US 11,742,883 B2
Adaptive narrowband interference rejection for satellite navigation receiver
Wei Yu, Torrance, CA (US); Mark P. Kaplan, Culver City, CA (US); Richard G. Keegan, Palos Verdes Estates, CA (US); and David M. Li, Harbor City, CA (US)
Assigned to Deere & Company, Moline, IL (US)
Filed by Deere & Company, Moline, IL (US)
Filed on Sep. 30, 2021, as Appl. No. 17/449,589.
Claims priority of provisional application 63/093,161, filed on Oct. 16, 2020.
Prior Publication US 2022/0182088 A1, Jun. 9, 2022
This patent is subject to a terminal disclaimer.
Int. Cl. H04B 7/185 (2006.01); H04B 1/10 (2006.01); H04B 1/71 (2011.01); H04B 1/7105 (2011.01)
CPC H04B 1/1036 (2013.01) [H04B 1/7101 (2013.01); H04B 1/71052 (2013.01); H04B 2001/1072 (2013.01)] 19 Claims
OG exemplary drawing
 
1. A receiver system with interference rejection, the receiver system comprising:
an antenna for receiving a radio frequency signal;
a downconverter for converting the radio frequency signal to an intermediate frequency signal;
an analog-to-digital converter for converting the intermediate frequency signal or an analog baseband signal to a digital baseband signal;
a selective filtering module for filtering of the digital baseband signal consistent with a target receive bandwidth;
a narrow band rejection filter for rejecting an interference component, wherein the selective filtering module comprises:
an adaptive notch filter supporting an infinite impulse response mode; and
a controller for controlling the adaptive notch filter, the controller configured to execute a Steiglitz-McBride (SM)-modeled estimator or a least mean squares algorithm estimator to estimate filter coefficients of the adaptive notch filter, or the controller configured to execute cumulatively both the Steiglitz-McBride (SM)-modeled estimator and the least mean squares (LMS) algorithm estimator, the SM-modeled estimator or least mean squares algorithm estimator being storable in a data storage device and the controller configured to recursively adjust the filter coefficients of the adaptive notch based on the estimated filter coefficients; wherein the SM-modeled estimator or the LMS estimator is configured to conduct a mini batch gradient decent search, wherein the SM-modeled estimator or LMS estimator or a filter coefficient updater is configured to avoid a covariance matrix update/propagation by disregarding correlation between two NBI components for a scenario or case wherein there are two simultaneous NBI components that interfere with the received radio frequency signal or its related respective baseband signal that is derived from the received radio frequency signal.