This application is a national stage of PCT/DE01/00050 filed 9 Jan. 2001, which claims priority to German application 10001151.9 filed 13 Jan. 2000.
The invention relates to a method and an apparatus for linearization of a radio frequency high-power amplifier, in particular for mobile radio base stations.
RF high-power amplifiers, which are used in mobile radio base stations, for example, have a characteristic which is curved and thus highly non-linear in the region of high output power levels close to the 1 dB compression point. As a result, signals with large amplitudes are distorted and/or chopped (AM/AM conversion). Furthermore, the phase of the emitted signal is also shifted (AM/PM conversion). In order to avoid drastic broadening of the transmission spectrum, and hence adjacent channel interference, as well as a deterioration in the modulation accuracy, and the considerable increase in the bit error rate associated therewith, only the linear part of the amplifier characteristic is typically used. However, this is worthwhile only for low power levels. In the case of RF amplifiers for base stations for second and third generation mobile radio, if there is a restriction to the linear part of the amplifier characteristic, it would be necessary to use amplifiers with two to ten times the power, as a result of which the production costs for the equipment would be increased enormously. Hence, the efficiency levels of the amplifiers would be considerably reduced. Furthermore—depending on the semiconductors used—the inter-modulation characteristics would become worse.
In order to avoid this, the nonlinear characteristic can be compensated for by suitable distortion of the input signal. This is commonly referred to as pre-distortion and, until now, has been used primarily at the analog level and in the small signal area, although it has also been used in digital baseband. This is generally done rigidly, for example by using diode characteristics.
A neural network which is in the form of a “perceptron” and which is connected upstream of a power amplifier in the signal path is known from “A Neural Network Approach To Data Predistortion With Memory In Digital Radio Systems”, by Benvenuto et al., Proceedings Of The International Conference On Communications (ICC.), Geneva, May 23-26, 1993 New York, IEEE, US. Coefficients for an FIR filter for pre-distortion are determined by means of the perceptron.
Furthermore, adaptive pre-distortion methods are also known, for example from the article “Adaptive Digital Pre-distortion Linearization” in “Microwaves & RF” 1996 pages 270 to 275, in which the ACTUAL transmission signal at the amplifier output is measured in order to compensate for the actual non-linearity of the amplifier characteristic. This is compared with the NOMINAL transmission signal at the amplifier input. Using known mathematical methods (for example by means of regression, error polynomial, etc.), the required pre-distortion of the input signal can then be determined from the difference.
These known methods, and the apparatuses used to carry them out, have the disadvantage that the required function, which is aimed at the linearization of the amplifier characteristic, cannot be defined flexibly, but only as an error polynomial that is to be minimized.
Furthermore, it is impossible to include not only the optimum approximation of the amplifier characteristic but also the transmission spectrum in the required function.
Finally, it is impossible to approximate the nonlinear characteristic of the amplifier, and/or its inverse characteristic, optimally, when the measurement signal to be evaluated is subject to severe noise.
In one embodiment of the invention, there is a method and apparatus for linearization of a radio frequency high-power amplifier, which overcomes the disadvantages mentioned above, and by means of which it is possible to define the required function flexibly as well as in the case of a measurement signal which is subject to severe noise, and at the same time to optimize this on the basis of a number of different criteria.
The invention will be explained in more detail in the following text with reference to a preferred exemplary embodiment and in conjunction with the drawings, in which:
The neural network 2 uses the I/Q measurement data supplied from the measurement device 4 at the amplifier output to approximate the actual amplifier characteristic and/or its inverse characteristic, and forms correction values while at the same time evaluating the I/Q data arriving from the digital baseband modulator 1. These correction values are supplied via the output line 7 to the digital baseband modulator 1, in order to pre-distort the data stream of the digital baseband modulator 1 with these correction values before this data stream is supplied via the D/A converter 8 and the RF modulator 9 to the RF high-power amplifier 5, and in order in this way to compensate for the non-linearity of the characteristic of the RF high-power amplifier 5.
The weight factors cij which are allocated randomly at the start, and the bias inputs xm of the neural network are optimally set iteratively by means of the back propagation algorithm. In the process, the set of signal vectors X={x1, x2, . . . xn} which each comprise a magnitude and phase are fed in successively as an input, and the respective instantaneous output of the network Y={y1, y2, . . . yn} is calculated. The required function E to be minimized for the network is calculated on the basis of Y, for example:
E=k1*sum(yi−yi nominal)2+k2*(spectrum−spectrum nominal)2.
The constants k1 and k2 are undefined weight factors, and “spectrum” is a figure obtained from a Fast Fourier Transformation (FFT) of the signal vectors. yi nominal are the desired output values of the amplifier, i.e. in general a constant times xi. The weight factors and bias inputs of the network are then readjusted using a gradient descent method:
Δcij=−γdE/dcij
Δxm=−γ*dE/dxm.
The mapping function Xo1d=>Xnew can now be determined from the curved characteristic shown in
A neural network such as this may also be repeatedly fed and trained with newly measured vectors during operation. This then also makes it possible to provide adaptation and to compensate for drifts of the amplifier with time and temperature.
The invention has the advantage that the required function to be optimized can be defined flexibly. The required function may comprise any desired number of individual functions with any desired weights. Furthermore, the required function may be defined differently for different sub-elements of the characteristic of the amplifier.
The neural network allows the nonlinear characteristic of the amplifier and/or its inverse characteristic to be determined, even when the measurement signal is subject to severe noise.
The calculation accuracy is as good as desired, and depends on the network size and the computation time.
Number | Date | Country | Kind |
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100 01 151 | Jan 2000 | DE | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/DE01/00050 | 1/9/2001 | WO | 00 | 10/30/2002 |
Publishing Document | Publishing Date | Country | Kind |
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WO01/52405 | 7/19/2001 | WO | A |
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5077619 | Toms | Dec 1991 | A |
5293457 | Arima et al. | Mar 1994 | A |
5295197 | Takenaga et al. | Mar 1994 | A |
6108385 | Worley, III | Aug 2000 | A |
6236837 | Midya | May 2001 | B1 |
6281936 | Twitchell et al. | Aug 2001 | B1 |
6625227 | Shull et al. | Sep 2003 | B1 |
Number | Date | Country |
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0967717 | Dec 1999 | EP |
Number | Date | Country | |
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20030076896 A1 | Apr 2003 | US |