generate a set of triangular mesh; the contours are plotted by traversing these triangular patches;
  • This method requires the storage of large data files; much of the information may be redundant. For example, when the input signal level is low, a simple small-signal S-parameter model is enough to predict the gain at various loads. However, this method would utilize the stored B1 and B 2 for every possible load, which will require a large data file. The extensive file access operation makes this method inefficient.
  • FIG. 4 illustrates this problem. As can observed, the file-based model doesn't extrapolate the output power contours properly. Analytic models are able to overcome this problem, as will be shown.
  • Clausen et al. is an example of the use of analytic methods to model the loadpull performance of a device (W. Clausen, J. Capwell, L. Dunleavy, T. Weller, J. Verspecht, J. Liu, and H. Ar- sian, "Black-box modeling of rfic amplifiers for linear and non-linear simulations," Microwave Product Digest, Oct. 2004.).
  • the model was able to predict the gain compression effects. This is often called "large-S21" method.
  • This technique provides a simple solution to predict the nonlinear performance of the DUT based on the loadpull measurements.
  • the large-S21 model has limited accuracy in predicting the gain/phase compression and intermodulation performance at different load conditions.
  • a power amplifier can be treated as a two-port network, as shown in FIG. 5.
  • a typical one-tone loadpull measurement gives information about the source impedance (or reflection coefficient, Ts) load impedances (or reflection coefficient, T L ,), the input power (Pin), the measured delivered power (Pout)-
  • Equation 13 the input impedance of the port 1 can be expressed as Equation 13. This constrain can be removed if the input port reflected power is captured in the loadpull measurement.
  • the voltage and current at port 1 can be calculated through the following steps:
  • the incident and reflected waveforms at port 2 are characterized based on the large- signal scattering function theory, as shown in Equation 22 and Equation 23.
  • the phase of the A ⁇ ⁇ , P, is absorbed into the T22 coefficient.
  • Equation 24 is an implicit expression for B 2 ; it can be further transformed to an explicit function to simplify the model generation. Assume S21, S22 and T22 are represented as:
  • Equation 24 can be rewritten as:
  • the measurements for both the magnitude and phase are required. This is why it is important to obtain the loadpull AM-PM datasets.
  • the loadpull AM-AM measurements provide the optimization criteria for the magnitude, while the loadpull AM-PM measurements set up the rule for the phase optimization.
  • the magnitude can be derived from the delivered output power.
  • the output power at port 2 is determined by the A 2 and B2 through:
  • the B2 can be expressed as:
  • LMS least-mean-square
  • AM-PM is the phase compression data obtained through the Ioadpull AM-PM measurement. It is the phase difference between the voltages at the input and output ports. The input and output voltages are the sum of the incident and reflected waves at the port respectively.
  • FIG. 6 demonstrates the procedure to generate the behavioral model based on the Ioadpull datasets. Notice that the Ioadpull datasets can come from either the measurements or from simulations, depending on the applications of this modeling technique.
  • Example 1 measurement-based behavioral model
  • the three example models are created and compared with existing techniques.
  • the three examples are chosen so that they show two types of applications of this behavioral modeling technique.
  • the first two example models are created based on measurement results, showing an efficient way to integrate measurement results into design.
  • the third example is based on the simulation results, which will lead to decrement in computing complexity and therefore the simulation time.
  • the first example component used is an MAX2373 low noise amplifier (LNA).
  • LNA low noise amplifier
  • FIG. 7 shows this component. This component was characterized at 900 MHz. Loadpull gain and phase compression measurements were performed. Two tone load- pull measurements were performed as well.
  • the Matlab modeling program was used to process the measurement data files and generate the model coefficients through the unconstraint nonlinear optimization procedure. In addition, a file-based model is created for characterizing the 3rd order intermodulation products.
  • the model was implemented in ADS 2004A using the frequency domain defined device (FDD).
  • FDD frequency domain defined device
  • the advantage of using this device is that it provides the ability to define the behavior of individual frequency components separately.
  • the model only requires two setup parameters: the fundamental frequency (RFfreq), and the frequency spacing (fspacing). For one tone simulation, the fspacing is set at 0.
  • the model requires minimum interaction from the users and makes it easy for usage.
  • the measurement condition is summarized in the following:
  • FIG. 8 compares the measured and simulated gain and phase compression performance of this LNA at 50 ohm condition. The model predicts the compression property correctly.
  • FIG. 9 shows the simulated output power contours compared with the measured result.
  • the input power is low at -3OdBm. Good agreement is observed.
  • the large signal model reduces to small-signal S-parameter model when the input signal is low enough.
  • the variation of the output power with respect to the load can be characterized through the small-signal S-parameter. Detailed analysis can be found in
  • the simple large-S21 model provides limited prediction accuracy, compared with the proposed model, as shown in FIG. 10.
  • the measured output power contour at input signal of -5dBm is compared with the large-signal model in (a) and the model based on theCDCge-S21 technique in (b).
  • the proposed behavioral model does a decent job in predicting the change in the load impedance for optimal output power performance.
  • the simple large-S21 modeling technique assumes the compression properties at all load points are the same. This explains why the large-S21 model behaves different from the proposed large-signal model.
  • FIG. 11 illustrates the comparison of the measured and simulated IP3.
  • the input power is -2OdBm.
  • the behavioral model does a good job predicting the IP3 performance over a defined region.
  • Six load impedances are chosen as examples to test the large-signal model.
  • the simulated fundamental tone and the 3rd order intermodulation product are compared with the measurement results.
  • the reflection coefficients of the 6 example loads are listed in Table 1 and plotted in Smith Chart, as shown in FIG. 12.
  • the load examples are chosen to spread over the Smith Chart.
  • Table 1 List of the six example load reflection coefficients used to test the LNA model.
  • the simulated results are compared with corresponding measurement datasets in FIG. 13. Good agreements can be observed for all cases. Also given out are the simulated results obtained from the large-S21 model.
  • the !arge-S21 model presents good performance for limited set of load points, such as at (a), (d), (e), and (f). However, at (b) and (c) the simulation results show significant discrepancies. Therefore, the new large-signal behavioral model provides better performance against the large-S21 behavioral model.
  • FIG. 14 shows the errors in the simulated fundamental tone at different loads. As can be seen, the new model has much less errors compared with the large-S21 model. Similarly, FIG. 15 illustrates the errors in the simulated IM3 at different loads. Again, the new model has better performance compared with the large-S21 model.
  • the second example component used is an Intersil power amplifier (ISL3984).
  • FIG- 16 shows the tested ISL3984 power amplifier sample. Loadpull gain and phase compression measurements were performed on this power amplifier sample at 2450 MHz. The measurement condition is summarized below:
  • a swept power harmonic simulation is done in 50 ohm condition, i.e. the source and load impedances are at 50 ohm.
  • the simulated gain and phase compression curves are compared to the measured data in FIG. 17. Good agreement can be seen in the figure.
  • FIG. 18 compares the simulated and measured output power contours at input power level of -2OdBm.
  • the source impedance is set to be conjugately matched.
  • the T s is 0.34051 + j * 0.58271. As can be seen, the two datasets agree very well.
  • FIG. 19 compares the simulated and measured IM3 contours at input power level of - 2OdBm.
  • the file-based model predicts the 3rd order intermodulation product accurately under various load conditions.
  • Six load impedances are chosen as examples to test the large-signal model.
  • the simulated fundamental tone and the 3rd order intermodulation product are compared with the measurement results.
  • the reflection coefficients of the 6 example loads are listed in Table 4.2 and plotted in Smith Chart, as shown in FIG. 20.
  • the load examples are chosen to spread over the Smith Chart.
  • Table 2 List of the six example load reflection coefficients used to test the PA model.
  • the simulated results are compared with corresponding measurement datasets in FIG. 21. Good agreements can be observed between the simulated results from the proposed model and the measurements. Also given out are the simulated results obtained from the large-S21 model.
  • the large-S21 model presents good performance for limited set of load points, such as at (a), (b), (d), and (e). However, at (c) and (f) the simulation results show significant discrepancies. Therefore, the new large- signal behavioral model provides better performance against the large-S21 behavioral model.
  • FIG. 22 shows the errors in the simulated fundamental tone at different loads. As can be seen, the new model has much less errors compared with the large-S21 model. Similarly, FIG. 23 illustrates the errors in the simulated IM3 at different loads. Again, the new model has better performance compared with the large-S21 model.
  • the behavioral model derived from the loadpull gain and phase compression measurements can predict the performance of the DUT under various load conditions and input power levels accurately to some extent.
  • Example 2 simulation-based behavioral model
  • the second behavioral modeling example will demonstrate the process to derive a abstract model based on the simulation datasets.
  • An equivalent circuit model for the 30 Watts Cree UGF21O3O LDMOS power transistor is used to create the simulation datasets.
  • This model was simulated at 2.17 GHz under swept power and various load conditions.
  • the simulated AM-AM and AM-PM datasets were used to create the large- signal behavioral model.
  • the simulation setup for generating the test datasets is given below:
  • Vgs is 4 V and Vds is 25 V (biased for deep Class AB amplifier).
  • FIG. 24 compares the simulated results from the behavioral model and the circuit model for the gain and phase compression. Good agreements are achieved for the 50 ohm case.
  • FIG. 25 and FIG. 26 show the delivered power simulated under loadpull conditions, at two input power levels (10 dBm and 30 dBm). The source reflect coefficient is set at -0.55244-j * 0.23757. For the small input power level (10 dBm), the behavioral model presents almost identical performance as the circuit model. Even at high power levels (e.g. 30 dBm), the behavioral model still does a good job to predict the drift in the optimal load impedance for the output power.
  • FIG. 27 compares the IM3 contours simulated by the behavioral models with and without the AM-PM information. The results are obtained through Envelope simulation of the behavioral model. Obviously, the loadpull AM-PM information does help the large-signal model to do a better job to predict the intermodulation performance. This comparison proves the importance of having the loadpull information for creating a large-signal behavioral model based on loadpull measurements. Notice that not like the previous two example models, the IM3 prediction here doesn't depend on file-based models.
  • FlG. 28 compares the simulated IM3 contours from the behavioral model (with the AM-PM information) and the circuit model.
  • the model predicts the trend of the IM3 performance.
  • the fundamental tone since only the fundamental tone is utilized in the model generation, its ability to predict the IM3 is limited.
  • file-based model can be used or additional loadpull harmonic measurements will help.
  • FIG. 29 evaluates the performance of the behavioral model under two tone stimuli against that of the circuit model.
  • the input power is set to sweep in the simulation. Again, both behavioral models are evaluated. High level agreements can be observed for the simulated datasets from both models.
  • behavioral models require less simulation time. This will become important when simulating a complete design system, which usually contains dozens of transistors or more.
  • Table 3 compares the simulation time using the behavioral model and the circuit model.
  • the loadpull harmonic balance simulation for 100 load points is performed at three different input power levels: 10 dBm, 20 dBm and 30 dBm. This test was performed on a workstation with a Pentium-4 CPU and 1 GB memory.
  • the behavioral model requires less simulation time, especially at high power levels, as can be observed from the table.
  • a behavioral modeling technique has been presented that is based directly on the loadpull gain and phase compression measurements. Developed from the large- signal scattering function theory, this technique shows the possibility to generate the large-signai scattering function model using traditional loadpull measurement systems. The large-signal scattering function theory is presented and the analogy between the LSNA and the loadpull measurement systems is drawn. A detailed analysis of the model generation process is given out. Three example behavioral models are created to demonstrate the capability of this new technique. Two of them are based on measurements, while one is based on the simulation dataset from an equivalent circuit model. These models are studied from different aspects, including the one tone loadpull and power swept simulation, two tone loadpull and power swept simulation. Good agreements are observed between the model simulated results and measurements, showing the strong capability of this modeling technique.

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Abstract

A behavioral modeling technique is provided that is based directly on the loadpull gain and phase compression measurements. Developed from the large-signal scattering function theory, this technique shows the possibility to generate the large- signal scattering function model using traditional toadpull measurement systems. The large-signal scattering function theory is presented and the analogy between the LSNA and the loadpull measurement systems is drawn. A detailed analysis of the model generation process is further taught herein.

Description

METHOD OF CHARACTERIZING
NONLINEAR BEHAVIOR OF AMPLIFIERS
USING LOADPULL MEASUREMENTS
CROSS REFERENCE TORELATEDAPPLICATIONS
This application claims priority to currently pending U.S. Provisional Patent Application 60/756,038, entitled, "Behavior Model for Nonlinear Ampifiers/Devices Using Loadpull Measurements", filed January 04, 2006, the contents of which are herein incorporated by reference. FIELD OF INVENTION
This invention relates to radio frequency and microwave technology. More specifically, this invention relates to the characterization of the nonlinear behavior of amplifiers and other devices using loadpull measurement.
BACKGROUND OF THE INVENTION Radio frequency (RF) and microwave devices exhibit linear signal behavior that is generally characterized by S-parameters. Traditionally, the S-parameter approach was satisfactory for characterizing the signal behavior of most RF and microwave devices and applications. However, with the advance of modern wireless communication systems, more and more demands are generated for nonlinear operation of devices and amplifiers to get better transmission efficiency and less power consumption. This causes distortion effects, such as harmonics and spectral regrowth. The classical S- parameter theory is no longer suitable for this situation.
SUMMARY OF INVENTION
A behavioral modeling technique is provided that is based directly on the loadpull gain and phase compression measurements. Developed from the large-signal scattering function theory, this technique shows the possibility to generate the large- signal scattering function model using traditional loadpull measurement systems. The large-signal scattering function theory is presented and the analogy between the LSNA and the loadpull measurement systems is drawn. A detailed analysis of the model generation process is further taught herein. BRIEF DESCRIPTION OF THE DRAWINGS
For a fuller understanding of the invention, reference should be made to the following detailed description, taken in connection with the accompanying drawings, in which:
FIG. I is a diagram illustrating a two port network with the voltage and current definition. FIG. 2 illustrates the input and output variables for a two-port network used in the large- signal scattering function are composed of the fundamental tones as well as the harmonics for both the incident and reflected waves.
FIG. 3 is a diagram illustrating the functional block of the LSNA.
FIG. 4 illustrates the interpolation and extrapolation problem due to the insufficient testing points with the file-based model.
FIG. 5 is a diagram of a two-port network with a voltage source of Es and source impedance of Zs. The load impedance is ZL.
FIG. 6 is a flowchart of the Matlab program created for the behavioral model optimization based on the loadpull AM-AM and AM-PM datasets. FIG. 7 is an illustration of the MAXIM 2373 LNA sample.
FIG. 8 is a graph illustrating a comparison of the measured and simulated gain and phase compression at 50 ohm.
FIG. 9 illustrates the simulated output power contours compared with the measurements. The input power is at -3OdBm. FIG. 10 illustrates a comparison of simulated and measured output power contours. The new model and the large-S21 model are compared side by side, showing the improvement of the new model to predict the changing optimal load impedance. FIG. 1 1 illustrates a comparison of the measured and simulated IP3 using the large- signal behavioral model.
FIG. 12 is an illustration of the six load impedance examples on the Smith Chart. The six loads spread in a large area, showing the robustness of this model to predict the nonlinear effect in a wide load range.
FIG. 13 is a set of graphs illustrating a comparison of the measured and simulated Pout and IM3 at 6 load impedances.
FIG. 14 is a graph illustrating the errors of the simulated fundamental tone at 6 loads. The brackets on the right illustrate the plots associated with the newly developed model and the large-S21 model as indicated. The new model presents better performance, compared with the large-S21 model.
FIG. 15 is a graph illustrating the errors of the simulated 3rd order intermodulation product at 6 loads. The brackets on the right illustrate the plots associated with the newly developed model and the large-S21 model as indicated. The new model presents better performance, compared with the large-S21 model.
FIG. 16 is an illustration of the ISL3984 power amplifier sample.
FIG. 17 is a pair of graphs illustrating a comparison of the simulated and measured gain and phase compression in 50 ohm.
FIG. 18 is an illustration showing a comparison of the simulated output power contour with the measured dataset.
FIG. 19 is an illustration showing a comparison of the simulated IM3 contour using the behavioral model with the measured dataset.
FIG. 20 is an illustration of the six load impedance examples used to test the behavioral model developed for the ISL3984 on the Smith Chart. The six loads spread in a large area, showing the robustness of this model to predict the nonlinear effect in a wide load range.
FIG. 21 is a set of graphs showing a comparison of the measured and simulated Pout and IM3 at 6 load impedances. FIG. 22 is a graph illustrating the errors of the simulated fundamental tone at 6 loads. The brackets on the right illustrate the plots associated with the newly developed model and the large-S2l model as indicated. The new model presents better performance, compared with the large-S21 model. FIG. 23 is a graph illustrating the errors of the simulated 3rd order intermodulation product at 6 loads are plotted. The brackets on the right illustrate the plots associated with the newly developed model and the large-S21 model as indicated. The new model presents better performance, compared with the Iarge-S21 model.
FIG. 24 is a pair of graphs illustrating a comparison of the simulated gain and phase compression under 50 ohm condition: behavioral model vs. circuit model.
FIG. 25 is an illustration showing a comparison of the simulated Pout contours from the behavioral model and the circuit model at constant Pin of 10 dBm.
FIG. 26 is an illustration showing a comparison of the simulated Pout contours from the behavioral model and the circuit model at constant Pin of 30 dBm. FIG. 27 is an illustration showing a comparison of the simulated IM3 contours from behavioral models: one optimized with loadpull AM-PM information and one without.
FIG. 28 is an illustration showing a comparison of the simulated IM3 contours from the behavioral and circuit models. FIG. 29 is a pair of graphs illustrating a comparison of the simulated IM3 from the circuit model and the behavioral models. Behavioral model 1 is created with the loadpull AM-PM information, while behavioral model 2 isn't. The simulated IM3 Behavioral model 2 shows a fake sweet spot, showing the importance to have the loadpull AM-PM information in the model generation process. The TL is at -0.80213 - j * 0.08629.
DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENT
Large-signal scattering function theory is proposed to address limitations in the S- parameter approach. In general, this theory extends the small-signal theory to take into account not only the fundamental, but also harmonics at different ports. The contribution of all these spectral components is formulated into nonlinear functions, therefore, making it possible to characterize the nonlinearities. A specific measurement system, called a large-signal network analyzer (LSNA), is required to measure and derive this type of large-signal behavioral model. This theory hasn't been widely applied due to the limited access to such specialized (and costly) systems.
By closely studying the large-signal scattering function theory, useful large-signal models can be derived from the loadpull measurement system, although some advanced measurement procedures are required. We present the procedure for deriving the behavioral model and example modeling results are demonstrated showing proof of principle.
The disclosed modeling technique also provides a solution to fully utilize the loadpull measurement dataset. Although the loadpull measurement has been widely applied in power devices (or amplifiers) characterization and design, derivation of an accurate behavioral model from the dataset still presents as a huge challenge. Most of the time, the loadpull measurement datasets are only used for observation of the optimal load points or as a verification for the device modeling. There are some commercially available . solutions in current microwave circuit simulation software, such as the Advanced Design System (ADS) and the Microwave Office, to generate behavioral models from the measurement datasets, however, the model has limitations. The method disclosed shows an analytical way to exploit the datasets and presents significant advantages over the existing approaches.
The theory of the large-signal scattering function is first introduced. The limitations of the current modeling techniques then elaborated. The detailed derivation and optimization process of the instant method is then presented. Three example models are constructed and detailed in the examples that follow. Their simulation results are then compared with measurement results. Good agreements observed prove the effectiveness of the proposed modeling technique.
Small signal network analysis An N-port linear network can be fully characterized by capturing the relationship between the current and voltage at each port. A two port network as shown in FIG. 1, can be fully described through Z, Y, ABCD or S-parameters.
For example, the Y parameter for this two-port network is given in Equation 1:
Figure imgf000008_0001
where in and vn, are the current and voltage at port n, ymn is the admittance from port n to port m with port m shorted. The Y-parameter can be determined using short circuited outputs, i.e. the y, can be determined through Equation 2 by shorting the port i:
Figure imgf000008_0002
Similarly, Z parameter is defined in Equation 3. To obtain the Z-parameter, open circuited outputs are required, as indicated in Equation 4.
Figure imgf000008_0003
However, when dealing with high frequencies, these parameter definitions are no longer suitable. First, the ideal short and open circuit are difficult to obtain at high frequencies. Second, the voltage and the current are difficult to measure at high frequencies. Therefore, the scattering parameter is proposed to solve these problems. The idea is to measure the incident, reflected and transmitted waveforms to capture the performance of the network studied. The ingoing wave a and outgoing wave b are defined as:
Figure imgf000009_0001
where Zo is the reference impedance.
The S-parameter is defined in Equation 6, as a function of frequency/.
Figure imgf000009_0002
The S-parameter can be determined by terminating all other ports instead of port j with matched loads to avoid reflection and interference.
Figure imgf000009_0003
The Z, Y or S-parameters can be considered as behavioral models, since they deal with only the port variables and don't require information about the internal structure of the network. All the network parameter sets have one important assumption, that is the network is linear and superposition is valid. When the network shows nonlinear effects, typically through the generation of new frequencies (harmonics or mixing products), the Z, Y or S-parameters are no longer valid and more advanced methods are required to characterize the network.
Theory of the large-signal scattering function
The large signal scattering function has been proposed to extend the applicability of the small-signal (linear) S-parameter concept. The idea of the large-signal S- parameter was in existence since 1997. Recently, a new broadband version of the original theory was presented in Verspecht et al. (2005), which extends this modeling technique to add the frequency dimension (J. Verspecht, D. Root, J. Wood, and A. Cognata, "Broad-band, multi-harmonic frequency domain behavioral models from automated large-signal vectorial network measurements," in IEEE MTT-S Digest, June 2005.). As introduced in Verspecht et al. (1997) and Verspecht et al. (2005), the large-signal scattering function can be considered as a linearization that relates the incident and reflected wave coefficients of a weakly nonlinear, time-invariant device (J. Verspecht, M. V. Bossche, and F. Verbeyst, "Characterizing components under large signal excitation: defining sensible 'large signal s-parameters' ?!" in 9th ARFTG Conference Digest, June 1997, pp. 109-117.; J. Verspecht, D. F. Williams, D. Schreurs, K. A. Remley, and M. D. McKinley, "Linearization of large-signal scattering functions," IEEE. Transactions on microwave theory and techniques, vol. 53, pp. 1369 — 1376, Apr. 2005.). "Weakly nonlinear" means that the output signals are a stable, single- valued, and continuous function of the input signals around the large-signal operating point (J. Verspecht, D. F. Williams, D. Schreurs, K. A. Remley, and M. D. McKinley, "Linearization of large-signal scattering functions," IEEE. Transactions on microwave theory and techniques, vol. 53, pp. 1369-1376, Apr. 2005.). It also hints that the spectral components in the output signals are linear combinations with integer coefficients of the frequencies at the input port.
The input and output variables are defined in the frequency domain as depicted in FIG. 2. Aij denotes the complex number representing the Jth spectral component of the incident voltage wave at port "i" and By denotes in a similar manner the scattered voltage waves. The relationship between the input and output wave signals can be described by Equation 8, with all the spectral components normalized to An in phase.
Figure imgf000010_0001
The Sy is called "large-signal scattering function". It is a complex multi-dimensional nonlinear function. If there is only one large tone present at the input and all other harmonic signals are relatively small, it is possible to simplify (or linearize) the multidimensional nonlinear function Sij. Based on this assumption, the superposition principle holds for the harmonics, which can be expressed in Equation 9:
Figure imgf000011_0001
(9)
Figure imgf000011_0002
where P is the phase of An- This equation shows that the scattered wave Bij, the jth harmonic at port i, is the sum of incident waves and their conjugates of ilth harmonic at port q incident waves. The introduction of the complex conjugate terms of the incident waves is the consequence of the linearization around the time- varying operating point established by the single large-amplitude tone in the absence of perturbation (J. Verspecht, D. Root, J. Wood, and A. Cognata, "Broad-band, multi- harmonic frequency domain behavioral models from automated large-signal vectorial network measurements," in IEEE MTT-S Digest, June 2005.; J. Verspecht, D. F. Williams, D. Schreurs, K. A. Remley, and M. D. McKinley, "Linearization of large-signal scattering functions," IEEE. Transactions on microwave theory and techniques, vol. 53, pp. 1369-1376, Apr. 2005.). Equation 10 is required to include the fundamental tones in Equation 9. Siqjl and TiqJl are dependent on the magnitude of the A11 that models the nonlinear performance of the amplifiers or devices. Creation of the large-signal scattering function model
The large-signal scattering function of a device can be derived from measurement results using LSNA. A LSNA (sometimes called vector nonlinear network analyzer, or VNNA) is composed of the testset, down-converter, digitizer and analysis software, as shown in FIG. 3. The source 1 is a signal generator that can generate CW signals as well as modulated signals, if required. Source 2 provides the perturbation signal to port 1 or 2 through the switch. This signal simulates the small perturbation signal presented in the model.
The measurement system requires specific multi-tone phase calibration, in addition to the traditional VNA calibration (such as the SOLT or LRM calibration) and absolute power calibration. The phase calibration normalizes all the fundamental and harmonic spectral components to the phase of A11, the dominant tone at the port 1.
To obtain the coefficients in the large-signal behavioral model for a device, several measurements are required. An example can be used to explain this process. If one is interested in the scattered wave B21, the fundamental tone at port 2. Assume this wave variable is determined by the input large signal tone A11 at one specific power level and the spectral components at port 2, including A21, A22 and A23. The B21 can be written in Equation 11 :
Figure imgf000012_0001
There are 7 unknown coefficients for this specific power level and frequency. Since superposition holds, as the theory assumes, the 7 coefficients can be obtained through three measurements: • measurement with only the large-signal A\\ present;
• two measurements with the small-signal perturbation A21 at different phase relative to the A11;
• two measurements with the small-signal perturbation A22 at different phase relative to the A11; • two measurements with the small-signal perturbation A23 at different phase relative to the A 11
By combining all these measurement datasets and applying a least-square-error fit, the 7 coefficients can be determined thereafter. By sweeping the amplitude of the Au, a table for the 7 coefficients corresponding to each input signal amplitude can be produced. Then either a look-up-table (LUT) model or an fitting function (e.g. ANN model) can be used to implement the large-signal model in commercial microwave simulation software to simulate the device performance. If only the fundamental frequency is considered in the large-signal model, that is the harmonic spectral components don't appear in the model, the large-signal model is reduced to so called the "Hot" S22 method (J. Verspecht, "Everything you've always wanted to know about hot-s22 (but we're afraid to ask)," in Workshop at the International Microwave Symposium, June 2002.). Equation 12 illustrates this model:
Figure imgf000013_0001
As pointed out in Verspecht & Esch (1998), the measurements are actually a combination of passive and active (harmonic) loadpull measurements, since the second synthesizer injects signals to the DUTs to simulate the variation in the load (J. Verspecht and P. V. Esch, "Accurately characterizing hard nonlinear behavior of microwave components with the nonlinear network measurement system: Introducing 'nonlinear scattering functions'," in Proceedings of the 5th International Workshop on Integrated Nonlinear Microwave and Millimeterwave Circuits, Oct. 1998, PP. 17- 26.). Thus, there is the possibility to approximately create the large-signal model from a general loadpull measurement dataset.
Current loadpull-based modeling technique and their limitations
There are several existing techniques to utilize the loadpull dataset for modeling purposes (J. Olah and S. Gupta, "Power amplifier design using measured loadpull data," Microwave Engineering Europe, Aug. 2003.; R. L. Carlson, "Meld load-pull test with eda tools," Microwave and RF, Apr. 2003.; W. Clausen, J. Capwell, L. Dunleavy, T. Weller, J. Verspecht, J. Liu, and H. Ar- sian, "Black-box modeling of rfic amplifiers for linear and non-linear simulations," Microwave Product Digest, Oct. 2004.). Some commercial microwave simulation software packages provide the capabilities to read the loadpull data files into the simulator for linear or nonlinear simulation (Advanced Design System from Agilent Technologies, Inc., CA, USA, www.agilent.com.; Microwave Office from Applied Wave Research, Inc.,CA, USA, www.microwaveoffice.com.). Generally these techniques can be grouped into two categories: file-based modeling and analytical modeling. As the name suggests, the file-based techniques provide a solution to directly access the loadpull data file through some indexing design to find out the device performance according to a set of rules. Advanced Design System from Agilent Technologies, Inc., Microwave Office from Applied Wave Research, Inc., Olah & Gupta, and Carlson belong to this category (Advanced Design System from Agilent Technologies, Inc., CA, USA, www.agilent.com.; Microwave Office from Applied Wave Research, Inc.,CA, USA, www.microwaveoffice.com.; J. Olah and S. Gupta, "Power amplifier design using measured loadpull data," Microwave Engineering Europe, Aug. 2003.; R. L. Carlson, "Meld load-pull test with eda tools," Microwave and RF, Apr. 2003.)
Carlson described a method to integrate the loadpull dataset in microwave simulation software for optimization of the load condition for different goals (e.g. output power or IP3) (R. L. Carlson, "Meld load-pull test with eda tools," Microwave and RF, Apr. 2003.). Instead of sweeping the amplitude and phase of the reflection coefficient of the load TL, it was proposed to sweep the resistance and capacitance based on the observation of the small-signal S22 seen at the output port of the DUT. This method can capture the frequency effect through the capacitance, which makes the data processing easier. However, this method has its limitation in that it only provides a way, to observe the loadpull data file and find the optimal load points for specific goals. It doesn't provide a usable behavioral model for general simulation purposes.
Olah et al. introduced a systematic method to create behavioral models based on the loadpull data file (J. Olah and S. Gupta, "Power amplifier design using measured loadpull data," Microwave Engineering Europe, Aug. 2003.). The method has three steps:
• scattered data interpolation: triangulation is used to generate a set of triangular mesh; the contours are plotted by traversing these triangular patches;
• convert the triangulated scattered data to a grid (regular or uniform data) for easy usage in simulators; • calculate the incident and scattering waves as functions of load impedances using the gridded datasets; the results are stored in a file for access during simulation.
The limitation of this method is that it requires the storage of large data files; much of the information may be redundant. For example, when the input signal level is low, a simple small-signal S-parameter model is enough to predict the gain at various loads. However, this method would utilize the stored B1 and B2 for every possible load, which will require a large data file. The extensive file access operation makes this method inefficient.
Another limitation of this method is that the file-based model requires a large number of testing load points to be able to interpolate or extrapolate smoothly on the Smith chart. FIG. 4 illustrates this problem. As can observed, the file-based model doesn't extrapolate the output power contours properly. Analytic models are able to overcome this problem, as will be shown.
Clausen et al. is an example of the use of analytic methods to model the loadpull performance of a device (W. Clausen, J. Capwell, L. Dunleavy, T. Weller, J. Verspecht, J. Liu, and H. Ar- sian, "Black-box modeling of rfic amplifiers for linear and non-linear simulations," Microwave Product Digest, Oct. 2004.). By expanding the linear S-parameter through a nonlinear S21 function, the model was able to predict the gain compression effects. This is often called "large-S21" method. This technique provides a simple solution to predict the nonlinear performance of the DUT based on the loadpull measurements. However, the large-S21 model has limited accuracy in predicting the gain/phase compression and intermodulation performance at different load conditions.
Due to the limitation of the current modeling techniques based on the loadpull measurement datasets, a new approach is proposed to address the limitations. The new modeling technique exploits the large-signal scattering function theory and derives the relationship between the incident and scattering waves through the loadpull measurement datasets. The detail analysis is given in the following section.
Behavioral model based on loadpuil gain and phase compression measurements A power amplifier can be treated as a two-port network, as shown in FIG. 5. A typical one-tone loadpull measurement gives information about the source impedance (or reflection coefficient, Ts) load impedances (or reflection coefficient, TL,), the input power (Pin), the measured delivered power (Pout)-
For simplicity, suppose the device is unilateral (i.e. S12 = 0), the input impedance of the port 1 can be expressed as Equation 13. This constrain can be removed if the input port reflected power is captured in the loadpull measurement.
Figure imgf000016_0001
Based on the given information, the voltage and current at port 1 can be calculated through the following steps:
Figure imgf000016_0002
Figure imgf000016_0007
Figure imgf000016_0003
Figure imgf000016_0005
Figure imgf000016_0006
Therefore, the incident and reflected wave orms at port 1 are calculated as:
Figure imgf000016_0004
The incident and reflected waveforms at port 2 are characterized based on the large- signal scattering function theory, as shown in Equation 22 and Equation 23. The phase of the A\ \, P, is absorbed into the T22 coefficient.
Figure imgf000017_0008
Figure imgf000017_0007
Combining Equation 22 and 23 gives:
Figure imgf000017_0006
Equation 24 is an implicit expression for B2; it can be further transformed to an explicit function to simplify the model generation. Assume S21, S22 and T22 are represented as:
Figure imgf000017_0001
I where c,, 1 = I, ..., 6 are unknowns to be determined.
Suppose B2 — B2r +JB2i and A\
Figure imgf000017_0002
B2r and B2i are the real and imaginary parts of B2 respectively. A\, and A\r are the real and imaginary parts of Au respectively. Equation 24 can be rewritten as:
Figure imgf000017_0004
where
Figure imgf000017_0003
(26)
Figure imgf000017_0005
Arrange the real and imaginary part and we can get:
Figure imgf000018_0001
By solving the linear function 28, the real and imaginary part of B2 can be derived as:
Figure imgf000018_0004
Obviously, in order to obtain the _32r and B2,, the measurements for both the magnitude and phase are required. This is why it is important to obtain the loadpull AM-PM datasets. The loadpull AM-AM measurements provide the optimization criteria for the magnitude, while the loadpull AM-PM measurements set up the rule for the phase optimization.
The magnitude can be derived from the delivered output power. The output power at port 2 is determined by the A2 and B2 through:
Figure imgf000018_0002
Since the output power is known through the measurement, the B2 can be expressed as:
Figure imgf000018_0003
Optimization process can be applied to obtain the 6 unknown coefficients cl to c6. The least-mean-square (LMS) errors for the magnitude and phase can be represented by Equation 32 and 33.
Figure imgf000019_0002
Figure imgf000019_0001
where n is the number of load points used in the optimization process. AM-PM is the phase compression data obtained through the Ioadpull AM-PM measurement. It is the phase difference between the voltages at the input and output ports. The input and output voltages are the sum of the incident and reflected waves at the port respectively.
The analysis given above has been implemented in a Matlab program (The MathWorks, Inc., MA, USA, www.mathworks.com.). FIG. 6 demonstrates the procedure to generate the behavioral model based on the Ioadpull datasets. Notice that the Ioadpull datasets can come from either the measurements or from simulations, depending on the applications of this modeling technique.
The invention is described below in examples which are intended to further describe the invention without limitation to its scope. Example 1: measurement-based behavioral model
To demonstrate the modeling technique proposed in previous section, three example models are created and compared with existing techniques. The three examples are chosen so that they show two types of applications of this behavioral modeling technique. The first two example models are created based on measurement results, showing an efficient way to integrate measurement results into design. The third example is based on the simulation results, which will lead to decrement in computing complexity and therefore the simulation time.
1.1. Example model of a packaged RFIC LNA
The first example component used is an MAX2373 low noise amplifier (LNA). FIG. 7 shows this component. This component was characterized at 900 MHz. Loadpull gain and phase compression measurements were performed. Two tone load- pull measurements were performed as well. The Matlab modeling program was used to process the measurement data files and generate the model coefficients through the unconstraint nonlinear optimization procedure. In addition, a file-based model is created for characterizing the 3rd order intermodulation products.
The model was implemented in ADS 2004A using the frequency domain defined device (FDD). The advantage of using this device is that it provides the ability to define the behavior of individual frequency components separately. The model only requires two setup parameters: the fundamental frequency (RFfreq), and the frequency spacing (fspacing). For one tone simulation, the fspacing is set at 0.
Therefore, the model requires minimum interaction from the users and makes it easy for usage.
The measurement condition is summarized in the following:
• Frequency: 900 MHz;
• Input power: -30 dBm to 5 dBm;
• Two tone frequency spacing: 100 KHz; - AGC Bias: 1.3875 V;
• Vcc bias: 2.775 V. FIG. 8 compares the measured and simulated gain and phase compression performance of this LNA at 50 ohm condition. The model predicts the compression property correctly.
FIG. 9 shows the simulated output power contours compared with the measured result. The input power is low at -3OdBm. Good agreement is observed. In fact, the large signal model reduces to small-signal S-parameter model when the input signal is low enough. The variation of the output power with respect to the load can be characterized through the small-signal S-parameter. Detailed analysis can be found in
Gonzalez (G. Gonzalez, Microwave Transistor Amplifiers: Analysis and Design (2nd Edition). Prentice Hall, 1996.). Compared with the file-based model, obviously the analytic model provides much better interpolation and extrapolation characteristics.
However, the small-signal S-parameter cannot predict accurately nonlinear effects associated with large input signal. The simple large-S21 model provides limited prediction accuracy, compared with the proposed model, as shown in FIG. 10. In this figure, the measured output power contour at input signal of -5dBm is compared with the large-signal model in (a) and the model based on the Iarge-S21 technique in (b). By looking at (a), one can see that the proposed behavioral model does a decent job in predicting the change in the load impedance for optimal output power performance. However, the simple large-S21 modeling technique assumes the compression properties at all load points are the same. This explains why the large-S21 model behaves different from the proposed large-signal model.
Since only the fundamental tone is considered in the model generation, its capability to predict the intermodulation products is limited. Therefore, a file-based model is implemented for prediction of the 3rd order intermodulation products. A contour interpolation algorithm is utilized during the generation of the data file.
FIG. 11 illustrates the comparison of the measured and simulated IP3. The input power is -2OdBm. As can be seen, the behavioral model does a good job predicting the IP3 performance over a defined region.
Six load impedances are chosen as examples to test the large-signal model. The simulated fundamental tone and the 3rd order intermodulation product are compared with the measurement results. The reflection coefficients of the 6 example loads are listed in Table 1 and plotted in Smith Chart, as shown in FIG. 12. The load examples are chosen to spread over the Smith Chart.
Figure imgf000022_0001
Table 1. List of the six example load reflection coefficients used to test the LNA model.
The simulated results are compared with corresponding measurement datasets in FIG. 13. Good agreements can be observed for all cases. Also given out are the simulated results obtained from the large-S21 model. The !arge-S21 model presents good performance for limited set of load points, such as at (a), (d), (e), and (f). However, at (b) and (c) the simulation results show significant discrepancies. Therefore, the new large-signal behavioral model provides better performance against the large-S21 behavioral model.
FIG. 14 shows the errors in the simulated fundamental tone at different loads. As can be seen, the new model has much less errors compared with the large-S21 model. Similarly, FIG. 15 illustrates the errors in the simulated IM3 at different loads. Again, the new model has better performance compared with the large-S21 model.
1.2. Example model of a PA sample
The second example component used is an Intersil power amplifier (ISL3984). FIG- 16 shows the tested ISL3984 power amplifier sample. Loadpull gain and phase compression measurements were performed on this power amplifier sample at 2450 MHz. The measurement condition is summarized below:
• Frequency: 2450 MHz;
• Input power: -20 dBm to 0 dBm; • Two tone frequency spacing: 100 KHz;
• Bias: 3.3 V.
To verify the performance of the behavioral model, a swept power harmonic simulation is done in 50 ohm condition, i.e. the source and load impedances are at 50 ohm. The simulated gain and phase compression curves are compared to the measured data in FIG. 17. Good agreement can be seen in the figure.
FIG. 18 compares the simulated and measured output power contours at input power level of -2OdBm. The source impedance is set to be conjugately matched. The Ts is 0.34051 + j * 0.58271. As can be seen, the two datasets agree very well.
Similar to the LNA model, a file-based model is created for the simulation of IM3. FIG. 19 compares the simulated and measured IM3 contours at input power level of - 2OdBm. The file-based model predicts the 3rd order intermodulation product accurately under various load conditions.
Six load impedances are chosen as examples to test the large-signal model. The simulated fundamental tone and the 3rd order intermodulation product are compared with the measurement results. The reflection coefficients of the 6 example loads are listed in Table 4.2 and plotted in Smith Chart, as shown in FIG. 20. The load examples are chosen to spread over the Smith Chart.
Figure imgf000023_0001
Table 2. List of the six example load reflection coefficients used to test the PA model.
The simulated results are compared with corresponding measurement datasets in FIG. 21. Good agreements can be observed between the simulated results from the proposed model and the measurements. Also given out are the simulated results obtained from the large-S21 model. The large-S21 model presents good performance for limited set of load points, such as at (a), (b), (d), and (e). However, at (c) and (f) the simulation results show significant discrepancies. Therefore, the new large- signal behavioral model provides better performance against the large-S21 behavioral model.
FIG. 22 shows the errors in the simulated fundamental tone at different loads. As can be seen, the new model has much less errors compared with the large-S21 model. Similarly, FIG. 23 illustrates the errors in the simulated IM3 at different loads. Again, the new model has better performance compared with the large-S21 model.
Through the comparison results illustrated from the two example models, the validity of the model has been proved. The behavioral model derived from the loadpull gain and phase compression measurements can predict the performance of the DUT under various load conditions and input power levels accurately to some extent.
This measurement-based behavioral modeling technique is also demonstrated as simple solution to integrate the loadpull measurement datasets with commercial CAE softwares. The resulted model provides the invaluable insights for designers to study nonlinear components at system levels without losing much accuracy.
Example 2: simulation-based behavioral model
We have discussed the measurement-based behavioral modeling approach in previous section. The second behavioral modeling example will demonstrate the process to derive a abstract model based on the simulation datasets. An equivalent circuit model for the 30 Watts Cree UGF21O3O LDMOS power transistor is used to create the simulation datasets.
This model was simulated at 2.17 GHz under swept power and various load conditions. The simulated AM-AM and AM-PM datasets were used to create the large- signal behavioral model. The simulation setup for generating the test datasets is given below:
• Frequency: 2170 MHz;
• Input power: 0 dBm to 35 dBm;
• Two tone frequency spacing: 100 KHz; • Bias: Vgs is 4 V and Vds is 25 V (biased for deep Class AB amplifier).
FIG. 24 compares the simulated results from the behavioral model and the circuit model for the gain and phase compression. Good agreements are achieved for the 50 ohm case. FIG. 25 and FIG. 26 show the delivered power simulated under loadpull conditions, at two input power levels (10 dBm and 30 dBm). The source reflect coefficient is set at -0.55244-j * 0.23757. For the small input power level (10 dBm), the behavioral model presents almost identical performance as the circuit model. Even at high power levels (e.g. 30 dBm), the behavioral model still does a good job to predict the drift in the optimal load impedance for the output power.
As one example to demonstrate the importance to have the loadpull AM-PM information in the model creation, two behavioral models were created, one optimized with the AM-PM information and one without.
FIG. 27 compares the IM3 contours simulated by the behavioral models with and without the AM-PM information. The results are obtained through Envelope simulation of the behavioral model. Obviously, the loadpull AM-PM information does help the large-signal model to do a better job to predict the intermodulation performance. This comparison proves the importance of having the loadpull information for creating a large-signal behavioral model based on loadpull measurements. Notice that not like the previous two example models, the IM3 prediction here doesn't depend on file-based models.
FlG. 28 compares the simulated IM3 contours from the behavioral model (with the AM-PM information) and the circuit model. In general, the model predicts the trend of the IM3 performance. However, since only the fundamental tone is utilized in the model generation, its ability to predict the IM3 is limited. To get better results for the intermodulation products, either file-based model can be used or additional loadpull harmonic measurements will help.
FIG. 29 evaluates the performance of the behavioral model under two tone stimuli against that of the circuit model. The input power is set to sweep in the simulation. Again, both behavioral models are evaluated. High level agreements can be observed for the simulated datasets from both models.
Notice the difference between the two behavioral models. The model without the AM-PM information predicts a false sweet spot in the IM3 curve. This is avoided through including the AM-PM information in the model generation process.
One advantage using behavioral models instead of circuit models is that behavioral models require less simulation time. This will become important when simulating a complete design system, which usually contains dozens of transistors or more.
Table 3 compares the simulation time using the behavioral model and the circuit model. The loadpull harmonic balance simulation for 100 load points is performed at three different input power levels: 10 dBm, 20 dBm and 30 dBm. This test was performed on a workstation with a Pentium-4 CPU and 1 GB memory. The behavioral model requires less simulation time, especially at high power levels, as can be observed from the table.
Figure imgf000026_0001
Table 3. Simulation time comparison: behavioral model vs. circuit model. Loadpull harmonic balance simulation at three input power levels is performed for the test.
Conclusion
A behavioral modeling technique has been presented that is based directly on the loadpull gain and phase compression measurements. Developed from the large- signal scattering function theory, this technique shows the possibility to generate the large-signai scattering function model using traditional loadpull measurement systems. The large-signal scattering function theory is presented and the analogy between the LSNA and the loadpull measurement systems is drawn. A detailed analysis of the model generation process is given out. Three example behavioral models are created to demonstrate the capability of this new technique. Two of them are based on measurements, while one is based on the simulation dataset from an equivalent circuit model. These models are studied from different aspects, including the one tone loadpull and power swept simulation, two tone loadpull and power swept simulation. Good agreements are observed between the model simulated results and measurements, showing the strong capability of this modeling technique.
The disclosure of all publications cited above are expressly incorporated herein by reference, each in its entirety, to the same extent as if each were incorporated by reference individually.
It will be seen that the advantages set forth above, and those made apparent from the foregoing description, are efficiently attained and since certain changes may be made in the above construction without departing from the scope of the invention, it is intended that all matters contained in the foregoing description or shown in the accompanying drawings shall be interpreted as illustrative and not in a limiting sense.
It is also to be understood that the following claims are intended to cover all of the generic and specific features of the invention herein described, and all statements of the scope of the invention which, as a matter of language, might be said to fall therebetween. Now that the invention has been described,

Claims

What is claimed is:
1. A method for characterizing a device under test (DUT) comprising the steps of: providing a first signal having a first frequency to a first signal port of the DUT as a power tone signal providing a second signal having a second frequency to a second signal port of the DUT as a probe tone signal, generating a model from the loadpull dataset.
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