Claims
- 1. In a wireless communication system, a method for estimating an original pilot signal, the method comprising:
receiving a CDMA signal; despreading the CDMA signal; obtaining a pilot signal from the CDMA signal; and estimating an original pilot signal using a pilot estimator that includes a Kalman filter to produce a pilot estimate, wherein the Kalman filter is determined through use of a prediction error method based on an innovations representation of the original pilot signal.
- 2. The method as in claim 1, wherein the CDMA signal is transmitted on a downlink and wherein the downlink comprises a pilot channel.
- 3. The method as in claim 1, wherein the CDMA signal is transmitted on an uplink and wherein the uplink comprises a pilot channel.
- 4. The method as in claim 1, further comprising demodulating the pilot estimate.
- 5. The method as in claim 1, wherein the Kalman filter was configured by an offline system identification process.
- 6. The method as in claim 1, wherein the Kalman filter is configured for improved group delay.
- 7. The method as in claim 6, wherein the Kalman filter is further configured to calculate a true filtered estimate.
- 8. The method as in claim 7, wherein the Kalman filter is further configured to calculate the true filtered estimate according to the following:
- 9. The method as in claim 7, wherein the Kalman filter is further configured to calculate the true filtered estimate according to the following:
- 10. The method as in claim 8, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and pseudo linear regression and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 11. The method as in claim 10, wherein the parameters are calculated according to the following:
- 12. The method as in claim 8, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and a Gauss-Newton algorithm and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 13. The method as in claim 12, wherein the parameters are calculated according to the following:
- 14. The method as in claim 12, wherein the parameters are calculated according to the following:
- 15. The method as in claim 14, further comprising updating the parameters during real-time operation.
- 16. The method as in claim 9, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and a Gauss-Newton algorithm and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 17. The method as in claim 16, wherein the parameters are calculated according to the following:
- 18. The method as in claim 17, further comprising updating the parameters during real-time operation.
- 19. In a mobile station for use in a wireless communication system, a method for estimating an original pilot signal, the method comprising:
receiving a CDMA signal; despreading the CDMA signal; obtaining a pilot signal from the CDMA signal; and estimating an original pilot signal using a pilot estimator that includes a Kalman filter to produce a pilot estimate, wherein the Kalman filter is determined through use of a prediction error method based on an innovations representation of the original pilot signal.
- 20. The method as in claim 19, wherein the CDMA signal is transmitted on a downlink and wherein the downlink comprises a pilot channel.
- 21. The method as in claim 19, further comprising demodulating the pilot estimate.
- 22. The method as in claim 19, wherein the Kalman filter was configured by an offline system identification process.
- 23. The method as in claim 19, wherein the Kalman filter is configured for improved group delay.
- 24. The method as in claim 23, wherein the Kalman filter is further configured to calculate a true filtered estimate.
- 25. The method as in claim 24, wherein the Kalman filter is further configured to calculate the true filtered estimate according to the following:
- 26. The method as in claim 24, wherein the Kalman filter is further configured to calculate the true filtered estimate according to the following:
- 27. The method as in claim 25, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and pseudo linear regression and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 28. The method as in claim 27, wherein the parameters are calculated according to the following:
- 29. The method as in claim 25, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and a Gauss-Newton algorithm and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 30. The method as in claim 29, wherein the parameters are calculated according to the following:
- 31. The method as in claim 29, wherein the parameters are calculated according to the following:
- 32. The method as in claim 31, further comprising updating the parameters during real-time operation.
- 33. The method as in claim 26, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and a Gauss-Newton algorithm and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 34. The method as in claim 33, wherein the parameters are calculated according to the following:
- 35. The method as in claim 34, further comprising updating the parameters during real-time operation.
- 36. A mobile station for use in a wireless communication system wherein the mobile station is configured to estimate an original pilot signal, the mobile station comprising:
an antenna for receiving a CDMA signal; a receiver in electronic communication with the antenna; a front-end processing and despreading component in electronic communication with the receiver for despreading the CDMA signal; a pilot estimation component in electronic communication with the front-end processing and despreading component for estimating an original pilot signal using a pilot estimator that includes a Kalman filter to produce a pilot estimate, wherein the Kalman filter is determined through use of a prediction error method based on an innovations representation of the original pilot signal; and a demodulation component in electronic communication with the pilot estimation component and the front-end processing and despreading component for providing demodulated data symbols to the mobile station.
- 37. The mobile station as in claim 36, wherein the receiver receives the CDMA signal transmitted on a downlink and wherein the downlink comprises a pilot channel.
- 38. The mobile station as in claim 36, wherein the Kalman filter was configured by an offline system identification process.
- 39. The mobile station as in claim 38, wherein the Kalman filter is configured for improved group delay.
- 40. The mobile station as in claim 39, wherein the Kalman filter is further configured to calculate a true filtered estimate.
- 41. The mobile station as in claim 40, wherein the Kalman filter is further configured to calculate the true filtered estimate according to the following:
- 42. The mobile station as in claim 40, wherein the Kalman filter is further configured to calculate the true filtered estimate according to the following:
- 43. The mobile station as in claim 41, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and pseudo linear regression and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 44. The mobile station as in claim 41, wherein the parameters are calculated according to the following:
- 45. The mobile station as in claim 41, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and a Gauss-Newton algorithm and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 46. The mobile station as in claim 45, wherein the parameters are calculated according to the following:
- 47. The mobile station as in claim 45, wherein the parameters are calculated according to the following:
- 48. The mobile station as in claim 47, further comprising updating the parameters during real-time operation.
- 49. The mobile station as in claim 42, wherein the offline system identification process comprises:
providing training samples; and calculating parameters using the prediction error method and a Gauss-Newton algorithm and generating a state estimate using the Kalman filter, wherein the calculating and generating are iteratively performed until the Kalman filter converges.
- 50. The mobile station as in claim 49, wherein the parameters are calculated according to the following:
- 51. The mobile station as in claim 50, further comprising updating the parameters during real-time operation.
RELATED APPLICATIONS
[0001] Reference to Co-Pending Applications for Patent
[0002] The present invention is related to the following Applications for Patent in the U.S. Patent & Trademark Office:
[0003] “Method And Apparatus For Pilot Estimation Using Suboptimum Expectation Maximization” by Farrokh Abrishamkar et al., having Attorney Docket No. 020123, and U.S. application Ser. No. 10/262,306, filed on Sep. 30, 2002, and assigned to the assignee hereof.