Design of Sensor Permanent Fail-safe Algorithm based on Deep Learning for 100Nm class Electro-Hydraulic Power Steering System of Medium and Heavy Commercial Vehicle

In this paper, Deep Learning-based sensor Fail-safe for Electro-Hydraulic Steering Systems (EHPS) of 100Nm commercial vehicle is introduced. There are four types of permanent faults, such as shortage, drifted sensitivity, drifted off-set and fixation. When steering wheel angle sensor and motor angul...

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Published in2019 International Conference on High Performance Big Data and Intelligent Systems (HPBD&IS) pp. 283 - 288
Main Authors Kim, Joo Hyung, Jeong, Seung Yeop, Kim, Hun Mo
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.05.2019
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ISBN9781728104669
1728104661
DOI10.1109/HPBDIS.2019.8735464

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Summary:In this paper, Deep Learning-based sensor Fail-safe for Electro-Hydraulic Steering Systems (EHPS) of 100Nm commercial vehicle is introduced. There are four types of permanent faults, such as shortage, drifted sensitivity, drifted off-set and fixation. When steering wheel angle sensor and motor angular velocity sensor in steering system failed, permanent faults are recovered by using a Deep Learning-based sensor Fail-safe algorithm. The learning variables are given by Electro-hydraulic motor modeling of steering system and are trained by using Tensor Flow. The learning data are extracted through MATLAB/Simulink and TruckSim. The proposed algorithm is verified through Co-simulation of MATLAB/Simulink and TruckSim. Finally, this paper confirmed that the algorithm proposed recovered the faults of steering system sensors.
ISBN:9781728104669
1728104661
DOI:10.1109/HPBDIS.2019.8735464