Paper Abstract and Keywords |
Presentation |
2019-12-20 15:15
Classification of railway stop positions by machine learning using on-board equipment accumulated data Naohiro Morishima, Ryota kouduki, Tomoki Kobayashi, Yukiko Sugimoto (Kyosan), Takeshi Mizuma, Upvinder Singh Upvinder, Shiva Krishna Maheshuni (The University of Tokyo) DC2019-82 |
Abstract |
(in Japanese) |
(See Japanese page) |
(in English) |
In recent years, the development of AI technology has been remarkable. Analysis using machine learning is attracting attention in the railway industry, and it is expected to be used in the field of operation and maintenance. On the other hand, there are a number of problems related to data collection, such as the need to install equipment that is different from the original function. In this study, we focus on the accumulated data of the on-board equipment and investigate whether it is possible to adapt machine learning without adding new equipment by classifying the stop state.. |
Keyword |
(in Japanese) |
(See Japanese page) |
(in English) |
Machine learning / on-board equipment / stop position classification / / / / / |
Reference Info. |
IEICE Tech. Rep., vol. 119, no. 351, DC2019-82, pp. 21-23, Dec. 2019. |
Paper # |
DC2019-82 |
Date of Issue |
2019-12-13 (DC) |
ISSN |
Online edition: ISSN 2432-6380 |
Copyright and reproduction |
All rights are reserved and no part of this publication may be reproduced or transmitted in any form or by any means, electronic or mechanical, including photocopy, recording, or any information storage and retrieval system, without permission in writing from the publisher. Notwithstanding, instructors are permitted to photocopy isolated articles for noncommercial classroom use without fee. (License No.: 10GA0019/12GB0052/13GB0056/17GB0034/18GB0034) |
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DC2019-82 |
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