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Data-driven diagnosis of the high-pressure hydrogen leakage in fuel cell vehicles based on relevance vector machine
Affiliation:1. School of Mechanical, Electric and Control Engineering, Beijing Jiaotong University, Beijing, 100044, China;2. School of Vehicle and Mobility, Tsinghua University, Beijing, 100044, China
Abstract:The hydrogen pressure inside tanks and its adjacent pipes can reach up to 70 MPa in fuel cell vehicles. This is the weak links of hydrogen leakage. The diagnosis time of mainstream hydrogen leakage diagnosis method based on hydrogen concentration sensors (HCSs) is easily affected by the number and location of installed sensors. In this study, a data-driven diagnosis method is proposed for the high-pressure hydrogen leakage. Fisher discrimination analysis and linear least squares fitting are used for data preprocessing, relevance vector machine is used for pattern recognition. When the total volume of tanks is 82 L and the hydrogen leakage flow rate is larger than 2 g/s, the diagnosis accuracy of the proposed method is higher than 95% and the diagnosis time is constant. When the leakage location is far away from HCSs, the proposed method can the diagnose hydrogen leakage in a shorter time than mainstream method.
Keywords:Hydrogen leakage  Leakage diagnosis  Fuel cell vehicles  Data-driven
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