Invention Grant
- Patent Title: Machine learning-based link adaptation
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Application No.: US17252976Application Date: 2018-09-28
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Publication No.: US11637643B2Publication Date: 2023-04-25
- Inventor: Xiaoran Fang , Matthew Hayes , John P. Hogan , Shoujiang Ma , Mehrzad Malmirchegini , Rongzhen Yang , Hujun Yin
- Applicant: Intel Corporation
- Applicant Address: US CA Santa Clara
- Assignee: Intel Corporation
- Current Assignee: Intel Corporation
- Current Assignee Address: US CA Santa Clara
- Agency: Schwegman Lundberg & Woessner, P.A.
- International Application: PCT/CN2018/108327 WO 20180928
- International Announcement: WO2020/062022 WO 20200402
- Main IPC: H04B17/336
- IPC: H04B17/336 ; H04L1/00 ; H04W24/08

Abstract:
Aspects for machine learning-based link adaptation are described. For example, an apparatus can determine k-nearest neighbors (K-NNs) based on training data associated with the sub-band and on the signal to interference and noise ratio (SINR) of the sub-band. In aspects, the apparatus can identify a channel quality indicator (CQI) associated with the lowest error rate for the k-NNs and provide the identified CQI to a base station. In aspects, a neural network (NN) can provide labels for CQIs that indicate probability of choosing a CQI, and the CQI having highest probability will be provided to a base station. In aspects, a covariance matrix based on samples of a communication channel can be provided to a NN to determine a rank indicator (RI) corresponding to the channel, and channel state information associated with the (RI) can be sent to the base station. Other aspects are described.
Public/Granted literature
- US20210218483A1 MACHINE LEARNING-BASED LINK ADAPTATION Public/Granted day:2021-07-15
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