3.9 Article

Enhancing skyhook for semi-active suspension control via machine learning

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ELSEVIER
DOI: 10.1016/j.ifacsc.2021.100161

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Semi-active; Suspensions; Sequential learning; Experiments; Skyhook

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Semi-active control is widely used in electronic suspension systems to balance comfort and handling. Researchers propose a novel control strategy derived via a sequential learning framework, which can learn the optimal policy from data.
Semi-active control is the most employed technology for electronic suspension systems. The damping can be regulated to trade-off comfort and handling. Due to its success in industrial applications, semi-active control design has been extensively investigated in literature mainly from a model-based perspective. In this contribution, the authors propose a novel control strategy derived via a sequential learning framework, which selects the most significant feedback measurements for semi-active control and learns the optimal policy from data. As opposed to most of the contributions based on deep-learning approaches, the output of the proposed methodology is a control algorithm consisting of few parameters, which can be easily ported and calibrated on a real vehicle. Experimental validation on a sports-car shows that the proposed algorithm is superior in damping the body resonance with respect to the state-of-the-art skyhook algorithm. Indeed, the learned control policy consists of an augmentation of skyhook. (C) 2021 Elsevier Ltd. All rights reserved.

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