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        검색결과 5

        1.
        2021.12 KCI 등재 구독 인증기관 무료, 개인회원 유료
        Maritime monitoring requirements have been beyond human operators capabilities due to the broadness of the coverage area and the variety of monitoring activities, e.g. illegal migration, or security threats by foreign warships. Abnormal vessel movement can be defined as an unreasonable movement deviation from the usual trajectory, speed, or other traffic parameters. Detection of the abnormal vessel movement requires the operators not only to pay short-term attention but also to have long-term trajectory trace ability. Recent advances in deep learning have shown the potential of deep learning techniques to discover hidden and more complex relations that often lie in low dimensional latent spaces. In this paper, we propose a deep autoencoder-based clustering model for automatic detection of vessel movement anomaly to assist monitoring operators to take actions on the vessel for more investigation. We first generate gridded trajectory images by mapping the raw vessel trajectories into two dimensional matrix. Based on the gridded image input, we test the proposed model along with the other deep autoencoder-based models for the abnormal trajectory data generated through rotation and speed variation from normal trajectories. We show that the proposed model improves detection accuracy for the generated abnormal trajectories compared to the other models.
        4,000원
        2.
        2021.11 KCI 등재 구독 인증기관 무료, 개인회원 유료
        The fishery compensation by marine spatial planning such as routeing of ships and offshore wind farms is required objective data on whether fishing vessels are engaged in a target area. There has still been no research that calculated the number of fishing operation days scientifically. This study proposes a novel method for calculating the number of fishing operation days using the fishing trajectory data when investigating fishery compensation in marine spatial planning areas. It was calculated by multiplying the average reporting interval of trajectory data, the number of collected data, the status weighting factor, and the weighting factor for fishery compensation according to the location of each fishing vessel. In particular, the number of fishing operation days for the compensation of driftnet fishery was considered the daily average number of large vessels from the port and the fishery loss hours for avoiding collisions with them. The target area for applying the proposed method is the routeing area of ships of Jeju outer port. The yearly average fishing operation days were calculated from three years of data from 2017 to 2019. As a result of the study, the yearly average fishing operation days for the compensation of each fishing village fraternity varied from 0.0 to 39.0 days. The proposed method can be used for fishery compensation as an objective indicator in various marine spatial planning areas.
        4,000원
        3.
        2021.11 구독 인증기관 무료, 개인회원 유료
        Maritime monitoring requirements have been beyond human operators capabilities due to the broadness of the coverage area and the variety of monitoring activities, e.g. illegal migration, or security threats by foreign warships. Abnormal vessel movement can be defined as an unreasonable movement deviation from the usual trajectory, speed, or other traffic parameters. Detection of the abnormal vessel movement requires the operators not only to pay short-term attention but also to have long-term trajectory trace ability. Recent advances in deep learning have shown the potential of deep learning techniques to discover hidden and more complex relations that often lie in low dimensional latent spaces. In this paper, we propose a deep autoencoder-based clustering model for automatic detection of vessel movement anomaly to assist monitoring operators to take actions on the vessel for more investigation.
        4,000원
        5.
        2020.12 KCI 등재 구독 인증기관 무료, 개인회원 유료
        최근 해상교통 환경의 변화가 다양해지고, 해상 교통량이 지속적으로 증가함에 따라 해상교통 분석에 대한 요구가 다양해지고 있다. 이러한 해상교통 분석 작업은 교통 특성에 대한 모델링이 선행되어야 하지만, 기존의 방법은 자동화되어 있지 않아 전처리 작업에 시간이 많이 소요되고, 분석 결과에 작업자의 주관적인 견해가 포함될 수 있는 문제점이 있었다. 이러한 문제점을 해결하고자 본 논문에서는 해상교통 분석을 위한 자동화된 교통 네트워크 생성 방법을 제안하였으며, 활용 가능성을 검토하기 위해 실제 목포항에서 수집된 6개월간의 항적 데이터를 이용한 실험을 수행하였다. 실험 결과, 대상 해역의 교통 특성을 반영한 교통 네트워크를 자동으로 생성할 수 있었으며, 대용량의 항적 데이터에도 적용할 수 있음을 확인하였다. 또한, 생성된 교통 네트워크는 시공간적 특징 분석이 가능하여 다양한 해상교통 분석에 활용될 수 있을 것으로 기대한다.
        4,000원