Fault detection and separation of hybrid electric vehicles based on kernel orthogonal subspace analysis
Yonghui Wang,
Syamsunur Deprizon,
Cong Peng
et al.
Abstract:Driving quality and vehicles safety of hybrid electric vehicles (HEVs) are two hot-topic issues in automobile technology. Nowadays, research focuses to more intelligent and convenient HEVs fault detection methods. This paper will focus on the fault detection of HEV powertrain system with a data-driven algorithm. Orthonormal subspace analysis (OSA) is a newly proposed data-driven method which adds the ability of fault separation. Nonetheless, the linear OSA algorithm cannot effectively detect powertrain system … Show more
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