데이터셋 상세
미국
National Aviation Trafficking Initiative (NATI)
This dataset is about Domestic Operations’ Joint Task Force – Investigations supported NATI, an initiative focused on rnthe financial, export, and regulatory violations associated with the procurement of U.S. aircraft, rnthat TCOs use to traffic large quantities of cocaine and drug proceeds. NATI reported 22 arrests rnand the seizure of $151,520 in cash, 2,362 kilograms of cocaine, and 21 aircraft with an estimated value of $2.85 million
데이터 정보
연관 데이터
Operational Citadel
공공데이터포털
This dataset focused HSI authorities and subject matter expertise on priority TCOs involved in money laundering and human, narcotics, and bulk cash smuggling in Latin America. rnHSI deployed a total of 77 temporary duty special agents to 17 countries for 60- to 90-day increments.
국토교통부 국가별 감항 정보 발행 현황
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국가별 감항 정보 발행 현황 데이터입니다. 2012년부터 외국항공당국 및 연도별로 감항 정보 발행 현황을 제공합니다.
Fleet Level Anomaly Detection of Aviation Safety Data
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For the purposes of this paper, the National Airspace System (NAS) encompasses the operations of all aircraft which are subject to air traffic control procedures. The NAS is a highly complex dynamic system that is sensitive to aeronautical decision-making and risk management skills. In order to ensure a healthy system with safe flights a systematic approach to anomaly detection is very important when evaluating a given set of circumstances and for determination of the best possible course of action. Given the fact that the NAS is a vast and loosely integrated network of systems, it requires improved safety assurance capabilities to maintain an extremely low accident rate under increasingly dense operating conditions. Data mining based tools and techniques are required to support and aid operators’ (such as pilots, management, or policy makers) overall decision-making capacity. Within the NAS, the ability to analyze fleetwide aircraft data autonomously is still considered a significantly challenging task. For our purposes a fleet is defined as a group of aircraft sharing generally compatible parameter lists. Here, in this effort, we aim at developing a system level analysis scheme. In this paper we address the capability for detection of fleetwide anomalies as they occur, which itself is an important initiative toward the safety of the real-world flight operations. The flight data recorders archive millions of data points with valuable information on flights everyday. The operational parameters consist of both continuous and discrete (binary & categorical) data from several critical subsystems and numerous complex procedures. In this paper, we discuss a system level anomaly detection approach based on the theory of kernel learning to detect potential safety anomalies in a very large data base of commercial aircraft. We also demonstrate that the proposed approach uncovers some operationally significant events due to environmental, mechanical, and human factors issues in high dimensional, multivariate Flight Operations Quality Assurance (FOQA) data. We present the results of our detection algorithms on real FOQA data from a regional carrier.
관세청 항공사부호 업체명
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항공사부호를 이용하여 세관에 신고된 항공사 업체명(한글, 영문)을 조회 할 수 있는 서비스임. 관세법 제225조와 관세청 보세화물 입출항 하선 하기 및 적재에 관한 고시 제47조(항공사부호 신고)에 따라 우리나라에 국제무역기를 운항하는 항공사는 최초 입항지 세관장에게 항공사부호 신고서를 제출하여 국제항공운송협회(IATA)에 등록된 영문자 대문자 2자리의 항공사부호를 신고해야 하고, 적재화물목록의 작성 및 제출은 업체부호를 신고한 선사 또는 항공사나 화물운송주선업자의 등록 및 관리에 관한 고시에 따라 업체부호를 등록한 화물운송주선업자가 해야함.
국토교통부 항공통계 항공사
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국내선 출발, 국제선 출발+도착 기준 항공사별 공급(석), 운항(편), 여객(명),화물(톤) 항공통계 정보를 제공 합니다