상세 보기
- Ko, Seongkyu;
- Cha, Junyeop;
- Park, Eunil
WEB OF SCIENCE
4SCOPUS
3초록
Ferry services that connect a huge number of islands and mainlands are vital transportation methods in several nations. However, a major disadvantage of ferry services is that they are crucially affected by weather conditions. Informing customers about regular ferry service operations is thus very important. With this in mind, the aim of this study was to predict whether ferry services can be provided in a timely manner through machine learning approaches with meteorological (6–48 h prior) and operation data sets. It was found that the random forest classifier achieved accuracy levels of 90.50% (6 h prior) and 88.78% (48 h prior) in predicting ferry services, which were greater than regulation-oriented determination. Both implications and limitations are presented based on the findings of this study. © 2023 ICE Publishing. All rights reserved.
키워드
- 제목
- Predicting ferry services with integrated meteorological data using machine learning
- 저자
- Ko, Seongkyu; Cha, Junyeop; Park, Eunil
- 발행일
- 2024-12
- 유형
- Article; Early Access
- 권
- 177
- 호
- 7
- 페이지
- 449 ~ 456