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US Patent 11579575 Inverse reinforcement learning with model predictive control

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Is a
Patent
Patent

Patent attributes

Patent Applicant
Baidu Usa
Baidu Usa
Current Assignee
Baidu Usa
Baidu Usa
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
11579575
Date of Patent
February 14, 2023
Patent Application Number
16702441
Date Filed
December 3, 2019
Patent Citations
‌
US Patent 10430690 Machine learning predictive labeling system
Patent Primary Examiner
‌
Jamal Javaid
CPC Code
‌
G05B 13/04
‌
G06N 3/084
‌
G06N 20/00
‌
B60W 40/04
‌
B60W 40/105
‌
G05B 13/027
‌
G05B 13/048

Described herein are systems and methods for inverse reinforcement learning to leverage the benefits of model-based optimization method and model-free learning method. Embodiments of a framework combining human behavior model with model predictive control are presented. The framework takes advantage of feature identification capability of a neural network to determine the reward function of model predictive control. Furthermore, embodiments of the present approach are implemented to solve the practical autonomous driving longitudinal control problem with simultaneous preference on safe execution and passenger comfort.

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