Wireless Circuitry with Narrowband Error Vector Magnitude (EVM) Estimator
US-2024039764-A1 · Feb 1, 2024 · US
US2025274083A1 · US · A1
| Field | Value |
|---|---|
| Publication number | US-2025274083-A1 |
| Application number | US-202118704980-A |
| Country | US |
| Kind code | A1 |
| Filing date | Oct 28, 2021 |
| Priority date | Oct 28, 2021 |
| Publication date | Aug 28, 2025 |
| Grant date | — |
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Embodiments of the present disclosure provide digital predistortion method and digital predistortion apparatus. The digital predistortion method for power amplifier, PA, comprises: in accordance with a predicted traffic condition associated with a future time, determining PA related parameters for the future time; and applying the determined PA related parameters when the future time comes.
Opening claim text (preview).
1 .- 18 . (canceled) 19 . A digital predistortion (DPD) method for a power amplifier (PA), the method comprising: in accordance with a predicted traffic condition associated with a future time, determining PA related parameters for the future time; and applying the determined PA related parameters when the future time comes. 20 . The method of claim 19 , wherein the predicted traffic condition is predicted by an Artificial Intelligence (AI) module. 21 . The method of claim 19 , wherein the future time comprises a time slot in the future. 22 . The method of claim 19 , wherein the PA related parameters comprise DPD coefficients and a PA biasing configuration, and the PA biasing configuration comprises at least one of a voltage drain (V dd ) of the PA, a voltage gate (V gg ) of the PA and a load impedance of the PA. 23 . The method of claim 19 , wherein the predicted traffic condition comprises at least one of a mean power level, a maximum power level, a minimum power level, a variance of power level, a physical resource block (PRB) utilization ratio and a confidence level. 24 . The method of claim 19 , wherein determining the PA related parameters for the future time comprises: looking up in a mapping table with the predicted traffic condition as an index to find an item in the mapping table whose traffic condition value matches the predicted traffic condition, wherein the mapping table comprises a plurality of items and each item comprises a traffic condition and PA related parameters; and determining the PA related parameters in the found item as the PA related parameters for the future time. 25 . The method of claim 24 , wherein each item comprised in the mapping table further comprises a radio identity and/or a branch identity. 26 . The method of claim 24 , wherein the mapping table is created by: applying test signals with a set of predetermined traffic conditions to the PA under a set of predetermined PA biasing configurations; for each predetermined traffic condition in the set and each predetermined PA biasing configuration, obtaining converged DPD coefficients; and creating an item in the mapping table with a corresponding predetermined traffic condition, predetermined PA biasing configuration and converged DPD coefficients. 27 . The method of claim 24 , wherein, after applying the determined PA related parameters, if DPD performance meets a first predetermined criteria, the method further comprises updating the mapping table with actual traffic condition and PA related parameters. 28 . The method of claim 27 , wherein the updating is performed when a PA efficiency meets a second predetermined criteria. 29 . The method of claim 24 , wherein, after applying the determined PA related parameters, if DPD performance doesn't meet a first predetermined criteria, the method further comprises: changing the DPD coefficients until the DPD performance meets the first predetermined criteria; and updating the mapping table with actual traffic condition and PA related parameters. 30 . The method of claim 29 , wherein, after applying the determined PA related parameters, if a PA efficiency doesn't meet a second predetermined criteria, the method further comprises: changing the PA biasing configuration until the PA efficiency meets the second predetermined criteria and the DPD performance meets the first predetermined criteria; and updating the mapping table with actual traffic condition and PA related parameters. 31 . The method of claim 20 , wherein the AI module is trained with historical traffic conditions and is updated with actual traffic conditions. 32 . The method of claim 23 , wherein the applying is performed when the confidence level meets a third predetermined criteria. 33 . The method of claim 32 , wherein the applying is not performed when the confidence level doesn't meet the third predetermined criteria, and wherein the method further comprises: if DPD performance doesn't meet a first predetermined criteria, changing the DPD coefficients until the DPD performance meets the first predetermined criteria; and updating the mapping table with actual traffic conditions and PA related parameters; AND if the DPD performance meets the first predetermined criteria, updating the mapping table with actual traffic conditions and PA related parameters. 34 . The method of claim 33 , wherein the method further comprises, if a PA efficiency doesn't meet a second predetermined criteria, changing the PA biasing configuration until the PA efficiency meets the second predetermined criteria and the DPD performance meets the first predetermined criteria; and updating the mapping table with actual traffic conditions and PA related parameters; AND if the PA efficiency meets the second predetermined criteria and the DPD performance meets the first predetermined criteria, updating the mapping table with actual traffic conditions and PA related parameters. 35 . A digital predistortion (DPD) apparatus for a power amplifier (PA), comprising: a communication interface; a processor; and a memory coupled to the processor, said memory containing instructions executable by said processor, whereby the DPD apparatus is configured to: in accordance with a predicted traffic condition associated with a future time, determine PA related parameters for the future time; and apply the determined PA related parameters when the future time comes. 36 . The DPD apparatus of claim 35 , wherein the predicted traffic condition is predicted by an Artificial Intelligence (AI) module. 37 . The DPD apparatus of claim 35 , wherein the future time comprises a time slot in the future. 38 . The DPD apparatus of claim 35 , wherein the PA related parameters comprise DPD coefficients and a PA biasing configuration, and the PA biasing configuration comprises at least one of a voltage drain (V dd ) of the PA, a voltage gate (V gg ) of the PA and a load impedance of the PA.
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