Abstract
The present article introduces PHM technology development trends for future mobility. Recently, many research institutes have begun to recognize the importance of automotive data that increases to ensure the safety of customers. It can be seen from the recent announcements of many research institutes that interest in securing functional safety of vehicle systems is increasing. Many presentations and papers on condition monitoring technology for major parts of vehicles can be found, and it can be seen that not only automakers but also startup companies are presenting various technologies. With the recent increase in the number of electric vehicles, tire inspection is the first time that most customers enter the service. This is a difference from the tendency of existing internal combustion engine vehicles to be stocked for engine oil exchange. This is why tire monitoring technology is important among many PHM technologies. This review will introduce the latest technology trends.
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Ryu, YH., Lee, KW., Sung, DU. et al. Review of diagnosis technology for future mobility vehicle. JMST Adv. 5, 77–84 (2023). https://doi.org/10.1007/s42791-023-00056-8
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DOI: https://doi.org/10.1007/s42791-023-00056-8