Combined observer design for road vehicles using LPV-based and learning-based methods

2022 30TH MEDITERRANEAN CONFERENCE ON CONTROL AND AUTOMATION (MED)(2022)

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摘要
In this paper a novel observer design method is proposed, which combines Linear Parameter-Varying-based (LPV) and machine-learning-based design tools. As a first step, a parameter optimization technique is developed to achieve a polytopic LPV formulation of the system model. This modeling technique also involves a machine-learning-based solution to determine scheduling parameters for the LPV system. In the second step, a LPV-based observer design based on the achieved system representation is proposed. Finally, the operation and the effectiveness of the proposed observer algorithm are demonstrated through a vehicle-oriented estimation problem, i.e., estimation of the lateral velocity. In the paper two simulations illustrate the accuracy and the advantageous impact of the observer on the control performances of the closed-loop system.
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关键词
combined observer design,road vehicles,novel observer design method,Linear Parameter-Varying-based,machine-learning-based design tools,parameter optimization technique,polytopic LPV formulation,system model,machine-learning-based solution,scheduling parameters,LPV system,LPV-based observer design,achieved system representation,observer algorithm,vehicle-oriented estimation problem,closed-loop system
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